Abstract
Objective
Matrix gla protein (MGP) inhibits arterial and cartilaginous calcification. A Threonine to Alanine (Thr83Ala) polymorphism (codon 83) in MGP is associated with myocardial infarction (MI) and femoral artery calcification. We examined the association of the MGP Thr83Ala polymorphism with quantity and progression of coronary artery calcification (CAC), a non-invasive measure of subclinical coronary atherosclerosis.
Methods and Results
In 605 Epidemiology of Coronary Artery Calcification Study participants, generalized linear mixed models were fit to determine the association of MGP Thr83Ala with CAC quantity and progression. There was a significant additive relationship between MGP Thr83Ala and CAC progression (P=0.001). In the fully-adjusted model, every one Ala83 allele increase was associated with an estimated 1.9% (95% CI: 0.7%, 3.0%) per one-year since baseline larger increase in CAC quantity. A proxy SNP for MGP Thr83Ala (rs6488724) was similarly associated with CAC progression in an independent cohort from the Genetic Epidemiology Network of Arteriopathy (GENOA) Study.
Conclusions
Increased risk of MI associated with MGP ThrAla83 genotype observed elsewhere may be related to faster progression of subclinical coronary atherosclerosis. MGP genotype could be a potential candidate for identifying individuals at increased risk of atherosclerotic disease who would benefit from aggressive primary prevention strategies.
Keywords: Population, Genetics, Atherosclerosis, Calcium, Imaging
Matrix gla protein (MGP) inhibits vessel and cartilage calcification and is expressed in calcified plaques. MGP knockout mice experience early death due to an arterial calcification leading to blood vessel rupture.1 In humans, Keutel syndrome (MIM 245150)2, which results from nonsense mutations in MGP (12p13.1-p12.3), presents with abnormal cartilage calcification.3
Coronary artery calcification (CAC), a measure of coronary atherosclerosis presence and extent, is measured non-invasively with computed tomography (CT). Serial CT measures can be used to track CAC progression over time.4 CAC progression is associated with future coronary heart disease (CHD) events, including myocardial infarction (MI).5,6 CAC quantity7 and progression8 are heritable, although the specific genes involved are largely unknown. Further, the genes for CAC quantity and progression do not completely overlap (i.e. incomplete pleiotropy)8 suggesting the need to examine genes involved in both processes.
Serum levels of MGP are associated with CAC in some9, but not all studies.10,11 MGP promoter region polymorphisms are associated with variability in serum MGP levels.12 A single nucleotide polymorphism (SNP) in the promoter region of MGP (T-138C substitution) was weakly, but not statistically significantly, associated with CAC presence among black and white Coronary Artery Risk Development In Young Adults (CARDIA) study participants.13 In older men taking part in a trial of vitamin K supplementation, MGP polymorphisms were associated with CAC presence and quantity.10 In a recent genome-wide association study of CAC quantity, however, there was no evidence of a common genetic variant in the region of MGP having an association with CAC quantity.14
A Threonine (Thr) to Alanine (Ala) substitution at codon 83 (Thr83Ala; rs4236) of MGP changes a polar amino acid to a nonpolar amino acid in one of the five Gla-binding domains of MGP.15 The Thr83Ala missense mutation may alter the proteolytic processing of MGP and/or decrease MGP’s ability to bind to calcium, resulting in calcium depositing in the arterial wall.16,17 Ala83 carriers have increased risk of MI and femoral calcification as measured with B-mode ultrasonography.15 The Thr83Ala polymorphism is also associated with chronic kidney disease (CKD)18 and kidney stones19; both CKD and kidney stone disease are associated with subclinical atherosclerosis and increased risk of MI. 20–23
To our knowledge, no studies have reported examination of the association between the MGP Thr83Ala substitution and quantity and progression of CAC. Here we examine these associations among a group of asymptomatic, community-based research participants.
Methods
Study Participants
The Rochester Family Heart Study (RFHS), a community-based study of 3,974 individuals, 5–90 years old, was conducted between 1984 and 1991.24,25 The Epidemiology of Coronary Artery Calcification (ECAC) Study included 1,736 participants seen between 1991 and 1998. Among the 1,736 ECAC Study participants, 1,032 were identified from the RFHS. The ECAC Study participants lived in the vicinity of Rochester, MN, were ≥20 years of age at the time of recruitment, were not pregnant or lactating, and never had coronary or non-coronary heart surgery.26,27 A total of 1,155 ECAC participants, including 622 of the original 1,032 RFHS participants, had a follow-up examination between December, 2000 and February, 2005. In general, participants were invited to return for a follow-up examination based on age (older age first) and longer time since baseline examination. The study protocols were approved by the Mayo Clinic and University of Michigan Institutional Review Boards and participants gave written informed consent.
As part of the RFHS, 665 white participants who also participated in the ECAC Study were genotyped for MGP, irrespective of risk factor or disease status. Twelve individuals reporting a CHD event (MI, stroke or positive coronary angiogram), 31 individuals with diabetes, and 17 individuals with missing data at baseline or follow-up were removed from the analysis. The final sample consisted of 605 ECAC Study participants, of whom 407 (67.3%) had follow-up CT examinations.
Risk Factor Assessment
During the baseline and follow-up interview, participants reported current medication use and history of smoking, physician-diagnosed hypertension, MI, angiographic evidence of a blocked coronary artery, stroke, or diabetes. Height was measured by a wall stadiometer, weight by electronic balance, and body mass index (BMI) calculated (kg/m2). Waist circumference was measured at the umbilicus and abdominal obesity defined as waist circumference >102 cm in men and >88 cm in women.28
Standard enzymatic methods were used to measure total cholesterol, high density lipoprotein cholesterol (HDL-C) and triglycerides after overnight fasting.24,25 Systolic blood pressure (SBP) and diastolic blood pressure (DBP) levels were measured in the right arm with a random-zero sphygmomanometer (Hawksley and Sons). Three measures at least two minutes apart were taken and the average of the second and third measurements used for the analyses presented here.
Individuals were considered hypertensive if they reported a prior diagnosis of hypertension and use of prescription antihypertensive medication, or if the average SBP or DBP was ≥140 mm Hg or ≥90 mm Hg, respectively. Participants were considered diabetic if they reported using insulin or oral hypoglycemic agents, or if they reported a physician diagnosis of diabetes but were not currently taking a pharmacological agent to control their high glucose levels.
Genotyping of MGP
The Thr83Ala polymorphism in MGP was a priori chosen since this missense mutation could potentially elicit functional change in the protein; no other MGP SNPs were genotyped. Genotyping of the MGP Thr83Ala polymorphism was carried out by subjecting 20 ng aliquots of genomic DNA to PCR amplification and subsequent restriction-endonuclease digestion. DNA was extracted from blood drawn at the time of the baseline physical exam. The oligonucleotide primers used were forward primer: ATCCTTCTCAATTTTGGCCTC and reverse primer ATTTCAGTAATGCTGCTACAG (Gibco BRL).
The fragments were visualized by the use of ethidium-bromide staining after electrophoresis on 10% vertical acrylamide gels. Samples originally scored as heterozygotes were subjected to successive enzyme digestions and re-scored to minimize the possibility of mistypings due to incomplete digestions. Genotypes were scored separately by two trained laboratory workers and any discrepant typings were subjected to examination by a third person.
Measures of CAC
CAC was measured with an Imatron C-100 or C-150 electron beam CT (EBCT) scanner (Imatron Inc., South San Francisco, California). Protocols at baseline and follow-up were identical29 and methods to account for variability by scanner were utilized as described elsewhere.27,30 A dual scan approach was used beginning in 1993. A scan run consisted of 40 contiguous 3-mm-thick tomographic slices from the root of the aorta to the apex of the heart. Scan time was 100 ms/tomogram. Electrocardiographic gating was used and all images were triggered at end-diastole during 2 to 4 breath-holds. A radiological technologist scored the tomograms with an automated scoring system without knowledge of other CT examination results for the same participant.31 CAC was defined as a hyperattenuating focus within 5 mm of the midline of a coronary artery, ≥4 contiguous pixels in size, and having CT numbers >130 Hounsfield units throughout. Areas ≥1 mm2 for all CAC foci were summed to provide a measure of CAC quantity.
Replication Cohort
The first phase of the Genetic Epidemiology Network of Arteriopathy (GENOA) Study of the Family Blood Pressure Program was conducted in Rochester, MN between June 1996 and October 2000.32 Sibships with ≥2 members having essential hypertension diagnosed before age 60 years, along with any other available siblings regardless of their hypertension status, were recruited. Follow-up studies, which occurred between December 2000 and February 2004, included CT examinations of the heart.33 Individuals with a history of coronary revascularization and women who were pregnant or lactating were excluded. Identical CAC measurement protocols (including EBCT scanners used), as well as clinical and laboratory protocols, were used in the ECAC Study and the GENOA Study. There were 246 GENOA study participants who had a first CT examination of the heart as part of the ECAC Study between 1991 and 1998 and had a follow-up CT examination of the heart between 2000 and 2004. None of these 246 GENOA study participants were in the RFHS and thus represent an independent cohort.
GENOA participants were genotyped using the Affymetrix SNP Array 6.0.34 Although this array does not contain the MGP Thr83Ala polymorphism (rs4236), proxy SNPs were searched using SNP Annotation and Proxy Search (SNAP) using the HapMap CEU population.35 Nine genetically identical (R2=1) proxy SNPs (distance from rs4236 ranging from 2320 – 32576 base pairs) were identified that were directly genotyped on the Affymetrix 6.0 platform.
Statistical Analysis
A significance level of 0.05 was used for all analyses (since only a single SNP was tested a priori, no adjustment for multiple testing was made); all tests were two-sided. The MGP Thr83Ala polymorphism was tested for consistency with Hardy-Weinberg equilibrium (HWE) in the sample of all 665 ECAC participants with MGP genotype data. As some individuals were members of the same sibship (612 singletons, 25 sibship of size 2, and 1 sibship of size 3), one member of each sibship was randomly selected and used to obtain expectations under HWE. Individuals with MGP genotyping data represent a sub-sample of the entire ECAC study cohort. We compared those with and without genotyping data using chi-square tests for discrete traits and Wilcoxon non-parametric tests for continuous traits. The association between MGP genotype and baseline demographic and/or CHD risk factors was estimated using logistic regression for discrete covariates and linear regression for continuous covariates.
A varying number of CAC quantity measures were available for each participant (maximum of two at baseline and two at follow-up): 60 participants had one, 147 had two, 185 had three, and 213 had four CAC measures. For descriptive purposes, when 2 CAC measures at a single time point were available, the average was used to represent CAC quantity. To reduce non-normality, CAC quantity was log transformed after adding 1.
Generalized linear mixed models were fit to: (1) examine the cross-sectional association between MGP genotype and CAC quantity variation; and (2) test whether MGP genotype was associated with the rate of change in CAC quantity over time. These models allowed us to utilize each scan run available at baseline and follow-up, rather than averaging multiple scans at each time point. The models included a random participant intercept (i.e. baseline CAC quantity) and fixed effects for the covariates. All models assumed an additive relationship between MGP genotype and CAC quantity and progression.
All models included baseline age, time since baseline examination, male sex, a time-by-male sex interaction term and a time-by-baseline age interaction term as covariates. MGP genotype was included to determine if there was a cross-sectional association between MGP and CAC quantity and a time-by-MGP genotype interaction variable added to determine whether MGP genotype was associated with CAC progression. We additionally adjusted for baseline CHD risk factors (i.e. SBP, current smoker, total cholesterol, HDL-C, anti-hypertensive medication use and abdominal obesity); we considered each two-way interaction with time and retained any significant interaction term. For MGP-by-time interactions, parameter estimates were exponentiated and interpreted as the relative increase in CAC quantity per year since baseline.
Additionally, we refit the final model, stratified by presence or absence of detectable CAC at baseline, to examine whether MGP was associated with incident CAC quantity and/or proliferation of existing CAC quantity. In order to account for potential correlation among members of the same sibship, we refit all final models randomly selecting one individual per family. Inferences were the same.
Identical models were fit within the GENOA-Rochester replication sample. The proxy SNP closest to MGP Thr83Ala was chosen for primary analysis (rs6488724, distance=2320 base pairs).
Results
The ECAC study group included 309 men and 296 women with mean age of 51.6±10.3 years at baseline. The prevalence of detectable CAC at baseline was 44% (265/605). Mean time between examinations was 10.3 years (range 6.2 to 13.7 years). Mean annual change in CAC quantity was 3.4±8.5 mm2/year.
MGP Thr83Ala polymorphism genotype frequencies were consistent with expectations under HWE (χ2= 3.82, P=0.051). There were no differences between those with and without MGP genotyping with respect to age at examination, male sex, or presence or quantity of detectable CAC at baseline (P>0.05 for all; data not shown). MGP genotype was statistically significantly associated with current smoking (P=0.004) and anti-hypertensive medication use (P=0.025) at baseline. There were no other statistically significant differences with respect to baseline demographic or risk factor variables (Table 1).
Table 1.
Characteristic | Thr83Thr (n=190) | Thr83Ala (n=322) | Ala83Ala (n=93) | P |
---|---|---|---|---|
Age (years) | 51.8 (9.5) | 51.5 (10.2) | 51.6 (12.3) | 0.885 |
Male | 92 (48.4%) | 167 (51.9%) | 50 (53.8%) | 0.357 |
Systolic BP (mm Hg) | 118.9 (14.8) | 118.1 (16.6) | 119.1 (15.7) | 0.941 |
Diastolic BP (mm Hg) | 77.0 (9.4) | 76.4 (9.5) | 77.8 (9.5) | 0.716 |
Cholesterol (mg/dL) | 192.8 (41.2) | 195.7 (36.6) | 189.8 (36.8) | 0.762 |
High-density lipoprotein cholesterol (mg/dL) | 44.9 (12.7) | 45.5 (13.0) | 45.6 (15.5) | 0.594 |
Fasting glucose (mg/dL) | 88.3 (10.7) | 88.7 (10.2) | 89.3 (17.6) | 0.518 |
Current smoker | 14 (7.4%) | 36 (11.2%) | 18 (19.4%) | 0.004 |
Hypertension | 40 (21.1%) | 54 (16.8%) | 20 (21.5%) | 0.787 |
Anti-hypertensive Medication | 16 (8.4%) | 32 (9.9%) | 17 (18.3%) | 0.025 |
Body Mass Index (kg/m2) | 27.2 (4.8) | 27.0 (4.5) | 26.7 (4.6) | 0.319 |
Waist Circumference (cm) | 86.8 (12.7) | 86.2 (13.1) | 86.1 (12.0) | 0.631 |
Abdominal Obesity | 35 (18.4%) | 58 (18.0%) | 13 (14.0%) | 0.421 |
Detectable CAC at baseline | 81 (42.6%) | 142 (44.1%) | 42 (45.2%) | 0.828‡ |
Detectable CAC at follow-up* | 71 (56.4%) | 144 (64.0%) | 39 (69.6%) | 0.046‡ |
Baseline CAC area (mm2) | 25.8 (76.3) | 22.3 (70.8) | 20.4 (49.2) | 0.833‡ |
Follow-up CAC area (mm2)* | 36.2 (98.1) | 51.8 (137.4) | 53.6 (101.5) | 0.070‡ |
Average change in CAC area (mm2/year)*,† | 2.4 (6.4) | 3.8 (9.8) | 3.8 (6.9) | 0.065‡ |
Time between baseline and follow-up examinations (years)* | 10.5 (1.5) | 10.2 (1.4) | 10.4 (1.5) | 0.328‡ |
CAC, coronary artery calcification; MGP, matrix Gla protein; Thr, threonine; Ala, alanine; BP, blood pressure
407 participants had follow-up examinations (56 participants with Ala83Ala genotype, 225 participants with Thr83Ala genotype, and 126 participants with Thr83Thr genotype)
Defined as (follow-up - baseline CAC area)/time between examinations (in years)
Adjusted for male sex and age at examination; average change in CAC area additionally adjusted for baseline CAC quantity; CAC quantity variables log-transformed.
MGP Genotype and CAC Quantity and Progression
MGP genotype was not associated with cross-sectional CAC quantity (P=0.603) after adjusting for male sex, baseline age, time between examinations, a time-by-male sex interaction term and a time-by-baseline age interaction term (data not shown).
MGP genotype was significantly associated with rate of change in CAC quantity (Table 2). For every one Ala83 allele increase, there was a faster rate of change in CAC quantity. In the fully-adjusted model, every one Ala83 allele increase was associated with an estimated 1.9% (95% CI: 0.7%, 3.0%) per one-year since baseline larger increase in CAC quantity.
Table 2.
Covariate | Model I* | Model II† | ||
---|---|---|---|---|
β±se | P | β±se | P | |
Time (years) | −0.23±0.03 | <0.001 | −0.25±0.04 | <0.001 |
MGP | −0.03±0.09 | 0.759 | −0.02±0.09 | 0.851 |
Time*MGP | 0.02±0.01 | <0.001 | 0.02±0.01 | 0.001 |
MGP, matrix Gla protein; β, parameter estimate; se, standard error; Thr, threonine; Ala, alanine
Adjusted for sex, baseline age, a time-by-age interaction term and a time-by-sex interaction term.
Additionally adjusted for systolic blood pressure (SBP), a time-by-SBP interaction term, smoking status, a time-by-smoking status interaction term, total cholesterol, high-density lipoprotein cholesterol, antihypertensive medication use and abdominal obesity.
MGP Genotype and CAC Progression Stratified by Detectable CAC at Baseline
Among those with detectable CAC at baseline, there was no evidence that MGP genotype was associated with CAC progression (P=0.159) (Table 3). In the fully-adjusted model, among those without detectable CAC at baseline, CAC progression was statistically significantly associated with MGP genotype (P=0.008) (Table 3). Among those without detectable CAC at baseline, every additional Ala83 allele was associated with a 2.2% (95% CI: 0.6%, 3.9%) per-year increase in CAC quantity.
Table 3.
Covariate | Detectable CAC absent at baseline (n=340) | |||
---|---|---|---|---|
Model I* | Model II† | |||
β±se | P | β±se | P | |
Time (years) | −0.11±0.04 | 0.006 | −0.19±0.06 | 0.001 |
MGP | −0.01±0.07 | 0.900 | 0.01±0.08 | 0.911 |
Time*MGP | 0.02±0.01 | 0.004 | 0.02±0.01 | 0.008 |
| ||||
Detectable CAC present at baseline (n=265) | ||||
Model I* | Model II† | |||
| ||||
β±se | P | β±se | P | |
Time (years) | −0.36±0.05 | <0.001 | −0.45±0.07 | <0.001 |
MGP | −0.07±0.13 | 0.582 | −0.12±0.14 | 0.391 |
Time*MGP | 0.01±0.01 | 0.135 | 0.01±0.01 | 0.159 |
MGP, matrix Gla protein; β, parameter estimate; se, standard error; Thr, threonine; Ala, alanine
Adjusted for sex, baseline age, a time-by-age interaction term and a time-by-sex interaction term.
Additionally adjusted for systolic blood pressure (SBP), a time-by-SBP interaction term, smoking status, a time-by-smoking status interaction term, total cholesterol, high-density lipoprotein cholesterol, antihypertensive medication use and abdominal obesity.
Replication
Supplementary Table I provides demographic and clinical summary data on the GENOA-Rochester cohort used for replication. A total of 246 (116 male) white participants had a total of 944 CAC measures used in the replication analysis. Genotype frequencies for the proxy SNP for MGP Thr83Ala, rs6488724, were consistent with expectations under HWE (χ2= 1.89, P=0.169) among unrelated GENOA participants. rs6488724 was not associated with cross-sectional CAC (P=0.754; data not shown). rs6488724 was significantly and positively associated with CAC progression (Table 4). In the fully adjusted model, for every one A allele increase in rs6488724 there is an expected 3.0% (95% CI: 1.0%, 5.5%) increase in CAC quantity per year since baseline (P=0.009). Stratifying by presence or absence of detectable CAC at baseline, there was no statistically significant association between rs6488724 and CAC progression among the 160 participants with detectable CAC at baseline (P=0.311). In contrast, among the 86 participants without detectable CAC at baseline, for every one A allele increase in rs6488724 there was an expected 6.7% (95% CI: 2.3%, 11.1%) increase in CAC quantity per year since baseline (P=0.003). Inferences were similar when models were fit with the other identified proxy SNPs (data not shown).
Table 4.
Covariate | Model I* | Model II† | ||
---|---|---|---|---|
β±se | P | β±se | P | |
Time (years) | −0.19±0.01 | 0.006 | −0.36±0.08 | <0.001 |
rs6488724 | −0.10±0.15 | 0.486 | −0.10±0.15 | 0.492 |
Time* rs6488724 | 0.03±0.01 | 0.011 | 0.03±0.01 | 0.009 |
SNP, single nucleotide polymorphism; β, parameter estimate; se, standard error
Adjusted for sex, baseline age, time between exams, a time-by-age interaction term and a time-by-sex interaction term.
Additionally adjusted for systolic blood pressure (SBP), a time-by-SBP interaction term, smoking status, a time-by-smoking status interaction term, total cholesterol, high-density lipoprotein cholesterol, antihypertensive medication use and abdominal obesity.
Discussion
In the current study, the MGP Thr83Ala polymorphism was associated with CAC progression, but not with cross-sectional CAC quantity. CAC progression is heritable and there is evidence that unique genes are involved in variation in the quantity and progression of CAC.8 Thus, the Thr83Ala polymorphism in MGP appears to be involved in some, but not all, of the processes involved in the pathogenesis of CAC.
MGP gene expression can be induced by vascular smooth muscle cells (VSMC) in response to increased extracellular calcium concentrations36 and may be induced in response to atherosclerosis.37 The MGP Thr83Ala substitution may decrease MGP’s ability to bind calcium, leaving unbound calcium free to deposit in the arterial wall. Recently, MGP, in the uncarboxylated form, was found to be associated with microcalcifications in preatheroma atherosclerotic lesions, shifting to the carboxylated (active) form as lesion severity increased.38 Similarly, the association of MGP with CAC may vary by the state of phosphorylation and/or carboxylation of MGP, as recently demonstrated in sample of 200 healthy women, with the state of MGP potentially varying by the underlying presence of CAC.39 Further, MGP expression is repressed in senescent VSMCs, providing a mechanism by which atherosclerotic plaque development may be due to appearance of VSMCs.40 MGP is also an inhibitor of hydroxyapatite crystal growth.41 Others have speculated that MGP may behave differently in the presence of atherosclerosis.42 Thus, there is biological plausibility for a role of MGP in not only the pathogenesis of CAC, but also in the timing of its involvement in CAC development (i.e. incidence and growth of CAC).
Our finding that MGP ThrAla83 genotype (or its proxy SNP rs6488724) was statistically significantly associated with progression among those without detectable CAC at baseline, but not among those with detectable baseline CAC is consistent with these preliminary pathophysiological findings. Additionally, in the Multi-Ethnic Study of Atherosclerosis (MESA), while most traditional risk factors were associated with both incident CAC and CAC progression, some traditional risk factors were associated with only one measure. For instance, HDL-C and LDL-C were associated with incident CAC but not CAC progression.43 Atherosclerosis develops and progresses via various mechanisms44, thus further study of the underlying mechanism of atherosclerosis progression in the presence or absence of pre-existing atherosclerotic disease is needed.
The previously reported increased risk of MI associated with MGP Thr83Ala15 may be due to accelerated progression of coronary artery atherosclerosis. Individuals with a history of MI were excluded from the current analyses and individuals requiring invasive cardiac revascularization procedures were ineligible for participation in the ECAC Study. There may be an under-representation of Ala83 in the current study, and the association between MGP Thr83Ala polymorphism and CAC progression may actually be stronger.
Mechanistically, MGP interacts with other proteins in the calcification pathway45, thus future studies examining gene-by-gene interactions between MGP and other genes may be useful. For instance, there is evidence of an interaction between MGP T-138C polymorphism and osteopontin (OPN) T-443C polymorphism and presence of detectable CAC.13 Similarly, mice deficient in both OPN and MGP had two-times greater arterial calcification than mice deficient only in MGP.46 OPN, like MGP, inhibits calcification.
The MGP Thr83Ala polymorphism is in strong linkage disequilibrium (LD) with other MGP polymorphisms.15 The association between MGP Thr83Ala and CAC progression may be attributable to a closely linked polymorphism; for example, a promoter polymorphism in MGP (MGP-7), in LD with the Thr83Ala polymorphism, was associated with accelerated progression of atherosclerosis among patients with end-stage renal disease.47 We assessed the potential impact of Thr83Ala substitution on the MGP protein product using the “Sorting Intolerant From Tolerant” (SIFT) algorithm48,49, which uses sequence conservation across species to make predictions as to which amino acid substitutions are likely to be tolerated or damaging. The SIFT result shows that the Thr83Ala substitution is predicted to be tolerated. Similarly the PolyPhen50 method did not predict the substitution to be “probably damaging”, instead assigning the “possibly damaging” category. While these bioinformatic results suggest that this substitution may not substantively alter MGP protein function, there is no definitive experimental data assessing the function of this missense variant.
Using GENOA-Rochester as our replication cohort provides an independent cohort from the same underlying population as the ECAC cohort. Time between CT scans is associated with CAC progression51; both cohorts had a similar length of time between scans allowing for harmonization of the phenotype between the two studies. The proxy SNP chosen, rs6488724, appears to reside on MGP.52 In both the primary analytic sample (ECAC) and the replication sample (GENOA), an MGP polymorphism was associated with CAC progression.
Because of the underlying ethnic distribution in the Rochester, MN area, the ECAC Study and GENOA-Rochester were comprised of white individuals. CAC quantity53 and progression54 varies substantially across ethnic groups and it is unclear the extent to which ethnic differences in CAC quantity and progression are attributable to differences at the genomic level. Future studies examining the relationship between polymorphisms in MGP and other genes and CAC progression in other racial/ethnic groups are needed. If replicated, more extensive genotyping in studies of other racial/ethnic groups also may be helpful in refining the genetic variation underlying this finding, as differences in LD patterns between populations can be exploited for the purposes of identifying causal variants.55
In summary, MGP is a candidate gene for increased CAC progression among white individuals free of overt CHD. The previously reported relationship between the MGP Thr83Ala polymorphism and risk of MI may be attributable to faster CAC progression.
Supplementary Material
Acknowledgments
Sources of Funding
This research was supported by NIH R01 HL46292, NIH R01 HL08766, U10-HL54457, and by a General Clinic Research Center Grant from the NIH (M01-RR00585) awarded to Mayo Clinic Rochester.
Footnotes
Disclosures
None.
References
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