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蛋白质中氨基酸模式的可解释机器学习:一种统计集成方法。

Interpretable Machine Learning of Amino Acid Patterns in Proteins: A Statistical Ensemble Approach.

机构信息

Department of Physics and Astronomy, University of Padova, Via Marzolo 8, 35131 Padua, Italy.

INFN, Sezione di Padova, Via Marzolo 8, 35131 Padua, Italy.

出版信息

J Chem Theory Comput. 2023 Sep 12;19(17):6011-6022. doi: 10.1021/acs.jctc.3c00383. Epub 2023 Aug 8.

Abstract

Explainable and interpretable unsupervised machine learning helps one to understand the underlying structure of data. We introduce an ensemble analysis of machine learning models to consolidate their interpretation. Its application shows that restricted Boltzmann machines compress consistently into a few bits the information stored in a sequence of five amino acids at the start or end of α-helices or β-sheets. The weights learned by the machines reveal unexpected properties of the amino acids and the secondary structure of proteins: (i) His and Thr have a negligible contribution to the amphiphilic pattern of α-helices; (ii) there is a class of α-helices particularly rich in Ala at their end; (iii) Pro occupies most often slots otherwise occupied by polar or charged amino acids, and its presence at the start of helices is relevant; (iv) Glu and especially Asp on one side and Val, Leu, Iso, and Phe on the other display the strongest tendency to mark amphiphilic patterns, i.e., extreme values of an , though they are not the most powerful (non)hydrophobic amino acids.

摘要

可解释和可理解的无监督机器学习有助于理解数据的底层结构。我们引入了机器学习模型的集成分析来整合它们的解释。它的应用表明,受限玻尔兹曼机将α-螺旋或β-折叠起始或结束处五个氨基酸序列中的信息一致地压缩到几个比特中。机器学习到的权重揭示了氨基酸和蛋白质二级结构的意外性质:(i)His 和 Thr 对α-螺旋的两亲性模式几乎没有贡献;(ii)有一类α-螺旋在其末端特别富含 Ala;(iii)Pro 经常占据原本由极性或带电氨基酸占据的位置,其在螺旋起始处的存在是相关的;(iv)Glu 和特别是 Asp 一侧以及 Val、Leu、Iso 和 Phe 另一侧显示出标记两亲性模式的最强趋势,即极端值的 an ,尽管它们不是最强大的(非)疏水性氨基酸。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3252/10500975/b2fbe805c9d6/ct3c00383_0001.jpg

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