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Reconstructing Mutational Pathways from Serial Evolutionary Trees

机译:从串行进化树重建突变途径

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RNA viruses like HIV and HCV have an extraordinary evolutionary potential to escape from both immune pressures and targeted drug therapies. In HIV infections, the emergence of drug resistant strains is of particular interest, as it complicates the choice of an optimal follow-up regimen. A series of bioinformatics tools for predicting drug resistance were previously developed to support physicians in this task. A new method is proposed that captures the order of occurrence of drug-resistant mutationsand can be applied to serially-sampled viral sequence data from patients taking antiretroviral drugs. The new phylogenetic approach reduces a serial evolutionary tree inferred by the Sliding MinPD program [12] to a set of rnutational pathways of drug resistance. The method is applied to data from an HIV-1 clinical study of the reverse transcriptase inhibitor, Efavirenz. This approach can effectively identify mutational pathways by considering all available information and the statistical support for each prediction.
机译:像HIV和HCV这样的RNA病毒具有非凡的进化潜力,可以逃避免疫压力和靶向药物疗法。在HIV感染中,耐药菌株的出现特别感兴趣,因为它使最佳随访方案的选择复杂化。以前发达了一系列用于预测耐药性的生物信息学工具,以支持这项任务中的医生。提出了一种新方法,以捕获耐药性突变的发生顺序,可以应用于服用抗逆转录病毒药物的患者的连续采样的病毒序列数据。新的系统发育方法减少了将滑模编程[12]推断出串行进化树[12]到耐药性的一组rnutational途径。该方法应用于逆转录酶抑制剂的HIV-1临床研究的数据,Efavirenz。这种方法可以通过考虑所有可用信息和对每个预测的统计支持来有效地识别突变途径。

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