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Genome-wide meta-analysis and omics integration identifies novel genes associated with diabetic kidney disease

Authors :
Niina Sandholm
Cole, Joanne B.
Viji Nair
Xin Sheng
Hongbo Liu
Emma Ahlqvist
Natalie Van Zuydam
Dahlström, Emma H.
Damian Fermin
Laura Smyth
Salem, Rany M.
Carol Forsblom
Erkka Valo
Valma Harjutsalo
Brennan, Eoin P.
Mckay, Gareth J.
Darrell Andrews
Ross Doyle
Helen Looker
Robert Nelson
Colin Palmer
Amy Jayne McKnight
Catherine Godson
Peter Maxwell
Leif Groop
Mark McCarthy
Matthias Kretzler
Katalin Susztak
Hirschhorn, Joel N.
Florez, Jose C.
Per-Henrik Groop
Research Programs Unit
Medicum
HUS Abdominal Center
University of Helsinki
Nefrologian yksikkö
CAMM - Research Program for Clinical and Molecular Metabolism
Clinicum
Centre of Excellence in Complex Disease Genetics
Institute for Molecular Medicine Finland
Leif Groop Research Group
Department of Medicine
Per Henrik Groop / Principal Investigator
Department of Public Health
Source :
Sandholm, N, Cole, J B, Nair, V, Sheng, X, Liu, H, Ahlqvist, E, Van Zuydam, N, Dahlström, E H, Fermin, D, Smyth, L, Salem, R M, Forsblom, C, Valo, E, Harjutsalo, V, Brennan, E P, McKay, G, Andrews, D, Doyle, R, Looker, H, Nelson, R, Palmer, C, McKnight, A J, Godson, C, Maxwell, P, Groop, L, McCarthy, M, Kretzler, M, Susztak, K, Hirschhorn, J N, Florez, J C & Groop, P-H 2022, ' Genome-wide meta-analysis and omics integration identifies novel genes associated with diabetic kidney disease ', Diabetologia ., Queen's University Belfast-PURE
Publication Year :
2022

Abstract

Aims/hypothesis Diabetic 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. Methods We 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. Results The meta-analysis identified a novel intronic variant (rs72831309) in the TENM2 gene associated with a lower risk of the combined chronic kidney disease (eGFR2) and DKD (microalbuminuria or worse) phenotype (p=9.8×10−9; although not withstanding correction for multiple testing, p>9.3×10−9). Gene-level analysis identified ten genes associated with DKD (COL20A1, DCLK1, EIF4E, PTPRN–RESP18, GPR158, INIP–SNX30, LSM14A and MFF; p−6). Integration of GWAS with human glomerular and tubular expression data demonstrated higher tubular AKIRIN2 gene expression in individuals with vs without DKD (p=1.1×10−6). The lead SNPs within six loci significantly altered DNA methylation of a nearby CpG site in kidneys (p−11). Expression of lead genes in kidney tubules or glomeruli correlated with relevant pathological phenotypes (e.g. TENM2 expression correlated positively with eGFR [p=1.6×10−8] and negatively with tubulointerstitial fibrosis [p=2.0×10−9], tubular DCLK1 expression correlated positively with fibrosis [p=7.4×10−16], and SNX30 expression correlated positively with eGFR [p=5.8×10−14] and negatively with fibrosis [p−16]). Conclusions/interpretation Altogether, the results point to novel genes contributing to the pathogenesis of DKD. Data availability The GWAS meta-analysis results can be accessed via the type 1 and type 2 diabetes (T1D and T2D, respectively) and Common Metabolic Diseases (CMD) Knowledge Portals, and downloaded on their respective download pages (https://t1d.hugeamp.org/downloads.html; https://t2d.hugeamp.org/downloads.html; https://hugeamp.org/downloads.html). Graphical abstract

Details

Language :
English
Database :
OpenAIRE
Journal :
Sandholm, N, Cole, J B, Nair, V, Sheng, X, Liu, H, Ahlqvist, E, Van Zuydam, N, Dahlström, E H, Fermin, D, Smyth, L, Salem, R M, Forsblom, C, Valo, E, Harjutsalo, V, Brennan, E P, McKay, G, Andrews, D, Doyle, R, Looker, H, Nelson, R, Palmer, C, McKnight, A J, Godson, C, Maxwell, P, Groop, L, McCarthy, M, Kretzler, M, Susztak, K, Hirschhorn, J N, Florez, J C & Groop, P-H 2022, ' Genome-wide meta-analysis and omics integration identifies novel genes associated with diabetic kidney disease ', Diabetologia ., Queen's University Belfast-PURE
Accession number :
edsair.doi.dedup.....1c298eb7b2037f0376f39a8ff8308d1b