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images/talks/brainspace.png

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images/talks/contemplate.png

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layout: talk
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title: Neuroscience of Contemplative Practices
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image: /images/talks/contemplate.png
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date: Fall 2018
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host: Contemplation By Design Summit 2018, Stanford University
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speaker: Manish Saggar
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view: public
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link: https://www.youtube.com/watch?v=L5uZcjXeIgk
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abstract: This talk presents existing and new research from the emerging interdisciplinary field of contemplative neuroscience. The goal of this talk is to share current understanding about how training in contemplative practices (e.g. meditation) affects the brain and behavior. Some of the remaining questions and new directions for research also will be discussed. Manish is a computational neuroscientist and directs the Brain Dynamics Lab at Stanford. The overarching goal of his lab is to develop computational methods that would allow for extracting personalized insights about the brain’s dynamical organization in healthy and patient populations. He received his Ph.D. from the University of Texas at Austin, where he worked on developing one of the first biophysical network models for understanding how intensive meditation training changes brain dynamics. He is a meditator for more than 20 years and loves to talk about meditation and the brain.
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# Abstract
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This talk presents existing and new research from the emerging interdisciplinary field of contemplative neuroscience. The goal of this talk is to share current understanding about how training in contemplative practices (e.g. meditation) affects the brain and behavior. Some of the remaining questions and new directions for research also will be discussed. Manish is a computational neuroscientist and directs the Brain Dynamics Lab at Stanford. The overarching goal of his lab is to develop computational methods that would allow for extracting personalized insights about the brain’s dynamical organization in healthy and patient populations. He received his Ph.D. from the University of Texas at Austin, where he worked on developing one of the first biophysical network models for understanding how intensive meditation training changes brain dynamics. He is a meditator for more than 20 years and loves to talk about meditation and the brain.
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# Talk
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<div class="embed-responsive embed-responsive-16by9">
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<iframe width="560" height="315" src="https://www.youtube.com/watch?v=L5uZcjXeIgk" frameborder="0" allowfullscreen></iframe>
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</div>
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<br>

talks/_posts/2021-08-30-brainspace.md

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layout: talk
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title: Precision dynamical mapping using topological data analysis reveals a unique hub-like transition at rest
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image: /images/talks/brainmind.png
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date: Sep 17, 2019
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host: 2018 BrainMind Summit @ Stanford
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image: /images/talks/brainspace.png
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date: Aug 30, 2021
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host: Brain Space Initiatve, Dr. Vince Calhoun
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speaker: Manish Saggar
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view: public
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link: https://www.youtube.com/watch?v=fH17HvGDi0s
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link: https://www.youtube.com/watch?v=CZ9Fhr6Es1Y
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abstract: In this talk Manish discusses how even in the absence of external stimuli, neural activity is both highly dynamic and organized across multiple spatiotemporal scales. The continuous evolution of brain activity patterns during rest is believed to help maintain a rich repertoire of possible functional configurations that relate to typical and atypical cognitive phenomena. Whether these transitions or “explorations” follow some underlying arrangement or instead lack a predictable ordered plan remains to be determined. Here, using a precision dynamics approach, we aimed at revealing the rules that govern transitions in brain activity at rest at the single participant level. We hypothesized that by revealing and characterizing the overall landscape of whole brain configurations (or states) we could interpret the rules (if any) that govern transitions in brain activity at rest. To generate the landscape of whole-brain configurations we used Topological Data Analysis based Mapper approach. Across all participants, we consistently observed a rich topographic landscape in which the transition of activity from one state to the next involved a central hub-like “transition state.” The hub topography was characterized as a shared attractor-like basin where all canonical resting-state networks were represented equally. The surrounding periphery of the landscape had distinct network configurations. The intermediate transition state and traversal through it via a topographic gradient seemed to provide the underlying structure for the continuous evolution of brain activity patterns at rest. In addition, differences in the landscape architecture were more consistent within than between subjects, providing evidence of idiosyncratic dynamics and potential utility in precision medicine.
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