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首页> 外文期刊>European Journal of Medicinal Chemistry: Chimie Therapeutique >Prediction of HIV-1 protease inhibitor resistance by Molecular Modeling Protocols (MMPs) using GenMoltrade mark software.
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Prediction of HIV-1 protease inhibitor resistance by Molecular Modeling Protocols (MMPs) using GenMoltrade mark software.

机译:使用GenMoltrade mark软件通过分子建模协议(MMP)预测HIV-1蛋白酶抑制剂的耐药性。

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摘要

This paper investigates the contribution of Molecular Modeling to (i) predict and (ii) understand more fundamentally HIV drug resistance. Based on a new automated GenMoltrade mark module, these goals are approached by Molecular Modeling Protocols (MMPs), respectively, (i) the Molecular Modeling Phenotype Protocol (MMPP) and (ii) the Molecular Modeling Phenotype-Genotype Protocol (MMGPP). Section 2 recalls clinical practice with a reference case study and Section 3 presents atomistic simulation tools. Section 4 is the heart of the paper. In Section 4.1, MMPP drug resistance prediction is based on correlations between fold resistances versus binding energies on 2959 HIV-1 complexes with 6 protease inhibitors. Based on a drug sensitivity twofold criterion, modeling prediction is able to replace long and costly phenotype tests. In Section 4.2, MMGPP enlightens drug resistance by investigating steric and energetic residues/inhibitor interaction. Section 5 gives a synthesis on modeling contribution to drug resistance prediction. In conclusion, the most promising trend consists of MMP automats that are able to suggest a real time diagnosis taking into account the history of each patient, to enrich databases and to develop therapy strategy and new drugs.
机译:本文研究了分子模型对(i)预测和(ii)从根本上了解HIV耐药性的贡献。基于新的自动GenMoltrade商标模块,分别通过分子建模协议(MMP)来实现这些目标,(i)分子建模表型协议(MMPP)和(ii)分子建模表型-基因型协议(MMGPP)。第2节回顾了参考案例研究的临床实践,第3节介绍了原子模拟工具。第四部分是本文的核心。在第4.1节中,MMPP耐药性预测基于2959种带有6种蛋白酶抑制剂的HIV-1复合物的抗折性与结合能之间的相关性。基于药物敏感性双重标准,建模预测能够代替长期且昂贵的表型测试。在第4.2节中,MMGPP通过研究空间和高能残基/抑制剂的相互作用来提高耐药性。第5节对建模对耐药性预测的贡献进行了综合。总之,最有希望的趋势包括MMP自动机,这些自动机能够根据每个患者的病史,提出实时诊断,丰富数据库并开发治疗策略和新药。

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