A metabolite-GWAS (mGWAS) approach to unveil chronic kidney disease progression

利用代谢物全基因组关联研究(mGWAS)方法揭示慢性肾脏病进展

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Abstract

In this issue, McMahon et al. report that, by combining phenotypic, metabolomic, and genetic data, they could better detect chronic kidney disease at the early stages and provide insight into its pathobiology. The most significant findings of the study are that several urinary metabolites (e.g., glycine and histidine) were identified as early risk factors for chronic kidney disease, and metabolites with genomewide association study analysis identified associations of urinary metabolites (i.e., lysine and N(G)-monomethyl-l-arginine) with single-nucleotide polymorphisms of SLC7A9.

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