SCREEN: A Graph-based Contrastive Learning Tool to Infer Catalytic Residues and Assess Enzyme Mutations.

Tong Pan, Yue Bi, Xiaoyu Wang, Ying Zhang, Geoffrey I Webb, Robin B Gasser, Lukasz Kurgan, Jiangning Song
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Abstract

The accurate identification of catalytic residues contributes to our understanding of enzyme functions in biological processes and pathways. The increasing number of protein sequences necessitates computational tools for the automated prediction of catalytic residues in enzymes. Here, we introduce SCREEN, a graph neural network for the high-throughput prediction of catalytic residues via the integration of enzyme functional and structural information. SCREEN constructs residue representations based on spatial arrangements and incorporates enzyme function priors into such representations through contrastive learning. We demonstrate that SCREEN (i) consistently outperforms currently-available predictors; (ii) provides accurate.

Results: when applied to inferred enzyme structures; and (iii) generalizes well to enzymes dissimilar from those in the training set. We also show that the putative catalytic residues predicted by SCREEN mimic key structural and biophysical characteristics of native catalytic residues. Moreover, using experimental data sets, we show that SCREEN's predictions can be used to distinguish residues with a high mutation tolerance from those likely to cause functional loss when mutated, indicating that this tool might be used to infer disease-associated mutations. SCREEN is publicly available at https://github.com/BioColLab/SCREEN and https://ngdc.cncb.ac.cn/biocode/tool/7580.

筛选:一个基于图的对比学习工具,以推断催化残基和评估酶突变。
催化残基的准确鉴定有助于我们理解酶在生物过程和途径中的功能。越来越多的蛋白质序列需要计算工具来自动预测酶的催化残基。在这里,我们介绍SCREEN,一个通过整合酶的功能和结构信息来高通量预测催化残基的图神经网络。SCREEN构建基于空间排列的残基表示,并通过对比学习将酶功能先验纳入到残基表示中。我们证明SCREEN (i)始终优于当前可用的预测器;(ii)提供准确。结果:当应用于推断酶结构时;并且(iii)可以很好地推广到与训练集中的酶不同的酶。我们还表明,通过SCREEN预测的推定催化残基模拟了天然催化残基的关键结构和生物物理特征。此外,使用实验数据集,我们表明SCREEN的预测可用于区分具有高突变耐受性的残基与突变时可能导致功能丧失的残基,这表明该工具可用于推断疾病相关突变。SCREEN可在https://github.com/BioColLab/SCREEN和https://ngdc.cncb.ac.cn/biocode/tool/7580公开获取。
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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