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Exploiting the Proteome to Improve the Genome-Wide Genetic Analysis of Epistasis in Common Human Diseases

机译:开发蛋白质组以改善人类常见疾病上位性的全基因组遗传分析

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摘要

One of the central goals of human genetics is the identification of loci with alleles or genotypes that confer increased susceptibility. The availability of dense maps of single-nucleotide polymorphisms (SNPs) along with high-throughput genotyping technologies has set the stage for routine genome-wide association studies that are expected to significantly improve our ability to identify susceptibility loci. Before this promise can be realized, there are some significant challenges that need to be addressed. We address here the challenge of detecting epistasis or gene-gene interactions in genome-wide association studies. Discovering epistatic interactions in high dimensional datasets remains a challenge due to the computational complexity resulting from the analysis of all possible combinations of SNPs. One potential way to overcome the computational burden of a genome-wide epistasis analysis would be to devise a logical way to prioritize the many SNPs in a dataset so that the data may be analyzed more efficiently and yet still retain important biological information. One of the strongest demonstrations of the functional relationship between genes is protein-protein interaction. Thus, it is plausible that the expert knowledge extracted from protein interaction databases may allow for a more efficient analysis of genome-wide studies as well as facilitate the biological interpretation of the data. In this review we will discuss the challenges of detecting epistasis in genome-wide genetic studies and the means by which we propose to apply expert knowledge extracted from protein interaction databases to facilitate this process. We explore some of the fundamentals of protein interactions and the databases that are publicly available.
机译:人类遗传学的主要目标之一是鉴定具有增加易感性的等位基因或基因型的基因座。单核苷酸多态性(SNP)的密集图谱以及高通量基因分型技术的可用性为常规的全基因组关联研究奠定了基础,该研究有望显着提高我们鉴定易感基因座的能力。在实现这一诺言之前,需要解决一些重大挑战。我们在这里解决在全基因组关联研究中检测上位性或基因-基因相互作用的挑战。由于分析SNP的所有可能组合会导致计算复杂,因此在高维数据集中发现上位相互作用仍然是一个挑战。克服全基因组上位性分析的计算负担的一种潜在方法是设计一种逻辑方法,对数据集中的许多SNP进行优先排序,以便可以更有效地分析数据,但仍保留重要的生物学信息。基因之间功能关系的最有力证明之一是蛋白质间相互作用。因此,从蛋白质相互作用数据库中提取的专家知识可能允许对全基因组研究进行更有效的分析,并促进数据的生物学解释。在这篇综述中,我们将讨论在全基因组遗传研究中检测上位性的挑战,以及我们提议应用从蛋白质相互作用数据库中提取的专家知识来促进这一过程的方法。我们探索了蛋白质相互作用的一些基础知识以及公开可用的数据库。

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