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Comparative Exploratory Analysis of Intrinsically Disordered Protein Dynamics using Machine Learning and Network Analytic Methods

机译:使用机器学习和网络分析方法对固有紊乱蛋白质动力学进行比较探索性分析

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Simulations of intrinsically disordered proteins (IDP) pose numerous challenges to comparative analysis, prominently including highly dynamic conformational states and a lack of well-defined secondary structure. Machine learning (ML) algorithms are especially effective at discriminating among high-dimensional inputs whose differences are extremely subtle, making them well suited to the study of IDPs. In this work, we apply various ML techniques, including support vector machines (SVM) and clustering, as well as related methods such as principal component analysis (PCA) and protein structure network (PSN) analysis, to the problem of uncovering differences between configurational data from molecular dynamics simulations of two variants of the same IDP. We examine molecular dynamics (MD) trajectories of wild-type amyloid beta (Abeta 1-40) and its ``Arctic'' variant (E22G), systems that play a central role in the etiology of Alzheimer's disease. Our analyses demonstrate ways in which ML and related approaches can be used to elucidate subtle differences between these proteins, including transient structure that is poorly captured by conventional metrics.
机译:本质上无序的蛋白质(IDP)的模拟对比较分析提出了许多挑战,主要包括高度动态的构象状态和缺乏明确的二级结构。机器学习(ML)算法在区分差异非常细微的高维输入方面特别有效,这使其非常适合IDP的研究。在这项工作中,我们应用了各种机器学习技术,包括支持向量机(SVM)和聚类,以及相关方法(例如主成分分析(PCA)和蛋白质结构网络(PSN)分析)来解决构型之间的差异问题。来自同一IDP的两个变体的分子动力学模拟的数据。我们研究了野生型淀粉样蛋白β(Abeta 1-40)及其``北极''变体(E22G)的分子动力学(MD)轨迹,这些系统在阿尔茨海默氏病的病因中起着关键作用。我们的分析表明,机器学习和相关方法可用于阐明这些蛋白质之间的细微差异,包括常规指标难以捕获的瞬时结构。

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