Abstract
OBJECTIVE
The common MTNR1B single nucleotide polymorphism rs10830963 associates with risk of type 2 diabetes (T2D). Here, we examine the association between this gene variant and the risk of myocardial infarction (MCI) among patients with T2D. MCI is a main cause of death and disability among such individuals.
RESEARCH DESIGN AND METHODS
Data from the UK Biobank cohort were used in order to examine the association between rs10830963 and incidence of MCI (fatal and nonfatal) among 13,655 participants with probable T2D during a follow-up period of 6.8 years.
RESULTS
Assuming an additive genetic model, a positive association was found between the rs10830963 variant in the MTNR1B gene and the risk for incident MCI during the 6.8-year follow-up (adjusted hazard ratio per G allele 1.19 [95% CI 1.02, 1.40], P = 0.03).
CONCLUSIONS
The rs10830963 polymorphism may be a useful genetic marker for MCI in patients with T2D.
Introduction
Activation of melatonin receptor 1B (MTNR1B) by the pineal gland hormone melatonin inhibits the release of insulin by pancreatic islets in response to glucose (1,2). This inhibitory effect is particularly strong among carriers of a common variant in the MTNR1B gene, rs10830963 (G risk allele; ∼30% of the population carry at least one G risk allele). This may also explain the strong association of this single nucleotide polymorphism (SNP) with the risk of type 2 diabetes (T2D) (3). It is noteworthy that melatonin also acts on other organs through MTNR1B, including the heart. Using an experimental myocardial ischemia/reperfusion mouse model, a recent study demonstrated that melatonin-induced activation of MTNR1B on myocardial cells ameliorated myocardial ischemic/reperfusion injury (4). Myocardial infarction (MCI) is a main cause of death and disability among individuals with diabetes (5). For instance, the results of a 5.5-year cohort study involving 1.9 million individuals (of whom 1.8% had T2D) demonstrated a higher risk of nonfatal MCI (adjusted hazard ratio 1.54 [95% CI 1.42, 1.67]) in individuals with T2D than in those without diabetes (6). It is not known, however, whether carrying the minor G allele of rs10830963 modifies the risk of MCI. Thus, in this study we examined the association between this gene variant and the risk of MCI among patients with T2D from the UK Biobank cohort.
Research Design and Methods
Study Population
The UK Biobank is a prospective, population-based cohort study that enrolled, from 2006 through 2010, more than 500,000 individuals aged between 40 and 69 years. Participants were recruited from across the U.K. and enrolled at one of the UK Biobank assessment centers. For the current study, 337,083 unrelated individuals of white British ancestry whose genomes passed quality control were initially available, among whom 13,655 were identified as having probable T2D at baseline. The UK Biobank received ethics approval from the National Health Service Research Ethics Service (London, U.K.) (reference 11/NW/0382), and participants gave informed consent.
Assessment of T2D
Participants were classified as having T2D whenever one of two criteria was met: 1) T2D indicated by using a validated algorithm based on self-reported disease, medication, and a diagnosis of T2D noted in the medical history (for more details regarding the algorithm, see the work by Eastwood et al. [7]). The variables were collected by a questionnaire individuals completed with a touch-screen device and through verbal interviews with a trained nurse from the UK Biobank baseline assessment team. 2) HbA1c level ≥6.5% (≥48 mmol/mol) (8). HbA1c levels in red blood cells were centrally determined by the UK Biobank using high-performance liquid chromatography performed on a Bio-Rad VARIANT II TURBO HbA1c analyzer (9). Individuals with probable type 1 diabetes or probable gestational diabetes mellitus identified by the aforementioned algorithm were excluded from the analysis.
Genotyping
The MTNR1B rs10830963 SNP (chromosome 16, intron variant) was directly genotyped with the Affymetrix UK Biobank Lung Exome Evaluation (UK BiLEVE) Axiom array or the Applied Biosystems UK Biobank Axiom array. Quality control and imputation were conducted centrally by using the Haplotype Reference Consortium (UK10K) and 1000 Genomes Project phase 3 reference panels. Testing for Hardy-Weinberg equilibrium revealed that the SNP did not deviate from the expected genotype proportion. The minor allele frequency of the rs10830963 G risk allele was 29.3%. An additive genetic model was assumed when analyzing the effects of this gene variant on the risk of incident MI in this study.
Outcome
Incident MCI (fatal and nonfatal) was algorithmically defined by the UK Biobank Outcome Adjudication Group. The algorithm for ascertaining MCI after baseline assessment used data from linked hospital admissions and death registries. MCIs prior to baseline assessment were detected either through linked hospital admission records or on the basis of participant self-report. Individuals were excluded if they had had an MCI, ischemic stroke (algorithmically defined), or coronary artery disease (defined by coronary artery bypass, coronary angioplasty, or coronary angiogram reported during the verbal interview) prior to the baseline assessment. The date of the last recorded MCI in the released data (21 February 2016) was used as the censoring date for the participants if no death, outcome, or earlier loss to follow-up (n = 23) had been recorded.
Potential Confounders
The following potential confounders were included in the analysis: participants’ age, sex, and BMI; the Townsend index reflecting socioeconomic status; systolic blood pressure; use of blood pressure–lowering medications (yes/no); use of cholesterol-lowering medications (yes/no); smoking status (current, former, and never); alcohol intake frequency (six categories ranging from never to daily or almost daily); and daily self-reported sleep duration (hours). We also adjusted our analysis for region of the test center and genetic principal components of ancestry (first 10 columns).
Statistical Analysis
The association between the rs10830963 genotype and incident MCI was estimated by using Cox proportional hazards regression and assuming an additive genetic model. Time at risk was calculated from the date of the baseline investigation to the date on which the first MCI (nonfatal or fatal) was detected, the date of death unrelated to MCI, or the date of the last follow-up (21 February 2016), whichever came first. The primary analysis was adjusted for participants’ sex and age (model 1). Model 2 was additionally adjusted for participants’ BMI, the Townsend index, systolic blood pressure, use of blood pressure–lowering medications, use of cholesterol-lowering medications, smoking status, alcohol intake frequency, and sleep duration, as well as for region of the test center and genetic principal components of ancestry. In the final model (model 3), we also adjusted for the HbA1c value measured at baseline. Proportional hazards assumptions were confirmed by using Kaplan-Meier survival curves. Baseline comparisons between participants with and those without T2D were performed by using one-way ANOVA or the χ2 test. Overall, a two-sided P value less than 0.05 was regarded as statistically significant. Analyses were performed with Stata software version 15.1 (StataCorp, College Station, TX).
Results
Characteristics of the T2D cohort, stratified by rs10830963 genotype, are shown in Table 1. In total, the investigated cohort had been at risk for 93,099 years. Genotype distribution of rs10830963 was 49.8% for CC, 41.7% for CG, and 8.5% for GG. During the average 6.8-year observation period, 360 patients with T2D (2.6% of the cohort) had an incident MCI.
Table 1.
Characteristics | Total population (n = 13,655) | rs10830963 Genotype | P value | ||
---|---|---|---|---|---|
CC (n = 6,805) | CG (n = 5,689) | GG (n = 1,161) | |||
Time at risk, years | 93,099 | 46,474 | 38,745 | 7,880 | — |
Age, years | 60.2 ± 6.7 | 60.2 ± 6.7 | 60.1 ± 6.7 | 60.2 ± 6.8 | 0.71* |
Sex | 0.22# | ||||
Female | 5,300 (38.8) | 2,621 (38.5) | 2,249 (39.5) | 430 (37.0) | |
Male | 8,355 (61.2) | 4,184 (61.5) | 3,440 (60.5) | 731 (63.0) | |
BMI, kg/m2 | 31.9 ± 5.9 | 32.0 ± 6.0 | 31.9 ± 5.9 | 31.7 ± 5.7 | 0.40* |
Region of test center | 0.08# | ||||
England | 12,004 (87.9) | 5,988 (88.0) | 5,007 (88.0) | 1,009 (86.9) | |
Wales | 677 (5.0) | 315 (4.6) | 287 (5.0) | 75 (6.5) | |
Scotland | 974 (7.1) | 502 (7.4) | 395 (6.9) | 77 (6.6) | |
Townsend index | −0.9 ± 3.3 | −0.9 ± 3.3 | −0.9 ± 3.3 | −0.9 ± 3.2 | 0.78* |
Systolic BP, mmHg | 145.5 ± 18.3 | 145.4 ± 18.2 | 145.5 ± 18.5 | 145.8 ± 17.8 | 0.69* |
BP-lowering medication | 0.62# | ||||
Yes | 8,018 (58.7) | 4,017 (59.0) | 3,313 (58.2) | 688 (59.3) | |
No | 5,637 (41.3) | 2,788 (41.0) | 2,376 (41.8) | 473 (40.7) | |
Cholesterol-lowering medication | 0.14# | ||||
Yes | 9,372 (68.6) | 4,724 (69.4) | 3,863 (67.9) | 785 (67.6) | |
No | 4,283 (31.4) | 2,081 (30.6) | 1,826 (32.1) | 376 (32.4) | |
Smoking status | 0.01# | ||||
Current | 5,986 (43.8) | 2,883 (42.4) | 2,567 (45.1) | 536 (46.2) | |
Former | 6,099 (44.7) | 3,134 (46.1) | 2,474 (43.5) | 491 (42.3) | |
Never | 1,477 (10.8) | 735 (10.8) | 615 (10.8) | 127 (10.9) | |
Missing data | 93 (0.7) | 53 (0.8) | 33 (0.6) | 7 (0.6) | |
Alcohol intake frequency | 0.35# | ||||
Daily or almost daily | 2,222 (16.3) | 1,131 (16.6) | 930 (16.3) | 161 (13.9) | |
Three or four times per week | 2,268 (16.6) | 1,118 (16.4) | 936 (16.5) | 214 (18.4) | |
One or two times per week | 3,347 (24.5) | 1,668 (24.5) | 1,375 (24.2) | 304 (26.2) | |
One to three times per month | 1,762 (12.9) | 858 (12.6) | 751 (13.2) | 153 (13.2) | |
Special occasions only | 2,397 (17.6) | 1,210 (17.8) | 996 (17.5) | 191 (16.5) | |
Never | 1,644 (12.0) | 809 (11.9) | 697 (12.3) | 138 (11.9) | |
Missing data | 15 (0.1) | 11 (0.2) | 4 (0.1) | 0 (0.0) | |
Sleep duration, h/day | 7.2 ± 1.3 | 7.2 ± 1.3 | 7.2 ± 1.3 | 7.2 ± 1.3 | 0.58* |
HbA1c, % (mmol/mol) | 7.0 ± 3.4 (52.9 ± 14.1) | 7.0 ± 3.5 (53.1 ± 14.3) | 7.0 ± 3.4 (52.8 ± 14.1) | 7.0 ± 3.4 (52.9 ± 13.5) | 0.64* |
Incident MCI | 0.16# | ||||
Yes | 360 (2.6) | 164 (2.4) | 158 (2.8) | 38 (3.3) | |
No | 13,295 (97.4) | 6,641 (97.6) | 5,531 (97.2) | 1,123 (96.7) |
Data are n (%) or mean ± SD unless otherwise specified. BP, blood pressure.
Based on the χ2 test.
Based on ANOVA.
Assuming an additive genetic model, the Cox regression analysis revealed a positive association between the rs10830963 variant in the MTNR1B gene and the risk of experiencing an incident MCI during the 6.8-year follow-up (model 1: adjusted hazard ratio per G allele 1.17 [95% CI 1.00, 1.37], P = 0.05; model 2: 1.19 [1.02, 1.39], P = 0.03; model 3: 1.19 [1.02, 1.40], P = 0.03).
Conclusions
Our study, which is based on a large cohort of patients with T2D, demonstrates that those carrying the minor G allele of rs10830963 may have a greater risk for MCI compared with those without the minor G allele. The association between the rs10830963 variant in the MTNR1B gene and incident MCI remained significant when adjusted for HbA1c. This suggests that the observed association between this gene variant and MCI may not be simply related to impaired glycemic control, which itself can cause cardiovascular complications such as increased carotid intima-media thickness (10). Altogether, our findings suggest that the rs10830963 polymorphism may be a useful genetic marker for diabetologists to identify patients with T2D who have a high risk of experiencing MCI. Importantly, our results were based on a cohort of patients of white British ancestry who had T2D. Thus, our findings must be confirmed in populations with T2D among other ethnicities. Mechanistic studies using, for example, heart biopsy specimens from human donors will help evaluate whether the rs10830963 polymorphism alters the cardioprotective properties of melatonin through MTNR1B.
Article Information
Acknowledgments. This research was conducted by using the UK Biobank Resource under project number 43015.
Funding. The authors’ work is funded by the Novo Nordisk Fonden (grant NNF19OC0056777 to C.B.), Hjärnfonden (grant FO2019-0028 to C.B.), Vetenskapsrådet (grant 2015-03100 to C.B.), Åke Wiberg Stiftelse (grants M18-0169 and M19-0266 to X.T.), Fredrik och Ingrid Thurings Stiftelse (grant 2019-00488 to X.T.), and Svenska Sällskapet för Medicinsk Forskning (X.T.).
Duality of Interest. No potential conflicts of interest relevant to this article were reported.
Author Contributions. X.T. and C.B. designed the study and obtained financial support. X.T. performed the statistical analysis, interpreted the data, and wrote the initial draft. C.B. supervised the writing of the initial draft. Both authors reviewed and approved the final version of the manuscript submitted for publication. X.T. is the guarantor of this work and, as such, had full access to all the data in the study and takes responsibility for the integrity of the data and the accuracy of the data analysis.
References
- 1.Rubio-Sastre P, Scheer FAJL, Gómez-Abellán P, Madrid JA, Garaulet M. Acute melatonin administration in humans impairs glucose tolerance in both the morning and evening. Sleep (Basel) 2014;37:1715–1719 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 2.Tuomi T, Nagorny CLF, Singh P, et al. . Increased melatonin signaling is a risk factor for type 2 diabetes. Cell Metab 2016;23:1067–1077 [DOI] [PubMed] [Google Scholar]
- 3.Lyssenko V, Nagorny CLF, Erdos MR, et al. . Common variant in MTNR1B associated with increased risk of type 2 diabetes and impaired early insulin secretion. Nat Genet 2009;41:82–88 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 4.Han D, Wang Y, Chen J, et al. . Activation of melatonin receptor 2 but not melatonin receptor 1 mediates melatonin-conferred cardioprotection against myocardial ischemia/reperfusion injury. J Pineal Res 2019;67:e12571. [DOI] [PubMed] [Google Scholar]
- 5.Harding JL, Pavkov ME, Magliano DJ, Shaw JE, Gregg EW. Global trends in diabetes complications: a review of current evidence. Diabetologia 2019;62:3–16 [DOI] [PubMed] [Google Scholar]
- 6.Shah AD, Langenberg C, Rapsomaniki E, et al. . Type 2 diabetes and incidence of cardiovascular diseases: a cohort study in 1·9 million people. Lancet Diabetes Endocrinol 2015;3:105–113 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 7.Eastwood SV, Mathur R, Atkinson M, et al. . Algorithms for the capture and adjudication of prevalent and incident diabetes in UK Biobank. PLoS One 2016;11:e0162388. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 8.International Expert Committee International Expert Committee report on the role of the A1C assay in the diagnosis of diabetes. Diabetes Care 2009;32:1327–1334 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 9.Higgins TN, Blakney GB, Dayton J. Analytical evaluation of the Bio-Rad variant II automated HbA(1C) analyzer. Clin Biochem 2001;34:361–365 [DOI] [PubMed] [Google Scholar]
- 10.Di Pino A, Scicali R, Calanna S, et al. . Cardiovascular risk profile in subjects with prediabetes and new-onset type 2 diabetes identified by HbA(1c) according to American Diabetes Association criteria. Diabetes Care 2014;37:1447–1453 [DOI] [PubMed] [Google Scholar]