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A Rough Set-Based Model of HIV-1 Reverse Transcriptase Resistome

机译:基于粗糙集的HIV-1逆转录酶抵抗力模型

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摘要

Reverse transcriptase (RT) is a viral enzyme crucial for HIV-1 replication. Currently, 12 drugs are targeted against the RT. The low fidelity of the RT-mediated transcription leads to the quick accumulation of drug-resistance mutations. The sequence-resistance relationship remains only partially understood. Using publicly available data collected from over 15 years of HIV proteome research, we have created a general and predictive rule-based model of HIV-1 resistance to eight RT inhibitors. Our rough set-based model considers changes in the physicochemical properties of a mutated sequence as compared to the wild-type strain. Thanks to the application of the Monte Carlo feature selection method, the model takes into account only the properties that significantly contribute to the resistance phenomenon. The obtained results show that drug-resistance is determined in more complex way than believed. We confirmed the importance of many resistance-associated sites, found some sites to be less relevant than formerly postulated and—more importantly—identified several previously neglected sites as potentially relevant. By mapping some of the newly discovered sites on the 3D structure of the RT, we were able to suggest possible molecular-mechanisms of drug-resistance. Importantly, our model has the ability to generalize predictions to the previously unseen cases. The study is an example of how computational biology methods can increase our understanding of the HIV-1 resistome.
机译:逆转录酶(RT)是一种对HIV-1复制至关重要的病毒酶。目前,有12种药物针对RT。 RT介导的转录的低保真度导致耐药性突变的快速积累。序列-电阻关系仅被部分理解。利用从超过15年的HIV蛋白质组学研究中收集到的公开数据,我们创建了基于一般性和预测性规则的HIV-1对8种RT抑制剂耐药的模型。我们的基于粗糙集的模型考虑了与野生型菌株相比突变序列的物理化学性质的变化。由于应用了蒙特卡洛特征选择方法,该模型仅考虑了对电阻现象有重大贡献的特性。获得的结果表明,耐药性的测定方法比人们认为的更为复杂。我们确认了许多与抵抗有关的场所的重要性,发现某些场所的重要性不如以前假定,而且更重要的是,确定了一些先前被忽视的场所可能具有相关性。通过在RT的3D结构上绘制一些新发现的位点,我们能够提出耐药性的可能分子机制。重要的是,我们的模型具有将预测结果推广到以前未见过的情况的能力。该研究是计算生物学方法如何增进我们对HIV-1抵抗力组的了解的一个例子。

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