Dai Yuxin, Liu Xudong, Zhu Yining, Mao Su, Yang Jingyun, Zhu Lan
Department of Obstetrics and Gynecology, State Key Laboratory of Complex, Severe and Rare Diseases, National Clinical Research Center for Obstetric and Gynecologic Diseases, Peking Union Medical College Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, China.
Medical Science Research Center, State Key Laboratory of Complex Severe and Rare Diseases, Peking Union Medical College Hospital, Chinese Academy of Medical Science and Peking Union Medical College, Beijing, China.
Front Genet. 2022 Jul 12;13:890007. doi: 10.3389/fgene.2022.890007. eCollection 2022.
To explore potential causal genetic variants and genes underlying the pathogenesis of uterine leiomyomas (ULs). We conducted the summary data-based Mendelian randomization (SMR) analyses and performed functional mapping and annotation using FUMA to examine genetic variants and genes that are potentially involved in the pathogenies of ULs. Both analyses used summarized data of a recent genome-wide association study (GWAS) on ULs, which has a total sample size of 244,324 (20,406 cases and 223,918 controls). We performed separate SMR analysis using CAGE and GTEx eQTL data. Using the CAGE eQTL data, our SMR analysis identified 13 probes tagging 10 unique genes that were pleiotropically/potentially causally associated with ULs, with the top three probes being ILMN_1675156 (tagging , PSMR = 8.03 × 10), ILMN_1705330 (tagging , PSMR = 1.02 × 10) and ILMN_2343048 (tagging , PSMR = 9.37 × 10). Using GTEx eQTL data, our SMR analysis did not identify any significant genes after correction for multiple testing. FUMA analysis identified 106 independent SNPs, 24 genomic loci and 137 genes that are potentially involved in the pathogenesis of ULs, seven of which were also identified by the SMR analysis. We identified many genetic variants, genes, and genomic loci that are potentially involved in the pathogenesis of ULs. More studies are needed to explore the exact underlying mechanisms in the etiology of ULs.
为了探索子宫平滑肌瘤(ULs)发病机制潜在的因果遗传变异和基因。我们进行了基于汇总数据的孟德尔随机化(SMR)分析,并使用FUMA进行功能定位和注释,以检查可能参与ULs发病机制的遗传变异和基因。两项分析均使用了最近一项关于ULs的全基因组关联研究(GWAS)的汇总数据,该研究总样本量为244,324(20,406例病例和223,918例对照)。我们使用CAGE和GTEx eQTL数据进行了单独的SMR分析。使用CAGE eQTL数据,我们的SMR分析确定了13个探针,标记了10个独特的基因,这些基因与ULs存在多效性/潜在因果关联,排名前三的探针分别是ILMN_1675156(标记 ,PSMR = 8.03 × 10)、ILMN_1705330(标记 ,PSMR = 1.02 × 10)和ILMN_2343048(标记 ,PSMR = 9.37 × 10)。使用GTEx eQTL数据,我们的SMR分析在多重检验校正后未发现任何显著基因。FUMA分析确定了106个独立的单核苷酸多态性(SNP)、24个基因组位点和137个可能参与ULs发病机制的基因,其中7个也在SMR分析中被确定。我们确定了许多可能参与ULs发病机制的遗传变异、基因和基因组位点。需要更多的研究来探索ULs病因的确切潜在机制。