首页> 外文期刊>Infection, Genetics and Evolution: Journal of Molecular Epidemiology and Evolutionary Genetics in Infectious Diseases >Exploring resistance pathways for first-generation NS3/4A protease inhibitors boceprevir and telaprevir using Bayesian network learning
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Exploring resistance pathways for first-generation NS3/4A protease inhibitors boceprevir and telaprevir using Bayesian network learning

机译:利用贝叶斯网络学习探索第一代NS3 / 4A蛋白酶抑制剂Boceprevir和Telaprevir的抗性途径

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Resistance-associated variants (RAVs) have been shown to influence treatment response to direct-acting antivirals (DAAs) and first generation NS3/4A protease inhibitors (PIs) in particular. Interpretation of hepatitis C virus (HCV) genotypic drug resistance remains a challenge, especially in patients who previously failed DAA therapy and need to be retreated with a second DAA based regimen. Bayesian network (BN) learning on HCV sequence data from patients treated with DAAs could provide insight in resistance pathways against PIs for HCV subtypes 1a and 1b, in a similar way as applied before for HIV. The publicly available 'Rega-BN' tool chain was developed to study associative analyses for various pathogens. Our first analysis, comparing sequences from PI-naive and PI-experienced patients, determined that NS3 substitutions R155K and V36M arise with PI-exposure in HCV1a infected patients, and were defined as major and minor resistance-associated variants respectively. NS3 variant 174H was newly identified as potentially related to PI resistance. In a second analysis, NS3 sequences from PI-naive patients who cleared the virus during PI therapy and from PI-naive patients who failed PI therapy were compared, showing that NS3 baseline variant 67S predisposes to treatment-failure and variant 72I to treatment success. This approach has the potential to better characterize the role of more RAVs, if sufficient therapy annotated sequence data becomes available in curated public databases. In addition, polymorphisms present in baseline sequences that predispose patients to therapy failure can be identified using this approach. (c) 2017 Elsevier B.V. All rights reserved.
机译:已经显示出抗性相关变体(RAV)以影响对直接作用抗病毒(DAAS)和第一代NS3 / 4A蛋白酶抑制剂(PIS)的治疗响应。对丙型肝炎病毒(HCV)基因型耐药性的解释仍然是一个挑战,特别是在预先发生的患者中,并且需要用基于第二DAA的方案退回的患者。贝叶斯网络(BN)学习用DAAS处理的患者的HCV序列数据可以为HCV亚型1A和1B的PIS提供对抗PIS的抗震途径,以与HIV一起应用类似的方式。公开可用的“Rega-BN”工具链是开发的,以研究各种病原体的关联分析。我们的第一次分析,比较PI-NAIVE和PI经验丰富的患者的序列,确定NS3取代R155K和V36M在HCV1A感染患者中的PI-暴露产生,并且分别被定义为主要和较小的抗性相关变体。 NS3变体174H新识别与PI电阻有可能相关。在第二次分析中,比较PI-Naivive患者的NS3序列,他们在PI治疗期间清除病毒和PI疗法失败的PI-NAIVAL患者,表明NS3基线变体67S易于治疗 - 失败和变体72i以处理成功。如果足够的治疗注释的序列数据在策划的公共数据库中可用,则这种方法有可能更好地表征更多RAV的作用。此外,可以使用这种方法识别在基线序列中存在的基线序列中的多态性,可以使用这种方法来识别患者。 (c)2017 Elsevier B.v.保留所有权利。

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