蛋白质力学与机器学习相结合的最新进展

IF 4.3 3区 工程技术 Q2 MATERIALS SCIENCE, MULTIDISCIPLINARY Extreme Mechanics Letters Pub Date : 2024-09-20 DOI:10.1016/j.eml.2024.102236
Yen-Lin Chen , Shu-Wei Chang
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引用次数: 0

摘要

力学是蛋白质特性和行为的基础。从理论角度看,可以根据物理规则推导出这些特性和行为。然而,生物系统的复杂性和当前的计算速度限制了其可行性。机器学习(ML)架构以其对复杂数据(如蛋白质力学、特性和行为之间的关系)进行推断的能力而著称。在预测结构、稳定性、固有频率、机械强度、折叠率、溶解度和功能等任务中,人们为学习这些相关性做出了巨大努力。这些特性中的每一个都通过蛋白质力学相互关联,因此这些任务中使用的方法在模型输入和结构上高度重叠也就不足为奇了。在这篇综述中,我们将评估上述七种预测任务的 ML 方法,以确定当前蛋白质科学领域的 ML 研究趋势,重点关注每种方法的输入和模型架构。此外,我们还简要介绍了全新蛋白质设计。最后,我们强调了蛋白质科学领域应用 ML 方法的趋势以及未来改进的方向。
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Recent advances in the integration of protein mechanics and machine learning
Mechanics underlies protein properties and behavior. From a theoretical standpoint, it is possible to derive these based on physical rules. This is appealing because they provide insights into physiology and disease, as well as aid in protein engineering; however, the convoluted nature of the biological system and current computational speeds limit its feasibility. Machine learning (ML) architectures are known for their ability to make inferences on complex data, such as the relationship between protein mechanics, properties, and behavior. Substantial efforts have been made to learn such correlations in tasks such as the prediction of structure, stability, natural frequency, mechanical strength, folding rate, solubility, and function. Each of these properties is interconnected through protein mechanics, and it is not surprising that the methods used in these tasks overlap highly in model input and architecture. In this review, we evaluate ML methods for the seven aforementioned prediction tasks to identify current trends in ML research in the field of protein sciences, focusing on the input and model architecture of each method. A short overview of de novo protein design is also provided. Finally, we highlight trends in the application of ML methods in the field of protein science, as well as directions for future improvements.
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来源期刊
Extreme Mechanics Letters
Extreme Mechanics Letters Engineering-Mechanics of Materials
CiteScore
9.20
自引率
4.30%
发文量
179
审稿时长
45 days
期刊介绍: Extreme Mechanics Letters (EML) enables rapid communication of research that highlights the role of mechanics in multi-disciplinary areas across materials science, physics, chemistry, biology, medicine and engineering. Emphasis is on the impact, depth and originality of new concepts, methods and observations at the forefront of applied sciences.
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