Department of Genetics, University of Pennsylvania, Philadelphia, PA 19104, USA; The Huck Institutes of the Life Sciences, The Pennsylvania State University, University Park, PA 16802, USA.
Biomedical and Translational Informatics Institute, Geisinger, Danville, PA 17821, USA.
Am J Hum Genet. 2019 Jan 3;104(1):55-64. doi: 10.1016/j.ajhg.2018.11.006. Epub 2018 Dec 29.
Phenome-wide association studies (PheWASs) have been a useful tool for testing associations between genetic variations and multiple complex traits or diagnoses. Linking PheWAS-based associations between phenotypes and a variant or a genomic region into a network provides a new way to investigate cross-phenotype associations, and it might broaden the understanding of genetic architecture that exists between diagnoses, genes, and pleiotropy. We created a network of associations from one of the largest PheWASs on electronic health record (EHR)-derived phenotypes across 38,682 unrelated samples from the Geisinger's biobank; the samples were genotyped through the DiscovEHR project. We computed associations between 632,574 common variants and 541 diagnosis codes. Using these associations, we constructed a "disease-disease" network (DDN) wherein pairs of diseases were connected on the basis of shared associations with a given genetic variant. The DDN provides a landscape of intra-connections within the same disease classes, as well as inter-connections across disease classes. We identified clusters of diseases with known biological connections, such as autoimmune disorders (type 1 diabetes, rheumatoid arthritis, and multiple sclerosis) and cardiovascular disorders. Previously unreported relationships between multiple diseases were identified on the basis of genetic associations as well. The network approach applied in this study can be used to uncover interactions between diseases as a result of their shared, potentially pleiotropic SNPs. Additionally, this approach might advance clinical research and even clinical practice by accelerating our understanding of disease mechanisms on the basis of similar underlying genetic associations.
表型全基因组关联研究(PheWAS)已经成为一种有用的工具,可用于测试遗传变异与多种复杂表型或诊断之间的关联。将基于表型的 PheWAS 关联与变体或基因组区域链接到网络中,提供了一种新的方法来研究跨表型关联,并且可能拓宽对诊断、基因和多效性之间存在的遗传结构的理解。我们从盖辛格生物库的 38682 个无亲缘关系样本的电子健康记录(EHR)衍生表型中创建了一个最大的 PheWAS 网络关联;通过 DiscovEHR 项目对这些样本进行了基因分型。我们计算了 632574 个常见变体和 541 个诊断代码之间的关联。使用这些关联,我们构建了一个“疾病-疾病”网络(DDN),其中一对疾病基于与给定遗传变异的共同关联而连接。DDN 提供了同一疾病类别内的内部连接以及跨疾病类别之间的连接的景观。我们确定了具有已知生物学联系的疾病集群,例如自身免疫性疾病(1 型糖尿病、类风湿性关节炎和多发性硬化症)和心血管疾病。还根据遗传关联确定了以前未报道的多种疾病之间的关系。本研究中应用的网络方法可用于揭示由于其共享的、潜在的多效性 SNPs 而导致的疾病之间的相互作用。此外,这种方法可以通过基于相似的潜在遗传关联加速我们对疾病机制的理解,从而推进临床研究甚至临床实践。