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One for all and all for One: Improving replication of genetic studies through network diffusion

机译:一劳永逸一劳永逸:通过网络传播改善基因研究的复制

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摘要

Improving accuracy in genetic studies would greatly accelerate understanding the genetic basis of complex diseases. One approach to achieve such an improvement for risk variants identified by the genome wide association study (GWAS) approach is to incorporate previously known biology when screening variants across the genome. We developed a simple approach for improving the prioritization of candidate disease genes that incorporates a network diffusion of scores from known disease genes using a protein network and a novel integration with GWAS risk scores, and tested this approach on a large Alzheimer disease (AD) GWAS dataset. Using a statistical bootstrap approach, we cross-validated the method and for the first time showed that a network approach improves the expected replication rates in GWAS studies. Several novel AD genes were predicted including CR2, SHARPIN, and PTPN2. Our re-prioritized results are enriched for established known AD-associated biological pathways including inflammation, immune response, and metabolism, whereas standard non-prioritized results were not. Our findings support a strategy of considering network information when investigating genetic risk factors.
机译:提高基因研究的准确性将大大加快对复杂疾病遗传基础的了解。通过全基因组关联研究(GWAS)方法确定的风险变异的一种实现此类改进的方法是,在筛选整个基因组的变异时纳入先前已知的生物学方法。我们开发了一种简单的方法来改善候选疾病基因的优先级,该方法结合了使用蛋白质网络的已知疾病基因得分的网络扩散以及与GWAS风险评分的新型整合,并在大型阿尔茨海默病(AD)GWAS上测试了该方法数据集。使用统计自举方法,我们对方法进行了交叉验证,并且首次表明网络方法提高了GWAS研究中的预期复制率。预测了几种新的AD基因,包括CR2,SHARPIN和PTPN2。我们重新确定优先级的结果丰富了已建立的已知与AD相关的生物途径,包括炎症,免疫反应和新陈代谢,而标准的非优先级结果则没有。我们的发现支持在研究遗传风险因素时考虑网络信息的策略。

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