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Stochastic modelling of genotypic drug-resistance for human immunodeficiency virus towards long-term combination therapy optimization

机译:人类免疫缺陷病毒基因型耐药性的随机建模对长期联合治疗的优化

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MOTIVATION: Several mathematical models have been investigated for the description of viral dynamics in the human body: HIV-1 infection is a particular and interesting scenario, because the virus attacks cells of the immune system that have a role in the antibody production and its high mutation rate permits to escape both the immune response and, in some cases, the drug pressure. The viral genetic evolution is intrinsically a stochastic process, eventually driven by the drug pressure, dependent on the drug combinations and concentration: in this article the viral genotypic drug resistance onset is the main focus addressed. The theoretical basis is the modelling of HIV-1 population dynamics as a predator-prey system of differential equations with a time-dependent therapy efficacy term, while the viral genome mutation evolution follows a Poisson distribution. The instant probabilities of drug resistance are estimated by means of functions trained from in vitro phenotypes, with a roulette-wheel-based mechanisms of resistant selection. Simulations have been designed for treatments made of one and two drugs as well as for combination antiretroviral therapies. The effect of limited adherence to therapy was also analyzed. Sequential treatment change episodes were also exploited with the aim to evaluate optimal synoptic treatment scenarios. RESULTS: The stochastic predator-prey modelling usefully predicted long-term virologic outcomes of evolved HIV-1 strains for selected antiretroviral therapy combinations. For a set of widely used combination therapies, results were consistent with findings reported in literature and with estimates coming from analysis on a large retrospective data base (EuResist).
机译:动机:已经研究了几种数学模型来描述人体中的病毒动力学:HIV-1感染是一种特殊而有趣的情况,因为该病毒攻击了免疫系统中的细胞,这些细胞在抗体的产生及其高水平中起作用。突变率可以逃避免疫反应和某些情况下的药物压力。病毒遗传进化本质上是一个随机过程,最终由药物压力驱动,取决于药物组合和浓度:在本文中,病毒基因型药物耐药性发作是主要研究重点。理论基础是将HIV-1种群动态建模为具有时间依赖的治疗功效项的微分方程的捕食者-猎物系统,而病毒基因组突变的演化遵循泊松分布。通过体外表型训练的功能,以及基于轮盘赌的耐药选择机制,可以估算出耐药性的即时概率。设计了针对一种和两种药物的治疗以及联合抗逆转录病毒疗法的模拟。还分析了有限坚持治疗的效果。为了评估最佳天气治疗方案,还采用了顺序治疗变更事件。结果:随机的捕食者-捕食者模型有效地预测了针对选定的抗逆转录病毒疗法组合的HIV-1病毒株的长期病毒学结果。对于一组广泛使用的联合疗法,结果与文献报道的结果相符,并且与来自大型回顾性数据库(EuResist)的分析得出的估计值相符。

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