McDermott Jason E, Mitchell Hugh D, Gralinski Lisa E, Eisfeld Amie J, Josset Laurence, Bankhead Armand, Neumann Gabriele, Tilton Susan C, Schäfer Alexandra, Li Chengjun, Fan Shufang, McWeeney Shannon, Baric Ralph S, Katze Michael G, Waters Katrina M
Computational Biology and Bioinformatics Group, Pacific Northwest National Laboratory, Richland, WA, 99354, USA.
Department of Epidemiology, University of North Carolina Chapel Hill, Chapel Hill, NC, 27599, USA.
BMC Syst Biol. 2016 Sep 23;10(1):93. doi: 10.1186/s12918-016-0336-6.
The complex interplay between viral replication and host immune response during infection remains poorly understood. While many viruses are known to employ anti-immune strategies to facilitate their replication, highly pathogenic virus infections can also cause an excessive immune response that exacerbates, rather than reduces pathogenicity. To investigate this dichotomy in severe acute respiratory syndrome coronavirus (SARS-CoV), we developed a transcriptional network model of SARS-CoV infection in mice and used the model to prioritize candidate regulatory targets for further investigation.
We validated our predictions in 18 different knockout (KO) mouse strains, showing that network topology provides significant predictive power to identify genes that are important for viral infection. We identified a novel player in the immune response to virus infection, Kepi, an inhibitory subunit of the protein phosphatase 1 (PP1) complex, which protects against SARS-CoV pathogenesis. We also found that receptors for the proinflammatory cytokine tumor necrosis factor alpha (TNFα) promote pathogenesis, presumably through excessive inflammation.
The current study provides validation of network modeling approaches for identifying important players in virus infection pathogenesis, and a step forward in understanding the host response to an important infectious disease. The results presented here suggest the role of Kepi in the host response to SARS-CoV, as well as inflammatory activity driving pathogenesis through TNFα signaling in SARS-CoV infections. Though we have reported the utility of this approach in bacterial and cell culture studies previously, this is the first comprehensive study to confirm that network topology can be used to predict phenotypes in mice with experimental validation.
感染期间病毒复制与宿主免疫反应之间复杂的相互作用仍未得到充分理解。虽然已知许多病毒采用抗免疫策略来促进其复制,但高致病性病毒感染也可引发过度免疫反应,从而加剧而非降低致病性。为了研究严重急性呼吸综合征冠状病毒(SARS-CoV)中的这种二分法,我们构建了小鼠SARS-CoV感染的转录网络模型,并使用该模型对候选调控靶点进行优先级排序以进一步研究。
我们在18种不同的基因敲除(KO)小鼠品系中验证了我们的预测,表明网络拓扑结构具有显著的预测能力,可用于识别对病毒感染重要的基因。我们发现了病毒感染免疫反应中的一个新参与者,Kepi,它是蛋白磷酸酶1(PP1)复合体的抑制亚基,可预防SARS-CoV发病机制。我们还发现促炎细胞因子肿瘤坏死因子α(TNFα)的受体促进发病机制,可能是通过过度炎症反应。
本研究验证了网络建模方法在识别病毒感染发病机制中重要参与者方面的有效性,并在理解宿主对一种重要传染病的反应方面向前迈进了一步。此处呈现的结果表明了Kepi在宿主对SARS-CoV反应中的作用,以及在SARS-CoV感染中通过TNFα信号传导驱动发病机制的炎症活性。虽然我们之前已报道了这种方法在细菌和细胞培养研究中的实用性,但这是第一项通过实验验证证实网络拓扑结构可用于预测小鼠表型的全面研究。