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Genome-wide meta-analysis and omics integration identifies novel genes associated with diabetic kidney disease
- 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
- Subjects :
- EXPRESSION
Genome-wide association study
kidney
NEPHROPATHY
Endocrinology, Diabetes and Metabolism
omic
multiomic
Protein Serine-Threonine Kinases
Kidney
Polymorphism, Single Nucleotide
GLUCOSE
Doublecortin-Like Kinases
Diabetes complications
SDG 3 - Good Health and Well-being
Internal Medicine
Genetics
diabetic
Humans
GWAS
Diabetic Nephropathies
Diabetic kidney disease
Transcriptomics
TYPE-1
diabetes
Intracellular Signaling Peptides and Proteins
Fibrosis
INSULIN
Meta-analysis
IA-2
Diabetes Mellitus, Type 2
3121 General medicine, internal medicine and other clinical medicine
Subjects
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