Centre for Precision Psychiatry, Division of Mental Health and Addiction, Oslo University Hospital & Institute of Clinical Medicine, University of Oslo, Oslo, Norway.
Centre for Bioinformatics, Department of Informatics, University of Oslo, Oslo, Norway.
Nat Genet. 2024 Jun;56(6):1310-1318. doi: 10.1038/s41588-024-01771-1. Epub 2024 Jun 3.
While genome-wide association studies are increasingly successful in discovering genomic loci associated with complex human traits and disorders, the biological interpretation of these findings remains challenging. Here we developed the GSA-MiXeR analytical tool for gene set analysis (GSA), which fits a model for the heritability of individual genes, accounting for linkage disequilibrium across variants and allowing the quantification of partitioned heritability and fold enrichment for small gene sets. We validated the method using extensive simulations and sensitivity analyses. When applied to a diverse selection of complex traits and disorders, including schizophrenia, GSA-MiXeR prioritizes gene sets with greater biological specificity compared to standard GSA approaches, implicating voltage-gated calcium channel function and dopaminergic signaling for schizophrenia. Such biologically relevant gene sets, often with fewer than ten genes, are more likely to provide insights into the pathobiology of complex diseases and highlight potential drug targets.
虽然全基因组关联研究在发现与复杂人类特征和疾病相关的基因组位点方面越来越成功,但这些发现的生物学解释仍然具有挑战性。在这里,我们开发了用于基因集分析 (GSA) 的 GSA-MiXeR 分析工具,该工具适合于个体基因遗传力的模型,考虑了变体之间的连锁不平衡,并允许对小基因集进行分区遗传力和折叠富集的量化。我们使用广泛的模拟和敏感性分析验证了该方法。当应用于包括精神分裂症在内的多种复杂特征和疾病的选择时,GSA-MiXeR 优先考虑具有更大生物学特异性的基因集,比标准 GSA 方法更能说明电压门控钙通道功能和多巴胺能信号对精神分裂症的影响。这种生物学上相关的基因集,通常不到十个基因,更有可能深入了解复杂疾病的病理生物学,并突出潜在的药物靶点。