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. 2015 Apr 13;32(8):1104–1109. doi: 10.1111/dme.12763

Genetic risk factors affecting mitochondrial function are associated with kidney disease in people with Type 1 diabetes

E J Swan 1, R M Salem 2, N Sandholm 3,4, L Tarnow 5,6, P Rossing 6, M Lajer 6, P H Groop 3,4,7, A P Maxwell 1,8, A J McKnight 1
PMCID: PMC4504747  NIHMSID: NIHMS676029  PMID: 25819010

Abstract

Aim

To evaluate the association with diabetic kidney disease of single nucleotide polymorphisms (SNPs) that may contribute to mitochondrial dysfunction.

Methods

The mitochondrial genome and 1039 nuclear genes that are integral to mitochondrial function were investigated using a case (n = 823 individuals with diabetic kidney disease) vs. control (n = 903 individuals with diabetes and no renal disease) approach. All people included in the analysis were of white European origin and were diagnosed with Type 1 diabetes before the age of 31 years. Replication was conducted in 5093 people with similar phenotypes to those of the discovery collection. Association analyses were performed using the plink genetic analysis toolset, with adjustment for relevant covariates.

Results

A total of 25 SNPs were evaluated in the mitochondrial genome, but none were significantly associated with diabetic kidney disease or end-stage renal disease. A total of 38 SNPs in nuclear genes influencing mitochondrial function were nominally associated with diabetic kidney disease and 16 SNPS were associated with end-stage renal disease, secondary to diabetic kidney disease, with meta-analyses confirming the same direction of effect. Three independent signals (seven SNPs) were common to the replication data for both phenotypes with Type 1 diabetes and persistent proteinuria or end-stage renal disease.

Conclusions

Our results suggest that SNPs in nuclear genes that influence mitochondrial function are significantly associated with diabetic kidney disease in a white European population.

What’s new?

  1. Mitochondrial dysfunction has been identified in diabetic kidney disease, but relatively large-scale genetic and epigenetic studies focused on mitochondria have not yet been described.

  2. We report a novel case–control analysis, with independent replication, of genetic variation focused on the mitochondrial genome and 1039 nuclear genes that are important for mitochondrial function.

  3. Single nucleotide polymorphisms (SNPs) in nuclear genes affecting mitochondrial function were found to be associated with diabetic kidney disease. The highlighted SNPs were within the genes implicated in regulation of epigenetic processes. Further research to explore the interactions between hyperglycaemia, uraemia and epigenetic modifications of the genome could shed new light on how these nuclear genome SNPs are associated with kidney disease.


What’s new?

  • Mitochondrial dysfunction has been identified in diabetic kidney disease, but relatively large-scale genetic and epigenetic studies focused on mitochondria have not yet been described.

  • We report a novel case–control analysis, with independent replication, of genetic variation focused on the mitochondrial genome and 1039 nuclear genes that are important for mitochondrial function.

  • Single nucleotide polymorphisms (SNPs) in nuclear genes affecting mitochondrial function were found to be associated with diabetic kidney disease. The highlighted SNPs were within the genes implicated in regulation of epigenetic processes. Further research to explore the interactions between hyperglycaemia, uraemia and epigenetic modifications of the genome could shed new light on how these nuclear genome SNPs are associated with kidney disease.

Introduction

Diabetic kidney disease is a complex renal disorder representing a major global economic burden 1,2. There is an inherited genetic predisposition for diabetic kidney disease, but the majority of studies to date have focused on genetic variation in the nuclear genome 3. Mitochondria are specialized organelles that generate energy by oxidative phosphorylation, but they are susceptible to oxidative damage from cellular stress, including hyperglycaemia and exposure to a uraemic environment. Chronic inflammation is a common contributor to progressive renal failure and leads to premature mitochondrial DNA (mtDNA) damage. Pathogenic mutations in mtDNA represent an increasingly recognized cause of chronic morbidity, and mitochondrial mutations have been implicated in a range of complex disorders, including kidney disease 46. There is a synergistic relationship between the mitochondrial and nuclear genomes, with the expression of nuclear genes being essential for critical mitochondrial functions.

The aim of the present study was to investigate genetic variation that may contribute to mitochondrial dysfunction, both across the mitochondrial genome and in nuclear genes that affect mitochondrial function, using a case–control approach, followed by independent replication.

Methods

Participants

Written informed consent was obtained from all individuals in the discovery cohort who were recruited to the All-Ireland-Warren 3-Genetics of Kidneys in Diabetes (GoKinD) UK collections. Cases (n = 823) were white European individuals with Type 1 diabetes of at least 10 years duration, who had persistent proteinuria ( > 500 mg/24 h), hypertension ( ≥ 135/85 mmHg) and retinopathy. End-stage renal disease (n = 246), secondary to diabetic kidney disease, was defined as requiring renal replacement therapy (chronic dialysis or kidney transplantation). Control subjects (n = 903) were people with at least 15 years’ duration of Type 1 diabetes, with no evidence of renal disease on repeated testing. Control subjects were not prescribed anti-hypertensive medication to avoid misclassification of phenotype, as blood pressure-lowering treatment may reduce proteinuria. The discovery and replication groups have been previously described and include the FinnDiane (Finland), GoKinD (USA), and Steno Diabetes Centre (Denmark) cohorts (Table S1) 7. In all, 3245 people with diabetic kidney disease, 1422 people with end-stage renal disease and 3574 control subjects were analysed in the present study.

Gene, single-nucleotide polymorphism selection and genotyping

Twenty-five single nucleotide polymorphisms (SNPs) in the mitochondrial genome were investigated using existing genotype data from individuals genotyped using the Omni1-quad array using a case vs control group approach (Table S2) 7. Relevant nuclear genes (n = 1096) were extracted from MitoCarta 8 (n = 1012 genes) and mitomap 9 (n = 84 genes). Downloaded gene lists were revised to approved unique HUGO Gene Nomenclature Committee 10 symbols, resulting in the removal of 57 duplicate gene names; a total of 1039 unique nuclear genes were analysed.

The SNPs were downloaded from the Ensembl genome browser 11 using Ensembl genes 74 database on the Homo sapiens (GRCh37.p13) dataset. The SNPs (n = 9 243 501) associated with 1039 genes in the nuclear genome that influence mitochondrial function were investigated for their association with diabetic kidney disease. Genotype data for nuclear genes were extracted for relevant genes from imputed, publicly accessible directly typed genome-wide data for the discovery cohort (dbGaP Study Accession: phs000389.v1.p1; 7). In silico replication was conducted for all top-ranked SNPs, where  0.05 in the discovery study when considering either diabetic kidney disease or end-stage renal disease as the phenotype; data were retrieved from the GENIE genome-wide association study meta-analysis 7. De novo genotyping was conducted for replication of the top seven independent signals using commercially available TaqMan 5’ nuclease assays (Life Technologies, Warrington, UK) according to the manufacturer’s instructions.

Statistical analysis

Allelic association was adjusted for age, duration of diabetes, gender and multiple testing using plink software (version 1.07 12) for de novo genotyping. plink (http://pngu.mgh.harvard.edu/∼purcell/plink) is a free, open-source whole-genome association analysis toolset, which efficiently performs association studies for single SNPs or computationally intensive genome-wide association studies. Replication was conducted in silico for the FinnDiane (n = 2910) and USA (n = 1595) populations, followed by de novo genotyping in a Danish (n = 588) cohort. Genotype data were evaluated for their association with diabetic kidney disease and end-stage renal disease.

Results

Concordance between genotype duplicates (n = 12) was 100%, with genotype completion rates of > 89% for SNPs in the mitochondrial genome and > 97.5% for SNPs in the nuclear genome.

One mtDNA SNP was monomorphic in the UK collection; MitoT9951C. A further 19 mtDNA SNPs were present with a minor allele frequency ≤ 5%. Five SNPs were observed with a minor allele frequency of > 5%, but no SNPs in the mitochondrial genome were associated with diabetic kidney disease (Table S2).

A total of 9 243 501 SNPs in mitochondrial-related nuclear genes were downloaded from Ensembl 11. A comparison of 823 cases with Type 1 diabetes and nephropathy with 903 control subjects with Type 1 diabetes and no evidence of nephropathy identified 421 SNPs in 86 unique genes with a nominal association ( 0.05) with diabetic kidney disease, without correction for multiple testing. In silico replication in the FinnDiane (n = 2910), and USA (n = 1595) cohorts supported the association of 38 SNPs in 17 unique genes with consistent direction of effect across all collections (Table S3). Consideration of the more extreme phenotype of end-stage renal disease (246 cases vs. 903 controls) identified 139 SNPs in 50 unique genes where  0.05. In silico replication in the FinnDiane and GoKinD USA cohorts supported the association of 16 SNPs in eight genes (seven independent signals, < 0.05), with a consistent direction of effect observed across all three case–control collections for end-stage renal disease (Table1). SNPs were investigated for regulatory features using HaploReg and Blood eQTL browsers (Tables S4 and S5, respectively).

Table 1.

Discovery and replication results for SNPs with  0.05 for end-stage renal disease in the UK collection

SNP Gene Location of SNP Chromosome Independent signal Allele 1 Allele 2 Allele frequency, % End-stage renal disease P value for UK collection End-stage renal disease P value (UK, FD, GoKinD USA) Direction of effect (UK, FD, GoKinD USA) Diabetic kidney disease P value for UK collection Diabetic kidney disease P value (UK, FD, GoKinD USA) End-stage renal disease P value Steno Diabetic kidney disease P value Steno
rs1167726* COQ5 intronic 12q24.31 1 A C 84.29 0.0019 1.00E-06 +++ 0.006 2.00E-05 0.32 0.39
rs614226* COQ5 intronic 12q24.31 1 T C 84.29 0.0018 1.00E-06 −−− 0.006 2.00E-05
rs1167725 COQ5 intergenic 12q24.31 1 A T 17.76 0.003 2.00E-06 −−− 0.028 4.00E-05
rs12310837* COX6A1 intergenic 12q24 1 A G 84.22 0.002 2.00E-06 +++ 0.007 3.00E-05
rs2235222* GATC intronic 12q24.31 1 C G 15.66 0.001 3.00E-06 −−− 0.004 4.00E-05
rs7137953* GATC intronic 12q24.31 1 T C 84.34 0.001 3.00E-06 −−− 0.004 4.00E-05
rs7387720 TOP1MT intergenic 8q24.3 2 A G 53.97 0.003 7.00E-06 −−− 0.01 9.00E-05 0.70 0.94
rs724037* TOP1MT intronic 8q24.3 2 T G 54.03 0.004 2.00E-05 −−− 0.008 2.00E-04
rs17745445 TXNRD2 intronic 22q11.21 3 A G 13.69 0.003 7.00E-05 +++ 0.08 3.00E-04 0.06 0.07
rs17745433 TXNRD2 intronic 22q11.21 3 T C 14.28 0.004 7.00E-05 −−− 0.08 4.00E-04
rs5992495 TXNRD2 missense 22q11.21 4 T G 15.85 0.004 5.00E-04 −−− 0.06 0.004 0.14 0.14
rs5992493 TXNRD2 intronic 22q11.21 4 A G 84.16 0.004 5.00E-04 −−− 0.06 0.004
rs176903 SPTLC2 intronic 14q24.3 5 A G 34.62 0.003 0.002 −−− 0.0003 0.002 0.14 0.09
rs7213412 COX10 intronic 17p12 6 C G 65.99 0.002 0.002 +++ 0.08 0.048 0.33 0.29
rs2147653* PACRG intronic 6q26 7 C G 92.64 0.002 0.003 −−− 0.0001 0.004 0.63 0.81
rs1408705 PACRG intronic 6q26 7 A G 92.70 0.001 0.004 −−− 0.0001 0.004

SNP, single-nucleotide polymorphism; FD, FinnDiane; GoKiND, All-Ireland-Warren 3-Genetics of Kidneys in Diabetes cohort; COQ5,coenzyme Q5 homologue, methyltransferase (S. cerevisiae); COX6A1, cytochrome c oxidase subunit VIa polypeptide 1; GATC, glutamyl-tRNA(Gln) amidotransferase, subunit C; TOP1MT, topoisomerase (DNA) I, mitochondrial; TXNRD2, thioredoxin reductase 2; SPTLC2, serine palmitoyltransferase, long-chain base subunit 2; COX10, COX10 heme A:farnesyltransferase cytochrome c oxidase assembly factor; PACRG, PARK2 co-regulated.

*

SNPs that were common to diabetic kidney disease and end-stage renal disease in silico replication.

Combined meta-analysis for rs1167726 = 0.0000004; rs7387720 = 0.000004; rs17745445 = 0.000002; rs5992495 = 0.0003; rs176903 = 0.0008; rs7213412 = 0.001; rs2147653 = 0.001.

Seven SNPs (representing three independent signals) were common to both diabetic kidney disease and end-stage renal disease for the in silico replication analyses; SNPs representing each of these three independent signals were taken forward for additional de novo genotyping using independent samples. As the recent GENIE genome-wide association study 7 identified more significant hits with end-stage renal disease, all independent signals observed for end-stage renal disease (= 7; Table1) were also de novo genotyped in a Danish cohort of 588 individuals. Four SNPs (rs2147653, rs7387720, rs1167726, rs7213412) in the Danish cohort showed non-significant trends in the same direction as the earlier results, with rs17745445 (TXNRD2 gene on 22q11.21) showing the most evidence for association.

Discussion

The mitochondrial genome is circular, is 16 569 DNA bases in length, encodes 37 genes, and can be transcribed and translated independently of nuclear DNA. There are several differences between mitochondrial and nuclear genomes; mtDNA is primarily coding (lacking introns), and has overlapping genes, different codons, a higher mutation rate and a greater number of copies of mtDNA present in cells that have high energy consumption.

Previous publications have reported that SNPs in the mitochondrial and nuclear genomes affect mitochondrial function and have been associated with renal dysfunction 5,6,1316. In the present study, none of the genotyped SNPs in the mitochondrial genome were significantly associated with diabetic kidney disease, but the majority were present at very low frequency meaning that the discovery collection was only adequately powered to identify a statistically significant association for five of the 25 SNPs investigated. It should be noted that only 25 SNPs, from the mitochondrial genome, were present on the Omni1-quad array so only a limited number of mitochondrial SNPs were considered for their association with diabetic kidney disease using this array-based method. It is conceivable that more comprehensive examination of the entire mitochondrial genome by next-generation sequencing methods would identify hundreds of inherited and somatic mutations and some of these mitochondrial variants may be associated with diabetic kidney disease. Seven SNPs, representing three independent signals across five nuclear genes (COQ5, COX6A1, GATC, TOP1MT and PARCRG) were associated with both diabetic kidney disease and end-stage renal disease in the discovery and in silico replication analyses.

Six SNPs identified as associated with end-stage renal disease and diabetic kidney disease after in silico replication were co-located, representing one independent signal at 12q24.31. There are multiple genes within this linkage disequilibrium block, making it challenging to identify potential biological roles for these intronic or intergenic mutations (Fig. S1). Coenzyme Q is an antioxidant essential for electron-transport in the respiratory chain of the mitochondria; coenzyme Q5 homologue (COQ5) encodes methyltransferase. Cytochrome c oxidase (COX) is an enzyme, catalysing the last step in the respiratory cycle, transferring electrons from reduced cytochrome c to molecular oxygen. This process is then coupled to the translocation of protons in the inner mitochondrial membrane. A total of 13 subunits comprise COX, of which three larger subunits are encoded by mtDNA and the remaining 10 are encoded by nuclear DNA 17. COX deficiencies have been previously associated with clinical phenotypes including neurological disorders, Leigh syndrome, cardiomyopathy and hepatopathy 17. The effect of the intronic SNP located in the COX6A1 may lead to an increase in oxidative stress within the kidney. Glutamyl-tRNA(Gln) amidotransferase, subunit C (GATC) is a protein-coding gene, and clusters with long non-coding RNA.

Two SNPS comprised a second independent signal around the TOP1MT gene (mitochondrial topoisomerase I), which encodes an enzyme, topoisomerase, that exclusively targets mitochondria and plays a crucial role in the modification of DNA 18. TOP1MT relieves the tension of mtDNA supercoiling generated from mtDNA transcription and replication, within the mitochondrial genome. TOP1MT is a type 1B topoisomerase. It catalyses the temporary breaking of the DNA and allows the DNA to turn in a controlled rotation, before covalently linking the DNA to relax the super coiling 18.

The third independent signal showed a consistent direction of effect across all four collections (UK-ROI, Finnish, American and Danish) for two intronic SNPs in the TXNRD2 gene. This gene plays a key role in regulating cellular redox environment, particularly scavenging of reactive oxygen species in mitochondria. TNXRD2 is a stress response gene involved in many signalling pathways, including WNT which is associated with renal fibrosis in diabetic kidney disease. Gene expression of TNXRD2 is differentially regulated by epigenetic mechanisms in response to high glucose and is a probable target of microRNAs miR335 and miR34a 19,20.

Complementary to the single-SNP analysis described above, interaction analyses have produced novel findings for common phenotypes such as cancer 21, heart disease 22 and BMI 23, particularly when considered in association with environmental variables whose effects are under genetic and epigenetic control such as smoking. It is possible that a cumulative effect of common and/or rare genetic variants influence diabetic kidney disease, particularly where combined SNPs are located in the same biological pathway. More comprehensive analysis of the mitochondrial genome and genotyping in a larger population, such as the recently funded Juvenile Diabetes Research Foundation Genetics of Diabetic Nephropathy Collaborative Research Initiative, are required to robustly consider this approach for diabetic kidney disease. SNP–SNP interaction analyses for SNPs in the mitochondrial genome, did not reveal further associations in the present study. Clusters of correlated SNPs were identified at top-ranked genetic loci, as shown in the supplementary regional association plots (Figures S1–7).

Our data support the hypothesis that variants in genes affecting mitochondrial function are associated with renal disease including diabetic kidney disease. The identified SNPs are found within nuclear genes implicated in the regulation of epigenetic processes. Further research to explore the interactions between hyperglycaemia, uraemia and epigenetic modifications of the genome could shed new light on how these nuclear genome SNPs are associated with the phenotypes of diabetic kidney disease and end-stage renal disease.

Funding sources

E.J.S. is supported by a Diabetes UK PhD studentship (BDA 10/0004154). The Warren 3/UK GoKinD Study Group was jointly funded by Diabetes UK and the Juvenile Diabetes Research Foundation and includes: Belfast: A. P. Maxwell, A. J. McKnight, D. A. Savage; Edinburgh: J. Walker; London: S. Thomas, G. C. Viberti; Manchester: A. J. M. Boulton; Newcastle: S. Marshall; Plymouth: A. G. Demaine, B. A. Millward; Swansea: S. C. Bain. The FinnDiane genome-wide association study was supported by grants from the Folkhälsan Research Foundation, the Wilhelm and Else Stockmann Foundation, Liv och Hälsa Foundation, Helsinki University Central Hospital Research Funds (EVO), the Sigrid Juselius Foundation, the Signe and Arne Gyllenberg Foundation, Finska Läkaresällskapet, TEKES, Academy of Finland (134379), and the European Union’s Seventh Framework Program (FP7/2007–2013) for the Innovative Medicine Initiative under grant agreement IMI/115006 (the SUMMIT consortium). The GENIE consortium conducted the primary genome-wide association study, which was supported by a US Ireland R&D partnership award funded by the Science Foundation Ireland under Grant No. SFI/08/US/B1517, the Northern Ireland Research Development Office, and NIH NIDDK R01 DK081923.

Competing interests

P.-H.G. has received research grants from Eli Lilly and Roche, is an advisory board member for Boehringer-Ingelheim, Novartis, Cebix and Abbott. He has also received lecture fees from Boehringer-Ingelheim, Eli Lilly, Genzyme, Novartis, Novo Nordisk, Sanofi and MSD.

Supporting Information

Table S1. Characteristics of populations participating in the discovery and replication analyses.

Table S2. Association results for diabetic kidney disease and SNPs in the mitochondrial genome sorted by minor allele frequency.

Table S3. Discovery and meta-analysis results combined, where  0.05 for diabetic kidney disease.

Table S4. HaploReg annotations for variants described in Table1.

Table S5. eQTL data retrieved from Westra et al., Nature Genetics 2013, 45: 1238–1243.

Fig. S1. LocusZoom plot showing the genetic region surrounding rs1167726 (signal 1).

Fig. S2. LocusZoom plot showing the genetic region surrounding signal 2.

Fig. S3. LocusZoom plot showing the genetic region surrounding signal 3.

Fig. S4. LocusZoom plot showing the genetic region surrounding signal 4

Fig. S5. LocusZoom plot showing the genetic region surrounding signal 5.

Fig. S6. LocusZoom plot showing the genetic region surrounding signal 6.

Fig. S7. LocusZoom plot showing the genetic region surrounding signal 7.

dme0032-1104-sd1.docx (2.9MB, docx)

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Supplementary Materials

Table S1. Characteristics of populations participating in the discovery and replication analyses.

Table S2. Association results for diabetic kidney disease and SNPs in the mitochondrial genome sorted by minor allele frequency.

Table S3. Discovery and meta-analysis results combined, where  0.05 for diabetic kidney disease.

Table S4. HaploReg annotations for variants described in Table1.

Table S5. eQTL data retrieved from Westra et al., Nature Genetics 2013, 45: 1238–1243.

Fig. S1. LocusZoom plot showing the genetic region surrounding rs1167726 (signal 1).

Fig. S2. LocusZoom plot showing the genetic region surrounding signal 2.

Fig. S3. LocusZoom plot showing the genetic region surrounding signal 3.

Fig. S4. LocusZoom plot showing the genetic region surrounding signal 4

Fig. S5. LocusZoom plot showing the genetic region surrounding signal 5.

Fig. S6. LocusZoom plot showing the genetic region surrounding signal 6.

Fig. S7. LocusZoom plot showing the genetic region surrounding signal 7.

dme0032-1104-sd1.docx (2.9MB, docx)

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