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抗HIV-1肽的计算预测及HIV-1 P24衍生肽抗HIV-1活性的体外评估

Computational prediction of anti HIV-1 peptides and in vitro evaluation of anti HIV-1 activity of HIV-1 P24-derived peptides.

作者信息

Poorinmohammad Naghmeh, Mohabatkar Hassan, Behbahani Mandana, Biria Davood

机构信息

Department of Biotechnology, Faculty of Advanced Sciences and Technologies, University of Isfahan, Isfahan, Iran.

出版信息

J Pept Sci. 2015 Jan;21(1):10-6. doi: 10.1002/psc.2712. Epub 2014 Nov 19.

Abstract

The world is entering the third decade of the acquired immunodeficiency syndrome (AIDS) pandemic. The primary cause of the disease has known to be human immunodeficiency virus type I (HIV-1). Recently, peptides are shown to have high potency as drugs in the treatment of AIDS. Therefore, in the present study, we have developed a method to predict anti-HIV-1 peptides using support vector machine (SVM) as a powerful machine learning algorithm. Peptide descriptors were represented based on the concept of Chou's pseudo-amino acid composition (PseAAC). HIV-1 P24-derived peptides were examined to predict anti-HIV-1 activity among them. The efficacy of the prediction was then validated in vitro. The mutagenic effect of validated anti-HIV-1 peptides was further investigated by the Ames test. Computational classification using SVM showed the accuracy and sensitivity of 96.76% and 98.1%, respectively. Based on SVM classification algorithm, 3 out of 22 P24-derived peptides were predicted to be anti-HIV-1, while the rest were estimated to be inactive. HIV-1 replication was inhibited by the three predicted anti-HIV-1 peptides as revealed in vitro, while the results of the same test on two of non-anti-HIV-1 peptides showed complete inactivity. The three anti-HIV-1 peptides were shown to be not mutagenic because of the Ames test results. These data suggest that the proposed computational method is highly efficient for predicting the anti-HIV-1 activity of any unknown peptide having only its amino acid sequence. Moreover, further experimental studies can be performed on the mentioned peptides, which may lead to new anti-HIV-1 peptide therapeutics candidates.

摘要

世界正步入获得性免疫缺陷综合征(艾滋病)大流行的第三个十年。已知该疾病的主要病因是I型人类免疫缺陷病毒(HIV-1)。最近,肽类在艾滋病治疗中显示出作为药物的高效能。因此,在本研究中,我们开发了一种使用支持向量机(SVM)作为强大的机器学习算法来预测抗HIV-1肽的方法。基于周的伪氨基酸组成(PseAAC)概念来表示肽描述符。对HIV-1 P24衍生肽进行检测以预测其中的抗HIV-1活性。然后在体外验证预测的有效性。通过艾姆斯试验进一步研究经验证的抗HIV-1肽的诱变作用。使用SVM进行的计算分类显示准确率和灵敏度分别为96.76%和98.1%。基于SVM分类算法,22种P24衍生肽中有3种被预测为抗HIV-1,而其余的估计无活性。如体外实验所示,三种预测的抗HIV-1肽抑制了HIV-1复制,而对两种非抗HIV-1肽进行相同测试的结果显示完全无活性。艾姆斯试验结果表明这三种抗HIV-1肽无诱变作用。这些数据表明,所提出的计算方法对于仅根据氨基酸序列预测任何未知肽的抗HIV-1活性非常高效。此外,可以对上述肽进行进一步的实验研究,这可能会产生新的抗HIV-1肽治疗候选物。

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