Biomolecular Systems of Disease Buried Across Multiple GWAS Unveiled by Information Theory and Ontology.

Younghee Lee, Jianrong Li, Eric Gamazon, James L Chen, Anna Tikhomirov, Nancy J Cox, Yves A Lussier
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Abstract

A key challenge for genome-wide association studies (GWAS) is to understand how single nucleotide polymorphisms (SNPs) mechanistically underpin complex diseases. While this challenge has been addressed partially by Gene Ontology (GO) enrichment of large list of host genes of SNPs prioritized in GWAS, these enrichment have not been formally evaluated. Here, we develop a novel computational approach anchored in information theoretic similarity, by systematically mining lists of host genes of SNPs prioritized in three adult-onset diabetes mellitus GWAS. The "gold-standard" is based on GO associated with 20 published diabetes SNPs' host genes and on our own evaluation. We computationally identify 69 similarity-predicted GO independently validated in all three GWAS (FDR<5%), enriched with those of the gold-standard (odds ratio=5.89, P=4.81e-05), and these terms can be organized by similarity criteria into 11 groupings termed "biomolecular systems". Six biomolecular systems were corroborated by the gold-standard and the remaining five were previously uncharacterized. http://lussierlab.org/publications/ITS-GWAS.

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信息理论与本体揭示隐藏在多个GWAS中的疾病生物分子系统。
全基因组关联研究(GWAS)的一个关键挑战是了解单核苷酸多态性(snp)如何在机制上支持复杂疾病。虽然这一挑战已经通过基因本体(GO)富集大量在GWAS中优先排序的snp宿主基因来部分解决,但这些富集尚未得到正式评估。在这里,我们开发了一种新的基于信息理论相似性的计算方法,通过系统地挖掘三种成人发病糖尿病GWAS中优先考虑的snp宿主基因列表。“金标准”是基于与20个已发表的糖尿病snp宿主基因相关的氧化石墨烯以及我们自己的评估。我们计算确定了69个相似预测的氧化石墨烯,在所有三个GWAS (FDR)中独立验证
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