Prediction of metalloproteinase family based on the concept of Chou's pseudo amino acid composition using a machine learning approach.

Majid Mohammad Beigi, Mohaddeseh Behjati, Hassan Mohabatkar
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引用次数: 111

Abstract

Matrix metalloproteinase (MMPs) and disintegrin and metalloprotease (ADAMs) belong to the zinc-dependent metalloproteinase family of proteins. These proteins participate in various physiological and pathological states. Thus, prediction of these proteins using amino acid sequence would be helpful. We have developed a method to predict these proteins based on the features derived from Chou's pseudo amino acid composition (PseAAC) server and support vector machine (SVM) as a powerful machine learning approach. With this method, for ADAMs and MMPs families, an overall accuracy and Matthew's correlation coefficient (MCC) of 95.89 and 0.90% were achieved respectively. Furthermore, the method is able to predict two major subclasses of MMP family; Furin-activated secreted MMPs and Type II trans-membrane; with MCC of 0.89 and 0.91%, respectively. The overall accuracy for Furin-activated secreted MMPs and Type II trans-membrane was 98.18 and 99.07, respectively. Our data demonstrates an effective classification of Metalloproteinase family based on the concept of PseAAC and SVM.

基于Chou伪氨基酸组成概念的金属蛋白酶家族的机器学习预测。
基质金属蛋白酶(MMPs)和崩解素和金属蛋白酶(ADAMs)属于锌依赖性金属蛋白酶家族。这些蛋白质参与各种生理和病理状态。因此,利用氨基酸序列对这些蛋白质进行预测是有帮助的。我们开发了一种基于Chou的伪氨基酸组成(PseAAC)服务器和支持向量机(SVM)的特征来预测这些蛋白质的方法,作为一种强大的机器学习方法。该方法对ADAMs和MMPs家族的总体准确率和马修相关系数(MCC)分别达到95.89和0.90%。此外,该方法能够预测MMP家族的两个主要亚类;furin激活的分泌型MMPs和II型跨膜;MCC分别为0.89和0.91%。furin激活的分泌型MMPs和II型跨膜的总体准确性分别为98.18和99.07。我们的数据证明了基于PseAAC和SVM概念的金属蛋白酶家族的有效分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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