Dhirubhai Ambani Institute of Information and Communication Technology (DAIICT), Gandhinagar, 382007, India.
MRC-University of Glasgow Centre for Virus Research, Glasgow, G61 1QH, Scotland, UK.
Sci Rep. 2019 Feb 14;9(1):2066. doi: 10.1038/s41598-018-38224-9.
In recent years control theory has been applied to biological systems with the aim of identifying the minimum set of molecular interactions that can drive the network to a required state. However, in an intra-cellular network it is unclear how control can be achieved in practice. To address this limitation we use viral infection, specifically human immunodeficiency virus type 1 (HIV-1) and hepatitis C virus (HCV), as a paradigm to model control of an infected cell. Using a large human signalling network comprised of over 6000 human proteins and more than 34000 directed interactions, we compared two states: normal/uninfected and infected. Our network controllability analysis demonstrates how a virus efficiently brings the dynamically organised host system into its control by mostly targeting existing critical control nodes, requiring fewer nodes than in the uninfected network. The lower number of control nodes is presumably to optimise exploitation of specific sub-systems needed for virus replication and/or involved in the host response to infection. Viral infection of the human system also permits discrimination between available network-control models, which demonstrates that the minimum dominating set (MDS) method better accounts for how the biological information and signals are organised during infection by identifying most viral proteins as critical driver nodes compared to the maximum matching (MM) method. Furthermore, the host driver nodes identified by MDS are distributed throughout the pathways enabling effective control of the cell via the high 'control centrality' of the viral and targeted host nodes. Our results demonstrate that control theory gives a more complete and dynamic understanding of virus exploitation of the host system when compared with previous analyses limited to static single-state networks.
近年来,控制理论已被应用于生物系统,旨在确定能够将网络驱动到所需状态的最小分子相互作用集。然而,在细胞内网络中,尚不清楚如何在实践中实现控制。为了解决这一限制,我们使用病毒感染,特别是人类免疫缺陷病毒 1 型(HIV-1)和丙型肝炎病毒(HCV),作为模型来控制感染细胞。使用由超过 6000 个人类蛋白和 34000 多个有向相互作用组成的大型人类信号网络,我们比较了两种状态:正常/未感染和感染。我们的网络可控性分析表明,病毒如何通过主要靶向现有关键控制节点,有效地将动态组织的宿主系统纳入其控制范围,所需的节点比未感染网络少。控制节点的数量较少,可能是为了优化病毒复制所需的特定子系统的利用,或者涉及宿主对感染的反应。人类系统的病毒感染还允许区分可用的网络控制模型,这表明最小支配集(MDS)方法比最大匹配(MM)方法更好地解释了生物信息和信号在感染过程中是如何组织的,因为它将大多数病毒蛋白识别为关键驱动节点。此外,MDS 识别的宿主驱动节点分布在整个通路中,通过病毒和靶向宿主节点的高“控制中心性”,能够有效地控制细胞。我们的结果表明,与以前仅限于静态单状态网络的分析相比,控制理论在比较病毒利用宿主系统时提供了更完整和动态的理解。