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iDVIP:病毒整合酶抑制肽的鉴定与特性分析。

iDVIP: identification and characterization of viral integrase inhibitory peptides.

机构信息

Department of Medical Research, Hsinchu MacKay Memorial Hospital, Hsinchu city 300, Taiwan.

Department of Medicine, MacKay Medical College, New Taipei City 252, Taiwan.

出版信息

Brief Bioinform. 2022 Nov 19;23(6). doi: 10.1093/bib/bbac406.

Abstract

Antiretroviral peptides are a kind of bioactive peptides that present inhibitory activity against retroviruses through various mechanisms. Among them, viral integrase inhibitory peptides (VINIPs) are a class of antiretroviral peptides that have the ability to block the action of integrase proteins, which is essential for retroviral replication. As the number of experimentally verified bioactive peptides has increased significantly, the lack of in silico machine learning approaches can effectively predict the peptides with the integrase inhibitory activity. Here, we have developed the first prediction model for identifying the novel VINIPs using the sequence characteristics, and the hybrid feature set was considered to improve the predictive ability. The performance was evaluated by 5-fold cross-validation based on the training dataset, and the result indicates the proposed model is capable of predicting the VINIPs, with a sensitivity of 85.82%, a specificity of 88.81%, an accuracy of 88.37%, a balanced accuracy of 87.32% and a Matthews correlation coefficient value of 0.64. Most importantly, the model also consistently provides effective performance in independent testing. To sum up, we propose the first computational approach for identifying and characterizing the VINIPs, which can be considered novel antiretroviral therapy agents. Ultimately, to facilitate further research and development, iDVIP, an automatic computational tool that predicts the VINIPs has been developed, which is now freely available at http://mer.hc.mmh.org.tw/iDVIP/.

摘要

抗逆转录病毒肽是一类通过多种机制呈现抗逆转录病毒活性的生物活性肽。其中,病毒整合酶抑制肽(VINIPs)是一类具有阻断整合酶蛋白活性的抗逆转录病毒肽,这对逆转录病毒的复制至关重要。随着经过实验验证的生物活性肽数量的显著增加,缺乏基于计算机的机器学习方法无法有效地预测具有整合酶抑制活性的肽。在这里,我们开发了第一个使用序列特征识别新型 VINIPs 的预测模型,并且考虑了混合特征集来提高预测能力。通过基于训练数据集的 5 倍交叉验证来评估性能,结果表明所提出的模型能够预测 VINIPs,具有 85.82%的敏感性、88.81%的特异性、88.37%的准确性、87.32%的平衡准确性和 0.64 的马修斯相关系数值。最重要的是,该模型在独立测试中也始终提供有效的性能。总之,我们提出了第一个用于识别和表征 VINIPs 的计算方法,它们可以被认为是新型抗逆转录病毒治疗剂。最终,为了促进进一步的研究和开发,我们开发了一个自动计算工具 iDVIP,用于预测 VINIPs,现在可以在 http://mer.hc.mmh.org.tw/iDVIP/ 上免费获得。

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