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Prediction of protein–peptide-binding amino acid residues regions using machine learning algorithms

机译:使用机器学习算法预测蛋白肽结合氨基酸残基区的预测

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In bioinformatics, it remains challenging to predict important amino acid residues for the binding amino acid residues regions and to perform binding region-based protein interactions. The present method focused on predicting protein-peptide binding amino acid residues regions using various distinct feature groups. Therefore, we employed machine learning methods to predict the protein-peptide binding amino acid residues and protein-peptide binding amino acid residues regions. Thus, predicting peptide-binding aminoacid residues regions computationally is useful to improve the efficiency and cost-effectiveness of experimental methods. The proposed method has three phases:pre-processing with normalization, processing with classification algorithm, and post-processing with a clustering algorithm. The proposed machine learning method of SVM+OPTICS achieves robust and consistent results for the prediction of protein–peptide-binding amino acid residues regions in terms of amino acid residues and regions.
机译:在生物信息学中,预测结合氨基酸残基区域的重要氨基酸残基并进行结合区域的蛋白质相互作用仍然挑战。本方法的重点是使用各种不同特征基预测蛋白肽结合氨基酸残基区域。因此,我们使用机器学习方法来预测蛋白质肽结合氨基酸残基和蛋白质肽结合氨基酸残基区域。因此,预测肽结合的氨基酸残基区计算可用于提高实验方法的效率和成本效益。所提出的方法有三个阶段:预处理,具有归一化,用分类算法处理,以及具有聚类算法的后处理。所提出的SVM +光学的机器学习方法实现了在氨基酸残基和区域方面预测蛋白肽结合氨基酸残基区域的稳健和一致的结果。

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