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Machine learning overcomes human bias in the discovery of self-assembling peptides
被引:0
|作者:
Rohit Batra
Troy D. Loeffler
Henry Chan
Srilok Srinivasan
Honggang Cui
Ivan V. Korendovych
Vikas Nanda
Liam C. Palmer
Lee A. Solomon
H. Christopher Fry
Subramanian K. R. S. Sankaranarayanan
机构:
[1] Center for Nanoscale Materials,Department of Metallurgical and Materials Engineering
[2] Argonne National Laboratory,Department of Mechanical and Industrial Engineering
[3] Indian Institute of Technology (IIT) Madras,Department of Chemical and Biomolecular Engineering
[4] University of Illinois,Department of Chemistry
[5] Johns Hopkins University,Center for Advanced Biotechnology and Medicine
[6] Syracuse University,Department of Chemistry
[7] Rutgers University,Department of Chemistry and Biochemistry
[8] Northwestern University,undefined
[9] George Mason University,undefined
来源:
Nature Chemistry
|
2022年
/
14卷
关键词:
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暂无
中图分类号:
学科分类号:
摘要:
Peptide materials have a wide array of functions, from tissue engineering and surface coatings to catalysis and sensing. Tuning the sequence of amino acids that comprise the peptide modulates peptide functionality, but a small increase in sequence length leads to a dramatic increase in the number of peptide candidates. Traditionally, peptide design is guided by human expertise and intuition and typically yields fewer than ten peptides per study, but these approaches are not easily scalable and are susceptible to human bias. Here we introduce a machine learning workflow—AI-expert—that combines Monte Carlo tree search and random forest with molecular dynamics simulations to develop a fully autonomous computational search engine to discover peptide sequences with high potential for self-assembly. We demonstrate the efficacy of the AI-expert to efficiently search large spaces of tripeptides and pentapeptides. The predictability of AI-expert performs on par or better than our human experts and suggests several non-intuitive sequences with high self-assembly propensity, outlining its potential to overcome human bias and accelerate peptide discovery.
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页码:1427 / 1435
页数:8
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