Department of Chemical and Biological Engineering, University of Colorado Boulder, Boulder, Colorado, USA.
Department of Microbiology and Immunology, University of Illinois Chicago, Chicago, Illinois, USA.
J Virol. 2018 May 14;92(11). doi: 10.1128/JVI.02098-17. Print 2018 Jun 1.
Hepatitis C virus (HCV) infection is a global health problem, with nearly 2 million new infections occurring every year and up to 85% of these infections becoming chronic infections that pose serious long-term health risks. To effectively reduce the prevalence of HCV infection and associated diseases, it is important to understand the intracellular dynamics of the viral life cycle. Here, we present a detailed mathematical model that represents the full hepatitis C virus life cycle. It is the first full HCV model to be fit to acute intracellular infection data and the first to explore the functions of distinct viral proteins, probing multiple hypotheses of - and -acting mechanisms to provide insights for drug targeting. Model parameters were derived from the literature, experiments, and fitting to experimental intracellular viral RNA, extracellular viral titer, and HCV core and NS3 protein kinetic data from viral inoculation to steady state. Our model predicts higher rates for protein translation and polyprotein cleavage than previous replicon models and demonstrates that the processes of translation and synthesis of viral RNA have the most influence on the levels of the species we tracked in experiments. Overall, our experimental data and the resulting mathematical infection model reveal information about the regulation of core protein during infection, produce specific insights into the roles of the viral core, NS5A, and NS5B proteins, and demonstrate the sensitivities of viral proteins and RNA to distinct reactions within the life cycle. We have designed a model for the full life cycle of hepatitis C virus. Past efforts have largely focused on modeling hepatitis C virus replicon systems, in which transfected subgenomic HCV RNA maintains autonomous replication in the absence of virion production or spread. We started with the general structure of these previous replicon models and expanded it to create a model that incorporates the full virus life cycle as well as additional intracellular mechanistic detail. We compared several different hypotheses that have been proposed for different parts of the life cycle and applied the corresponding model variations to infection data to determine which hypotheses are most consistent with the empirical kinetic data. Because the infection data we have collected for this study are a more physiologically relevant representation of a viral life cycle than data obtained from a replicon system, our model can make more accurate predictions about clinical hepatitis C virus infections.
丙型肝炎病毒 (HCV) 感染是一个全球性的健康问题,每年约有 200 万例新感染病例,其中多达 85%的感染会发展为慢性感染,从而带来严重的长期健康风险。为了有效降低 HCV 感染率和相关疾病的发病率,了解病毒生命周期的细胞内动力学至关重要。在此,我们提出了一个详细的数学模型,该模型代表了完整的丙型肝炎病毒生命周期。这是第一个拟合急性细胞内感染数据的完整 HCV 模型,也是第一个探索不同病毒蛋白功能的模型,探究了多个假说和作用机制,为药物靶向提供了见解。模型参数源自文献、实验和对病毒接种至稳定状态的细胞内病毒 RNA、细胞外病毒滴度以及 HCV 核心和 NS3 蛋白动力学数据的拟合。我们的模型预测蛋白翻译和多蛋白切割的速度比以前的复制子模型更快,并表明翻译和病毒 RNA 合成过程对我们在实验中跟踪的物种水平影响最大。总的来说,我们的实验数据和由此产生的数学感染模型揭示了感染过程中核心蛋白调控的信息,对病毒核心、NS5A 和 NS5B 蛋白的作用产生了具体的见解,并展示了病毒蛋白和 RNA 对生命周期内不同反应的敏感性。我们设计了一个丙型肝炎病毒完整生命周期的模型。过去的研究主要集中在丙型肝炎病毒复制子系统的建模上,在该系统中,转染的亚基因组 HCV RNA 在没有病毒粒子产生或传播的情况下维持自主复制。我们从这些以前的复制子模型的一般结构开始,并对其进行扩展,创建了一个模型,该模型包含完整的病毒生命周期以及其他细胞内机制细节。我们比较了几个不同的假说,这些假说分别针对生命周期的不同部分,并将相应的模型变化应用于感染数据,以确定哪些假说与经验性动力学数据最一致。由于我们为这项研究收集的感染数据比从复制子系统获得的数据更能代表病毒生命周期,因此我们的模型可以对临床丙型肝炎病毒感染做出更准确的预测。