北京大学定量生物学中心
学术报告
题 目: Graph Neural Networks to Learn Long-range Interactions in Proteins from Molecular Dynamics Simulations
报告人: Professor Dong Xu
Department
of Electrical Engineering and Computer Science, Bond Life Sciences
Center, University of Missouri, Columbia, MO, United States
时 间: 1月11日(周一)9:00-10:00
地 点: Online (Zoom会议)
会议号:627 9242 4126
密码:cqbcqb
主持人: 宋晨 研究员
摘 要:
Protein
allostery is a spatially long-ranged regulation, whereby ligand binding
or amino acid mutation at distant sites affect the active site
remotely. Atomic/residue interactions often drive such biomolecular
motion related to protein function. Molecular dynamics (MD) simulation
can probe the biomolecular motion, but it is still challenging to
develop the MD analysis method to capture meaningful functional
information from the high dimensional and complex 3D data. In this
study, we applied a neural relational inference (NRI) model based on a
graph neural network (GNN) to analyze MD simulations in biological
systems. The NRI model consisting of an encoder and a decoder, which can
simultaneously infer latent interactions while reconstructing the
dynamic trajectories. This model allows us to formulate the protein
allosteric and activation processes as the dynamic networks of
interacting residues. In the allosteric regulation case studies, protein
Pin1 utilizes the allostery induced by ligand binding to regulate its
function. NRI model successfully learned the pathways mediating the
allosteric communication between the two distant binding sites.
Furthermore, for the SOD1 and MEK1 systems, the NRI model also learns
the interaction between domains/residues, driving the protein’s
slow-motion regulated by mutations at distant sites. Our work provides a
practical analysis method for probing structural correlations related
to function.
报告人简介:
Dong
Xu is Professor in the Electrical Engineering and Computer Science
Department with appointments in the Christopher S. Bond Life Sciences
Center and the Informatics Institute at the University of
Missouri-Columbia. He was awarded the Paul K. and Dianne Shumaker
Endowment in Bioinformatics in 2018. He obtained his PhD from the
University of Illinois, Urbana-Champaign in 1995 and did two years of
postdoctoral work at the US National Cancer Institute. He was a Staff
Scientist at Oak Ridge National Laboratory until 2003 before joining the
University of Missouri, where he served as Department Chair of Computer
Science during 2007-2016. His research is in computational biology and
bioinformatics, including machine-learning application in
bioinformatics, protein structure prediction, post-translational
modification prediction, high-throughput biological data analyses, in
silico studies of plants, microbes and cancers, biological information
systems, and mobile App development for healthcare. He has published
nearly 300 papers. He was elected to the rank of American Association
for the Advancement of Science (AAAS) Fellow in 2015 and American
Institute for Medical and Biological Engineering (AIMBE) Fellow in 2020.