Accurate prediction of ATP-binding residues using sequence and sequence-derived structural descriptors

Ke Chen, M. Mizianty, Lukasz Kurgan
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引用次数: 0

Abstract

ATP is a ubiquitous nucleotide that provides energy for cellular activities, catalyzes chemical reactions, and is involved in cellular signaling. The knowledge of the ATP-protein interactions helps with annotation of protein functions and finds applications in drug design. We propose a high-throughput machine learning-based predictor, ATPsite, which identifies ATP-binding residues from protein sequences. Statistical tests show that ATPsite significantly outperforms existing ATPint predictor and other solutions which utilize sequence alignment and residue conservation scoring. The improvements stem from the usage of novel custom-designed input features that are based on the sequence, evolutionary profiles, and the sequence-predicted structural descriptors including secondary structure, solvent accessibility, and dihedral angles. A simple consensus of the ATPsite with the sequence-alignment based predictor is shown to give further improvements.
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使用序列和序列衍生的结构描述子准确预测atp结合残基
ATP是一种普遍存在的核苷酸,为细胞活动提供能量,催化化学反应,并参与细胞信号传导。atp -蛋白质相互作用的知识有助于蛋白质功能的注释,并在药物设计中找到应用。我们提出了一个基于机器学习的高通量预测器,ATPsite,它可以从蛋白质序列中识别atp结合残基。统计测试表明,ATPsite显著优于现有的ATPint预测器和其他利用序列比对和残基守恒评分的解决方案。这些改进源于使用了基于序列、进化剖面和序列预测的结构描述符(包括二级结构、溶剂可及性和二面角)的新型定制设计的输入特征。atp位点与基于序列比对的预测器的简单一致性显示出进一步的改进。
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