Department of Molecular Biology, Faculty of Science, Nijmegen Centre for Molecular Life Sciences, Radboud University Nijmegen, 6525 GA, Nijmegen, The Netherlands.
Hum Genet. 2014 Jun;133(6):689-700. doi: 10.1007/s00439-013-1376-2. Epub 2013 Oct 18.
Genome-wide association studies (GWAS) revealed genomic risk loci that potentially have an impact on disease and phenotypic traits. This extensive resource holds great promise in providing novel directions for personalized medicine, including disease risk prediction, prevention and targeted medication. One of the major challenges that researchers face on the path between the initial identification of an association and precision treatment of patients is the comprehension of the biological mechanisms that underlie these associations. Currently, the focus to solve these questions lies on the integrative analysis of system-wide data on global genome variation, gene expression, transcription factor binding, epigenetic profiles and chromatin conformation. The generation of this data mainly relies on next-generation sequencing. However, due to multiple recent developments, mass spectrometry-based proteomics now offers additional, by the GWAS field so far hardly recognized possibilities for the identification of functional genome variants and, in particular, for the identification and characterization of (differentially) bound protein complexes as well as physiological target genes. In this review, we introduce these proteomics advances and suggest how they might be integrated in post-GWAS workflows. We argue that the combination of highly complementary techniques is powerful and can provide an unbiased, detailed picture of GWAS loci and their mechanistic involvement in disease.
全基因组关联研究(GWAS)揭示了潜在影响疾病和表型特征的基因组风险位点。这一广泛的资源为个性化医学提供了新的方向,包括疾病风险预测、预防和靶向药物治疗。研究人员在最初发现关联和精准治疗患者之间面临的主要挑战之一是理解这些关联背后的生物学机制。目前,解决这些问题的重点在于对全球基因组变异、基因表达、转录因子结合、表观遗传谱和染色质构象等系统范围数据的综合分析。这些数据的产生主要依赖于下一代测序。然而,由于最近的多项发展,基于质谱的蛋白质组学现在为识别功能基因组变体提供了额外的、GWAS 领域迄今为止几乎没有认识到的可能性,特别是用于识别和表征(差异)结合蛋白复合物以及生理靶基因。在这篇综述中,我们介绍了这些蛋白质组学进展,并提出了如何将它们整合到 GWAS 后工作流程中。我们认为,高度互补技术的结合是强大的,可以提供 GWAS 位点及其在疾病中的机制参与的无偏、详细的图片。