Deep learning the structural determinants of protein biochemical properties by comparing structural ensembles with DiffNets

被引:0
|
作者
Michael D. Ward
Maxwell I. Zimmerman
Artur Meller
Moses Chung
S. J. Swamidass
Gregory R. Bowman
机构
[1] Washington University School of Medicine,Department of Biochemistry & Molecular Biophysics
[2] Washington University in St. Louis,Center for the Science and Engineering of Living Systems
[3] Washington University School of Medicine,Department of Pathology & Immunology
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Understanding the structural determinants of a protein’s biochemical properties, such as activity and stability, is a major challenge in biology and medicine. Comparing computer simulations of protein variants with different biochemical properties is an increasingly powerful means to drive progress. However, success often hinges on dimensionality reduction algorithms for simplifying the complex ensemble of structures each variant adopts. Unfortunately, common algorithms rely on potentially misleading assumptions about what structural features are important, such as emphasizing larger geometric changes over smaller ones. Here we present DiffNets, self-supervised autoencoders that avoid such assumptions, and automatically identify the relevant features, by requiring that the low-dimensional representations they learn are sufficient to predict the biochemical differences between protein variants. For example, DiffNets automatically identify subtle structural signatures that predict the relative stabilities of β-lactamase variants and duty ratios of myosin isoforms. DiffNets should also be applicable to understanding other perturbations, such as ligand binding.
引用
收藏
相关论文
共 50 条
  • [1] Deep learning the structural determinants of protein biochemical properties by comparing structural ensembles with DiffNets
    Ward, Michael D.
    Zimmerman, Maxwell, I
    Meller, Artur
    Chung, Moses
    Swamidass, S. J.
    Bowman, Gregory R.
    NATURE COMMUNICATIONS, 2021, 12 (01)
  • [2] Diffnets for Deep Learning the Structural Determinants of Proteins Biochemical Properties by Comparing Different Structural Ensembles
    Ward, Michael D.
    Zimmerman, Maxwell
    Swamidass, S. Joshua
    Bowman, Gregory
    BIOPHYSICAL JOURNAL, 2021, 120 (03) : 299A - 299A
  • [3] Comparing structural ensembles with DiffNets helps explain the activation mechanism of the SARS-CoV-2 protein NSP16
    Ward, Michael D.
    BIOPHYSICAL JOURNAL, 2022, 121 (03) : 457A - 457A
  • [4] Protein structural alignment using deep learning
    Li, Wei
    NATURE GENETICS, 2023, 55 (10) : 1609 - 1609
  • [5] Protein structural alignment using deep learning
    Wei Li
    Nature Genetics, 2023, 55 : 1609 - 1609
  • [6] Deep Learning in Protein Structural Modeling and Design
    Gao, Wenhao
    Mahajan, Sai Pooja
    Sulam, Jeremias
    Gray, Jeffrey J.
    PATTERNS, 2020, 1 (09):
  • [7] Structural determinants of protein folding
    Kang, Tse Siang
    Kini, R. Manjunatha
    CELLULAR AND MOLECULAR LIFE SCIENCES, 2009, 66 (14) : 2341 - 2361
  • [8] Structural determinants of protein folding
    Tse Siang Kang
    R. Manjunatha Kini
    Cellular and Molecular Life Sciences, 2009, 66 : 2341 - 2361
  • [9] Characterizing Order and Disorder of Protein Structural Ensembles
    Fisher, Charles K.
    Stultz, Collin M.
    BIOPHYSICAL JOURNAL, 2011, 100 (03) : 372 - 372
  • [10] Predicting protein dynamics from structural ensembles
    Copperman, J.
    Guenza, M. G.
    JOURNAL OF CHEMICAL PHYSICS, 2015, 143 (24):