探索神经网络,揭示蛋白质相互作用预测的信息丰富特征。

IF 2.2 4区 生物学 Q3 BIOPHYSICS
Greta Grassmann, Lorenzo Di Rienzo, Giancarlo Ruocco, Edoardo Milanetti, Mattia Miotto
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引用次数: 0

摘要

在拥挤的细胞环境中移动,蛋白质必须以高特异性识别和结合彼此。这种特异性反映在相互作用区域核心的几何和化学互补性的结合,最终影响结合稳定性。利用这种特殊的互补模式,我们最近开发了CIRNet,这是一种神经网络架构,能够识别蛋白质核心相互作用残基对,并通过重新缩放所提出的姿态来辅助对接算法。在这里,我们详细分析了CIRNet使用的几何和化学描述符,研究了其决策过程,以更深入地了解蛋白质-蛋白质结合的相互作用及其相互依赖性。具体来说,我们定量评估了(i)化学和物理特征在网络训练中的相对重要性以及(ii)它们在蛋白质界面上的相互作用。我们发现形状和疏水-亲水性互补性包含了对分类结果最具预测性的信息。单纯的静电互补性并不能达到很高的分类精度,但需要提高学习效率。最终,我们的研究结果表明,识别信息密度最高的特征可以增强我们对核心界面中驱动蛋白质相互作用机制的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring neural networks to uncover information-richer features for protein interaction prediction.

Moving in a crowded cellular environment, proteins have to recognize and bind to each other with high specificity. This specificity reflects in a combination of geometric and chemical complementarities at the core of interacting regions that ultimately influences binding stability. Exploiting such peculiar complementarity patterns, we recently developed CIRNet, a neural network architecture capable of identifying pairs of protein core interacting residues and assisting docking algorithms by rescaling the proposed poses. Here, we present a detailed analysis of the geometric and chemical descriptors utilized by CIRNet, investigating its decision-making process to gain deeper insights into the interactions governing protein-protein binding and their interdependence. Specifically, we quantitatively assess (i) the relative importance of chemical and physical features in network training and (ii) their interplay at protein interfaces. We show that shape and hydrophobic-hydrophilic complementarities contain the most predictive information about the classification outcome. Electrostatic complementarity alone does not achieve high classification accuracy but is required to boost learning. Ultimately, our findings suggest that identifying the most information-dense features may enhance our understanding of the mechanisms driving protein-protein interactions at core interfaces.

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来源期刊
European Biophysics Journal
European Biophysics Journal 生物-生物物理
CiteScore
4.30
自引率
0.00%
发文量
43
审稿时长
6-12 weeks
期刊介绍: The journal publishes papers in the field of biophysics, which is defined as the study of biological phenomena by using physical methods and concepts. Original papers, reviews and Biophysics letters are published. The primary goal of this journal is to advance the understanding of biological structure and function by application of the principles of physical science, and by presenting the work in a biophysical context. Papers employing a distinctively biophysical approach at all levels of biological organisation will be considered, as will both experimental and theoretical studies. The criteria for acceptance are scientific content, originality and relevance to biological systems of current interest and importance. Principal areas of interest include: - Structure and dynamics of biological macromolecules - Membrane biophysics and ion channels - Cell biophysics and organisation - Macromolecular assemblies - Biophysical methods and instrumentation - Advanced microscopics - System dynamics.
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