Innate immunity interactome dynamics.

Asmaa Elzawahry, Ashwini Patil, Yutaro Kumagai, Yutaka Suzuki, Kenta Nakai
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引用次数: 3

Abstract

Innate immune response involves protein-protein interactions, deoxyribonucleic acid (DNA)-protein interactions and signaling cascades. So far, thousands of protein-protein interactions have been curated as a static interaction map. However, protein-protein interactions involved in innate immune response are dynamic. We recorded the dynamics in the interactome during innate immune response by combining gene expression data of lipopolysaccharide (LPS)-stimulated dendritic cells with protein-protein interactions data. We identified the differences in interactome during innate immune response by constructing differential networks and identifying protein modules, which were up-/down-regulated at each stage during the innate immune response. For each protein complex, we identified enriched biological processes and pathways. In addition, we identified core interactions that are conserved throughout the innate immune response and their enriched gene ontology terms and pathways. We defined two novel measures to assess the differences between network maps at different time points. We found that the protein interaction network at 1 hour after LPS stimulation has the highest interactions protein ratio, which indicates a role for proteins with large number of interactions in innate immune response. A pairwise differential matrix allows for the global visualization of the differences between different networks. We investigated the toll-like receptor subnetwork and found that S100A8 is down-regulated in dendritic cells after LPS stimulation. Identified protein complexes have a crucial role not only in innate immunity, but also in circadian rhythms, pathways involved in cancer, and p53 pathways. The study confirmed previous work that reported a strong correlation between cancer and immunity.

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先天免疫相互作用动力学。
先天免疫反应包括蛋白质-蛋白质相互作用、脱氧核糖核酸(DNA)-蛋白质相互作用和信号级联反应。到目前为止,数千种蛋白质与蛋白质之间的相互作用已经被整理成一张静态相互作用图。然而,先天免疫反应中涉及的蛋白质-蛋白质相互作用是动态的。我们将脂多糖(LPS)刺激的树突状细胞的基因表达数据与蛋白质-蛋白质相互作用数据相结合,记录了先天免疫应答过程中相互作用组的动态。我们通过构建差异网络和鉴定在先天免疫应答的每个阶段上调/下调的蛋白模块,确定了先天免疫应答过程中相互作用组的差异。对于每种蛋白质复合物,我们确定了富集的生物过程和途径。此外,我们确定了在整个先天免疫反应中保守的核心相互作用及其丰富的基因本体术语和途径。我们定义了两种新的测量方法来评估不同时间点网络地图之间的差异。我们发现,LPS刺激后1小时的蛋白相互作用网络中相互作用蛋白比例最高,这表明大量相互作用的蛋白在先天免疫应答中起作用。两两差分矩阵允许对不同网络之间的差异进行全局可视化。我们研究了toll样受体亚网络,发现S100A8在LPS刺激后在树突状细胞中下调。已确定的蛋白质复合物不仅在先天免疫中起着至关重要的作用,而且在昼夜节律、癌症通路和p53通路中也起着至关重要的作用。这项研究证实了之前的研究,即癌症和免疫力之间存在很强的相关性。
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