Medical Research Council Integrative Epidemiology Unit, Population Health Sciences, Bristol Medical School, University of Bristol, Oakfield House, Oakfield Grove, Bristol BS8 2BN, UK.
Medical Research Council Integrative Epidemiology Unit, Population Health Sciences, Bristol Medical School, University of Bristol, Oakfield House, Oakfield Grove, Bristol BS8 2BN, UK; Novo Nordisk Research Centre, Headington, Oxford OX3 7FZ, UK.
Am J Hum Genet. 2021 Dec 2;108(12):2259-2270. doi: 10.1016/j.ajhg.2021.10.003. Epub 2021 Nov 5.
Developing functional insight into the causal molecular drivers of immunological disease is a critical challenge in genomic medicine. Here, we systematically apply Mendelian randomization (MR), genetic colocalization, immune-cell-type enrichment, and phenome-wide association methods to investigate the effects of genetically predicted gene expression on ten immune-associated diseases and four cancer outcomes. Using whole blood-derived estimates for regulatory variants from the eQTLGen consortium (n = 31,684), we constructed genetic risk scores for 10,104 genes. Applying the inverse-variance-weighted MR method transcriptome wide while accounting for linkage disequilibrium structure identified 664 unique genes with evidence of a genetically predicted effect on at least one disease outcome (p < 4.81 × 10). We next undertook genetic colocalization to investigate cell-type-specific effects at these loci by using gene expression data derived from 18 types of immune cells. This highlighted many cell-type-dependent effects, such as PRKCQ expression and asthma risk (posterior probability = 0.998), which was T cell specific. Phenome-wide analyses on 311 complex traits and endpoints allowed us to explore shared genetic architecture and prioritize key drivers of disease risk, such as CASP10, which provided evidence of an effect on seven cancer-related outcomes. Our atlas of results can be used to characterize known and novel loci in immune-associated disease and cancer susceptibility, both in terms of elucidating cell-type-dependent effects as well as dissecting shared disease pathways and pervasive pleiotropy. As an exemplar, we have highlighted several key findings in this study, although similar evaluations can be conducted via our interactive web platform.
深入了解免疫性疾病因果分子驱动因素的功能机制是基因组医学的一个关键挑战。在这里,我们系统地应用孟德尔随机化(MR)、遗传共定位、免疫细胞类型富集和表型全基因组关联方法,研究遗传预测基因表达对 10 种免疫相关疾病和 4 种癌症结局的影响。使用来自 eQTLGen 联盟的全血衍生的调节变异体估计值(n=31684),我们构建了 10104 个基因的遗传风险评分。应用逆方差加权 MR 方法对转录组进行全基因组分析,同时考虑连锁不平衡结构,鉴定了 664 个具有遗传预测效应对至少一种疾病结局影响的独特基因(p<4.81×10-8)。接下来,我们通过使用源自 18 种免疫细胞的基因表达数据,进行遗传共定位,研究这些基因座的细胞类型特异性效应。这突出了许多细胞类型依赖性效应,例如 PRKCQ 表达与哮喘风险(后验概率=0.998),这是 T 细胞特异性的。对 311 种复杂性状和终点进行全表型分析,使我们能够探索共享的遗传结构,并优先考虑疾病风险的关键驱动因素,例如 CASP10,其为 7 种与癌症相关的结局提供了证据。我们的结果图谱可用于描述免疫相关疾病和癌症易感性中的已知和新基因座,包括阐明细胞类型依赖性效应以及剖析共享疾病途径和普遍的多效性。作为一个范例,我们在这项研究中强调了几个关键发现,尽管可以通过我们的交互式网络平台进行类似的评估。