Department of Microbiology and Immunology, Medical College of Wisconsin, Milwaukee, WI 53226.
Center of Systems and Molecular Medicine, Medical College of Wisconsin, Milwaukee, WI 53226.
Proc Natl Acad Sci U S A. 2022 Aug 30;119(35):e2201787119. doi: 10.1073/pnas.2201787119. Epub 2022 Aug 22.
Human cytomegalovirus (HCMV) is a major cause of illness in immunocompromised individuals. The HCMV lytic cycle contributes to the clinical manifestations of infection. The lytic cycle occurs over ∼96 h in diverse cell types and consists of viral DNA (vDNA) genome replication and temporally distinct expression of hundreds of viral proteins. Given its complexity, understanding this elaborate system can be facilitated by the introduction of mechanistic computational modeling of temporal relationships. Therefore, we developed a multiplicity of infection (MOI)-dependent mechanistic computational model that simulates vDNA kinetics and late lytic replication based on in-house experimental data. The predictive capabilities were established by comparison to post hoc experimental data. Computational analysis of combinatorial regulatory mechanisms suggests increasing rates of protein degradation in association with increasing vDNA levels. The model framework also allows expansion to account for additional mechanisms regulating the processes. Simulating vDNA kinetics and the late lytic cycle for a wide range of MOIs yielded several unique observations. These include the presence of saturation behavior at high MOIs, inefficient replication at low MOIs, and a precise range of MOIs in which virus is maximized within a cell type, being 0.382 IU to 0.688 IU per fibroblast. The predicted saturation kinetics at high MOIs are likely related to the physical limitations of cellular machinery, while inefficient replication at low MOIs may indicate a minimum input material required to facilitate infection. In summary, we have developed and demonstrated the utility of a data-driven and expandable computational model simulating lytic HCMV infection.
人巨细胞病毒(HCMV)是免疫功能低下个体发病的主要原因。HCMV 裂解周期导致感染的临床表现。在不同的细胞类型中,裂解周期持续约 96 小时,包括病毒 DNA(vDNA)基因组复制和数百种病毒蛋白的时间上有区别的表达。由于其复杂性,通过引入对时间关系的机制性计算建模,可以促进对该复杂系统的理解。因此,我们开发了一种依赖多重感染(MOI)的机制性计算模型,该模型基于内部实验数据模拟 vDNA 动力学和晚期裂解复制。通过与事后实验数据的比较,建立了预测能力。对组合调控机制的计算分析表明,随着 vDNA 水平的升高,蛋白质降解的速度也在增加。该模型框架还允许扩展以考虑调节这些过程的其他机制。对广泛 MOI 范围的 vDNA 动力学和晚期裂解周期进行模拟产生了一些独特的观察结果。这些观察结果包括在高 MOI 时存在饱和行为、在低 MOI 时复制效率低下以及在细胞类型中病毒最大化的特定 MOI 范围内,该范围为每个成纤维细胞 0.382 IU 至 0.688 IU。高 MOI 时预测的饱和动力学可能与细胞机制的物理限制有关,而低 MOI 时复制效率低下可能表明需要最低输入材料来促进感染。总之,我们已经开发并证明了一种数据驱动和可扩展的计算模型模拟裂解性 HCMV 感染的实用性。