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Gene and Network Analysis of Common Variants Reveals Novel Associations in Multiple Complex Diseases

机译:常见变异的基因和网络分析揭示了多种复杂疾病中的新型关联

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摘要

Genome-wide association (GWA) studies typically lack power to detect genotypes significantly associated with complex diseases, where different causal mutations of small effect may be present across cases. A common, tractable approach for identifying genomic elements associated with complex traits is to evaluate combinations of variants in known pathways or gene sets with shared biological function. Such gene-set analyses require the computation of gene-level P-values or gene scores; these gene scores are also useful when generating hypotheses for experimental validation. However, commonly used methods for generating GWA gene scores are computationally inefficient, biased by gene length, imprecise, or have low true positive rate (TPR) at low false positive rates (FPR), leading to erroneous hypotheses for functional validation. Here we introduce a new method, PEGASUS, for analytically calculating gene scores. PEGASUS produces gene scores with as much as 10 orders of magnitude higher numerical precision than competing methods. In simulation, PEGASUS outperforms existing methods, achieving up to 30% higher TPR when the FPR is fixed at 1%. We use gene scores from PEGASUS as input to HotNet2 to identify networks of interacting genes associated with multiple complex diseases and traits; this is the first application of HotNet2 to common variation. In ulcerative colitis and waist–hip ratio, we discover networks that include genes previously associated with these phenotypes, as well as novel candidate genes. In contrast, existing methods fail to identify these networks. We also identify networks for attention-deficit/hyperactivity disorder, in which GWA studies have yet to identify any significant SNPs.
机译:全基因组关联(GWA)研究通常缺乏检测与复杂疾病显着相关的基因型的能力,在这些复杂疾病中,不同病例可能会出现不同的因果突变,影响较小。识别与复杂性状相关的基因组元件的通用,易于处理的方法是评估已知途径或具有共同生物学功能的基因集中的变体组合。这种基因集分析需要计算基因水平的P值或基因得分;这些基因评分在生成用于实验验证的假设时也很有用。但是,常用的生成GWA基因评分的方法在计算上效率低下,受基因长度偏倚,不精确或在低假阳性率(FPR)下具有低真阳性率(TPR),从而导致功能验证的错误假设。在这里,我们介绍了一种新方法PEGASUS,用于分析计算基因得分。与竞争对手的方法相比,PEGASUS产生的基因分数的数值精度高出10个数量级。在仿真中,PEGASUS的性能优于现有方法,当FPR固定为1%时,TPR最高可提高30%。我们使用来自PEGASUS的基因评分作为HotNet2的输入,以识别与多种复杂疾病和性状相关的相互作用基因网络;这是HotNet2在常见版本中的第一个应用程序。在溃疡性结肠炎和腰臀比中,我们发现了网络,这些网络包括以前与这些表型相关的基因,以及新的候选基因。相反,现有方法无法识别这些网络。我们还确定了注意力不足/多动障碍的网络,其中GWA研究尚未发现任何重要的SNP。

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