ATOMDANCE: Kernel-based denoising and choreographic analysis for protein dynamic comparison

被引:1
|
作者
Babbitt, Gregory A. [1 ]
Rajendran, Madhusudan [1 ]
Lynch, Miranda L. [2 ]
Asare-Bediako, Richmond [1 ]
Mouli, Leora T. [1 ]
Ryan, Cameron J. [3 ]
Srivastava, Harsh [4 ]
Rynkiewicz, Patrick [1 ]
Phadke, Kavya [1 ]
Reed, Makayla L. [1 ]
Moore, Nadia [1 ]
Ferran, Maureen C. [1 ]
Fokoue, Ernest P. [5 ]
机构
[1] Rochester Inst Technol, Thomas H Gosnell Sch Life Sci, Rochester, NY 14623 USA
[2] Hauptmann Woodward Med Res Inst, Buffalo, NY USA
[3] McQuaid Jesuit High Sch Comp Club, Rochester, NY USA
[4] NYU, Rochester, NY USA
[5] Rochester Inst Technol, Sch Math Sci, Rochester, NY 14624 USA
关键词
PARTICLE MESH EWALD; MOLECULAR-DYNAMICS; ALLOSTERY; ACTIVATION; SOFTWARE; GUI;
D O I
10.1016/j.bpj.2024.03.024
中图分类号
Q6 [生物物理学];
学科分类号
071011 ;
摘要
Comparative methods in molecular evolution and structural biology rely heavily upon the site-wise analysis of DNA sequence and protein structure, both static forms of information. However, it is widely accepted that protein function results from nanoscale nonrandom machine-like motions induced by evolutionarily conserved molecular interactions. Comparisons of molecular dynamics (MD) simulations conducted between homologous sites representative of different functional or mutational states can potentially identify local effects on binding interaction and protein evolution. In addition, comparisons of different (i.e., nonhomologous) sites within MD simulations could be employed to identify functional shifts in local time-coordinated dynamics indicative of logic gating within proteins. However, comparative MD analysis is challenged by the large fraction of protein motion caused by random thermal noise in the surrounding solvent. Therefore, properly denoised MD comparisons could reveal functional sites involving these machine-like dynamics with good accuracy. Here, we introduce ATOMDANCE, a user-interfaced suite of comparative machine learning-based denoising tools designed for identifying functional sites and the patterns of coordinated motion they can create within MD simulations. ATOMDANCE-maxDemon4.0 employs Gaussian kernel functions to compute site-wise maximum mean discrepancy between learned features of motion, thereby assessing denoised differences in the nonrandom motions between functional or evolutionary states (e.g., ligand bound versus unbound, wild-type versus mutant). ATOMDANCE-maxDemon4.0 also employs maximum mean discrepancy to analyze potential random amino acid replacements allowing for a site-wise test of neutral versus nonneutral evolution on the divergence of dynamic function in protein homologs. Finally, ATOMDANCE-Choreograph2.0 employs mixed-model analysis of variance and graph network to detect regions where time-synchronized shifts in dynamics occur. Here, we demonstrate ATOMDANCE's utility for identifying key sites involved in dynamic responses during functional binding interactions involving DNA, small-molecule drugs, and virus-host recognition, as well as understanding shifts in global and local site coordination occurring during allosteric activation of a pathogenic protease.
引用
收藏
页码:2705 / 2715
页数:11
相关论文
共 50 条
  • [1] Efficient image denoising with heterogeneous kernel-based CNN
    Hu, Yuxuan
    Tian, Chunwei
    Zhang, Jian
    Zhang, Shichao
    [J]. NEUROCOMPUTING, 2024, 592
  • [2] A kernel-based Perceptron with dynamic memory
    He, Wenwu
    Wu, Si
    [J]. NEURAL NETWORKS, 2012, 25 : 106 - 113
  • [3] GENERALIZED KERNEL-BASED DYNAMIC MODE DECOMPOSITION
    Heas, Patrick
    Herzet, Cedric
    Combes, Benoit
    [J]. 2020 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH, AND SIGNAL PROCESSING, 2020, : 3877 - 3881
  • [4] Regularized kernel-based Wiener filtering - Application to magnetoencephalographic signals denoising
    Constantin, I
    Richard, C
    Lengelle, R
    Soufflet, L
    [J]. 2005 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH, AND SIGNAL PROCESSING, VOLS 1-5: SPEECH PROCESSING, 2005, : 289 - 292
  • [5] A kernel-based image denoising method for improving parametric image generation
    Huang, Hsuan-Ming
    Lin, Chieh
    [J]. MEDICAL IMAGE ANALYSIS, 2019, 55 : 41 - 48
  • [6] Kernel-Based Models for System Analysis
    van Waarde, Henk J.
    Sepulchre, Rodolphe
    [J]. IEEE TRANSACTIONS ON AUTOMATIC CONTROL, 2023, 68 (09) : 5317 - 5332
  • [7] Kernel-Based Analysis of Massive Data
    Mhaskar, Hrushikesh N.
    [J]. FRONTIERS IN APPLIED MATHEMATICS AND STATISTICS, 2020, 6
  • [8] Learning kernel-based HMMs for dynamic sequence synthesis
    Wang, TS
    Zheng, NN
    Li, Y
    Xu, YQ
    Shum, HY
    [J]. 10TH PACIFIC CONFERENCE ON COMPUTER GRAPHICS AND APPLICATIONS, PROCEEDINGS, 2002, : 87 - 95
  • [9] Learning kernel-based HMMs for dynamic sequence synthesis
    Wang, Tian-Shu
    Zheng, Nan-Ning
    Li, Yan
    Xu, Ying-Qing
    Shum, Heung-Yeung
    [J]. Jisuanji Xuebao/Chinese Journal of Computers, 2003, 26 (02): : 153 - 159
  • [10] Learning kernel-based HMMs for dynamic sequence synthesis
    Wang, TS
    Zheng, NN
    Li, Y
    Xu, YQ
    Shum, HY
    [J]. GRAPHICAL MODELS, 2003, 65 (04) : 206 - 221