2023.03.06 Dynamics-based data science in biology and medicine ("AI for Science" and "Science for AI")

2023-03-02 17:12:14

北京大学定量生物学中心

学术报告

: Dynamics-based data science in biology and medicine ("AI for Science" and "Science for AI")

报告人: 陈洛南

中科院生化细胞研究所研究员,中国科学院系统生物学重点实验室执行主任,国科大杭高院首席教授

: 36日(周一)13:00-14:00

: 吕志和楼B101

主持人: 曾泽贤 研究员

:

In this talk, I will present a new concept "dynamics-based data science" in biology and medicine for studying dynamical processes and disease progressions, including dynamic network biomarkers (DNB) for early-warning signals of critical transitions, spatial-temporal information (STI) transformation for short-term time-series prediction, and partial cross-mapping (PCM) for causal inference among variables. These methods are all data-driven or model-free approaches but based on the theoretical frameworks of nonlinear dynamics. We show the principles and advantages of dynamics-based data-driven approaches as explicable, quantifiable, and generalizable. In particular, dynamics-based data science approaches exploit the essential features of dynamical systems in terms of data, e.g. strong fluctuations near a bifurcation point, low-dimensionality of a center manifold or an attractor, and phase-space reconstruction from a single variable by delay embedding theorem, and thus are able to provide different or additional information to the traditional approaches, i.e. statistics-based data science approaches. The dynamical-based data science approaches will further play an important role in the systematical research of various fields in biology and medicine. I will also talk recent works of "AI for Science" and "Science for AI".

报告人简介:

陈洛南,200910月至今任中科院生化细胞研究所研究员,中国科学院系统生物学重点实验室执行主任,国科大杭高院首席教授。中国运筹学会《计算系统生物学分会》名誉理事长,IEEE SMC学会《系统生物学技术委员会》主席,中国生化细胞学会《分子系统生物学专业分会》主任委员。主要从事计算系统生物学、大数据分析和人工智能的研究工作。近年来发表300余篇期刊论文(包括 Nature, Nature Genetics, Nature Communications, Nature Cancer, PNAS, PRL, National Science Review, Cancer Cell, Cell Research)和四部专著(H-index: 75)