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Improving the prediction of disulfide bonds in Eukaryotes with machine learning methods and protein subcellular localization

机译:通过机器学习方法和蛋白质亚细胞定位改善真核生物中二硫键的预测

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Motivation: Disulfide bonds stabilize protein structures and play relevant roles in their functions. Their formation requires an oxidizing environment and their stability is consequently depending on the redox ambient potential, which may differ according to the subcellular compartment. Several methods are available to predict cysteine-bonding state and connectivity patterns. However, none of them takes into consideration the relevance of protein subcellular localization.Results: Here we develop DISLOCATE, a two-step method based on machine learning models for predicting both the bonding state and the connectivity patterns of cysteine residues in a protein chain. We find that the inclusion of protein subcellular localization improves the performance of these predictive steps by 3 and 2 percentage points, respectively. When compared with previously developed methods for predicting disulfide bonds from sequence, DISLOCATE improves the overall performance by more than 10 percentage points.
机译:动机:二硫键可稳定蛋白质结构并在其功能中发挥相关作用。它们的形成需要氧化环境,因此其稳定性取决于氧化还原环境电势,该电势根据亚细胞区室而不同。有几种方法可以预测半胱氨酸键的状态和连通性模式。结果:在这里,我们开发了DISLOCATE,这是一种基于机器学习模型的两步方法,可预测蛋白质链中半胱氨酸残基的键合状态和连通性模式。我们发现,包含蛋白质亚细胞定位可将这些预测步骤的性能分别提高3和2个百分点。与以前开发的根据序列预测二硫键的方法相比,DISLOCATE将整体性能提高了10个百分点以上。

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