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Welcome to episode 34 of the Language Neuroscience Podcast.
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I'm Stephen Wilson and I'm a neuroscientist at the University of Queensland in Brisbane,
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Australia.
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My guest today is Deborah Levy.
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Deb is a language neuroscientist and lecturer in the Princeton Writing Program in Princeton,
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New Jersey.
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I'm making a few episodes about new papers that catch my eye in the journal Neurobiology
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of Language.
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This week we're going to talk about Deb's paper, "Role for Left, dorsomedial prefrontal
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cortex in self-generated, but not externally cued language production’, which just came out.
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It's a lovely paper, as you'll soon see.
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I should mention that I actually know Deb very well because she did her PhD in my lab
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at Vanderbilt, but we'll try to keep the inside jokes to a minimum.
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Okay, let's get to it.
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Hi, Deb, how are you?
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I'm doing great.
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How are you?
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I'm doing good and
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as we've been talking about, you know, you're in your apartment in West Philly, yeah?
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That's correct, yep.
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I'm right by Clark Park and enjoying a nice four o'clock sunshine, I suppose, from
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my apartment.
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Yeah, it looks really, um, idyllic, actually.
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It looks really peaceful and, you know, you've got this loft and like sunshine coming in
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through the windows, so very pleasant.
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And I'm just sitting here like in the early dawn hours, like nursing my first coffee that
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really should be a second coffee by this point.
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Yeah, well, it is pretty dreamy here.
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I agree.
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Thank you for complimenting it.
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But your background is very nice as well.
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I like the grey curtain.
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The grey curtain is because it's like, this is my office slash laundry.
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And if it wasn't for the grey curtain, you could see my laundry.
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In fact, you still actually can see it.
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Very peaceful piece.
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Yeah, but it's like a surprisingly good office for a laundry office.
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We know each other very well.
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You did study in my lab, which was awesome.
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Yes.
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But what we're going to talk about today is not that time, but this recent paper that you
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published in neurobiology of language.
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Before we get onto that, even though I kind of know this already, can you, for our listeners,
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talk about how you got interested in the field of language and the brain?
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Yeah.
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When I was very little, I think around the time I learned to read, I was already sort of
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really perplexed by the fact that my life had to be filtered through language after that.
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So, I remember sitting in the back seat of my parents' car and driving past a billboard
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and seeing it and being like, why don't I have the option not to read that?
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I would love I could just look at it.
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But now it's words.
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And that sort of mysterious filtering of the world through language continued to fascinate
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me for a very long time.
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So, when I was in high school, I got really into Charlie Kaufman movies, and I watched the
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Jill Bolte Taylor TED Talk and I was like, I want to spend my whole life thinking about
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how the brain and language interact.
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Just tell us a little bit about that TED Talk for people like them.
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Yeah.
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So that is a TED Talk by a neuroscientist who had a stroke in her left hemisphere and she
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kind of describes the experience of living her life through her right hemisphere only just
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for the period of time that she was experiencing symptoms.
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And it's really fascinating.
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You know, it kind of portrays it as this like meditative, holistic experience of life that
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is not kind of dictated by the constraints of language, which, you know, when I was
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She's very pro-right hemisphere, isn't she?
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I found it like a little bit like scandalous actually.
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Yeah.
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I mean, I was too for a lot of my life.
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I think I, you know, longed for a life that wasn't constantly words in my head thinking
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about everything that was going on.
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Wow.
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Yeah.
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And then, you know, the more I learned about what the left hemisphere does, the more I was
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like, oh, this guy is pretty important.
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I think, I think I like that I have him around.
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Yeah, but anyway, so I think all of those sort of philosophical questions about what does
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it mean to live a life through language really kind of like lit my fire about this.
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And then, yeah, I went to NYU because they had this major called language in mind, which,
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you know, was very appealing given all of those interests.
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And it was kind of a philosophy psychology linguistics trifecta.
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And then when I got to school, I realized that the linguistics and the psych were really
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the things that I was most passionate about.
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So I switched to just a double major in those.
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And I worked in a couple of behavioral labs.
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And yeah, it was in a sociolinguistics lab with John Singler, a causal cognition lab with
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Bob Rehder and a visual perception lab with Denis Pelli.
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So, I was kind of working in all of those different environments and also doing teaching on
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the side.
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So, I did a class called teaching in psychology where I got to TA, the interest site class
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for the other undergrads coming in after I took the class, which I loved.
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So yeah, so that was all just quick note.
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Like so Denis Pelli is like very secretly famous as one of the coauthors of Psychtoolbox,
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which I think, which I think everybody, I mean, many, many of the experience and I feel
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to build on that, on that software, so yeah.
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Yeah, what was that like?
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Well, it was great.
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shoulders of Giants.
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Yeah, I had a lot of fun working in his lab.
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He was, I did my undergraduate thesis in his lab.
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So, it was about visual perception of letters at the sort of threshold of visibility and
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this experience of those letters kind of like springing into your awareness after just
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looking for a long time at something that seems like it isn't there, which we determined
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was sort of a categorical thing.
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Like either it's there, or it isn't.
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You kind of don't have any in between experience of them starting to appear.
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But he was also working on a project at the time called the Beauty Project that was about
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kind of aesthetic experiences of beauty.
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And through the years and I got to, I had a lot of hot takes actually as an undergrad, I
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came in really strong.
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And it didn't totally turn him off of me.
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So yeah, it was a lot of fun.
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And I didn't realize that he was so famous for psychtoolbox until I got to your lab and
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started using it and saw his name on all of the, you know, all of the documentation.
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Yeah.
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And we everyone citing Pellie, 1997.
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Yeah.
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And it's kind of really cool how early you got, you knew what your interest was.
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I don't know that I've met anybody that actually like underrated enrolled in a major that was
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essentially about language and brain.
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And that's like, you know, surprisingly, you were on your own target.
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Yeah.
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I think that the shape of my interest has morphed quite a bit.
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Yeah.
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But the underlying baseline has been really, really consistent since I was about four.
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So that's, that's really cool.
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Yeah.
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Okay.
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And so yeah, undergrad, yeah, you did a whole bunch of research as an undergrad.
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And did you go straight into your PhD after that?
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I did not.
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I worked in a computational memory lab at Penn for two years as a research assistant.
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So that is the Kahana lab, computational memory lab, studying memory.
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And basically, my job there was collecting intracranial data with patients undergoing
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monitoring for epilepsy.
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So, I would come in and have them do free recall tasks or, you know, spatial cognition kind
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of stuff, you know, set up a little laptop in front of them and encourage them to, you know,
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do this while they're hanging out, getting better, really.
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And yeah, that was a really different type of experience than I had in undergrad because,
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you know, I was going from behavioral psych and behavioral linguistics to this much
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more sort of neural computational perspective, which was really cool and really, really mind
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boggling for me just to see how many different ways you can look at the same types of questions.
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And I learned so much learned a lot.
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And yeah, and then after that is when I decided like all of this neural stuff is really cool,
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but I'm missing the language part.
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I really love to do some more language and then, you know, I applied to a very special lab.
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But actually, you applied to Vanderbilt before I was there.
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So I, so why, so like, why did you apply to Vanderbilt?
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Because I wasn't there. (Laughter)
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Well, I applied because I knew they had a hearing and speech program that was very good.
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And I knew that I wanted to do both work that was more kind of focused on language compared
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to what I had been doing as an RA.
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And also work that had some clinical applications.
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I think something I've thought about a lot as I've been in my, you know, sort of adult career
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is the balance between being interested in something scientifically and being, you know,
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interested in the people that are experiencing what you study.
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And I think I was very compelled to feel coupled with the people I was interested in.
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And I feel like I was working specifically in areas that would in some way benefit them,
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even if it was long term.
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Right.
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So that was a big pull.
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Okay.
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Um, so yeah, that's great.
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And then, yeah, so somehow, we got connected and, um, like, yeah, it was through Mike
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de Riesthal.
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I talked to Mike de Riesthal on the phone.
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I remember actually sitting in Jefferson hospital while I was on a case talking to Mike
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de Riesthal , like walking around the hallways of Jefferson.
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He seemed great.
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He said, you know, based on your interest, there's this guy coming in who you might really
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like working with, um, you know, do you want me to just set you guys up on a Skype call
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at the time?
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Probably.
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Yeah.
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Those were the days.
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Yeah.
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One thing that I remember from that is that you asked, like, what do I need?
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Like, what should I study before I start?
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And then I sent you like a 20 dot point, like syllabus for cognitive neuroscience of
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simple language, which I still have saved.
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And it was actually like, that, it's a good document, but it would probably take like about
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10 years to get through it all, but like, that makes me feel better about where I am.
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But, yeah, I did.
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I mean, I still look back at that too.
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I mean, when I try to think like, what are the things that I want to feel like I know
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or that I, you know, know are still ahead of me.
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I use that as sort of a benchmark.
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So great.
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Yeah.
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So two things from your PhD time.
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First, can you tell us about what you did with your involvement in the aphasia group at
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at Vanderbilt?
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Yeah.
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So the aphasia group at Vanderbilt is a very, very cool place.
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It's run by Dominique Harrington and she every Thursday has people come from really all
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of her Tennessee, but middle Tennessee is kind of the hub.
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And although some people commute like three hours to get there, it's very important to
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them.
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And it's basically a full day program where there's always kind of conversation and one-to-one
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speech therapy and a real community that's built around that.
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So, I came in again, like I mentioned, kind of trying to make sure I stayed connected with
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the people I was interested in, you know, the brains of.
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And I volunteered in that group for basically the duration of my PhD.
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I think it was maybe started the middle of my first year.
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Yeah.
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And so, I, you know, because I'm not a clinically trained speech pathologist, I was placed in
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sort of the, we called it the executive group.
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It was very both like relatively mild impairment.
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And I was, you know, just kind of hanging out with them and helping, you know, make sure
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everybody got birthday cards and, you know, do the, the planning for the group over the
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semester.
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But yeah, then Anna Kasdan joined me as well and she was also volunteering in the group and
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the two of us decided both that we wanted to sort of capture what was going on there because
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it seemed to be so important to the people in the group and also to do our own little spin
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off.
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So we had a music and arts group that we started at Vanderbilt, which was so fun.
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Anna's a pianist.
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So she ran a choir and I like to think of myself as an amateur artist.
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And so, I did, you know, little workshops and I tested them all out to make sure you could
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do them, you know, with one hand at home.
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And my husband had a lot of nights of me, you know, like my arm behind my, my back at the
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kitchen table, you know, for me.
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Yeah.
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And so that ended up being really, really fun as well.
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So, we have a couple of papers that are out about what that group is and its benefits.
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And yeah, I think that was a really important experience for me because it, it got me really
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thinking about like what, what the relationship between research and community participation
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is, I guess, like research and stakeholders and a lot of the work that I still think about
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a lot with a major friendly materials stemmed from that worlds and making sure that there's
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like a way to communicate that information.
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Yeah, that's really great that you got to know the people who we were working with in that
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way because I just think that it brought so much to the lab that you had that like really
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sort of those deep, you know, experiences with actually interacting with people in loads
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of different contexts.
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And the other thing I wanted to ask you about is your dissertation, which is then published
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in 2024.
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Can you tell us just briefly about what you worked on for that paper?
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Yeah, so that was working with the database that you put together over the course of the
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five years, I believe, that you started a Vanderbilt until I wrote the paper.
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So that, with all of this speech language pathologists and all of the imaging that was
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a mass, we had a really big data set of people with left hemisphere stroke that were tracked
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over the first year of their recovery.
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And my dissertation was about trying to predict from the clinical imaging, from what their
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strokes look like on their MRIs.
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Acutely.
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Acutely, yes.
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What their language would look like at the one month time point, the three month time point
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and the one year time point.
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And that was basically built with support vector regression model, like a machine learning
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type approach to predict from the brain images what the language recovery would look like.
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And it did pretty good.
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It did pretty good, didn't it?
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Yeah.
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We can predict quite a lot just from the brain, which has a lot of implications, but I guess
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we should get to that another time.
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Yeah.
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So, and then you went to your postdoc with the Chang Lab.
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And that is where the paper we're going to talk about today comes from.
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So can you tell me about like what it was like to move over to the Chang Lab and get started
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there?
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Yeah.
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Well, it was a big geographical move.
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First of all, I moved from Tennessee back to Philadelphia for a month where I got married
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and then immediately moved to San Francisco, like a week after.
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So it was a big physical jump in space.
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But then once I got there, I mean, it was, it was so cool.
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It's like an extremely inspiring group of people to work with and really fascinating populations
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of people that you can learn about through the neurosurgical resections, which is the
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main data set that I worked with.
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So, Eddie is a neurosurgeon and whenever he has left hemisphere cases, he has us do preoperative
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evaluations.
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So you see how their language is before surgery, two days after, two to fourish, you see how
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they're doing after their surgery.
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And then if there's impairment at that point, we follow up a month later and see how their
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language is at that point as well.
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So, I got to follow up on very similar types of questions to the dissertation work, but
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in a totally different population of people where the, the lesions are, you know, sort of designed
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by a neurosurgeon as opposed to just the, the result of stroke.
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Designed by the MCA.
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By the MCA, yeah, although we're not the MCA is actually less relevant for this paper than
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the ACA, but.
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Oh, yeah, that's very true.
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Yeah.
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Yeah.
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So, in Eddy's lab, would you, what kind of patient interaction this did you have?
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Were you doing the testing and?
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Yeah.
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So, I was doing evaluations there, which I was not doing in grad school.
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So that was new for me.
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And that I think also added a whole new dimension to, to understanding what assessment is and
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how that, how that bears out.
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Interpersonally, it was fascinating and really.
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Yeah, I learned a lot from, from that as well.
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And then for a good chunk of my time at the lab, I was also going to interoperative procedures.
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So, I would go into the surgeries and do language tasks during direct cortical stimulation.
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So that would be while the, the surgery is happening in order to make sure that it's safe
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to remove certain areas.
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Mm-hmm.
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The neurosurgeon stimulates those areas and then tests, you know, can the person still repeat
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or can they still, you know, complete sentences, things like that?
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So, Eddie would have been doing the simulations while you were the one administering the language
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stimuli.
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Yeah, yeah, yeah.
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Or documenting it, usually both.
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And how long, so I've done, I've been, had the great honor of being in the room one time
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throughout one of Eddie's surgeries, which was a seven hour day on a Friday, one day,
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or a very memorable experience.
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Is that how it was for you?
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Like, you know, it was these very long days, like, um, we were usually not in there for
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the full duration of the surgery.
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You would often we'd sort of like huddle in either the sub-sterile room or up in the, the
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lab and then kind of try to rush down at the exact moments when it was kind of most useful
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for us to be there because I'm not sure if this was your experience, but there's a lot
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more people in the room during surgeries than I would have expected.
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Oh, yeah, there was about 20 people in the room.
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Exactly.
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Yeah, so especially when, you know, if you're coming with like a rig or speakers or a microphone
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stand, like, you don't want to be in there when you don't have to be because you don't
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want to be in other people's way.
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So we, yeah, we would do, I'm, when I say we, I'm talking about me and other people who
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were doing a drop at every search of different sorts.
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So, we would often come in around the time that the craniotomy was complete and, you know,
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the brain was exposed and then stay for the awake period of the surgery when they sort
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of like titrate the anesthetic to have the person be alert for the testing.
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And that'd be about half an hour is right.
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Yeah, it would, it would range, but yeah, usually I think around half an hour.
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And then sometimes we would stick around for, sometimes the actual like resection procedure
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if there was kind of ongoing monitoring during that.
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Or we would, you know, kind of pack up and leave as, you know, efficiently as we can to
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make sure we're, you know, letting the clinician's due their job.
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But yeah, I would say we were, we were in and around the operating room for seven hours,
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but we were probably only in the operating room for, you know, half an hour to an hour.
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Right.
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Yeah, waiting behind the things to come in and do our job and then get out of there.
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Uh-huh.
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I was just remembering the one that I, that I was present for about like an hour into
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it.
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This, this nurse, I think the senior nurse, like, you know, tapped me on the shoulder
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and, and pulled me outside and she was like, can you come outside and like, and then she's
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like, who are you and why are you here? (Laughter)
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And I was like, uh, Eddie invited me.
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And she was like, yeah, I also, I had done some operating room stuff at Penn when I was a research
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assistant there.
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I will say the people in the operating rooms in San Francisco are very kind and very welcoming
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of the, the vibe in San Francisco.
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That was not my experience.
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But I don't know only for that one, only for that one case, but yeah.
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Yeah, maybe I was just, uh, well, I would probably be holding a bunch of electronics so it seemed
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like I had a reason to be there. (Laughter)
349
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That's funny.
350
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Um, okay.
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So yeah, you're very much like embedded in this, in this project and, and doing the data
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collection in many different ways.
353
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Um, so, uh, let's talk about the paper, right?
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So it's called ‘Role for left dorsomedial prefrontal cortex in self-generated, but not externally
355
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cued language production’.
356
00:21:52,280 --> 00:21:54,280
Well, you really packed a lot into that title.
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Yeah.
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Yeah.
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And this is in your biology of language 2025.
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Just came out and, um, like we talked about, like I'm trying to do some episodes about
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papers that are in the journal, because I'm on the editorial board at the journal and I want
362
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it to succeed.
363
00:22:10,080 --> 00:22:15,600
Um, and this paper really struck me as one of the super interesting ones, one of many,
364
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um, but one that really caught my eye.
365
00:22:19,440 --> 00:22:28,760
Um, so it's about what you call the pre-SMA, um, which is not one of the most popular language
366
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areas.
367
00:22:29,760 --> 00:22:32,680
Um, so people might not be so familiar with it.
368
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So can you start by, um, telling us about what is the pre-SMA?
369
00:22:37,440 --> 00:22:38,440
Yeah.
370
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So it's in the medial frontal cortex.
371
00:22:41,040 --> 00:22:46,920
So, I think most images that we see in the neurobiology of language tend to be lateral, you tend
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to see like the, the side of the brain with the sylvian fissure everything.
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So, if you instead kind of pride the brain open at the longitudinal fissure, I guess you would
374
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see, uh, the medial surface and, um, it's in the, the most kind of, and, well, not the most
375
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anterior part, but the pretty anterior, um, part of the medial prefrontal cortex.
376
00:23:08,840 --> 00:23:14,720
So, um, if you have the SMA that's kind of starting at the central sulcus, um, so that
377
00:23:14,720 --> 00:23:17,000
stands for supplementary motor area.
378
00:23:17,000 --> 00:23:18,920
Yes, supplementary motor area.
379
00:23:18,920 --> 00:23:25,480
Um, it's basically in front of that, um, there's a delineation called the, um, the VCA line
380
00:23:25,480 --> 00:23:31,960
that kind of distinguishes them that's aligned with the anterior commissure and that area in
381
00:23:31,960 --> 00:23:35,160
front of the SMA is what's referred to as the pre-SMA.
382
00:23:35,160 --> 00:23:37,360
So the pre-Supplementary motor area.
383
00:23:37,360 --> 00:23:38,360
Okay.
384
00:23:38,360 --> 00:23:42,200
Um, and can you kind of, so you've kind of explained the, the relative, uh, some of the
385
00:23:42,200 --> 00:23:48,080
call location with respect to the SMA proper, um, what, and what, prior to your work, like,
386
00:23:48,080 --> 00:23:53,440
coming into it, like, what was generally known about the functional role of the SMA versus
387
00:23:53,440 --> 00:23:56,040
the pre-SMA, just kind of big picture?
388
00:23:56,040 --> 00:23:57,040
Yeah.
389
00:23:57,040 --> 00:24:04,200
So, generally, I think the SMA is more associated with, like, motor output, um, so some kind
390
00:24:04,200 --> 00:24:11,160
of, you know, connections with motor cortex and motor planning, um, things where if you
391
00:24:11,160 --> 00:24:16,520
were to lesion it, you would get, um, deficits in kind of movement or, or motor stuff.
392
00:24:16,520 --> 00:24:21,960
Um, whereas the pre-SMA seems to be more kind of abstract in what it works with.
393
00:24:21,960 --> 00:24:26,360
So it's more associated with, um, prefrontal cortex.
394
00:24:26,360 --> 00:24:29,000
It's less motor in terms of its connections.
395
00:24:29,000 --> 00:24:36,440
It, uh, seems to respond to less specific types of, um, tasks, uh, or, or different types
396
00:24:36,440 --> 00:24:37,920
of tasks, I should say.
397
00:24:37,920 --> 00:24:42,600
Uh, it seems to be working at a level that's not quite as directly tied to motor output
398
00:24:42,600 --> 00:24:47,040
and is more about either planning or decision making related to those.
399
00:24:47,040 --> 00:24:48,040
Okay.
400
00:24:48,040 --> 00:24:49,040
Great.
401
00:24:49,040 --> 00:24:54,760
Um, and, you know, I think the first person, I'm not sure if he was first, but like, the
402
00:24:54,760 --> 00:25:00,840
first prominent person to sort of relate these areas to language was Wilder Penfield.
403
00:25:00,840 --> 00:25:05,680
Um, do you think that he would, I mean, and was, do you think he was talking about SMA or
404
00:25:05,680 --> 00:25:08,080
pre-SMA in his, um, work?
405
00:25:08,080 --> 00:25:09,840
That's a good question.
406
00:25:09,840 --> 00:25:13,880
I'm trying, I, I remember an image that you're referring to, like, of the medial surface
407
00:25:13,880 --> 00:25:15,840
with the hatching over that area.
408
00:25:15,840 --> 00:25:16,840
Yeah.
409
00:25:16,840 --> 00:25:17,840
Um, yeah.
410
00:25:17,840 --> 00:25:23,800
I, if I remember correctly, the, the, the pre-SMA wasn't like given its own name
411
00:25:23,800 --> 00:25:25,960
until a little bit later than that.
412
00:25:25,960 --> 00:25:27,840
Am I, do you agree?
413
00:25:27,840 --> 00:25:28,840
I think I do.
414
00:25:28,840 --> 00:25:33,880
I mean, I, I'm not, um, I think he was talking about SMA, like, yeah, I think so.
415
00:25:33,880 --> 00:25:38,120
Um, and, and, you know, he noticed that when you, like, it was one of the three brain regions
416
00:25:38,120 --> 00:25:44,160
where if you stimulated it, you could cause, um, you know, kind of transient, um, aphasia
417
00:25:44,160 --> 00:25:45,160
or speech arrest, really.
418
00:25:45,160 --> 00:25:49,560
I mean, it's not strictly, not necessarily aphasia, but, yeah, speech arrest.
419
00:25:49,560 --> 00:25:50,560
So, yeah.
420
00:25:50,560 --> 00:25:55,040
You know, but I think, yeah, he's probably like really hitting on that motor, more posterior
421
00:25:55,040 --> 00:25:59,680
area, whereas you guys are talking about the area in front of that.
422
00:25:59,680 --> 00:26:04,960
Um, and so that area that's in front of, like, so the pre-SMA, like, is there much prior
423
00:26:04,960 --> 00:26:10,120
to your papers, there much in the language literature about that region?
424
00:26:10,120 --> 00:26:15,800
I have a couple of thoughts on that, uh, trans-cortical motor aphasia is, you know, like 1885,
425
00:26:15,800 --> 00:26:18,040
1886 is when it was first described.
426
00:26:18,040 --> 00:26:20,520
Um, and, but not with an anatomical.
427
00:26:20,520 --> 00:26:21,520
It's an anatomical basis.
428
00:26:21,520 --> 00:26:22,520
No, it's an anatomical basis.
429
00:26:22,520 --> 00:26:23,520
And in the time.
430
00:26:23,520 --> 00:26:24,520
Yeah.
431
00:26:24,520 --> 00:26:30,040
Um, I think the, the neuropsychology literature talks about this area a little bit more, um,
432
00:26:30,040 --> 00:26:35,760
when it comes to superior, um, medial front lesions that lead to what people might have
433
00:26:35,760 --> 00:26:41,480
called like a dis-executive syndrome or some kind of, uh, issue with, um, executive functioning
434
00:26:41,480 --> 00:26:46,840
that kind of ties into language, but isn't necessarily, um, specifically part of, like,
435
00:26:46,840 --> 00:26:47,840
the language apparatus.
436
00:26:47,840 --> 00:26:50,840
Mm-hmm.
437
00:26:50,840 --> 00:26:54,160
So it grew up there, um, it also, I think, do you still--
438
00:26:54,160 --> 00:26:57,920
And you cited a lot of papers by my Queensland colleague, Gail Robinson?
439
00:26:57,920 --> 00:26:58,920
Yes, I did.
440
00:26:58,920 --> 00:27:05,600
But, yeah, and she writes a lot about kind of distinctions between the, uh, medial frontal
441
00:27:05,600 --> 00:27:10,160
areas and lateral frontal areas, uh, and they're possible differential contributions to
442
00:27:10,160 --> 00:27:13,480
different types of language, uh, dysfunction.
443
00:27:13,480 --> 00:27:18,840
And, yeah, so she's written lots and lots of case studies about, um, people either after
444
00:27:18,840 --> 00:27:25,240
stroke or after a tumor resection, um, sometimes there's neurodegenerative conditions like PSP or
445
00:27:25,240 --> 00:27:27,080
or Parkinson's where this shows up.
446
00:27:27,080 --> 00:27:33,200
Um, and it's very tied to what she would call an energization, uh, deficit or what
447
00:27:33,200 --> 00:27:38,640
Alexander would have called an energization deficit as well, um, which is kind of about
448
00:27:38,640 --> 00:27:42,640
both initiating and sustaining a response over time.
449
00:27:42,640 --> 00:27:49,840
Um, that seems to be potentially domain general, not necessarily language specific, but certainly
450
00:27:49,840 --> 00:27:55,200
bears out in language and seems to be very tightly associated with those medial frontal
451
00:27:55,200 --> 00:27:56,200
areas.
452
00:27:56,200 --> 00:28:02,520
Um, and then there's, Luria wrote about dynamic aphasia, which is what, you know, we kind
453
00:28:02,520 --> 00:28:10,920
of end up mapping this concept onto the, in terms of the profile, uh, in the 1940s, I believe,
454
00:28:10,920 --> 00:28:16,480
and, Luria, my impression, I'd love to hear your thoughts on this.
455
00:28:16,480 --> 00:28:20,720
My impression is again that he's much more discussed among neuropsychologists than among,
456
00:28:20,720 --> 00:28:25,400
like, modern day study years of the neurobiology of language.
457
00:28:25,400 --> 00:28:26,920
Um, what are your thoughts?
458
00:28:26,920 --> 00:28:31,360
Oh, yeah, I think he's, um, like, criminally neglected by our field.
459
00:28:31,360 --> 00:28:32,360
Yeah.
460
00:28:32,360 --> 00:28:33,360
Yeah.
461
00:28:33,360 --> 00:28:34,360
Yeah.
462
00:28:34,360 --> 00:28:37,480
It's just like it's, it's very like, you know, just this whole stream of aphasiology
463
00:28:37,480 --> 00:28:41,240
that we kind of ignore that had like a lot of insights.
464
00:28:41,240 --> 00:28:42,240
Yeah.
465
00:28:42,240 --> 00:28:46,880
And it's always really interesting to kind of try and understand like how all of his concepts
466
00:28:46,880 --> 00:28:49,280
mapped on to like Western concepts.
467
00:28:49,280 --> 00:28:50,280
Right.
468
00:28:50,280 --> 00:28:51,280
Yeah.
469
00:28:51,280 --> 00:28:54,400
And I think there's a reasonably good correspondence between dynamic aphasia and transcortical
470
00:28:54,400 --> 00:28:58,520
motor aphasia, but like there's subtle differences in the understanding.
471
00:28:58,520 --> 00:28:59,520
Yeah.
472
00:28:59,520 --> 00:29:00,520
Right.
473
00:29:00,520 --> 00:29:01,520
Yeah.
474
00:29:01,520 --> 00:29:05,400
Um, so that is good for me to hear coming from you because I, when I started reading
475
00:29:05,400 --> 00:29:07,800
Luria, I was like, oh my gosh, this is also relevant.
476
00:29:07,800 --> 00:29:09,240
Why didn't I know this?
477
00:29:09,240 --> 00:29:13,000
And I think it might just be because have to blame your teachers.
478
00:29:13,000 --> 00:29:15,000
No, I wouldn't think like teachers.
479
00:29:15,000 --> 00:29:17,800
I would blame the fact that like Russia wasn't part of the United States.
480
00:29:17,800 --> 00:29:20,600
And so there was like just a different research tradition.
481
00:29:20,600 --> 00:29:24,320
And, um, I think some of his stuff didn't even get translated until the 70s.
482
00:29:24,320 --> 00:29:30,160
And there was already, you know, some dominant, uh, you know, schools of thinking going
483
00:29:30,160 --> 00:29:32,880
on with, you know, the Boston school and everything.
484
00:29:32,880 --> 00:29:39,840
So it kind of didn't match back up, but anyway, so he described dynamic aphasia back in the
485
00:29:39,840 --> 00:29:47,520
40s as, you know, pretty clearly this, uh, difference between language as kind of a function
486
00:29:47,520 --> 00:29:52,000
and language and practice when it comes to spontaneous speech or like this propositional
487
00:29:52,000 --> 00:29:53,240
part of language.
488
00:29:53,240 --> 00:29:58,000
And, uh, that's pretty much exactly what we were observing in these patients that we're
489
00:29:58,000 --> 00:29:59,000
going to talk about soon.
490
00:29:59,000 --> 00:30:00,000
Yeah.
491
00:30:00,000 --> 00:30:01,000
Okay.
492
00:30:01,000 --> 00:30:03,000
I wasn't familiar with the term.
493
00:30:03,000 --> 00:30:08,600
Um, so it was a lot of kind of learning backwards after I had observed something, uh, that
494
00:30:08,600 --> 00:30:11,080
it had actually existed for quite some time.
495
00:30:11,080 --> 00:30:12,080
Yeah.
496
00:30:12,080 --> 00:30:17,640
Um, and then another person that, um, you cite that's talks about this area is Jeff
497
00:30:17,640 --> 00:30:24,160
Binder, um, with, um, in particular, his 2009, um, meta-analysis, which I find to be a
498
00:30:24,160 --> 00:30:25,600
really useful paper.
499
00:30:25,600 --> 00:30:27,800
Um, so what does he say about this area?
500
00:30:27,800 --> 00:30:31,880
Yeah, I believe he says it's involved in sort of semantic selection.
501
00:30:31,880 --> 00:30:34,040
Um, this is from the meta-analysis, right?
502
00:30:34,040 --> 00:30:37,760
So that's, you know, all these different studies about semantics and, you know, various
503
00:30:37,760 --> 00:30:42,960
different task forms, uh, and that mediocre, prefrontal area does show up.
504
00:30:42,960 --> 00:30:49,360
Um, and he also mentions that it's kind of quite overlooked in language literature overall.
505
00:30:49,360 --> 00:30:55,160
Um, but, yeah, I think it's about retrieving semantic concepts and kind of, um, deciding
506
00:30:55,160 --> 00:31:00,920
which ones are potentially relevant for the situation at hand to, to use.
507
00:31:00,920 --> 00:31:02,240
Okay, great.
508
00:31:02,240 --> 00:31:07,520
Um, yes, so there's like kind of definitely, um, a back drop in the literature, like even
509
00:31:07,520 --> 00:31:11,800
though this is not an area that's kind of, you know, usually talked about as being one
510
00:31:11,800 --> 00:31:15,720
of the major language areas, there's definitely like data out there that suggests that it
511
00:31:15,720 --> 00:31:17,960
does play some kind of a role.
512
00:31:17,960 --> 00:31:24,760
Um, and then you, um, find yourself with, um, this very unique patient population.
513
00:31:24,760 --> 00:31:29,120
Um, and you notice some things with patients who have lesions to this area.
514
00:31:29,120 --> 00:31:33,240
So in, in your paper, you start the way that you presented it, I think is very effective,
515
00:31:33,240 --> 00:31:37,360
which is that you start with this case, vignette before you get into all the analyses.
516
00:31:37,360 --> 00:31:40,360
Um, so I thought that might also be a good way for us to talk about it.
517
00:31:40,360 --> 00:31:48,760
So can you tell me about the, the case of, um, EK, I guess, um, who's not anonymous, um,
518
00:31:48,760 --> 00:31:52,520
and just tell me about what, what you, um, observed with, with him.
519
00:31:52,520 --> 00:31:53,520
Yeah.
520
00:31:53,520 --> 00:31:58,000
Um, as a side note, I actually had initially written it as something like EK or Dr K,
521
00:31:58,000 --> 00:32:00,880
and he specifically wrote to me and asked like, can you just use my name?
522
00:32:00,880 --> 00:32:02,400
This makes me feel really weird.
523
00:32:02,400 --> 00:32:06,320
So, so if it's okay with you, I'll go with Edwin.
524
00:32:06,320 --> 00:32:08,960
Yeah, yeah, you can go with it, however you like.
525
00:32:08,960 --> 00:32:09,960
Yeah.
526
00:32:09,960 --> 00:32:16,480
Um, but yeah, so, uh, I met Edwin before his surgery in the pre-op appointment, um, and
527
00:32:16,480 --> 00:32:22,720
he was multi-lingual, no, he spoke Cantonese as well as English, possibly some other languages
528
00:32:22,720 --> 00:32:23,720
as well.
529
00:32:23,720 --> 00:32:29,400
Um, so we were talking during the evaluation, we used the quick aphasia battery, and afterwards
530
00:32:29,400 --> 00:32:34,480
we did a little brief multi-lingualism screener and he had a lot of opinions about it, um,
531
00:32:34,480 --> 00:32:40,800
because his work, he's a, uh, at the time was a student studying linguistics at the PhD
532
00:32:40,800 --> 00:32:44,080
level, um, specifically like language revitalization.
533
00:32:44,080 --> 00:32:48,240
So, he had a lot of, you know, opinions, and I remember just thinking it was really cool
534
00:32:48,240 --> 00:32:50,200
and interesting to talk to him.
535
00:32:50,200 --> 00:32:58,200
And, you know, we were talking at a, a pretty high level about language and, um, yeah, and
536
00:32:58,200 --> 00:33:04,360
then two days later, I go to see him post-op and I was sometimes, I think, so his language
537
00:33:04,360 --> 00:33:06,000
would have been normal pre-op?
538
00:33:06,000 --> 00:33:10,280
Yes, it, yeah, I, I believe just 10 out of 10 flying colors across the board.
539
00:33:10,280 --> 00:33:14,280
And, and, and so, well, yes, so why is he getting a chunk of his brain taken out?
540
00:33:14,280 --> 00:33:23,440
Yeah, so he had, uh, Astrocytoma in his medial frontal cortex, uh, which they, his life
541
00:33:23,440 --> 00:33:29,800
was going on pretty standardly until he was on a Zoom call with his PhD advisor actually,
542
00:33:29,800 --> 00:33:33,960
um, and had a seizure in the middle of the Zoom call, uh, which I believe was his first
543
00:33:33,960 --> 00:33:34,960
ever seizure.
544
00:33:34,960 --> 00:33:38,200
Um, first and I think, I think from your description.
545
00:33:38,200 --> 00:33:39,200
I think that's true.
546
00:33:39,200 --> 00:33:40,200
Yeah.
547
00:33:40,200 --> 00:33:48,840
Um, and, uh, yes, so then he went to, he was already in the San Francisco area, um, went to
548
00:33:48,840 --> 00:33:51,760
UCSF and, you know, they found a mass on imaging.
549
00:33:51,760 --> 00:33:57,840
So he's going in for, um, resective surgery to have that area removed, essentially to have
550
00:33:57,840 --> 00:33:58,840
the tumor taken out.
551
00:33:58,840 --> 00:33:59,840
Okay.
552
00:33:59,840 --> 00:34:05,200
So, yeah, so pre-op is where I met him the day before that appointment.
553
00:34:05,200 --> 00:34:10,960
Um, and we do language assessments just to make sure everything is, uh, we have a basis of
554
00:34:10,960 --> 00:34:14,400
comparison really for what we see after the surgery.
555
00:34:14,400 --> 00:34:19,200
And yeah, I believe just tens across the board on the quick aphasia battery.
556
00:34:19,200 --> 00:34:24,760
I think he had described some word finding issues, but, uh, we were not picking them up with
557
00:34:24,760 --> 00:34:25,760
the quick aphasia battery.
558
00:34:25,760 --> 00:34:28,920
I think he was largely within normal limits.
559
00:34:28,920 --> 00:34:29,920
Mm-hmm.
560
00:34:29,920 --> 00:34:31,160
So that was pretty up.
561
00:34:31,160 --> 00:34:32,920
Um, hmm.
562
00:34:32,920 --> 00:34:39,960
And then post-op I, I guess we should say is the, what was taken at, what was resected?
563
00:34:39,960 --> 00:34:43,960
And there's a very nice picture, there's a very nice picture of it in the, you know, one
564
00:34:43,960 --> 00:34:47,360
that this, this is what you, this is an audio format.
565
00:34:47,360 --> 00:34:49,360
So can you describe?
566
00:34:49,360 --> 00:34:54,480
Um, well, essentially the area I was describing before, just in front of the SMA, uh, the
567
00:34:54,480 --> 00:34:58,880
pre-SMA is what is removed in, um, in this patient Edwin.
568
00:34:58,880 --> 00:35:03,560
So, um, it's pretty, I would say pretty specific to that area, it doesn't go too much into anterior
569
00:35:03,560 --> 00:35:06,080
interior, it doesn't go too much inferior.
570
00:35:06,080 --> 00:35:11,160
It's pretty much just, I would say our region of interest, um, although it became interest
571
00:35:11,160 --> 00:35:12,640
after the fact.
572
00:35:12,640 --> 00:35:13,640
Yes, exactly.
573
00:35:13,640 --> 00:35:14,640
Um, okay.
574
00:35:14,640 --> 00:35:20,480
And then how does he do, um, sorry, my dog's decided that she needs to enter this room,
575
00:35:20,480 --> 00:35:22,280
but that's not going to happen.
576
00:35:22,280 --> 00:35:27,520
Um, what, so then what does he, uh, how does he look when you meet him again a few days
577
00:35:27,520 --> 00:35:28,520
later?
578
00:35:28,520 --> 00:35:33,240
So when I first walked into the room, I was expecting maybe we'd have a pretty similar
579
00:35:33,240 --> 00:35:35,800
interaction to the one we had beforehand.
580
00:35:35,800 --> 00:35:39,800
Um, sometimes I would sort of make predictions like, okay, based on the reception location, what
581
00:35:39,800 --> 00:35:40,800
would I expect?
582
00:35:40,800 --> 00:35:45,840
Uh, and I didn't really have a ton of expectations about this particular area.
583
00:35:45,840 --> 00:35:51,320
So, um, and oftentimes we would see people after surgery and, you know, in about 30% of cases,
584
00:35:51,320 --> 00:35:52,760
they're still within normal limits.
585
00:35:52,760 --> 00:35:55,560
So I was thinking maybe that would be the case with him.
586
00:35:55,560 --> 00:35:58,080
Uh, um, I'm only first started interacting.
587
00:35:58,080 --> 00:36:00,320
I was still under that impression.
588
00:36:00,320 --> 00:36:01,640
I said, like, hey, how are you?
589
00:36:01,640 --> 00:36:03,320
You said, good, good to see you.
590
00:36:03,320 --> 00:36:05,440
You know, that kind of, that kind of thing.
591
00:36:05,440 --> 00:36:10,200
Um, but then we start going into the quick aphasia battery, which one of the first tasks
592
00:36:10,200 --> 00:36:14,560
is this connected speech task, which is essentially just, you know, asking someone to speak
593
00:36:14,560 --> 00:36:18,040
spontaneously about some experience in their life.
594
00:36:18,040 --> 00:36:21,880
In this case, it might be the surgery or it might be like a story about something from
595
00:36:21,880 --> 00:36:23,080
their past.
596
00:36:23,080 --> 00:36:29,920
Um, and I noticed pretty quickly that he was almost not communicating at all.
597
00:36:29,920 --> 00:36:37,040
Um, he was trying to and he had, uh, you know, he would respond kind of with the first bit
598
00:36:37,040 --> 00:36:38,560
of an answer to a question.
599
00:36:38,560 --> 00:36:40,480
So I would say, like, what do you remember from surgery?
600
00:36:40,480 --> 00:36:47,400
And he'd say, well, I remember waking up and then it would be long pauses.
601
00:36:47,400 --> 00:36:52,880
And then I think I did a picture association task, you know, this very kind of like,
602
00:36:52,880 --> 00:36:56,920
technical language is still, um, easily being retrieved.
603
00:36:56,920 --> 00:37:05,160
Um, but at a rate and, uh, you know, a sort of degree of unusual pausing that you would
604
00:37:05,160 --> 00:37:07,880
not expect from somebody without a language impairment.
605
00:37:07,880 --> 00:37:12,440
So at that point, I thought, okay, so probably the rest of the evaluation is going to go much
606
00:37:12,440 --> 00:37:13,440
more like this.
607
00:37:13,440 --> 00:37:18,000
Like I think he's probably quite anomic, um, I'm expecting there will be difficulties
608
00:37:18,000 --> 00:37:20,720
naming pictures, difficulties describing things.
609
00:37:20,720 --> 00:37:22,720
Um, yeah.
610
00:37:22,720 --> 00:37:28,280
So his conversational speech was like super sparse and just like he couldn't really generate anything
611
00:37:28,280 --> 00:37:29,940
in answer to your questions.
612
00:37:29,940 --> 00:37:30,940
Right.
613
00:37:30,940 --> 00:37:31,940
Exactly.
614
00:37:31,940 --> 00:37:32,940
All of them.
615
00:37:32,940 --> 00:37:40,600
Um, um, um, um, um, um, um, um, uh, yeah, exactly.
616
00:37:40,600 --> 00:37:44,280
Um, and it, it didn't seem like it was for any lack of trying.
617
00:37:44,280 --> 00:37:48,940
I mean, he, he was definitely working towards communicating with me, you know, making efforts
618
00:37:48,940 --> 00:37:54,900
to communicate with me, but just kind of nothing, nothing coming up to, you know, to be described
619
00:37:54,900 --> 00:37:55,900
in words.
620
00:37:55,900 --> 00:38:00,860
Um, but on the rest of the evaluation, he actually still did pretty much perfectly.
621
00:38:00,860 --> 00:38:03,220
So he could name every picture.
622
00:38:03,220 --> 00:38:12,620
Uh, he could, um, describe the, the images of, you know, that illicit grammatical constructions.
623
00:38:12,620 --> 00:38:15,180
He could do the motor speech tasks.
624
00:38:15,180 --> 00:38:19,300
He could say catastrophe, catastrophe, catastrophe, which is like a notoriously difficult word
625
00:38:19,300 --> 00:38:21,140
if you have motor speech issues.
626
00:38:21,140 --> 00:38:27,340
Um, and, you know, if I had only seen the last two thirds of the evaluation, I'd probably
627
00:38:27,340 --> 00:38:32,780
say this person has normal language, uh, but it was really just that spontaneously generated
628
00:38:32,780 --> 00:38:36,260
portion that was completely different.
629
00:38:36,260 --> 00:38:39,980
And that was very striking to me.
630
00:38:39,980 --> 00:38:40,980
So yeah.
631
00:38:40,980 --> 00:38:46,940
And by the way, I just want to say like, um, listeners should check out the paper because
632
00:38:46,940 --> 00:38:52,420
your figure one A is like an extremely nice figure because it kind of encapsulates everything
633
00:38:52,420 --> 00:38:55,780
about this paper in one neat little panel.
634
00:38:55,780 --> 00:39:00,340
It's got a picture of Edwin's brain with the missing region, like with the nice dotted
635
00:39:00,340 --> 00:39:01,340
outline around it.
636
00:39:01,340 --> 00:39:03,980
And it's got four sections from the quick aphasia battery.
637
00:39:03,980 --> 00:39:08,460
One is repetition and you get to see him repeating like a really complicated sentence.
638
00:39:08,460 --> 00:39:12,620
And these confrontation naming you get to see like these rather tricky low frequency
639
00:39:12,620 --> 00:39:17,780
lexical items that he retrieves speech motor, you get to see him saying catastrophe, catastrophe.
640
00:39:17,780 --> 00:39:21,420
And then the other corner is self-generated speech and it's like, what do you remember from
641
00:39:21,420 --> 00:39:22,500
the surgery?
642
00:39:22,500 --> 00:39:32,460
Um, so I work up, um, I, um, size, um, and it just really makes that like dissociation super
643
00:39:32,460 --> 00:39:35,420
clear, um, and encapsulates.
644
00:39:35,420 --> 00:39:36,900
So nice, nice figure.
645
00:39:36,900 --> 00:39:37,900
It really should check it out.
646
00:39:37,900 --> 00:39:41,380
Um, now what were you going to say next?
647
00:39:41,380 --> 00:39:51,500
Um, yeah, I guess I would say that well, one of the first things I thought is this is surprising,
648
00:39:51,500 --> 00:39:55,540
but I actually, it seems a little familiar to me and I remembered somebody I'd seen earlier
649
00:39:55,540 --> 00:40:02,500
that year who actually had sort of a similar presentation, um, after surgery, although slightly
650
00:40:02,500 --> 00:40:09,420
less, um, kind of involved in the, the assessment.
651
00:40:09,420 --> 00:40:15,940
So, I remembered her evaluation and then I looked at her imaging and I was like, oh, that was
652
00:40:15,940 --> 00:40:16,940
the same place.
653
00:40:16,940 --> 00:40:19,980
Actually, I think that was almost exactly the same location.
654
00:40:19,980 --> 00:40:26,060
Um, so it definitely kind of like sparked a, an awareness in me that this might be a pattern
655
00:40:26,060 --> 00:40:28,780
and not just an interesting case.
656
00:40:28,780 --> 00:40:35,500
Uh, uh, and then I did a follow up evaluation with, uh, Edwin a month later and he was essentially
657
00:40:35,500 --> 00:40:36,900
back to his baseline.
658
00:40:36,900 --> 00:40:43,700
Um, so he could speak in great detail about the experience he had doing that evaluation
659
00:40:43,700 --> 00:40:48,300
and kind of realizing that he had difficulty communicating even though it didn't really feel
660
00:40:48,300 --> 00:40:50,140
internally like he should.
661
00:40:50,140 --> 00:40:55,620
Um, so he gave a lot of really interesting insights, which he then brought up as a supplementary,
662
00:40:55,620 --> 00:40:57,740
um, material for this paper.
663
00:40:57,740 --> 00:41:04,740
Um, that I thought were for a variety of reasons just shed so much light on what it's actually
664
00:41:04,740 --> 00:41:08,300
like from the perspective of the person experiencing this.
665
00:41:08,300 --> 00:41:12,500
And, uh, yeah, I felt very strongly that he should be involved in, in writing this paper
666
00:41:12,500 --> 00:41:16,580
up because it was so, you have to have active.
667
00:41:16,580 --> 00:41:19,540
And so yeah, you've included him as a co-author and I love that.
668
00:41:19,540 --> 00:41:23,940
Like, you know, that, I mean, that's really like bringing the people that, whose brains we
669
00:41:23,940 --> 00:41:30,300
study into the process, um, even more richly than, you know, we would normally be like putting
670
00:41:30,300 --> 00:41:32,180
them on advisory boards and stuff.
671
00:41:32,180 --> 00:41:36,660
I mean, I love the idea of like, you know, one of the participants being a co-author.
672
00:41:36,660 --> 00:41:42,060
I mean, and what would you say was the most like, what were the biggest insights that you
673
00:41:42,060 --> 00:41:47,580
got from his description of what it had been like to be in this, um, ultimately transient
674
00:41:47,580 --> 00:41:49,580
aphasia?
675
00:41:49,580 --> 00:41:50,580
Yeah.
676
00:41:50,580 --> 00:41:53,380
I think two things stuck out to me.
677
00:41:53,380 --> 00:41:59,580
One was that metaphor about, uh, feeling, I should I direct readers to this metaphor in
678
00:41:59,580 --> 00:42:01,180
the paper or should I read it out loud?
679
00:42:01,180 --> 00:42:02,980
It says, uh, yeah, essentially.
680
00:42:02,980 --> 00:42:03,980
Would it be a life?
681
00:42:03,980 --> 00:42:04,980
Yeah.
682
00:42:04,980 --> 00:42:12,180
So, he has this metaphor about, um, trying to describe what it was like to retrieve the
683
00:42:12,180 --> 00:42:13,660
words that he couldn't get.
684
00:42:13,660 --> 00:42:17,540
And he said it was as if I was a farmer and all the words were buried beneath the soil.
685
00:42:17,540 --> 00:42:21,500
I was constantly trying to find that one specific word in the field that contained all these different
686
00:42:21,500 --> 00:42:24,140
words, except I didn't know where that word was.
687
00:42:24,140 --> 00:42:28,580
And so, I kept on digging and digging, just trying to locate that one word to no avail.
688
00:42:28,580 --> 00:42:37,100
So yeah, a, just like beautifully written, um, and b, I think sometimes people would ask
689
00:42:37,100 --> 00:42:41,300
me how do you know this wasn't just a straight up cognitive, like he just didn't, wasn't thinking
690
00:42:41,300 --> 00:42:42,860
anything, didn't have anything to say.
691
00:42:42,860 --> 00:42:47,420
And it's just very apparent when you read the supplementary materials that there was lots
692
00:42:47,420 --> 00:42:51,100
and lots and lots of very active and insightful thought happening.
693
00:42:51,100 --> 00:42:54,500
And it was just a matter of kind of bringing it to the level where it could be expressed
694
00:42:54,500 --> 00:42:56,780
in words that was failing.
695
00:42:56,780 --> 00:43:00,260
Um, so I think that really stuck out to me.
696
00:43:00,260 --> 00:43:05,100
Uh, I also think there's a moment where someone says he was struggling with lexical retrieval,
697
00:43:05,100 --> 00:43:09,260
but not with the word lexical retrieval, not with retrieving the brain retrieval.
698
00:43:09,260 --> 00:43:10,620
Um, you know, he's lots of linguists.
699
00:43:10,620 --> 00:43:12,100
That was one of his linguist friends, right?
700
00:43:12,100 --> 00:43:13,100
Yeah, exactly.
701
00:43:13,100 --> 00:43:17,380
Um, so I think that's, uh, a, just kind of key.
702
00:43:17,380 --> 00:43:24,300
And b, uh, gets at this, um, you know, interesting dissociation between like, what is it like
703
00:43:24,300 --> 00:43:28,940
to try to retrieve words in context versus to just have specialized language that for whatever
704
00:43:28,940 --> 00:43:31,940
reason is like at the tip of your tongue all the time, especially when you're around your
705
00:43:31,940 --> 00:43:33,620
linguist friends, right?
706
00:43:33,620 --> 00:43:40,780
Um, and then another thing that stuck out to me actually was, um, he says something about
707
00:43:40,780 --> 00:43:47,500
appreciating when other people would fill in silences with stories or with, uh, attempts to kind
708
00:43:47,500 --> 00:43:53,100
of help them come up with the words he was thinking of, um, which I know at times, at least in
709
00:43:53,100 --> 00:43:57,900
sort of more therapeutic contexts, you're instructed to just give people time and like, not
710
00:43:57,900 --> 00:44:02,020
jump in and let them get to their own, you know, get to the words when they come.
711
00:44:02,020 --> 00:44:05,980
Um, and I think the fact that this was transient in his case might have a lot to do with this
712
00:44:05,980 --> 00:44:11,540
because he wasn't necessarily, you know, living for years and years with people jumping in all
713
00:44:11,540 --> 00:44:12,540
the time.
714
00:44:12,540 --> 00:44:16,940
Um, but I did think that was very interesting from sort of an interpersonal perspective that,
715
00:44:16,940 --> 00:44:21,820
uh, helping someone out is okay, um, if they're, yeah.
716
00:44:21,820 --> 00:44:27,020
I think, I think that there's, I think there's a really, so situationally dependent, like
717
00:44:27,020 --> 00:44:31,500
when to jump in and when to give space, um, when talking to people with aphasia.
718
00:44:31,500 --> 00:44:36,780
And I think that a, like a great, like a great, like a great communicator with people with
719
00:44:36,780 --> 00:44:41,980
aphasia gets this real sense of like exactly how to pull that, when to pull back and when
720
00:44:41,980 --> 00:44:47,020
to go forward with that, you know, I think that's, yeah, just something that comes with time.
721
00:44:47,020 --> 00:44:49,020
Yeah, yeah.
722
00:44:49,020 --> 00:44:50,020
Yeah.
723
00:44:50,020 --> 00:44:59,700
Um, okay, so you, you kind of saw the, this very unique, aphasia, you, you realized had
724
00:44:59,700 --> 00:45:04,460
that aha moment where you connected it to another individual that you'd seen and looked at her
725
00:45:04,460 --> 00:45:07,740
scan and found that they had the same brain area.
726
00:45:07,740 --> 00:45:12,780
And so, you probably thought at that point, oh, I could, I could, I should write a paper.
727
00:45:12,780 --> 00:45:18,180
Um, and, you know, being a cognitive neuroscientist, you didn't just stick to anecdotes, um, and case
728
00:45:18,180 --> 00:45:20,540
studies, um, you did an analysis.
729
00:45:20,540 --> 00:45:28,540
So can you tell us, um, how you decided to quantify, um, this disproportionate impairment
730
00:45:28,540 --> 00:45:31,940
of spontaneous speech that was the hallmark of these cases?
731
00:45:31,940 --> 00:45:32,940
Yeah.
732
00:45:32,940 --> 00:45:39,980
So we, we used, so we were using two different evaluations at different times in the history
733
00:45:39,980 --> 00:45:40,980
of this lab.
734
00:45:40,980 --> 00:45:45,860
So like I said, these types of data were collected for, um, I believe it's like almost 15 years
735
00:45:45,860 --> 00:45:51,980
at this point that this, uh, pre-immediate post and, uh, one month post data set has been
736
00:45:51,980 --> 00:45:52,980
acquired.
737
00:45:52,980 --> 00:46:01,580
Um, the self-generated speech deficit felt like it was most captured, in connected speech
738
00:46:01,580 --> 00:46:04,740
because that's kind of the only time you can observe it.
739
00:46:04,740 --> 00:46:11,300
Um, so for the, the lab that scoring maps on to fluency, basically, there's a fluency
740
00:46:11,300 --> 00:46:19,340
rating that's kind of clinician, um, determined for when I asked spontaneous questions, um, that
741
00:46:19,340 --> 00:46:22,620
require spontaneous speeches and answer.
742
00:46:22,620 --> 00:46:27,740
You sort of rate from, you know, zero to 10, like how, how fluent did that sound?
743
00:46:27,740 --> 00:46:32,100
And there are, you know, thoughts of thoughts about whether that is an ordinal scale or, you
744
00:46:32,100 --> 00:46:33,100
know, um, yeah.
745
00:46:33,100 --> 00:46:34,100
Okay.
746
00:46:34,100 --> 00:46:35,100
So, yeah.
747
00:46:35,100 --> 00:46:36,100
So, yeah.
748
00:46:36,100 --> 00:46:39,580
So the earlier patients were tested on the web or Western or phasor battery and for them,
749
00:46:39,580 --> 00:46:46,620
you use the fluency scale, which is a truly horrible scale that I really love like, I
750
00:46:46,620 --> 00:46:49,860
love teaching it to students and tearing it apart and like help.
751
00:46:49,860 --> 00:46:54,140
I think that like, when I teach students about all the reasons why the web fluency scale is
752
00:46:54,140 --> 00:46:58,980
bad, it, it really gives them insights about assessment and like what an assessment should
753
00:46:58,980 --> 00:47:01,180
be and shouldn't be, but all, but I'll not say it.
754
00:47:01,180 --> 00:47:03,220
I understand why you chose it from your data.
755
00:47:03,220 --> 00:47:04,500
That's what you had.
756
00:47:04,500 --> 00:47:06,900
Um, and it doesn't make sense.
757
00:47:06,900 --> 00:47:07,900
Yeah.
758
00:47:07,900 --> 00:47:08,900
Right.
759
00:47:08,900 --> 00:47:09,900
Yeah.
760
00:47:09,900 --> 00:47:11,900
And then at some point, I convinced Eddie to switch over to the quick phasor battery.
761
00:47:11,900 --> 00:47:14,020
So the second half of your data set would be that.
762
00:47:14,020 --> 00:47:15,940
So what did you do with those patients?
763
00:47:15,940 --> 00:47:19,940
Yeah.
764
00:47:19,940 --> 00:47:25,620
So we used the reduced, reduced rate, reduced length and overall communication impairment,
765
00:47:25,620 --> 00:47:30,820
ratings from the spontaneous speech, connected speech part of the quick phasor battery because
766
00:47:30,820 --> 00:47:38,260
it kind of captured the elements that we were most interested in studying from the perspective
767
00:47:38,260 --> 00:47:44,180
of like spontaneous speech that is, you know, sounds unnaturally slow and unnaturally kind
768
00:47:44,180 --> 00:47:49,540
of without content, basically without just there isn't much of it, the sparseness of the
769
00:47:49,540 --> 00:47:51,540
spontaneous speech.
770
00:47:51,540 --> 00:47:58,100
So we took the average of those three ratings and used those as something to map this specific
771
00:47:58,100 --> 00:48:04,100
issue generating speech spontaneously and independently as captured through the connected
772
00:48:04,100 --> 00:48:05,100
speech questions.
773
00:48:05,100 --> 00:48:06,100
Cool.
774
00:48:06,100 --> 00:48:07,100
Yeah.
775
00:48:07,100 --> 00:48:08,100
So, yeah.
776
00:48:08,100 --> 00:48:12,140
So, you've kind of basically with the two different batteries you've in each case got a mechanism
777
00:48:12,140 --> 00:48:18,620
for deriving a scalar number that's that quantifies their, you know, difficulty generating
778
00:48:18,620 --> 00:48:21,940
spontaneous speech.
779
00:48:21,940 --> 00:48:25,140
And yeah, like it makes, it all, it makes plenty of sense to me how you did it with the
780
00:48:25,140 --> 00:48:27,140
data, the data set that you had.
781
00:48:27,140 --> 00:48:28,620
I think that's always a challenge, right?
782
00:48:28,620 --> 00:48:31,860
It's like, you know, we've got this inside this thing that we want to describe and it's
783
00:48:31,860 --> 00:48:33,100
like, well, how do we quantify it?
784
00:48:33,100 --> 00:48:35,700
So that's how you quantified it.
785
00:48:35,700 --> 00:48:38,260
And then you related it to their lesions. 786
00:48:38,260 --> 00:48:41,140
So can you talk about how you did that?
787
00:48:41,140 --> 00:48:42,140
Yeah.
788
00:48:42,140 --> 00:48:46,580
So this was with a voxel based lesion symptom mapping, which you are intimately familiar
789
00:48:46,580 --> 00:48:48,260
with.
790
00:48:48,260 --> 00:48:56,820
And so, this essentially takes the integrity of a given voxel in the brain and checks if
791
00:48:56,820 --> 00:49:01,260
there is a difference between the behavior of people who do or don't have that voxel
792
00:49:01,260 --> 00:49:03,740
as part of their lesion.
793
00:49:03,740 --> 00:49:06,900
So it does that across all of the voxels in the brain.
794
00:49:06,900 --> 00:49:13,640
And then what results is a map of the voxels where those differences are pronounced, the
795
00:49:13,640 --> 00:49:17,100
differences in a behavior given whether or not there's a lesion there.
796
00:49:17,100 --> 00:49:23,460
So, in our case, we use that spontaneous speech measure, the self-
generated speech measure
797
00:49:23,460 --> 00:49:28,180
that comes from the WAB and the QAB as our behavior of interest.
798
00:49:28,180 --> 00:49:35,460
And then we included overall QAB score or AQ as the, as a covariate.
799
00:49:35,460 --> 00:49:41,820
So, we can kind of account for the fact that this thing is going to be low while the overall
800
00:49:41,820 --> 00:49:44,180
score is high.
801
00:49:44,180 --> 00:49:50,020
And we also co-variate out whether a proxy of speech was present or not because the presentation
802
00:49:50,020 --> 00:49:52,780
we were interested in was specifically not a motor speech presentation.
803
00:49:52,780 --> 00:49:57,460
Like that was not the reason behind the diminished output.
804
00:49:57,460 --> 00:50:06,340
So yeah, we did VLSM and we found this really clean pre-SMA region of interest that's in
805
00:50:06,340 --> 00:50:08,780
the figure, figure two of the paper.
806
00:50:08,780 --> 00:50:10,780
Yeah, figure two A.
807
00:50:10,780 --> 00:50:11,780
Yeah, figure two A.
808
00:50:11,780 --> 00:50:12,780
It's very clean.
809
00:50:12,780 --> 00:50:13,780
It's very nice.
810
00:50:13,780 --> 00:50:16,940
Yeah, it's super, super clean.
811
00:50:16,940 --> 00:50:21,420
And then we did the same thing with multivariate lesion symptom mapping, which is this kind of
812
00:50:21,420 --> 00:50:27,140
newer version of this type of analysis that instead of treating each voxel independently,
813
00:50:27,140 --> 00:50:32,380
it kind of uses them all as part of one big model and back projects onto each voxel like
814
00:50:32,380 --> 00:50:36,860
the weight that it seems to have on the outcome of the behavior.
815
00:50:36,860 --> 00:50:39,740
And they're very, very similar in their findings.
816
00:50:39,740 --> 00:50:40,740
So that is.
817
00:50:40,740 --> 00:50:46,660
Yeah, as has been the case in I think every MLSM study that's been done.
818
00:50:46,660 --> 00:50:50,980
And I think it's kind of mysterious as to why it's so similar when like conceptually
819
00:50:50,980 --> 00:50:53,780
it seems so much better like MLSM.
820
00:50:53,780 --> 00:50:55,820
Yeah, but it just always gets the same result.
821
00:50:55,820 --> 00:51:02,140
And you obviously had used MLSM in your dissertation as well, so it made sense that you.
822
00:51:02,140 --> 00:51:04,380
Yeah, although for a totally different purpose.
823
00:51:04,380 --> 00:51:08,540
Yeah, it was about the outcome not about mapping the lesion base.
824
00:51:08,540 --> 00:51:10,740
True, true.
825
00:51:10,740 --> 00:51:17,380
And maybe MLSM is actually really useful for outcome prediction, whereas for like leisure
826
00:51:17,380 --> 00:51:22,100
localize it, like behavior, like lesions into mapping, it actually kind of tends to just
827
00:51:22,100 --> 00:51:25,620
give the same results you might get from VLSM.
828
00:51:25,620 --> 00:51:29,500
Yeah, I think there might be differences between whether there's like a particular brain
829
00:51:29,500 --> 00:51:32,860
area that you suspect is involved versus a network of brain areas.
830
00:51:32,860 --> 00:51:37,260
Sometimes MLSM might be better for that, but in principle, but has anybody ever shown
831
00:51:37,260 --> 00:51:38,260
it?
832
00:51:38,260 --> 00:51:43,700
Ivanova has a paper where she kind of talks about it, but I think she is of
833
00:51:43,700 --> 00:51:46,860
the same opinion as us, like largely it's going to be the same.
834
00:51:46,860 --> 00:51:47,860
Yeah.
835
00:51:47,860 --> 00:51:49,740
Okay, so that's nice.
836
00:51:49,740 --> 00:51:53,100
So yeah, it replicates within MSLM, but and it's super clean.
837
00:51:53,100 --> 00:51:58,260
And then you have this one last analysis where you look at the relative risk kind of this
838
00:51:58,260 --> 00:52:03,980
sort of almost like a chi square type analysis of like having this pre-SMA damage and having
839
00:52:03,980 --> 00:52:06,940
this behavioral manifestation, this unique kind of aphasia.
840
00:52:06,940 --> 00:52:09,580
So what do you see there in your data set?
841
00:52:09,580 --> 00:52:16,700
Yeah, so basically, we looked at people who did have the resection and either did or didn't
842
00:52:16,700 --> 00:52:22,900
have the spontaneous speech deficit or people who did have the spontaneous speech deficit.
843
00:52:22,900 --> 00:52:24,500
And either did or didn't have the resection.
844
00:52:24,500 --> 00:52:26,300
Those were kind of the conditions of interest.
845
00:52:26,300 --> 00:52:35,020
So yeah, we find that you're basically if you have this deficit, you're 15 times more
846
00:52:35,020 --> 00:52:42,460
likely to have had this resection, that's a very kind of again, clear result.
847
00:52:42,460 --> 00:52:47,260
And I think what's kind of interesting too is if you look at figure three A versus figure
848
00:52:47,260 --> 00:52:51,940
three B, most of the people who had this resection and didn't have this deficit just kind
849
00:52:51,940 --> 00:52:53,220
of didn't have a deficit.
850
00:52:53,220 --> 00:52:56,020
Like either you're going to have nothing or you're going to have this.
851
00:52:56,020 --> 00:52:57,020
Okay.
852
00:52:57,020 --> 00:52:58,020
Okay.
853
00:52:58,020 --> 00:53:04,700
And so, about half the people with the pre-SMA resection to have the syndrome you describe,
854
00:53:04,700 --> 00:53:06,100
are we calling it dynamic aphasia?
855
00:53:06,100 --> 00:53:09,980
Like what's your preferred name for it when you think about it now?
856
00:53:09,980 --> 00:53:11,580
Yeah, it's a great question.
857
00:53:11,580 --> 00:53:14,700
I think I would be comfortable calling it dynamic aphasia.
858
00:53:14,700 --> 00:53:19,340
I was very careful in the paper to try not to be too tied to any particular tradition
859
00:53:19,340 --> 00:53:23,180
of thought around it, just because I didn't want to step on any toes where, you know, there's
860
00:53:23,180 --> 00:53:27,820
different theoretical assumptions, but I think dynamic aphasia is pretty clearly like the
861
00:53:27,820 --> 00:53:30,140
clearest map onto what we observed.
862
00:53:30,140 --> 00:53:31,140
Okay.
863
00:53:31,140 --> 00:53:36,500
So, half of them had dynamic aphasia and you're saying the other half had nothing more or less.
864
00:53:36,500 --> 00:53:39,940
Or had sort of dynamic aphasia plus a motor speech deficit.
865
00:53:39,940 --> 00:53:40,940
Oh, okay.
866
00:53:40,940 --> 00:53:41,940
Yeah, okay.
867
00:53:41,940 --> 00:53:47,660
Yeah, because you required no, apraxia of speech to meet your core diagnostic criteria.
868
00:53:47,660 --> 00:53:52,020
And then you also saw that you occasionally saw dynamic aphasia in people with lesions
869
00:53:52,020 --> 00:53:53,420
other than the SMA, right?
870
00:53:53,420 --> 00:53:55,980
So what, who were those people?
871
00:53:55,980 --> 00:53:56,980
Yeah.
872
00:53:56,980 --> 00:54:02,620
So, there's a sort of small trend towards it maybe being inferior frontal gyrus, but that's
873
00:54:02,620 --> 00:54:05,740
a much smaller number of individuals who presented with this.
874
00:54:05,740 --> 00:54:11,820
So, you can see that on the color bar between A and C basically that in panel A of that figure,
875
00:54:11,820 --> 00:54:12,820
there's three.
876
00:54:12,820 --> 00:54:13,820
Yeah.
877
00:54:13,820 --> 00:54:14,820
Figure three.
878
00:54:14,820 --> 00:54:15,820
Okay.
879
00:54:15,820 --> 00:54:21,700
There's a very clear kind of hotspot in this pre-SMA area where, you know, online people
880
00:54:21,700 --> 00:54:25,420
that have that perception and also have that deficit fall right there.
881
00:54:25,420 --> 00:54:31,220
Whereas in figure 3C, you have about three people who have this deficit where it kind
882
00:54:31,220 --> 00:54:35,620
of centers on the inferior frontal gyrus, which might be meaningful, but it's certainly
883
00:54:35,620 --> 00:54:38,900
not everybody else with the deficit has an inferior frontal lesion.
884
00:54:38,900 --> 00:54:39,900
Yeah.
885
00:54:39,900 --> 00:54:41,500
It can be a little more widespread than that.
886
00:54:41,500 --> 00:54:42,500
Okay.
887
00:54:42,500 --> 00:54:47,460
But it's really like pre-SMA is really the region that is much more strongly associated
888
00:54:47,460 --> 00:54:49,460
with this than anything else.
889
00:54:49,460 --> 00:54:53,220
At least based on the way we did, yeah.
890
00:54:53,220 --> 00:54:54,220
Yeah.
891
00:54:54,220 --> 00:54:57,780
And the surgical population is kind of good for this question, right?
892
00:54:57,780 --> 00:55:03,580
I mean, they offer you various advantages relative to other neurological conditions.
893
00:55:03,580 --> 00:55:04,580
Yeah.
894
00:55:04,580 --> 00:55:05,580
Yeah.
895
00:55:05,580 --> 00:55:08,580
I mean, I think there's the precision of the lesions.
896
00:55:08,580 --> 00:55:13,620
I mean, it's not going to be just kind of a natural experiment based on, you know, where
897
00:55:13,620 --> 00:55:17,940
the, an occlusion occurs in an artery or something like that.
898
00:55:17,940 --> 00:55:20,580
And I think ACA occlusions are actually quite rare.
899
00:55:20,580 --> 00:55:21,580
Yeah.
900
00:55:21,580 --> 00:55:23,060
They are quite rare.
901
00:55:23,060 --> 00:55:24,060
Yeah.
902
00:55:24,060 --> 00:55:26,340
So you don't have as many opportunities to study it in stroke.
903
00:55:26,340 --> 00:55:30,300
And when you do, it's rare that it's going to only damage this area because it's going
904
00:55:30,300 --> 00:55:33,060
to be kind of depending on where the occlusion is.
905
00:55:33,060 --> 00:55:37,860
It can also affect the SMA, it can affect, you know, frontal areas in front of it, or,
906
00:55:37,860 --> 00:55:41,060
you know, laterally, so, probably more so laterally.
907
00:55:41,060 --> 00:55:42,380
But, yeah.
908
00:55:42,380 --> 00:55:48,980
So first of all, it gives you kind of opportunities to see precise lesions in that area.
909
00:55:48,980 --> 00:55:53,220
It also gives you an opportunity to do preoperative evaluation, which you generally are not going
910
00:55:53,220 --> 00:55:57,120
to have in stroke because you're not going to see people before they've had a stroke and
911
00:55:57,120 --> 00:55:58,120
evaluate their language.
912
00:55:58,120 --> 00:56:00,300
There's usually no reason for that to occur.
913
00:56:00,300 --> 00:56:07,740
So, it offers you that as well as the opportunity to interview people like right after they have had a surgery where there hasn’t been any reorganization
914
00:56:12,460 --> 00:56:16,020
And a month later, when often, it's their return to baseline.
915
00:56:16,020 --> 00:56:21,900
So you get this kind of whole trajectory, which is really interesting.
916
00:56:21,900 --> 00:56:29,100
And neurodegenerative populations, neurodegenerative populations, you can also see some patterns
917
00:56:29,100 --> 00:56:30,300
sort of like this.
918
00:56:30,300 --> 00:56:34,140
But again, it's going to rarely target just that one area.
919
00:56:34,140 --> 00:56:39,620
And it's, you're not going to get these opportunities to hear about recovery as well, unfortunately,
920
00:56:39,620 --> 00:56:41,740
because so, yeah.
921
00:56:41,740 --> 00:56:46,220
So, it is a really interesting and unique population to get to learn about this from.
922
00:56:46,220 --> 00:56:47,220
Okay.
923
00:56:47,220 --> 00:56:48,220
Yeah.
924
00:56:48,220 --> 00:56:50,660
Yeah, these transient aphasias are kind of really focal.
925
00:56:50,660 --> 00:56:52,420
That's like their value.
926
00:56:52,420 --> 00:56:54,100
But also a mystery.
927
00:56:54,100 --> 00:56:56,620
But we'll talk about that in a second.
928
00:56:56,620 --> 00:57:03,580
Before that, like, you know, so, yeah, pre-SMA damage causes dynamic aphasia, to oversimplify
929
00:57:03,580 --> 00:57:04,580
maybe.
930
00:57:04,580 --> 00:57:07,940
Would you say that pre-SMA is therefore a language region?
931
00:57:07,940 --> 00:57:10,820
Like, how do you end up coming down on that point?
932
00:57:10,820 --> 00:57:14,140
Yeah, it's such a good question.
933
00:57:14,140 --> 00:57:19,380
I think that it's, and other people have said this before, I think it's really at that boundary
934
00:57:19,380 --> 00:57:20,900
between language and thought.
935
00:57:20,900 --> 00:57:28,700
I think there's been a lot of work suggesting that it's involved in either kind of like pushing
936
00:57:28,700 --> 00:57:30,780
choices to the surface.
937
00:57:30,780 --> 00:57:34,660
This has shown up in animal work.
938
00:57:34,660 --> 00:57:37,260
It's shown up in the fluency tasks that are done by the Robinson lab.
939
00:57:37,260 --> 00:57:44,580
It seems to be possibly domain generally, just any time you have kind of like a wide space
940
00:57:44,580 --> 00:57:47,100
of possibilities where you can do anything.
941
00:57:47,100 --> 00:57:53,140
It seems like it might be involved in sort of increasing the activation of any given arbitrary
942
00:57:53,140 --> 00:57:57,100
choice within like a field of possible choices.
943
00:57:57,100 --> 00:58:01,860
And when that happens in sort of the language system, I think the idea is that you have this
944
00:58:01,860 --> 00:58:06,100
linguistic apparatus that's functioning fine, but if you don't have any specific cue
945
00:58:06,100 --> 00:58:11,900
or input about like what's worth discussing, like what rises above the threshold of, you
946
00:58:11,900 --> 00:58:17,540
know, like this is relevant to say right now, there's possibly just nothing that's pushing
947
00:58:17,540 --> 00:58:21,140
anything to that level of like that is the thing that you should say.
948
00:58:21,140 --> 00:58:23,740
That is the thing that is worth expressing right now.
949
00:58:23,740 --> 00:58:29,140
Is that Gail Robinson's energization concept?
950
00:58:29,140 --> 00:58:35,180
I'm kind of using I think energization and also response selection or like task monitoring.
951
00:58:35,180 --> 00:58:38,180
And this is something at some point I would love to talk with her about like, you know,
952
00:58:38,180 --> 00:58:45,660
what is the kind of like really clear distinction between those things behaviorally because
953
00:58:45,660 --> 00:58:52,180
I think energization is like initiating the response and sustaining it over time, which
954
00:58:52,180 --> 00:58:54,100
I think you can describe in a similar way, right?
955
00:58:54,100 --> 00:58:57,100
Like you can say first you have to decide something is worth saying and then you have to
956
00:58:57,100 --> 00:58:59,260
keep deciding to continue with it.
957
00:58:59,260 --> 00:59:06,340
Like there is this kind of continuous role of some process in deciding like, this is
958
00:59:06,340 --> 00:59:10,460
the thing to say now that you've said that this is the next thing to say you should keep
959
00:59:10,460 --> 00:59:14,980
going, you know, there's this sort of like decision making process around that process
960
00:59:14,980 --> 00:59:17,300
moving forward.
961
00:59:17,300 --> 00:59:22,980
Whereas response selection or the task monitoring stuff is more about when there are higher
962
00:59:22,980 --> 00:59:30,220
low constraints around what you could say, like selecting between competing options, which,
963
00:59:30,220 --> 00:59:34,620
you know, I can see, I can see those kind of being based on a similar mechanism.
964
00:59:34,620 --> 00:59:37,780
I can see them playing out in different ways.
965
00:59:37,780 --> 00:59:42,780
But I think the energization thing maybe crucially is more domain general according to this perspective.
966
00:59:42,780 --> 00:59:49,940
Like any kind of task whether it's verbal or gesture or drawing pictures like all of those
967
00:59:49,940 --> 00:59:55,260
would be affected by a Pre-SMA lesion or a medial frontal lesion in her theories.
968
00:59:55,260 --> 01:00:00,660
Whereas the sort of like high low constraint differences when there's, you know, maybe like
969
01:00:00,660 --> 01:00:06,100
higher closed probability for a given sense or something, those would be more associated
970
01:00:06,100 --> 01:00:10,340
with lateral frontal regions and would be more of language specific.
971
01:00:10,340 --> 01:00:16,140
So, yeah, so the question of like, is this a language impairment or is this part of the
972
01:00:16,140 --> 01:00:17,140
language system?
973
01:00:17,140 --> 01:00:23,220
I think when it comes to natural language and like producing discourse that is functional
974
01:00:23,220 --> 01:00:25,580
in the world, you need this region.
975
01:00:25,580 --> 01:00:33,420
I think that that I don't feel hesitant about saying it all.
976
01:00:33,420 --> 01:00:37,500
Whether this should be considered part of like the mechanics that support language, I
977
01:00:37,500 --> 01:00:39,580
think this is something that sort of interfaces with that.
978
01:00:39,580 --> 01:00:46,140
I think this is something that pulls into that language system and pulls linguistic
979
01:00:46,140 --> 01:00:49,820
constructs to the surface to be expressed or, you know, kind of interfaces between the
980
01:00:49,820 --> 01:00:52,860
thoughts themselves and that language system.
981
01:00:52,860 --> 01:00:53,860
Do you have thoughts?
982
01:00:53,860 --> 01:00:55,820
No, I think I agree with you.
983
01:00:55,820 --> 01:00:56,820
Yeah, I think.
984
01:00:56,820 --> 01:00:59,020
I guess so, yeah, I have thoughts.
985
01:00:59,020 --> 01:01:04,180
Like, I mean, one thing about the domain generality of a, like one thing that's really striking
986
01:01:04,180 --> 01:01:07,540
is so you only have left hemisphere patients in your cohort.
987
01:01:07,540 --> 01:01:13,260
But in Binder's meta-analysis, it's super, super-lateralized, like the role of this region
988
01:01:13,260 --> 01:01:15,300
in semantics.
989
01:01:15,300 --> 01:01:20,740
So, you know, to the extent that it's, you know, it probably is only the left that's relevant
990
01:01:20,740 --> 01:01:21,740
for language.
991
01:01:21,740 --> 01:01:27,180
So there probably is at least some specialization of its role.
992
01:01:27,180 --> 01:01:33,860
And I guess, well, you know, if you take seriously Edwin's description of the search for the
993
01:01:33,860 --> 01:01:39,540
items, like buried in like a farmer with buried in the field, like it's, it's not really a,
994
01:01:39,540 --> 01:01:43,540
it's definitely not a sort of choosing among available choices, right?
995
01:01:43,540 --> 01:01:47,700
It's like, it's like finding anything that's, that's like, yeah, exactly.
996
01:01:47,700 --> 01:01:51,260
And you sort of specifically, I actually asked him at one point, we met with him about six
997
01:01:51,260 --> 01:01:55,340
months afterwards and asked him, like, do you remember having trouble selecting between options
998
01:01:55,340 --> 01:01:56,340
on the menu?
999
01:01:56,340 --> 01:02:00,100
Do you remember, you know, struggling to make the, any didn't?
1000
01:02:00,100 --> 01:02:03,500
And he actually specifically, I think I later sent him a draft of some lab meeting
1001
01:02:03,500 --> 01:02:09,220
slides I had where I was going to say, like, you know, maybe, maybe even if it doesn't feel
1002
01:02:09,220 --> 01:02:11,780
like it's a selection deficit, it's still a selection deficit.
1003
01:02:11,780 --> 01:02:13,820
And he was like, it's not a select deficit.
1004
01:02:13,820 --> 01:02:16,220
It was really confident that it wasn't.
1005
01:02:16,220 --> 01:02:18,060
That's so really cool.
1006
01:02:18,060 --> 01:02:19,060
Yeah.
1007
01:02:19,060 --> 01:02:24,700
But again, I mean, there is, I think the, the personal experience versus the like theoretical
1008
01:02:24,700 --> 01:02:28,940
possibility, it's, you know, it's hard to disentangle, you know, what somebody has access to in their
1009
01:02:28,940 --> 01:02:31,700
own lexicon and search.
1010
01:02:31,700 --> 01:02:34,980
But, you know, I'm inclined to trust him on that.
1011
01:02:34,980 --> 01:02:41,420
Yeah, but I think with that searching in the soil analogy, like, there's, what I'm picturing
1012
01:02:41,420 --> 01:02:45,140
is kind of like, this is a messy metaphor.
1013
01:02:45,140 --> 01:02:47,740
You can decide whether to keep this in or not.
1014
01:02:47,740 --> 01:02:51,820
But if you imagine under the soil where he's trying to pick the, the plants or the crops,
1015
01:02:51,820 --> 01:02:55,660
that there's something that normally pushes some of those crops closer to the surface,
1016
01:02:55,660 --> 01:02:58,020
where it's like, that's the one that's relevant here.
1017
01:02:58,020 --> 01:03:04,340
And it seems like that, that sort of elevator underneath the soil just wasn't there anymore.
1018
01:03:04,340 --> 01:03:10,780
So, yeah, it's not that there was a, it's not that there weren't words to be found is
1019
01:03:10,780 --> 01:03:14,780
that those words weren't being pushed to the surface to be selected for expression.
1020
01:03:14,780 --> 01:03:15,780
Definitely keeping that in.
1021
01:03:15,780 --> 01:03:17,260
I think that's a great metaphor.
1022
01:03:17,260 --> 01:03:20,380
Yeah, hopefully they'll forgive the elevator under the soil.
1023
01:03:20,380 --> 01:03:26,100
That's, you know, we, you know, it's a conversation.
1024
01:03:26,100 --> 01:03:27,700
You came up with it on the fly.
1025
01:03:27,700 --> 01:03:34,940
So, the aphasias that we see in these post surgical patients are transient usually,
1026
01:03:34,940 --> 01:03:40,700
they're usually largely resolved by a month with just a few residual issues as you discuss
1027
01:03:40,700 --> 01:03:43,300
and we, has been shown in other work.
1028
01:03:43,300 --> 01:03:48,300
Isn't it interesting that something can cause such a profound deficit?
1029
01:03:48,300 --> 01:03:53,860
And yet, the brain is able to find out another way round like this.
1030
01:03:53,860 --> 01:03:56,860
And we don't really know where that other way round is, right?
1031
01:03:56,860 --> 01:04:04,420
Yeah, it'd be a really interesting fMRI study, I guess, to look at sort of within a month
1032
01:04:04,420 --> 01:04:09,660
or so, how, how is this area getting re reintegrated and, or, you know, this, this function
1033
01:04:09,660 --> 01:04:11,820
getting reintegrated through other areas?
1034
01:04:11,820 --> 01:04:18,700
Yeah, when, and this, and in our, the task that we use that you've worked with a lot,
1035
01:04:18,700 --> 01:04:24,940
it does activate the, this area, it does activate the medial surface of the frontal lobe.
1036
01:04:24,940 --> 01:04:29,700
So, yeah, adaptive language mapping, yeah.
1037
01:04:29,700 --> 01:04:35,340
So, you know, if we scan somebody like Edwin, when we would not see that, we would not see,
1038
01:04:35,340 --> 01:04:39,740
we'd see at least a whole where they should have been in activation.
1039
01:04:39,740 --> 01:04:46,420
Whether we would see residual activation around his resection, we might, or would we just
1040
01:04:46,420 --> 01:04:50,740
see nothing, would we just see like the rest of the language network activating as normal
1041
01:04:50,740 --> 01:04:56,820
and the, you know, deficit has been overcome and we don't understand how that happened.
1042
01:04:56,820 --> 01:04:58,980
That's probably, that's what I'm gonna...
1043
01:04:58,980 --> 01:05:01,380
Yeah, we can get a surprise right hemisphere.
1044
01:05:01,380 --> 01:05:06,180
Yeah, but that would not be my expectation, but that would be the most exciting finding,
1045
01:05:06,180 --> 01:05:07,180
yeah, definitely.
1046
01:05:07,180 --> 01:05:10,140
That would be, that would be by far the most exciting, but it's not something that we frequently
1047
01:05:10,140 --> 01:05:11,140
seen.
1048
01:05:11,140 --> 01:05:12,140
Yeah.
1049
01:05:12,140 --> 01:05:15,340
Yeah, so it's kind of mysterious, right?
1050
01:05:15,340 --> 01:05:19,260
Like, how do these individuals recover?
1051
01:05:19,260 --> 01:05:25,020
Yeah, I think that's still an open question.
1052
01:05:25,020 --> 01:05:27,460
Yeah, definitely.
1053
01:05:27,460 --> 01:05:29,580
Last thing about the paper.
1054
01:05:29,580 --> 01:05:36,140
So, it starts with the line, "For an aphasia-friendly version of this article, please see," and then
1055
01:05:36,140 --> 01:05:41,980
you have a link to a, to a version of the paper, which is written in a way that's accessible
1056
01:05:41,980 --> 01:05:42,980
to people with aphasia.
1057
01:05:42,980 --> 01:05:44,220
It has simple language.
1058
01:05:44,220 --> 01:05:47,020
It has iconography.
1059
01:05:47,020 --> 01:05:53,860
Can you tell us about why you make aphasia-friendly versions of all your papers and how you go about
1060
01:05:53,860 --> 01:05:55,860
it and why you think it's important?
1061
01:05:55,860 --> 01:05:56,860
Yeah, yeah.
1062
01:05:56,860 --> 01:06:00,380
So, I touched on this a little bit earlier with the aphasia group stuff.
1063
01:06:00,380 --> 01:06:06,700
I think that there's so much curiosity about what people are learning about aphasia, among
1064
01:06:06,700 --> 01:06:11,660
people with aphasia, and it's so hard for them to get that information, especially at sort
1065
01:06:11,660 --> 01:06:17,140
of the researcher-generated level as opposed to press releases or coverage.
1066
01:06:17,140 --> 01:06:23,060
So, that's something that Anna Kasdan and I got really passionate about in grad school,
1067
01:06:23,060 --> 01:06:26,660
and I've tried to carry it through with me as I continue publishing.
1068
01:06:26,660 --> 01:06:31,940
So, yeah, I mean, especially for people where you're undergoing like an elective surgery,
1069
01:06:31,940 --> 01:06:35,740
or you have experienced something after surgery, or even if you've just had a stroke and it
1070
01:06:35,740 --> 01:06:40,380
happens to, you know, align with something that has been studied.
1071
01:06:40,380 --> 01:06:43,660
I think really great to be able to get from the researcher's mouth.
1072
01:06:43,660 --> 01:06:46,060
Like, here's what I think you should understand about this.
1073
01:06:46,060 --> 01:06:49,300
Here's what might be relevant for you and your family.
1074
01:06:49,300 --> 01:06:56,380
So, that's been a big part of what I try to and hope to continue trying to do as a researcher.
1075
01:06:56,380 --> 01:07:01,420
Like, make that research not just academic and actually get it out to the people that
1076
01:07:01,420 --> 01:07:03,420
it's about.
1077
01:07:03,420 --> 01:07:09,060
So, in terms of making them at the time of this that I was drafting this one, I basically
1078
01:07:09,060 --> 01:07:12,900
just opened up a Google doc and I try to think like, okay, what are the key messages here?
1079
01:07:12,900 --> 01:07:17,220
And, you know, where do I find free icons that demonstrate it?
1080
01:07:17,220 --> 01:07:18,980
And that for me is kind of a fun process.
1081
01:07:18,980 --> 01:07:21,260
I really like doing that.
1082
01:07:21,260 --> 01:07:27,340
But actually Anna and me and my husband Isaac, who I met at the computational memory lab,
1083
01:07:27,340 --> 01:07:34,940
he's a software developer, have now started working on an LLM-based version of this.
1084
01:07:34,940 --> 01:07:42,540
And, there was a lot of the upfront work for you with the extreme caveat that a researcher
1085
01:07:42,540 --> 01:07:46,460
who uses that absolutely has to check everything that comes out of it and the icons are going
1086
01:07:46,460 --> 01:07:49,300
to require a lot of tweaking.
1087
01:07:49,300 --> 01:07:53,180
But it's sort of a way I'm hoping to motivate people to do this type of thing because it
1088
01:07:53,180 --> 01:07:57,460
might not feel like such a big lift if there's been a touch of the work done for you as
1089
01:07:57,460 --> 01:07:58,460
a set.
1090
01:07:58,460 --> 01:08:01,260
So, you get an LLM to write the first draft?
1091
01:08:01,260 --> 01:08:02,260
Yeah.
1092
01:08:02,260 --> 01:08:04,260
And then you, who get yourself?
1093
01:08:04,260 --> 01:08:07,100
Yeah, lovely.
1094
01:08:07,100 --> 01:08:09,340
So yeah, this is a great paper.
1095
01:08:09,340 --> 01:08:12,140
I think everybody should read it.
1096
01:08:12,140 --> 01:08:16,940
And it's just like a beautiful description of an aphasia syndrome that doesn't get talked
1097
01:08:16,940 --> 01:08:23,580
about that much, but is very interesting and teaches us something about the language network.
1098
01:08:23,580 --> 01:08:30,460
So, the last thing I wanted to talk about beyond the paper is your current job.
1099
01:08:30,460 --> 01:08:35,620
So you're now a lecturer for the Princeton Writing Program, which I know is a job that you really
1100
01:08:35,620 --> 01:08:36,900
love.
1101
01:08:36,900 --> 01:08:44,020
Can you tell us about how you came into that job and what led you in that direction?
1102
01:08:44,020 --> 01:08:45,020
Yeah.
1103
01:08:45,020 --> 01:08:49,860
So, I always loved teaching, always, always, always.
1104
01:08:49,860 --> 01:08:55,540
And when I was at Vanderbilt, I did the bold program, which was a center for teaching
1105
01:08:55,540 --> 01:09:00,100
based program where you got to design an online module for some existing class.
1106
01:09:00,100 --> 01:09:04,780
I did it for the language psychology class at Vanderbilt.
1107
01:09:04,780 --> 01:09:08,340
I did a bunch of teaching trainings at UCSF, their step-up program.
1108
01:09:08,340 --> 01:09:09,980
I always loved teaching.
1109
01:09:09,980 --> 01:09:14,660
And as much as I loved grad school, I was actually thinking I would get more TA experience,
1110
01:09:14,660 --> 01:09:20,180
loved doing the TA for our very small class of already very qualified and brilliant master
1111
01:09:20,180 --> 01:09:21,180
students.
1112
01:09:21,180 --> 01:09:26,940
But what I loved doing in undergrad was teaching, like, it was largely teaching freshman,
1113
01:09:26,940 --> 01:09:29,380
actually, freshman and sophomores in the inter-site classes.
1114
01:09:29,380 --> 01:09:31,060
So, I really liked teaching.
1115
01:09:31,060 --> 01:09:34,940
I always knew I wanted to be involved in teaching in my career.
1116
01:09:34,940 --> 01:09:35,940
And I always liked writing.
1117
01:09:35,940 --> 01:09:40,580
I don't think I touched on this in my sort of description of what brought me into the field.
1118
01:09:40,580 --> 01:09:46,060
But one of the ways I sort of thought about filtering the world through language was through
1119
01:09:46,060 --> 01:09:47,060
writing.
1120
01:09:47,060 --> 01:09:49,020
And I was the editor of a literary magazine at high school.
1121
01:09:49,020 --> 01:09:54,460
And I was very kind of involved in trying to make stories out of the world.
1122
01:09:54,460 --> 01:09:59,300
So yeah, the writing passion and the teaching passion have been there throughout my whole
1123
01:09:59,300 --> 01:10:01,260
journey.
1124
01:10:01,260 --> 01:10:06,540
When I, it was 2022 that I went to Cold Spring Harbor for their Neurobiology of Language
1125
01:10:06,540 --> 01:10:09,540
event, I guess.
1126
01:10:09,540 --> 01:10:14,660
It was like a week-long sort of seminar for students to work with people who are in the
1127
01:10:14,660 --> 01:10:17,300
Neurobiology of Language, kind of like giants in the field.
1128
01:10:17,300 --> 01:10:22,700
And I met a woman there, Srishti Nayak, who's at Vanderbilt now.
1129
01:10:22,700 --> 01:10:28,020
And she, on the first day, people kind of introduced themselves and said their career trajectories.
1130
01:10:28,020 --> 01:10:33,580
She mentioned that for two years she had taught a class at Princeton about graphic novels and
1131
01:10:33,580 --> 01:10:36,100
the brain, graphic novels and psychology.
1132
01:10:36,100 --> 01:10:38,260
And I was like, oh my god, that's my dream job.
1133
01:10:38,260 --> 01:10:39,260
That sounds so cool.
1134
01:10:39,260 --> 01:10:43,020
So I talked to her after, and I was like, what was that job?
1135
01:10:43,020 --> 01:10:45,900
What, where were you doing that?
1136
01:10:45,900 --> 01:10:47,420
How can I do that?
1137
01:10:47,420 --> 01:10:51,660
And she told me about this Princeton writing program where essentially people from all
1138
01:10:51,660 --> 01:10:56,820
different disciplines get to design a class from scratch that teaches freshmen about
1139
01:10:56,820 --> 01:10:59,500
scholarly writing and the process of scholarly writing.
1140
01:10:59,500 --> 01:11:03,020
So yeah, basically, I was like, that is the job I want.
1141
01:11:03,020 --> 01:11:08,180
And the first year that it was available, I wasn't able to apply by the deadline, so I emailed
1142
01:11:08,180 --> 01:11:13,060
them and I was like, heads up, I'm applying next year, please don't lose my email.
1143
01:11:13,060 --> 01:11:20,700
And then the next year I applied and they brought me out for an interview.
1144
01:11:20,700 --> 01:11:22,700
It was everything I dreamed it would be.
1145
01:11:22,700 --> 01:11:24,620
It's so much fun.
1146
01:11:24,620 --> 01:11:28,460
And it gives you so much creativity around like what you get to think about, what you get
1147
01:11:28,460 --> 01:11:33,980
to force 18 year olds to think about.
1148
01:11:33,980 --> 01:11:36,740
Yeah, and I get to do all kinds of fun things.
1149
01:11:36,740 --> 01:11:42,340
I actually just recently bought a toy called Mind Flex from 2009, which I'm using in my class.
1150
01:11:42,340 --> 01:11:44,140
What is that?
1151
01:11:44,140 --> 01:11:45,820
It's, you wear a headset.
1152
01:11:45,820 --> 01:11:48,380
It has like a single contact.
1153
01:11:48,380 --> 01:11:54,580
And theoretically, it is reading your brain waves to move a ball around a little, a little
1154
01:11:54,580 --> 01:11:57,420
obstacle course, basically.
1155
01:11:57,420 --> 01:12:00,420
Okay, just a question.
1156
01:12:00,420 --> 01:12:02,380
You know, very unclear.
1157
01:12:02,380 --> 01:12:04,660
But that makes it ripe for analysis in a writing class.
1158
01:12:04,660 --> 01:12:05,660
Does it not?
1159
01:12:05,660 --> 01:12:10,420
You have lots, you know, you can discuss about the nature of advertising and the nature of,
1160
01:12:10,420 --> 01:12:13,900
you know, neuromania, especially in the early 2000s.
1161
01:12:13,900 --> 01:12:19,620
So, you know, there's a lot of kind of just picking interesting weird artifacts and, you know,
1162
01:12:19,620 --> 01:12:21,860
forcing students to think about them at a high level.
1163
01:12:21,860 --> 01:12:23,940
So, yeah, it's been a lot of fun.
1164
01:12:23,940 --> 01:12:25,620
I could talk about it forever.
1165
01:12:25,620 --> 01:12:26,780
That is so cool.
1166
01:12:26,780 --> 01:12:28,420
Yeah, what are you neat?
1167
01:12:28,420 --> 01:12:31,620
Like, you know, career, you're building for yourself.
1168
01:12:31,620 --> 01:12:34,180
I can't wait to see what you do next.
1169
01:12:34,180 --> 01:12:35,180
Yeah, yeah.
1170
01:12:35,180 --> 01:12:36,180
Yeah.
1171
01:12:36,180 --> 01:12:40,220
I'm always surprising myself, so.
1172
01:12:40,220 --> 01:12:46,860
Well, I have to take my daughter to her flute workshop that is happening all this week,
1173
01:12:46,860 --> 01:12:50,780
which is why we met super early in the morning, my time.
1174
01:12:50,780 --> 01:12:53,180
So I will go and do that.
1175
01:12:53,180 --> 01:12:57,020
And it was lovely talking with you and, you know, catching up.
1176
01:12:57,020 --> 01:13:01,140
And, you know, thanks for walking us through this paper today.
1177
01:13:01,140 --> 01:13:02,140
Yeah.
1178
01:13:02,140 --> 01:13:03,140
Thank you so much.
1179
01:13:03,140 --> 01:13:05,780
Thanks for thinking of me and, yeah, great to see you again.
1180
01:13:05,780 --> 01:13:06,780
Yeah, you too.
1181
01:13:06,780 --> 01:13:07,780
All right.
1182
01:13:07,780 --> 01:13:08,780
Take care.
1183
01:13:08,780 --> 01:13:09,780
Bye.
1184
01:13:09,780 --> 01:13:10,780
Okay.
1185
01:13:10,780 --> 01:13:11,780
Well, that's it for episode 34.
1186
01:13:11,780 --> 01:13:13,300
Thanks to Deb for joining me on the podcast.
1187
01:13:13,300 --> 01:13:20,020
And I've linked Deb's paper in the show notes and on the podcast website at langneurosci.org/podcast.
1188
01:13:20,020 --> 01:13:23,340
Thanks also to Marcia Petyt for transcribing this episode.
1189
01:13:23,340 --> 01:13:26,340
Please do consider submitting your papers to neurobiology of language.
1190
01:13:26,340 --> 01:13:30,540
It's open access, society supported and has a great editorial team.
1191
01:13:30,540 --> 01:13:35,820
In my experience, I've had constructive reviews, fair decisions, and speedy publications.
1192
01:13:35,820 --> 01:13:39,420
If the article processing charge is barrier for your lab, that is always something you can
1193
01:13:39,420 --> 01:13:41,100
talk to the editors about.
1194
01:13:41,100 --> 01:13:43,740
It's not going to stop your paper from getting published.
1195
01:13:43,740 --> 01:13:44,900
Okay, bye for now.
1196
01:13:44,900 --> 01:13:45,540
See you next time.