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Prediction of disulfide connectivity in proteins with machine-learning methods and correlated mutations

机译:用机器学习方法和相关突变预测蛋白质中的二硫键连接性

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摘要

BackgroundRecently, information derived by correlated mutations in proteins has regained relevance for predicting protein contacts. This is due to new forms of mutual information analysis that have been proven to be more suitable to highlight direct coupling between pairs of residues in protein structures and to the large number of protein chains that are currently available for statistical validation. It was previously discussed that disulfide bond topology in proteins is also constrained by correlated mutations.
机译:背景技术最近,通过蛋白质中相关突变获得的信息已重新与预测蛋白质接触相关。这是由于新形式的相互信息分析已被证明更适合突出蛋白质结构中的成对残基之间的直接偶联,以及当前可用于统计验证的大量蛋白质链。先前曾讨论过蛋白质中的二硫键拓扑也受相关突变的限制。

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