PhenoExplorer:基于网络的互动平台,利用瑞士人口研究探索(外显子)全基因组关联。

IF 0.2 Q4 MULTIDISCIPLINARY SCIENCES Holos Pub Date : 2022-12-21 DOI:10.2533/chimia.2022.1052
Jean-Pierre Ghobril, Dusan Petrovic, Georg Ehret, Belén Ponte, Menno Pruijm, Daniel Ackermann, Bruno Vogt, Silvia Stringhini, Aurélien Thomas, Jonviea Chamberlain, Semira Gonseth-Nusslé, Murielle Bochud
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引用次数: 0

摘要

最近出现的高通量测序技术已经允许探索成千上万的基因组、表观基因组、转录组或蛋白质组变异对复杂表型性状的贡献。在这里,我们试图进行大规模(Epi)全基因组关联研究(GWAS/EWAS)来研究基因组(单核苷酸多态性;SNP)和表观基因组(Cytosine-Phospho-Guanine;CpG)标记,在基于人群的背景下具有多种表型特征。我们使用的数据来自SKIPOGH,这是一项在洛桑、日内瓦和伯尔尼进行的基于家庭和人群的队列研究(N=1100)。我们使用了7,577,572个snp, 420,444个CpGs和825种表型,包括人体测量,临床,血液,尿液,代谢物和金属测量。GWAS分析评估snp与代谢物和金属(N=279)之间的关系,使用年龄、性别、招募中心和家族结构调整的回归模型,而EWAS分析探索CpGs与825种表型之间的关系,另外调整了血液采样的季节性和技术干扰。在实施GWAS和EWAS分析之后,我们开发了一个基于web的平台,旨在提供对所获得结果的开放访问。在GWAS中包含的279种表型中,103种在Bonferroni阈值下与2804个snp(2091个独特snp)显著相关,而EWAS分析中包含的825种表型中有109种与4893个CpGs(2578个独特CpGs)相关。所有获得的GWAS和EWAS结果最终都可以通过内部构建的基于web的PhenoExplorer平台获得,目的是提供对测试关联的开放访问。总之,我们提供了一项基于瑞士人群的研究中GWAS和EWAS关联的全面概述。此外,我们建立了一个基于网络的PhenoExplorer平台,目的是促进对分子变异在调节复杂表型中的作用的全面理解。
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PhenoExplorer: An Interactive Web-based Platform for Exploring (Epi)Genome-Wide Associations Using a Swiss Population-based Study.

The recent advent of high-throughput sequencing technologies has allowed exploring the contribution of thousands of genomic, epigenomic, transcriptomic, or proteomic variants to complex phenotypic traits. Here, we sought to conduct large-scale (Epi)Genome-Wide Association Studies (GWAS/EWAS) to investigate the associations between genomic (Single Nucleotide Polymorphism; SNP) and epigenomic (Cytosine-Phospho-Guanine; CpG) markers, with multiple phenotypic traits in a population-based context. We used data from SKIPOGH, a family- and population-based cohort conducted in the cities of Lausanne, Geneva, and Bern (N=1100). We used 7,577,572 SNPs, 420,444 CpGs, and 825 phenotypes, including anthropometric, clinical, blood, urine, metabolite, and metal measures. GWAS analyses assessed the associations between SNPs and metabolites and metals (N=279), using regression models adjusted for age, sex, recruitment center, and familial structure, whereas EWAS analyses explored the relations between CpGs and 825 phenotypes, additionally adjusting for the seasonality of blood sampling and technical nuisance. Following the implementation of GWAS and EWAS analyses, we developed a web-based platform, PhenoExplorer, aimed at providing an open access to the obtained results. Of the 279 phenotypes included in GWAS, 103 displayed significant associations with 2804 SNPs (2091 unique SNPs) at Bonferroni threshold, whereas 109 of the 825 phenotypes included in EWAS analyses were associated with 4893 CpGs (2578 unique CpGs). All of the obtained GWAS and EWAS results were eventually made available using the in-house built web-based PhenoExplorer platform, with the purpose of providing an open-access to the tested associations. In conclusion, we provide a comprehensive outline of GWAS and EWAS associations performed in a Swiss population-based study. Further, we set up a web-based PhenoExplorer platform with the purpose of contributing to the overall understanding of the role of molecular variants in regulating complex phenotypes.

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来源期刊
Holos
Holos MULTIDISCIPLINARY SCIENCES-
自引率
0.00%
发文量
5
审稿时长
30 weeks
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