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A phylogenetic and Markov model approach for the reconstruction of mutational pathways of drug resistance

机译:系统发育和马尔可夫模型方法重建耐药性突变途径

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摘要

>Motivation: Modern HIV-1, hepatitis B virus and hepatitis C virus antiviral therapies have been successful at keeping viruses suppressed for prolonged periods of time, but therapy failures attributable to the emergence of drug resistant mutations continue to be a distressing reminder that no therapy can fully eradicate these viruses from their host organisms. To better understand the emergence of drug resistance, we combined phylogenetic and statistical models of viral evolution in a 2-phase computational approach that reconstructs mutational pathways of drug resistance.>Results: The first phase of the algorithm involved the modeling of the evolution of the virus within the human host environment. The inclusion of longitudinal clonal sequence data was a key aspect of the model due to the progressive fashion in which multiple mutations become linked in the same genome creating drug resistant genotypes. The second phase involved the development of a Markov model to calculate the transition probabilities between the different genotypes. The proposed method was applied to data from an HIV-1 Efavirenz clinical trial study. The obtained model revealed the direction of evolution over time with greater detail than previous models. Our results show that the mutational pathways facilitate the identification of fast versus slow evolutionary pathways to drug resistance.>Availability: Source code for the algorithm is publicly available at >Contact:
机译:>动机:现代HIV-1,乙型肝炎病毒和丙型肝炎病毒抗病毒疗法已成功地将病毒长时间抑制,但由于耐药性突变的出现而导致的治疗失败仍在继续一个令人痛苦的提醒是,没有任何一种疗法可以从宿主生物中彻底清除这些病毒。为了更好地了解耐药性的出现,我们采用两阶段计算方法结合了病毒进化的系统发育模型和统计模型,该方法重建了耐药性的突变途径。>结果:人类宿主环境中病毒进化的模型。纵向克隆序列数据的纳入是该模型的关键方面,因为这种渐进方式使多个突变在同一基因组中连锁,从而产生了耐药基因型。第二阶段涉及开发马尔可夫模型以计算不同基因型之间的转移概率。拟议的方法应用于HIV-1 Efavirenz临床试验研究的数据。所获得的模型比以前的模型更详细地揭示了随时间变化的演化方向。我们的结果表明,突变途径可促进对耐药性快速进化路径和慢速进化路径的识别。>可用性:该算法的源代码可在>联系人:上公开获得。

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