时间分辨系统医学揭示病毒感染调节宿主目标。

Systems medicine (New Rochelle, N.Y.) Pub Date : 2019-03-28 eCollection Date: 2019-01-01 DOI:10.1089/sysm.2018.0013
Christian Wiwie, Irina Kuznetsova, Ahmed Mostafa, Alexander Rauch, Anders Haakonsson, Inigo Barrio-Hernandez, Blagoy Blagoev, Susanne Mandrup, Harald H H W Schmidt, Stephan Pleschka, Richard Röttger, Jan Baumbach
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引用次数: 10

摘要

导言:耐药感染在世界范围内日益频繁,每年造成数十万人死亡。这在一定程度上是由于人类感染病毒基因组的蛋白质药物靶点非常有限。例如,11种流感病毒蛋白利用宿主细胞因子进行复制并抑制抗病毒免疫反应。系统医学方法确定相关的和可用药的宿主因素将大大扩大治疗选择。然而,迄今为止,治疗靶点识别依赖于静态分子网络,而实际上,特别是在感染期间,相互作用组受到不断变化的影响。方法:我们开发了时间过程网络富集(TiCoNE),这是一种以专家为中心的方法,用于发现时间反应途径。在TiCoNE的第一阶段,时间序列表达数据以人类增强的方式聚类,以识别具有一致时间响应的生物实体组。在整个过程中,专家可以添加、删除、合并或拆分时间模式。然后可以将得到的组映射到一个相互作用网络中,以确定富集的通路,并分析组之间的串扰富集和消耗。最后,两个实验的时间反应组可以相交,以确定条件变化的反应模式,代表有希望的药物靶标候选人。结果:我们分别将TiCoNE应用于甲型流感病毒和犀牛病毒感染的人类基因表达数据。然后,我们确定了连贯的时间反应模式,并采用我们的串音分析来建立两种感染的系统级宿主反应的潜在时间表。接下来,我们比较了两种表型,并揭示了在网络水平上相互作用的条件变异时间组。然后我们通过文献检索和湿实验室实验来验证排名最高的那些。这不仅证实了我们之前已知的许多候选基因,而且我们还确定了磷脂重组酶1(由PLSCR1编码)是一种以前未被识别的宿主因子,对甲型流感病毒感染至关重要。结论:利用TiCoNE,我们开发了一种利用时间序列表达数据联合分析分子网络的新方法,并通过识别时间药物靶点证明了它的能力。我们提供了概念证明,不仅可以使用我们的方法识别新的靶点,而且可以通过研究宿主响应病毒感染的时间分子网络来增强抗感染药物靶点的发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Time-Resolved Systems Medicine Reveals Viral Infection-Modulating Host Targets.

Introduction: Drug-resistant infections are becoming increasingly frequent worldwide, causing hundreds of thousands of deaths annually. This is partly due to the very limited set of protein drug targets known for human-infecting viral genomes. The eleven influenza virus proteins, for instance, exploit host cell factors for replication and suppression of the antiviral immune responses. A systems medicine approach to identify relevant and druggable host factors would dramatically expand therapeutic options. Therapeutic target identification, however, has hitherto relied on static molecular networks, whereas in reality the interactome, in particular during an infection, is subject to constant change. Methods: We developed time-course network enrichment (TiCoNE), an expert-centered approach for discovering temporal response pathways. In the first stage of TiCoNE, time-series expression data is clustered in a human-augmented manner to identify groups of biological entities with coherent temporal responses. Throughout this process, the expert can add, remove, merge, or split temporal patterns. The resulting groups can then be mapped to an interaction network to identify enriched pathways and to analyze cross-talk enrichments and depletions between groups. Finally, temporal response groups of two experiments can be intersected, to identify condition-variant response patterns that represent promising drug-target candidates. Results: We applied TiCoNE to human gene expression data for influenza A virus infection and rhino virus infection, respectively. We then identified coherent temporal response patterns and employed our cross-talk analysis to establish two potential timelines of systems-level host responses for either infection. Next, we compared the two phenotypes and unraveled condition-variant temporal groups interacting on a networks level. The highest-ranking ones we then validated via literature search and wet-lab experiments. This not only confirmed many of our candidates as previously known, but we also identified phospholipid scramblase 1 (encoded by PLSCR1) as a previously not recognized host factor that is essential for influenza A virus infection. Conclusion: With TiCoNE we developed a novel approach for conjointly analyzing molecular networks with time-series expression data and demonstrated its power by identifying temporal drug-targets. We provide proof-of-concept that not only novel targets can be identified using our approach, but also that anti-infective drug target discovery can be enhanced by investigating temporal molecular networks of the host in response to viral infection.

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Agent-Based Modeling Systems Medicine Infectious Disease Modeling Mitochondria and Neurodegenerative Diseases Boolean Networks: A Primer
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