Rapid prediction of protein natural frequencies using graph neural networks

被引:16
|
作者
Guo, Kai [1 ,2 ]
Buehler, Markus J. [1 ,3 ,4 ]
机构
[1] MIT, Lab Atomist & Mol Mech LAMM, 77 Massachusetts Ave 1-165, Cambridge, MA 02139 USA
[2] ASTAR, Inst High Performance Comp, Singapore 138632, Singapore
[3] MIT, Schwarzman Coll Comp, Ctr Computat Sci & Engn, 77 Massachusetts Ave, Cambridge, MA 02139 USA
[4] Ctr Mat Sci & Engn, 77 Massachusetts Ave, Cambridge, MA 02139 USA
来源
DIGITAL DISCOVERY | 2022年 / 1卷 / 03期
关键词
DESIGN; DISCOVERY; MODES;
D O I
10.1039/d1dd00007a
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Natural vibrational frequencies of proteins help to correlate functional shifts with sequence or geometric variations that lead to negligible changes in protein structures, such as point mutations related to disease lethality or medication effectiveness. Normal mode analysis is a well-known approach to accurately obtain protein natural frequencies. However, it is not feasible when high-resolution protein structures are not available or time consuming to obtain. Here we provide a machine learning model to directly predict protein frequencies from primary amino acid sequences and low-resolution structural features such as contact or distance maps. We utilize a graph neural network called principal neighborhood aggregation, trained with the structural graphs and normal mode frequencies of more than 34 000 proteins from the protein data bank. combining with existing contact/distance map prediction tools, this approach enables an end-to-end prediction of the frequency spectrum of a protein given its primary sequence. We present a computational framework based on graph neural networks (GNNs) to predict the natural frequencies of proteins from primary amino acid sequences and contact/distance maps.
引用
收藏
页码:277 / 285
页数:9
相关论文
共 50 条
  • [31] Property prediction of fuel mixtures using pooled graph neural networks
    Leenhouts, Roel J.
    Larsson, Tara
    Verhelst, Sebastian
    Vermeire, Florence H.
    FUEL, 2025, 381
  • [32] Piezoelectric modulus prediction using machine learning and graph neural networks
    Hu, Jeffrey
    Song, Yuqi
    CHEMICAL PHYSICS LETTERS, 2022, 791
  • [33] Product failure prediction with missing data using graph neural networks
    Kang, Seokho
    NEURAL COMPUTING & APPLICATIONS, 2021, 33 (12): : 7225 - 7234
  • [34] Prediction and mitigation of nonlocal cascading failures using graph neural networks
    Jhun, Bukyoung
    Choi, Hoyun
    Lee, Yongsun
    Lee, Jongshin
    Kim, Cook Hyun
    Kahng, B.
    CHAOS, 2023, 33 (01)
  • [35] CongestionNet: Routing Congestion Prediction Using Deep Graph Neural Networks
    Kirby, Robert
    Godil, Saad
    Roy, Rajarshi
    Catanzaro, Bryan
    2019 IFIP/IEEE 27TH INTERNATIONAL CONFERENCE ON VERY LARGE SCALE INTEGRATION (VLSI-SOC), 2019, : 217 - 222
  • [36] Prediction of effective elastic moduli of rocks using Graph Neural Networks
    Chung, Jaehong
    Ahmad, Rasool
    Sun, Waiching
    Cai, Wei
    Mukerji, Tapan
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2024, 421
  • [37] Causality-based CTR prediction using graph neural networks
    Zhai, Panyu
    Yang, Yanwu
    Zhang, Chunjie
    INFORMATION PROCESSING & MANAGEMENT, 2023, 60 (01)
  • [38] Prediction of Material Properties using Crystal Graph Convolutional Neural Networks
    Durvasula, Harsha
    Sahana, V. K.
    Thazhemadam, Anant
    Roy, Reshma P.
    Arya, Arti
    PROCEEDINGS OF 2022 7TH INTERNATIONAL CONFERENCE ON MACHINE LEARNING TECHNOLOGIES, ICMLT 2022, 2022, : 68 - 73
  • [39] Prediction and interpretation of cancer survival using graph convolution neural networks
    Ramirez, Ricardo
    Chiu, Yu-Chiao
    Zhang, Song Yao
    Ramirez, Joshua
    Chen, Yidong
    Huang, Yufei
    Jin, Yu-Fang
    METHODS, 2021, 192 : 120 - 130
  • [40] Link Prediction Based on Graph Neural Networks
    Zhang, Muhan
    Chen, Yixin
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 31 (NIPS 2018), 2018, 31