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Characterization of Domain-Peptide Interaction Interface

机译:域-肽相互作用界面的表征

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摘要

Extensive efforts have been devoted to determining the binding specificity of Src homology 3 (SH3) domains usually in a case-by-case manner. A generic structure-based model is necessary to decipher the protein recognition code of the entire domain family. In this study, we have developed a general framework that combines molecular modeling and a machine learning algorithm to capture the energetic characteristics of the domain-peptide interactions and predict the binding specificity of the SH3 domain family. Our model is not trained for individual SH3 domains; rather it is a generic model for the entire domain family. Our model not only achieved satisfactory prediction accuracy but also provided structural insights into which residues are important for the binding specificity. The success of our framework on SH3 domains suggests that it is possible to establish a theoretical model to decipher the protein recognition code of any modular domain.
机译:通常已经以逐例的方式进行了大量的努力来确定Src同源性3(SH3)结构域的结合特异性。基于通用结构的模型对于解密整个域家族的蛋白质识别代码是必需的。在这项研究中,我们已经开发了一个综合的框架,该框架结合了分子建模和机器学习算法来捕获域-肽相互作用的能量特征并预测SH3域家族的结合特异性。我们的模型未针对单个SH3域进行训练;而是整个领域家族的通用模型。我们的模型不仅获得了令人满意的预测准确性,而且还提供了结构上的见解,其中残基对于结合特异性很重要。我们关于SH3域的框架的成功表明,有可能建立一个理论模型来解密任何模块化域的蛋白质识别代码。

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