Learning generative models of molecular dynamics

被引:0
|
作者
Narges Sharif Razavian
Hetunandan Kamisetty
Christopher J Langmead
机构
[1] Carnegie Mellon University,Language Technologies Institute
[2] University of Washington,Department of Biochemistry
[3] Carnegie Mellon University,Computer Science Department
[4] Carnegie Mellon University,Lane Center for Computational Biology
来源
BMC Genomics | / 13卷
关键词
Markov Random Fields; Correlation Network; Differential Entropy; Precision Matrix; Gaussian Graphical Model;
D O I
暂无
中图分类号
学科分类号
摘要
We introduce three algorithms for learning generative models of molecular structures from molecular dynamics simulations. The first algorithm learns a Bayesian-optimal undirected probabilistic model over user-specified covariates (e.g., fluctuations, distances, angles, etc). L1 reg-ularization is used to ensure sparse models and thus reduce the risk of over-fitting the data. The topology of the resulting model reveals important couplings between different parts of the protein, thus aiding in the analysis of molecular motions. The generative nature of the model makes it well-suited to making predictions about the global effects of local structural changes (e.g., the binding of an allosteric regulator). Additionally, the model can be used to sample new conformations. The second algorithm learns a time-varying graphical model where the topology and parameters change smoothly along the trajectory, revealing the conformational sub-states. The last algorithm learns a Markov Chain over undirected graphical models which can be used to study and simulate kinetics. We demonstrate our algorithms on multiple molecular dynamics trajectories.
引用
收藏
相关论文
共 50 条
  • [1] Learning generative models of molecular dynamics
    Razavian, Narges Sharif
    Kamisetty, Hetunandan
    Langmead, Christopher J.
    BMC GENOMICS, 2012, 13
  • [2] Learning the rules of mitochondrial network dynamics using generative models
    Sturm, G.
    Ben Nejma, S.
    Lewis, G.
    Manley, S.
    Marshall, W.
    MOLECULAR BIOLOGY OF THE CELL, 2023, 34 (02) : 116 - 117
  • [3] Analysing protein dynamics using machine learning based generative models
    Albu, Alexandra-Ioana
    Czibula, Gabriela
    2020 IEEE 14TH INTERNATIONAL SYMPOSIUM ON APPLIED COMPUTATIONAL INTELLIGENCE AND INFORMATICS (SACI 2020), 2020, : 135 - 140
  • [4] Generative Models of Brain Dynamics
    Ramezanian-Panahi, Mahta
    Abrevaya, German
    Gagnon-Audet, Jean-Christophe
    Voleti, Vikram
    Rish, Irina
    Dumas, Guillaume
    FRONTIERS IN ARTIFICIAL INTELLIGENCE, 2022, 5
  • [5] Generative Models of Conformational Dynamics
    Langmead, Christopher James
    PROTEIN CONFORMATIONAL DYNAMICS, 2014, 805 : 87 - 105
  • [6] Generative Models for Molecular Design
    Merz, Kenneth M., Jr.
    De Fabritiis, Gianni
    Wei, Guo-Wei
    JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2020, 60 (12) : 5635 - 5636
  • [7] Generative learning for nonlinear dynamics
    William Gilpin
    Nature Reviews Physics, 2024, 6 : 194 - 206
  • [8] Learning Deep Generative Models
    Salakhutdinov, Ruslan
    ANNUAL REVIEW OF STATISTICS AND ITS APPLICATION, VOL 2, 2015, 2 : 361 - 385
  • [9] Generative learning for nonlinear dynamics
    Gilpin, William
    NATURE REVIEWS PHYSICS, 2024, 6 (03) : 194 - 206
  • [10] Accelerated antimicrobial discovery via deep generative models and molecular dynamics simulations
    Payel Das
    Tom Sercu
    Kahini Wadhawan
    Inkit Padhi
    Sebastian Gehrmann
    Flaviu Cipcigan
    Vijil Chenthamarakshan
    Hendrik Strobelt
    Cicero dos Santos
    Pin-Yu Chen
    Yi Yan Yang
    Jeremy P. K. Tan
    James Hedrick
    Jason Crain
    Aleksandra Mojsilovic
    Nature Biomedical Engineering, 2021, 5 : 613 - 623