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Guilt by rewiring: gene prioritization through network rewiring in Genome Wide Association Studies

机译:通过重新接线而感到内lt:基因组广泛关联研究中通过网络重新接线进行基因优先排序

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摘要

Although Genome Wide Association Studies (GWAS) have identified many susceptibility loci for common diseases, they only explain a small portion of heritability. It is challenging to identify the remaining disease loci because their association signals are likely weak and difficult to identify among millions of candidates. One potentially useful direction to increase statistical power is to incorporate functional genomics information, especially gene expression networks, to prioritize GWAS signals. Most current methods utilizing network information to prioritize disease genes are based on the ‘guilt by association’ principle, in which networks are treated as static, and disease-associated genes are assumed to locate closer with each other than random pairs in the network. In contrast, we propose a novel ‘guilt by rewiring’ principle. Studying the dynamics of gene networks between controls and patients, this principle assumes that disease genes more likely undergo rewiring in patients, whereas most of the network remains unaffected in disease condition. To demonstrate this principle, we consider the changes of co-expression networks in Crohn's disease patients and controls, and how network dynamics reveals information on disease associations. Our results demonstrate that network rewiring is abundant in the immune system, and disease-associated genes are more likely to be rewired in patients. To integrate this network rewiring feature and GWAS signals, we propose to use the Markov random field framework to integrate network information to prioritize genes. Applications in Crohn's disease and Parkinson's disease show that this framework leads to more replicable results, and implicates potentially disease-associated pathways.
机译:尽管全基因组关联研究(GWAS)已经确定了许多常见疾病的易感基因座,但它们仅解释了遗传力的一小部分。识别剩余的疾病位点具有挑战性,因为它们的关联信号可能微弱并且难以在数百万个候选者中识别。增加统计能力的一个潜在有用方向是合并功能基因组信息,尤其是基因表达网络,以对GWAS信号进行优先排序。当前,大多数利用网络信息对疾病基因进行优先排序的方法都是基于“有罪内association”原理,其中将网络视为静态,并且假定与疾病相关的基因彼此之间的位置比网络中的随机对彼此靠近。相比之下,我们提出了一种新颖的“重新布线有罪”的原则。通过研究对照组和患者之间基因网络的动力学,该原理假定疾病基因更有可能在患者中进行重新布线,而大多数网络在疾病条件下仍不受影响。为了证明这一原理,我们考虑了克罗恩病患者和对照中共表达网络的变化,以及网络动态如何揭示疾病关联信息。我们的结果表明,免疫系统中的网络重布线非常丰富,并且与疾病相关的基因在患者中更可能被重布线。为了集成此网络重新布线功能和GWAS信号,我们建议使用Markov随机场框架来集成网络信息以对基因进行优先级排序。在克罗恩氏病和帕金森氏病中的应用表明,该框架可导致更多可复制的结果,并暗示与疾病相关的潜在途径。

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