visual
visual

세미나

  • HOME
  • >
  • 소식
  • >
  • 세미나
날짜 2022-01-18 14:00 
연사  
장소 KI bldg. 5th fl. Room B501 & Zoom 

[Seminar]

18 Jan 2022, Tue, 2pm-3pm, KI bldg. 5th fl. Room B501

Zoom: https://kaist.zoom.us/j/89586032430

회의 ID: 895 860 324 30

 

Data-driven interrogation of biological dynamics:
from subcellular interactions to neuronal networks in vivo

 

 

YoungJu Jo

PhD Candidate in Applied Physics, Deisseroth Laboratory, Stanford University

 

 

Biological systems are nonlinear dynamical systems consisting of heterogeneous entities. Understanding the logic of the complex spatiotemporal dynamics in such systems, robustly implementing specific biological functions, may require new approaches beyond the traditional hypothesis-driven experimental designs. Here we present a data-driven approach, enabled by high-throughput experimental and computational technologies, across multiple scales. We first discuss a computational imaging technique for simultaneously visualizing multiple aspects of subcellular dynamics [1, 2], its potential combination with molecular optogenetics to study the cell signaling networks, and the remaining challenges in these systems. Then we turn to neuronal networks in behaving animals where high-dimensional neural population activity could be reliably measured and perturbed over extended time. Synergizing with recent technical advances, we propose and experimentally demonstrate a unified deep learning framework to identify the underlying neural dynamical systems, reverse-engineer the neural computation implemented by the dynamics, and design spatiotemporally patterned optogenetic stimulation for naturalistic manipulation of animal behavior [3]. Application of this framework to the mouse habenular circuitry reveals cell-type-specific reward history coding implemented by line attractor dynamics [4].

 

References:

1. Jo*, Park* et al. Science Advances 3(8), e1700606, 2017.

2. Jo*, Cho*, Park* et al. Nature Cell Biology 23, 1329–1337, 2021.

3. Jo et al. in preparation.

4. Sylwestrak*, Vesuna*, Jo* et al. in revision.

 

문의: 박용근 교수 (내선:2514)

 

 

번호 날짜 연사 제목
공지 2025-02-24 16:00    2025년 봄학기 콜로키움 안내
공지 2025-02-27 16:00    2025년 봄 물리학과 특별세미나 (광학/응집물리 분야)
406 2022-06-10 16:00    Fe5GeTe2의 나선형 자성특성과 자기저항의 전류밀도 의존성 연구 file
405 2017-03-24 16:00    Graphene based nano electronics and nano electromechanics; focusing on precise control of nano structures for studying accurate physical properties
404 2016-09-29 16:00    Large-scale Silicon Photonic MEMS Switches
403 2015-07-15 14:00    Electronic and optical properties of titanate-based oxide superlattices
402 2019-06-17 10:30    Chiral Spintronics file
401 2019-04-19 16:00    Graphene and hBN heterostructures file
400 2023-10-11 16:00    [High Energy Theory Seminar] Axion Magnetic Resonance
399 2023-09-21 16:00    [CAPP seminar] Axion Magnetic Resonance file
398 2016-01-26 14:00    Electrochemistry on Nano- and Atomic Levels: Scanning Probe Microscopy Meets Deep Data
397 2019-03-29 14:30    Epitaxial Multifunctional Oxide Thin Films for Novel Electronics file
396 2018-06-01 11:00    Topological phases in low-dimensional quantum materials file
395 2019-10-29 16:00    Particles and Gravity via String Geometry file
394 2018-04-09 11:00    Doublon-holon origin of the subpeaks at the Hubbard band edges file
393 2019-10-31 10:00    Kondo meets Hubbard: Impurity physics for correlated lattices file
392 2022-06-10 14:30    Combinatorial strategy for condensed matter physics: study on rare earth hexaborides thin films file
391 2020-02-13 16:30    Enhanced Light-Matter Interactions in Graphene with Noble Metal Plasmonic Structures file
390 2019-11-20 16:00    Correlation between superconducting transition temperature and critical current density in irradiated iron-based superconductors file
389 2019-11-05 16:00    Study on nanomaterials by the development of ultrahigh resolution laser-photoelectron microscopy (PEEM) file
388 2021-12-03 14:30    Topological Spin Textures: Skyrmions and Beyond file
387 2019-04-26 16:00    Robust Quantum Metrology using Strongly Interacting Spin Ensembles and Quantum Convolutional Neural Network file