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Coupling dynamics and evolutionary information with structure to identify protein regulatory and functional binding sites

机译:耦合动力学与含有结构的进化信息,鉴定蛋白调节和功能结合位点

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Abstract Binding sites in proteins can be either specifically functional binding sites (active sites) that bind specific substrates with high affinity or regulatory binding sites (allosteric sites), that modulate the activity of functional binding sites through effector molecules. Owing to their significance in determining protein function, the identification of protein functional and regulatory binding sites is widely acknowledged as an important biological problem. In this work, we present a novel binding site prediction method, Active and Regulatory site Prediction (AR‐Pred), which supplements protein geometry, evolutionary, and physicochemical features with information about protein dynamics to predict putative active and allosteric site residues. As the intrinsic dynamics of globular proteins plays an essential role in controlling binding events, we find it to be an important feature for the identification of protein binding sites. We train and validate our predictive models on multiple balanced training and validation sets with random forest machine learning and obtain an ensemble of discrete models for each prediction type. Our models for active site prediction yield a median area under the curve (AUC) of 91% and Matthews correlation coefficient (MCC) of 0.68, whereas the less well‐defined allosteric sites are predicted at a lower level with a median AUC of 80% and MCC of 0.48. When tested on an independent set of proteins, our models for active site prediction show comparable performance to two existing methods and gains compared to two others, while the allosteric site models show gains when tested against three existing prediction methods. AR‐Pred is available as a free downloadable package at https://github.com/sambitmishra0628/AR-PRED_source .
机译:蛋白质中的抽象结合位点可以是特异性的结合位点(活性位点),其结合具有高亲和力或调节粘合位点(变构位点)的特异性底物,其通过效应分子调节功能结合位点的活性。由于其在确定蛋白质功能方面的重要性,蛋白质功能和调节结合位点的鉴定被广泛被认为是一个重要的生物学问题。在这项工作中,我们提出了一种新的结合位点预测方法,有源和调节部位预测(AR-PREG),其补充蛋白质几何形状,进化和物理化学特征,其中包含有关蛋白质动力学的信息,以预测推定的活性和变构位点残留物。随着球状蛋白质的内在动态在控制结合事件中起重要作用,我们发现它是鉴定蛋白质结合位点的重要特征。我们培训并验证我们在多个平衡训练和验证组上进行预测模型,随机林机器学习,获取每个预测类型的离散模型的集合。我们的主动部位预测的模型在91%的曲线(AUC)下产生的中位数,Matthews相关系数(MCC)为0.68,而较少明确的颠覆位点预测为80%的中位数AUC和mcc为0.48。当在一组独立的蛋白质上进行测试时,我们的主动站点预测的模型会显示与其他两个现有方法和增益相比的相当性能,而颠振站模型在针对三种现有预测方法测试时显示出增益。 AR-PRED可作为HTTPS://github.com/sambitmishra0628/ar-pred_source的免费可下载包。

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