Computational and Predictive Biology, Oak Ridge National Laboratory, Oak Ridge, TN, USA.
The Bredesen Center for Interdisciplinary Research and Graduate Education, University of Tennessee Knoxville, Knoxville, TN, USA.
Commun Biol. 2024 Oct 21;7(1):1360. doi: 10.1038/s42003-024-06943-7.
Genome-wide association studies (GWAS) identify genetic variants underlying complex traits but are limited by stringent genome-wide significance thresholds. We present GRIN (Gene set Refinement through Interacting Networks), which increases confidence in the expanded gene set by retaining genes strongly connected by biological networks when GWAS thresholds are relaxed. GRIN was validated on both simulated interrelated gene sets as well as multiple GWAS traits. From multiple GWAS summary statistics of suicide attempt, a complex phenotype, GRIN identified additional genes that replicated across independent cohorts and retained biologically interrelated genes despite a relaxed significance threshold. We present a conceptual model of how these retained genes interact through neurobiological pathways that may influence suicidal behavior, and identify existing drugs associated with these pathways that would not have been identified under traditional GWAS thresholds. We demonstrate GRIN's utility in boosting GWAS results by increasing the number of true positive genes identified from GWAS results.
全基因组关联研究 (GWAS) 确定了复杂性状的遗传变异,但受到严格的全基因组显著性阈值的限制。我们提出了 GRIN(通过交互网络进行基因集精炼),当放宽 GWAS 阈值时,该方法通过保留通过生物网络紧密连接的基因来提高扩展基因集的置信度。GRIN 在模拟的相关基因集以及多个 GWAS 特征上进行了验证。从多个与自杀未遂相关的 GWAS 汇总统计数据中,GRIN 确定了其他在独立队列中复制的基因,并保留了生物学上相关的基因,尽管显著性阈值放宽了。我们提出了一个概念模型,说明这些保留的基因如何通过可能影响自杀行为的神经生物学途径相互作用,并确定与这些途径相关的现有药物,这些药物在传统的 GWAS 阈值下是不会被识别的。我们通过从 GWAS 结果中增加鉴定的真正阳性基因的数量来展示 GRIN 提高 GWAS 结果的效用。