학술논문

Genome-wide meta-analysis and omics integration identifies novel genes associated with diabetic kidney disease
Document Type
article
Source
Diabetologia. 65(9)
Subject
Human Genome
Kidney Disease
Prevention
Genetics
Diabetes
Biotechnology
2.1 Biological and endogenous factors
Aetiology
Renal and urogenital
Metabolic and endocrine
Good Health and Well Being
Diabetes Mellitus
Type 2
Diabetic Nephropathies
Doublecortin-Like Kinases
Fibrosis
Genome-Wide Association Study
Humans
Intracellular Signaling Peptides and Proteins
Kidney
Polymorphism
Single Nucleotide
Protein Serine-Threonine Kinases
Diabetes complications
Diabetic kidney disease
Genome-wide association study
Meta-analysis
Transcriptomics
GENIE Consortium
Genome-wide association study
Meta-analysis
Transcriptomics
Clinical Sciences
Paediatrics and Reproductive Medicine
Public Health and Health Services
Endocrinology & Metabolism
Language
Abstract
Aims/hypothesisDiabetic kidney disease (DKD) is the leading cause of kidney failure and has a substantial genetic component. Our aim was to identify novel genetic factors and genes contributing to DKD by performing meta-analysis of previous genome-wide association studies (GWAS) on DKD and by integrating the results with renal transcriptomics datasets.MethodsWe performed GWAS meta-analyses using ten phenotypic definitions of DKD, including nearly 27,000 individuals with diabetes. Meta-analysis results were integrated with estimated quantitative trait locus data from human glomerular (N=119) and tubular (N=121) samples to perform transcriptome-wide association study. We also performed gene aggregate tests to jointly test all available common genetic markers within a gene, and combined the results with various kidney omics datasets.ResultsThe meta-analysis identified a novel intronic variant (rs72831309) in the TENM2 gene associated with a lower risk of the combined chronic kidney disease (eGFR9.3×10-9). Gene-level analysis identified ten genes associated with DKD (COL20A1, DCLK1, EIF4E, PTPRN-RESP18, GPR158, INIP-SNX30, LSM14A and MFF; p