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NetDecoder: a network biology platform that decodes context-specific biological networks and gene activities

机译:NetDecoder:一个网络生物学平台可解码特定于上下文的生物学网络和基因活动

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摘要

The sequential chain of interactions altering the binary state of a biomolecule represents the ‘information flow’ within a cellular network that determines phenotypic properties. Given the lack of computational tools to dissect context-dependent networks and gene activities, we developed NetDecoder, a network biology platform that models context-dependent information flows using pairwise phenotypic comparative analyses of protein–protein interactions. Using breast cancer, dyslipidemia and Alzheimer's disease as case studies, we demonstrate NetDecoder dissects subnetworks to identify key players significantly impacting cell behaviour specific to a given disease context. We further show genes residing in disease-specific subnetworks are enriched in disease-related signalling pathways and information flow profiles, which drive the resulting disease phenotypes. We also devise a novel scoring scheme to quantify key genes—network routers, which influence many genes, key targets, which are influenced by many genes, and high impact genes, which experience a significant change in regulation. We show the robustness of our results against parameter changes. Our network biology platform includes freely available source code () for researchers to explore genome-wide context-dependent information flow profiles and key genes, given a set of genes of particular interest and transcriptome data. More importantly, NetDecoder will enable researchers to uncover context-dependent drug targets.
机译:相互作用的顺序链改变了生物分子的二元状态,代表了决定表型特性的细胞网络中的“信息流”。鉴于缺乏分析工具来剖析上下文相关的网络和基因活动,我们开发了NetDecoder,这是一个网络生物学平台,可使用蛋白质间相互作用的成对表型比较分析来建模上下文相关的信息流。使用乳腺癌,血脂异常和阿尔茨海默氏病作为案例研究,我们证明了NetDecoder解剖了子网,以识别对特定疾病背景有重大影响的细胞行为的重要参与者。我们进一步显示,居住在特定疾病子网中的基因富含与疾病相关的信号传导途径和信息流概况,从而驱动所导致的疾病表型。我们还设计了一种新颖的计分方案来量化关键基因-网络路由器,该路由器影响许多基因,受许多基因影响的关键目标和影响重大的调控基因。我们展示了针对参数变化的结果的鲁棒性。我们的网络生物学平台包括可免费获得的源代码(),研究人员可以在给定一组感兴趣的基因和转录组数据的情况下,探索全基因组范围内与上下文相关的信息流概况和关键基因。更重要的是,NetDecoder将使研究人员能够发现与环境有关的药物靶标。

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