用机器学习技术预测HIV和其他慢病毒的二硫化物结合

Anubha Dubey
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引用次数: 0

摘要

将二硫键引入蛋白质是蛋白质进化和正在进化的重要机制。大多数蛋白质二硫化物键是稳定三级和四级蛋白质结构的基序。这些键也被认为通过减少未展开形式的熵来帮助蛋白质折叠。氨基酸半胱氨酸在二硫键的形成中起着重要作用。在本研究中,通过机器学习模型研究了HIV中二硫键的蛋白质组学,该模型已经开发出来,可以对不同种类的慢病毒,如牛免疫缺陷病毒(BIV)、猴免疫缺陷病毒(SIV)、猫免疫缺陷病毒、鼠感染病毒(MIV)、马传染性贫血病毒(EIV)和人类免疫缺陷病毒(HIV)的二硫键进行分类。通过预测这些病毒之间的二硫化物结合,还研究了系统发育关系。因此,通过不同的WEKA分类器算法,J48预测的分类准确率达到89.6104%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Prediction of Disulphide Bonding in HIV and other lenti-viruses by Machine Learning Techniques
The introduction of disulphide bonds into proteins is an important mechanism by which they have evolved and are evolving. Most protein disulphide bonds are motifs that stabilize the tertiary and quaternary protein structure. These bonds also thought to assist protein folding by decreasing the entropy of the unfolded form. Amino acid cysteine plays a fundamental role in formation of disulphide bonds. In the present study, proteomics of disulphide bonding in HIV is studied through a machine learning model which has been developed to classify disulphide bonds from different species of lentiviruses like bovine immunodeficiency virus (BIV), simian immunodeficiency virus (SIV), Feline immunodeficiency virus, murine infectious virus (MIV) and equine infectious anaemia virus (EIV) and Human immunodeficiency virus (HIV). Phylogenetic relationship is also studied by the prediction of disulphide bonding among these viruses. Hence by different algorithms of WEKA classifier J48 predicts better classification with an accuracy of 89.6104%.
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