基于差分进化和支持向量机的蛋白质配体结合位点预测

Ginny Y. Wong, Frank H. F. Leung, Sai Ho Ling
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引用次数: 3

摘要

在基于结构的药物设计和对接算法中,蛋白质-配体结合位点的识别是一项重要任务。近二十年来,人们开发了许多不同的方法来预测结合位点,如几何方法、能量方法和基于序列的方法。在用这些方法计算分数时,分类方法非常重要,对预测结果影响很大。利用改进的支持向量机(SVM)对最有可能结合配体的口袋进行分类,这些口袋具有网格值、相互作用势、与蛋白质的偏移量、守恒分数和口袋周围的信息等属性。由于支持向量机对输入参数敏感,且正样本的相关性大于负样本,因此采用差分进化方法寻找适合支持向量机的参数。我们将我们的算法与其他四种方法进行了比较:LIGSITE、SURFNET、PocketFinder和Concavity。我们的算法被发现提供了最高的成功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting protein-ligand binding site with differential evolution and support vector machine
Identification of protein-ligand binding site is an important task in structure-based drug design and docking algorithms. In these two decades, many different approaches have been developed to predict the binding site, such as geometric, energetic and sequence-based methods. When the scores are calculated from these methods, the method of classification is very important and can affect the prediction results greatly. A developed support vector machine (SVM) is used to classify the pockets, which are most likely to bind ligands with the attributes of grid value, interaction potential, offset from protein, conservation score and the information around the pockets. Since SVM is sensitive to the input parameters and the positive samples are more relevant than negative samples, differential evolution (DE) is applied to find out the suitable parameters for SVM. We compare our algorithm to four other approaches: LIGSITE, SURFNET, PocketFinder and Concavity. Our algorithm is found to provide the highest success rate.
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