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Enhancing the Prioritization of Disease-Causing Genes through Tissue Specific Protein Interaction Networks

机译:通过组织特异性蛋白质相互作用网络增强致病基因的优先级

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摘要

The prioritization of candidate disease-causing genes is a fundamental challenge in the post-genomic era. Current state of the art methods exploit a protein-protein interaction (PPI) network for this task. They are based on the observation that genes causing phenotypically-similar diseases tend to lie close to one another in a PPI network. However, to date, these methods have used a static picture of human PPIs, while diseases impact specific tissues in which the PPI networks may be dramatically different. Here, for the first time, we perform a large-scale assessment of the contribution of tissue-specific information to gene prioritization. By integrating tissue-specific gene expression data with PPI information, we construct tissue-specific PPI networks for 60 tissues and investigate their prioritization power. We find that tissue-specific PPI networks considerably improve the prioritization results compared to those obtained using a generic PPI network. Furthermore, they allow predicting novel disease-tissue associations, pointing to sub-clinical tissue effects that may escape early detection.
机译:候选致病基因的优先级排序是后基因组时代的一项基本挑战。当前技术水平的方法利用蛋白质-蛋白质相互作用(PPI)网络来完成该任务。他们的观察结果是,引起表型相似疾病的基因在PPI网络中往往彼此靠近。但是,迄今为止,这些方法使用的是人类PPI的静态图片,而疾病影响的特定组织中PPI网络可能有很大不同。在这里,我们首次对组织特异性信息对基因优先级的贡献进行了大规模评估。通过将组织特异性基因表达数据与PPI信息整合在一起,我们为60个组织构建了组织特异性PPI网络,并研究了它们的优先排序能力。我们发现,与使用通用PPI网络获得的组织相比,特定于组织的PPI网络大大提高了优先级排序结果。此外,它们可以预测新的疾病与组织的关联,指出可能逃脱早期发现的亚临床组织效应。

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