Machine learning in molecular biophysics: Protein allostery, multi-level free energy simulations, and lipid phase transitions.

IF 3.4 Q2 BIOPHYSICS
Biophysics reviews Pub Date : 2025-02-12 eCollection Date: 2025-03-01 DOI:10.1063/5.0248589
Qiang Cui
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引用次数: 0

Abstract

Machine learning (ML) techniques have been making major impacts on all areas of science and engineering, including biophysics. In this review, we discuss several applications of ML to biophysical problems based on our recent research. The topics include the use of ML techniques to identify hotspot residues in allosteric proteins using deep mutational scanning data and to analyze how mutations of these hotspots perturb co-operativity in the framework of a statistical thermodynamic model, to improve the accuracy of free energy simulations by integrating data from different levels of potential energy functions, and to determine the phase transition temperature of lipid membranes. Through these examples, we illustrate the unique value of ML in extracting patterns or parameters from complex data sets, as well as the remaining limitations. By implementing the ML approaches in the context of physically motivated models or computational frameworks, we are able to gain a deeper mechanistic understanding or better convergence in numerical simulations. We conclude by briefly discussing how the introduced models can be further expanded to tackle more complex problems.

分子生物物理学中的机器学习:蛋白质变构、多层次自由能模拟和脂质相变。
机器学习(ML)技术已经对包括生物物理学在内的所有科学和工程领域产生了重大影响。在本文中,我们根据我们最近的研究,讨论了机器学习在生物物理问题中的几个应用。主题包括使用ML技术利用深度突变扫描数据识别变构蛋白中的热点残基,分析这些热点的突变如何在统计热力学模型框架下干扰协同作用,通过整合来自不同水平势能函数的数据来提高自由能模拟的准确性,以及确定脂质膜的相变温度。通过这些例子,我们说明了机器学习在从复杂数据集中提取模式或参数方面的独特价值,以及其他局限性。通过在物理驱动模型或计算框架的背景下实现ML方法,我们能够在数值模拟中获得更深层次的机制理解或更好的收敛性。最后,我们简要讨论了如何进一步扩展所引入的模型以解决更复杂的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
3.60
自引率
0.00%
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