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A multi-trait evaluation of network propagation for GWAS results

机译:用于GWAS结果的网络传播的多特点评估

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High dimensional genetic data is widely used to explore simple relations between traits, diseases and relevant genetic factors with high effect size, although identifying factors with small effect sizes or synergistic effects needs sophisticated solutions. A promising option is the application of network propagation methods for amplifying genome-wide association (GWA) results by incorporating a large amount of biological knowledge. This approach is also supported by the increasing availability of GWA summary statistics for comprehensive sets of phenotypes, frequently from multiple biobanks. However, the application of network propagation methods in GWA context is still in its early phase, despite its established role in the analysis of gene expression data and rare variants. First, we introduce the complete network-based GWAS workflow, also extending it for the simultaneous analysis of multiple traits and diseases. Second, we overview critical steps, possible solutions, and publicly available resources for this workflow; namely (1) the reliability of GWA results, (2) gene definitions and aggregation methods, (3) context-specific molecular networks, and (4) network propagation methods. Third, we present results from our large-scale evaluation of these options, such as established gene-disease relations, reference pathways, and recent public GWA results for hundreds of phenotypes from the UK Biobank. Results show serious inconsistencies in all settings regarding tested phenotypes, input transformations, networks, and network propagation method. This suggests a central unresolved issue in the application of this methodology for amplifying GWA results, and we hypothesize that the currently applied molecular networks form a serious bottleneck for the much expected multi-trait analysis.
机译:高维遗传数据广泛用于探讨具有高效果大小的特征,疾病和相关遗传因素之间的简单关系,尽管识别效果尺寸小或协同效应的因素需要复杂的解决方案。有希望的选择是通过纳入大量生物学知识来扩增基因组关联(GWA)的网络传播方法的应用。通过来自多种生物汉的全套表型综合表型的GWA汇总统计数据的增加,还支持这种方法。然而,尽管在分析基因表达数据和罕见变种中,但在早期阶段仍在早期阶段的应用在GWA上下文中的应用仍处于早期阶段。首先,我们介绍了完整的基于网络的GWAS工作流程,还将其扩展为同时分析多种性状和疾病。其次,我们概述了此工作流程的关键步骤,可能的解决方案和公开可用的资源;即(1)GWA结果的可靠性,(2)基因定义和聚集方法,(3)上下文特定的分子网络,和(4)网络传播方法。第三,我们提出了我们对这些选项的大规模评估的结果,例如已建立的基因疾病关系,参考途径和最近的公共GWA结果来自英国Biobank的数百种表型。结果显示有关测试表型,输入转换,网络和网络传播方法的所有设置中的严重不一致。这表明在应用这种方法的中央未解决的问题,用于扩增GWA结果,我们假设目前施用的分子网络形成了一个严重的预期多特征分析。

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