Literature DB >> 25006006

Leucocyte telomere length and risk of cardiovascular disease: systematic review and meta-analysis.

Philip C Haycock1, Emma E Heydon2, Stephen Kaptoge2, Adam S Butterworth2, Alex Thompson3, Peter Willeit4.   

Abstract

OBJECTIVE: To assess the association between leucocyte telomere length and risk of cardiovascular disease.
DESIGN: Systematic review and meta-analysis. DATA SOURCES: Studies published up to March 2014 identified through searches of Medline, Web of Science, and Embase. ELIGIBILITY CRITERIA: Prospective and retrospective studies that reported on associations between leucocyte telomere length and coronary heart disease (defined as non-fatal myocardial infarction, coronary heart disease death, or coronary revascularisation) or cerebrovascular disease (defined as non-fatal stroke or death from cerebrovascular disease) and were broadly representative of general populations--that is, they did not select cohort or control participants on the basis of pre-existing cardiovascular disease or diabetes.
RESULTS: Twenty four studies involving 43,725 participants and 8400 patients with cardiovascular disease (5566 with coronary heart disease and 2834 with cerebrovascular disease) were found to be eligible. In a comparison of the shortest versus longest third of leucocyte telomere length, the pooled relative risk for coronary heart disease was 1.54 (95% confidence interval 1.30 to 1.83) in all studies, 1.40 (1.15 to 1.70) in prospective studies, and 1.80 (1.32 to 2.44) in retrospective studies. Heterogeneity between studies was moderate (I(2) = 64%, 41% to 77%, Phet<0.001) and was not significantly explained by mean age of participants (P = 0.23), the proportion of male participants (P = 0.45), or distinction between retrospective versus prospective studies (P = 0.32). Findings for coronary heart disease were similar in meta-analyses restricted to studies that adjusted for conventional vascular risk factors (relative risk 1.42, 95% confidence interval 1.17 to 1.73); studies with ≥ 200 cases (1.44, 1.20 to 1.74); studies with a high quality score (1.53, 1.22 to 1.92); and in analyses that corrected for publication bias (1.34, 1.12 to 1.60). The pooled relative risk for cerebrovascular disease was 1.42 (1.11 to 1.81), with no significant heterogeneity between studies (I(2) = 41%, 0% to 72%, Phet = 0.08). Shorter telomeres were not significantly associated with cerebrovascular disease risk in prospective studies (1.14, 0.85 to 1.54) or in studies with a high quality score (1.21, 0.83 to 1.76).
CONCLUSION: Available observational data show an inverse association between leucocyte telomere length and risk of coronary heart disease independent of conventional vascular risk factors. The association with cerebrovascular disease is less certain. © Haycock et al 2014.

Entities:  

Mesh:

Year:  2014        PMID: 25006006      PMCID: PMC4086028          DOI: 10.1136/bmj.g4227

Source DB:  PubMed          Journal:  BMJ        ISSN: 0959-8138


Introduction

Chronological age is one of the strongest predictors of cardiovascular disease but is not considered to be a causal factor. Rather, this relation might reflect the impact of biological ageing, particularly the accumulation of endothelial damage over time, because of various mechanical, haemodynamic, and immunological mechanisms.1 Telomeres are DNA-protein structures at the end of linear chromosomes and have been proposed as markers of the biological ageing process because they shorten with each cell division, thereby reflecting the amount of cellular turnover within an individual; their length varies considerably between individuals, including those of the same chronological age; and the rate of attrition of telomere length has been linked to exposure to high oxidative stress and inflammation, both of which are considered important drivers of biological ageing.2 3 In addition, as telomere length within individuals is generally strongly correlated across tissue types, leucocyte based measures might also serve as a marker of telomere length in less accessible tissues.4 Because of its presumed role in biological ageing, telomere length has been proposed as a general risk factor for age related chronic diseases, such as cancer, type 2 diabetes, and cardiovascular disease.5 Although previous meta-analyses have shown inverse associations between leucocyte telomere length and cancer and diabetes,6 7 8 the association of telomeres with cardiovascular disease has not yet been systematically assessed. Interpretation of the available evidence for cardiovascular disease has been hindered by studies that used different study designs (such as prospective versus retrospective), application of different assay methods, and/or reporting relative risks for different disease outcomes (such as coronary heart disease or stroke). In addition, many previous studies of telomere length and cardiovascular disease have not reported easily comparable measures of association, such as risk ratios or odds ratios, making their interpretation difficult. Previous studies have also typically been underpowered to assess the association with cardiovascular disease in different population subgroups, such as by age and sex. We therefore conducted a systematic review and meta-analysis of published studies to assess the association between leucocyte telomere length and cardiovascular disease outcomes. We aimed to precisely quantify any associations in a systematic way and to evaluate and compare these associations across a wide range of study level characteristics.

Methods

Literature search and study selection

The meta-analysis was conducted according to the MOOSE guidelines.9 We searched for studies that published on associations between leucocyte telomere length and coronary heart disease or cerebrovascular disease in Medline, Web of Science, and Embase up to 20 March 2014 (see fig 1 in appendix). The search strategy combined terms related to telomere length with those related to the outcomes of cardiovascular disease, coronary heart disease, and cerebrovascular disease (see table 1 in appendix) without language restrictions. We complemented the search by scanning reference lists of the identified articles. Studies were eligible for inclusion if they reported on associations between baseline leucocyte telomere length and coronary heart disease (defined as non-fatal myocardial infarction, coronary heart disease death, or coronary revascularisation) or cerebrovascular disease (defined as non-fatal stroke or death from cerebrovascular disease) and were broadly representative of general populations—that is, they did not select participants (in cohort studies) or controls (in case-control studies) on the basis of pre-existing cardiovascular diseases or diabetes. Both prospective and retrospective studies were eligible (where retrospective indicates that telomere length was measured in DNA samples collected after diagnosis of disease). Retrospective studies included case-control and cross sectional studies; prospective studies included nested case-control and prospective cohort studies. Two investigators independently identified eligible studies; discrepancies were resolved by consensus with a third investigator.

Data extraction

For each article, we used a standardised abstraction form to extract information on geographical location, year of publication, mean and standard deviation of age of participants, proportion of male participants, outcome definition, population source, assay methods, number of experimental replicates, assay coefficient of variation, tissue source of DNA, correlation coefficients between telomere length and age, the mean and standard deviation of telomere length in cases and controls, reported estimates of the association with outcome, and degree of statistical adjustment for covariates. Additional information was obtained through correspondence with study authors. Information on study quality was assessed with the Newcastle-Ottawa scale, which varies from zero to a maximum possible score of nine and incorporates information on participant selection, outcome ascertainment, exposure ascertainment, and the potential for confounding.10

Statistical analysis

The overall cross sectional correlation between telomere length and age was estimated in cohort studies or controls in case-control studies. Study specific correlation coefficients were transformed to approximate normality based on Fisher’s z transformation and combined across studies with random effects meta-analysis. When the correlation coefficient was not reported, we estimated it from the t statistic of the linear association between telomere length and age, if available, or contacted authors. We calculated summary relative risks for the association between telomere length and coronary heart disease or cerebrovascular disease by random effects meta-analysis of study specific estimates. Hazard ratios, risk ratios, and odds ratios were assumed to approximate the same measure of relative risk. The study specific relative risk estimates were transformed to a common scale of comparison before meta-analysis (corresponding to a comparison of risk in the shortest versus longest third of the distribution of telomere length) by using methods previously described.11 For example, under the assumption of normality of the distribution of telomere length and a log linear association with disease risk, the log relative risk for the shortest versus longest third of the distribution of telomere length is expected to be about 2.18 times the log relative risk for a 1 SD decrease in telomere length. The standard error of the transformed log relative risk was calculated by applying the same multiplication factor to the originally reported standard error (or that inferred from the reported P value). When they were not reported, we obtained relative risks through correspondence with the study authors or estimated from the mean difference in telomere length between cases and controls, using a previously described method.11 For the WTCCC study,12 13 which did not report a relative risk estimate, we could not derive an estimate based on the preceding approximation because the reported variances of telomere length in cases and controls were markedly different, and this study was therefore excluded. When studies reported relative risks with different degrees of statistical adjustment for confounding, we used the most adjusted estimate. For the WOSCOPS trial,14 we used the relative risk estimated from the placebo group. We assessed evidence of publication bias or small study effects using funnel plots and Egger’s test15 and by comparing pooled results from studies involving ≥200 cases with those from smaller studies. We used Duval’s non-parametric “trim and fill” method to estimate the relative risk making allowance for publication bias.16 We assessed heterogeneity between studies with Cochran’s Q test and the I2 statistic.17 Sources of heterogeneity were assessed by comparing results grouped according to study level characteristics and by using meta-regression to assess the significance of differences. Although these results are presented categorically, the P values from meta-regression on continuous study level characteristics (that is, mean age, age standard deviation, proportion of males, Newcastle-Ottawa scale score, assay coefficient of variation, number of experimental replicates, and number of cases) reflect the linear test of association. The study level characteristics tested as sources of heterogeneity were geographical location (Europe versus North America versus Asia), population source (population based versus not), Newcastle-Ottawa scale score, mean age of participants, standard deviation of age of participants (for the correlation between telomere length and age only), proportion of male participants, assay method (quantitative polymerase chain reaction (qPCR) versus others), assay coefficient of variation, DNA extraction method (QiaAMP versus salting out versus other/unspecified), number of assay replicates, number of cases, case definition, and degree of adjustment for covariates, including conventional vascular risk factors (defined as age, sex, body mass index (BMI), smoking, history of diabetes, blood pressure, and lipid markers). All analyses were performed with Stata release 13.1 (StataCorp, College Station, TX). Statistical tests were two sided with a significance threshold of P<0.05.

Results

The literature search strategy identified 1500 unique articles across Medline, Web of Science, and Embase (see fig 1 in appendix). After the initial screen of titles and abstracts, 76 articles remained for further investigation. We obtained previously unpublished results on stroke from the Scottish Mental Survey through correspondence. After detailed assessments, 26 articles/unpublished reports, corresponding to 24 independent studies, were found to meet the inclusion criteria and were included in the meta-analysis.14 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 The table (and table 2 in the appendix) summarises characteristics of the included studies. In aggregate, the studies involved 43 725 individuals, including 8400 cases of cardiovascular disease (5566 with coronary heart disease and 2834 with cerebrovascular disease). Twelve studies had a prospective design (30 510 participants), and 12 had a retrospective design (13 215 participants). Twelve studies were conducted in Europe, seven in North America, and five in Asia. Twenty one studies measured telomere length using qPCR (quantitative polymerase chain reaction), whereas two studies used Southern blotting and one used flow-FISH (fluorescent in situ hybridisation). The weighted mean age of participants was 60 (range 40-90), and 53% were men (range 0-100%). Within the included studies, there was a weak inverse correlation between telomere length and chronological age (r=−0.13, 95% confidence interval −0.18 to −0.08), with substantial heterogeneity between studies (I2=94%, 95% confidence interval 92% to 96%) (see fig 2 in appendix). The heterogeneity in reported correlations was mostly attributable to the studies’ quality, size, and age variability, which collectively explained 80% of the heterogeneity between studies (residual I2=66%) (see fig 3 in appendix). The correlation between telomere length and age was −0.22 (95% confidence interval −0.27 to −0.16) in studies with a higher quality score (Newcastle-Ottawa scale score ≥8); −0.16 (−0.22 to −0.10) in studies with higher age variability (SD of age ≥8 years); and −0.20 (−0.25 to −0.14) in larger studies (n>1000).

Selected characteristics of 24 vascular disease studies included in review of leucocyte telomere length and risk of cardiovascular disease

LocationPopulation source (overall or of cases / controls)NOS quality scoreMean age (SD)Men (%)Assay methodCHD definitionCEVD definitionCohort size or No of controlsNo of CHD casesNo of CEVD cases
Prospective studies 
BRUNECK37ItalyPopulation based cohort962.7 (11.1)49qPCRMixedIschaemic stroke8004346
Cawthon19USFamily linkage study471.5 (7.9)50qPCRFatalUnclassified1243015
CCHS36DenmarkPopulation based cohort859.0 (16.7)45qPCRMixed9765699
CGPS36DenmarkPopulation based cohort856.5 (13.5)48qPCRMixed10 073230
CHS23USInsurance register874.4 (5.2)41SBMixed41936
CHS24USInsurance register873.9 (4.7)35SBIschaemic stroke100443
HABC29USInsurance register and area code residence773.6 (2.9)49qPCRFatalUnclassified272118969
MAHAS22USHigh functioning subset of EPESE373.7 (2.9)49qPCRFatal23529
MDC30SwedenPopulation based cohort761.0 (5.1)69qPCRMixed444*226
NHS33USAOccupational list861.4 (5.9)0qPCRIschaemic stroke392*392
NSHS9538CanadaPopulation based cohort846.6 (18.4)49qPCRMixed1917164
PHS40USOccupational list861.7 (7.9)100qPCRIschaemic stroke259*259
PHS39USOccupational list860.1 (8.7)100qPCRMixed337*337
WOSCOPS14ScotlandGP register856.7 (5.2)100qPCRMixed517*289
Retrospective studies
Brouilette18UKHospital register/GP register547.2 (5.9)86SBNon-fatal180*203
Cui20ChinaHospital patients/community sample758.6 (9.4)54qPCRNon-fatal2211*2140
CYPRUS31CyprusPopulation based cohort760.5 (10.2)47qPCRNon-fatal76242
Ding21ChinaHospital patients/community sample761.4 (9.8)66qPCRIschaemic stroke1081*1081
HIFMECH27Multiple†Hospital patients/community sample651.5 (5.5)100qPCRNon-fatal559*520
Jiang25 ChinaHospital patients/community sample652.2 (8.1)74qPCRIschaemic stroke150*150
L85+26NetherlandsPopulation based cohort489.7 (3.0)27qPCRNon-fatal67951-
MCSS41ChinaHospital patients/hospital patients659.7 (8.2)57qPCRIschaemic stroke1801*767
Mukherjee28IndiaHospital patients/community sample556.9 (11.0)78qPCRNon-fatal238*76
Russo32ItalyHospital patients/unspecified639.8 (5.0)91qPCRNon-fatal190*199
SMS‡35UKPopulation based cohort579.0 (0)82qPCRNon-fatalUnclassified1903812
Spyridopoulos34GermanyHospital patients/volunteers365.1 (2.1)100FISHNon-fatal13*25

CEVD=cerebrovascular disease; CHD=coronary heart disease; FISH= flow cytometry-fluorescent in situ hybridisation; NOS= Newcastle-Ottawa scale; qPCR= quantitative polymerase chain reaction; SB= Southern blotting; CCHS=Copenhagen City Heart Study; CGPS=Copenhagen General Population Study; CHS=Cardiovascular Health Study; EPESE=Established Populations for the Epidemiologic Study of the Elderly; HABC=Health Aging and Body Composition Study; HIFMECH=Hypercoagulability and Impaired Fibrinolytic function MECHanisms predisposing to myocardial infarction; L85+=Leiden 85-plus study; MAHAS=MacArthur Health Aging Study; MCSS=Multicenter Chinese Stroke Study; MDC=Malmö Diet and Cancer Study; NHS=Nurses’ Health Study; NSHS95=1995 Nova Scotia Health Survey; PHS=Physicians’ Health Study; SMS=Scottish Mental Survey; WOSCOPS=West of Scotland Coronary Prevention Study.

*Number of controls in case-control study.

†Sweden, England, France, Italy.

‡Findings for CEVD previously unpublished.

Selected characteristics of 24 vascular disease studies included in review of leucocyte telomere length and risk of cardiovascular disease CEVD=cerebrovascular disease; CHD=coronary heart disease; FISH= flow cytometry-fluorescent in situ hybridisation; NOS= Newcastle-Ottawa scale; qPCR= quantitative polymerase chain reaction; SB= Southern blotting; CCHS=Copenhagen City Heart Study; CGPS=Copenhagen General Population Study; CHS=Cardiovascular Health Study; EPESE=Established Populations for the Epidemiologic Study of the Elderly; HABC=Health Aging and Body Composition Study; HIFMECH=Hypercoagulability and Impaired Fibrinolytic function MECHanisms predisposing to myocardial infarction; L85+=Leiden 85-plus study; MAHAS=MacArthur Health Aging Study; MCSS=Multicenter Chinese Stroke Study; MDC=Malmö Diet and Cancer Study; NHS=Nurses’ Health Study; NSHS95=1995 Nova Scotia Health Survey; PHS=Physicians’ Health Study; SMS=Scottish Mental Survey; WOSCOPS=West of Scotland Coronary Prevention Study. *Number of controls in case-control study. †Sweden, England, France, Italy. ‡Findings for CEVD previously unpublished. As shown in figure 1, the pooled relative risk for coronary heart disease comparing shortest third v longest third of telomere length was 1.54 (95% confidence interval 1.30 to 1.83; 20 studies), with moderate heterogeneity between studies (I2=64%, 95% confidence interval 41% to 77%; Phet<0.001). The pooled relative risk for coronary heart disease was 1.40 (1.15 to 1.70) in prospective studies and 1.80 (1.32 to 2.44) in retrospective studies (P=0.32 for difference).

Fig 1 Shorter telomere length and risk of coronary heart disease across 20 studies stratified by study design (see table for study acronyms). Study specific estimates were pooled with random effects meta-analysis. Sizes of data markers are proportional to inverse of variance within study. Degree of adjustment: − no adjustment, + adjusted for age and/or sex, ++ adjusted for age, sex, and non-lipid risk factors, +++ adjusted for age, sex, smoking, BMI, diabetes, blood pressure, and lipid markers; ++++ preceding plus adjusted for C reactive protein and physical activity. *Calculated from mean difference in telomere length between cases and controls; †obtained through correspondence. Summary associations for prospective and retrospective studies were not significantly different (P=0.32)

Fig 1 Shorter telomere length and risk of coronary heart disease across 20 studies stratified by study design (see table for study acronyms). Study specific estimates were pooled with random effects meta-analysis. Sizes of data markers are proportional to inverse of variance within study. Degree of adjustment: − no adjustment, + adjusted for age and/or sex, ++ adjusted for age, sex, and non-lipid risk factors, +++ adjusted for age, sex, smoking, BMI, diabetes, blood pressure, and lipid markers; ++++ preceding plus adjusted for C reactive protein and physical activity. *Calculated from mean difference in telomere length between cases and controls; †obtained through correspondence. Summary associations for prospective and retrospective studies were not significantly different (P=0.32) Figure 2 shows the results by potential sources of heterogeneity among studies of coronary heart disease, including various clinically relevant subgroups and methodological factors. Pooled relative risk estimates for coronary heart disease did not differ significantly by any of the study level characteristics tested, including geographical location, population source, study quality, mean age, proportion of male participants, assay method, assay coefficient of variation, DNA extraction method, number of experimental replicates, number of cases, case definition, and degree of statistical adjustment (all P≥0.15). The pooled relative risk for coronary heart disease in the shortest versus longest third of telomere length was 1.59 (95% confidence interval 1.15 to 2.22) in three studies that adjusted for conventional vascular risk factors, 1.34 (1.04 to 1.74) in four studies that adjusted for conventional vascular risk factors plus C reactive protein and physical activity, and 1.42 (1.17 to 1.73) in these seven studies combined. The corresponding association was 1.53 (1.22 to 1.92) in the seven highest quality studies and 1.44 (1.20 to 1.74) in eight studies with ≥200 cases.

Fig 2 Shorter telomere length and risk of coronary heart disease grouped by recorded study level characteristics. Sizes of data markers are proportional to inverse of variance of relative risk. NR=not reported; NOS=Newcastle-Ottawa scale. *P values for heterogeneity from meta-regression; studies in which characteristic was not reported were not included in calculation of P value; for continuous characteristics, P value reflects linear test of association. †Population source of cohort or controls in case-control studies. Degree of adjustment: −/+ no adjustment or adjusted for age and/or sex, ++adjusted for age, sex, and non-lipid risk factors, +++adjusted for age, sex, BMI, diabetes, smoking, blood pressure, and lipid markers, ++++adjusted for preceding plus C reactive protein and physical activity

Fig 2 Shorter telomere length and risk of coronary heart disease grouped by recorded study level characteristics. Sizes of data markers are proportional to inverse of variance of relative risk. NR=not reported; NOS=Newcastle-Ottawa scale. *P values for heterogeneity from meta-regression; studies in which characteristic was not reported were not included in calculation of P value; for continuous characteristics, P value reflects linear test of association. †Population source of cohort or controls in case-control studies. Degree of adjustment: −/+ no adjustment or adjusted for age and/or sex, ++adjusted for age, sex, and non-lipid risk factors, +++adjusted for age, sex, BMI, diabetes, smoking, blood pressure, and lipid markers, ++++adjusted for preceding plus C reactive protein and physical activity A funnel plot of the relative risk estimates for coronary heart disease was consistent with the presence of publication bias, which was supported by a significant Egger’s regression asymmetry test (P<0.001) (see fig 4 in appendix). Using the “trim and fill” method, we estimated that in the absence of publication bias, the combined relative risk for coronary heart disease with shorter telomere length would have been 1.34 (95% confidence interval 1.12 to 1.60), weaker than the uncorrected association (1.54, 1.30 to 1.83) but still significant (P=0.001). The pooled relative risk for cerebrovascular disease, for shortest third v longest third of telomere length, using combined information from 10 studies was 1.42 (95% confidence interval 1.11 to 1.81), with no significant heterogeneity between studies (I2=41%, 95% confidence interval 0% to 72%; Phet=0.08) (fig 3). The association with cerebrovascular disease remained significant in meta-analyses restricted to four studies that adjusted for conventional vascular risk factors (relative risk 1.54, 1.17 to 2.02) and in four studies with ≥200 cases (1.42, 1.05 to 1.92) (see fig 5 in appendix). Results of meta-analyses were not significant in the four highest quality studies (1.21, 0.83 to 1.76) nor in six prospective studies (1.14, 0.85 to 1.54) (fig 3 and fig 5 in appendix). There was little evidence of publication bias among studies of cerebrovascular disease (PEgger=0.64).

Fig 3 Shorter telomere length and cerebrovascular disease risk across 10 studies stratified by study design (see table for study acronyms). Study specific estimates were pooled with random-effects meta-analysis. Sizes of data markers are proportional to inverse of variance within study. Degree of adjustment: +adjusted for age and/or sex, ++adjusted for age, sex, and non-lipid risk factors, +++adjusted for age, sex, smoking, BMI, diabetes, blood pressure, and lipid markers, ++++adjusted for preceding plus C reactive protein and physical activity. *Calculated from mean difference in telomere length between cases and controls; †obtained through correspondence; ‡previously unpublished. Summary associations for prospective and retrospective studies were not significantly different (P=0.15)

Fig 3 Shorter telomere length and cerebrovascular disease risk across 10 studies stratified by study design (see table for study acronyms). Study specific estimates were pooled with random-effects meta-analysis. Sizes of data markers are proportional to inverse of variance within study. Degree of adjustment: +adjusted for age and/or sex, ++adjusted for age, sex, and non-lipid risk factors, +++adjusted for age, sex, smoking, BMI, diabetes, blood pressure, and lipid markers, ++++adjusted for preceding plus C reactive protein and physical activity. *Calculated from mean difference in telomere length between cases and controls; †obtained through correspondence; ‡previously unpublished. Summary associations for prospective and retrospective studies were not significantly different (P=0.15)

Discussion

Principal findings

This meta-analysis indicates that telomere length is inversely associated with risk of coronary heart disease independently of conventional vascular risk factors. The association was broadly consistent across all study level characteristics tested, including clinically relevant subgroups, such as different mean ages and sex distribution, and across prospective and retrospective studies. In addition, the association with coronary heart disease remained significant in analyses that made allowance for publication bias and in analyses restricted to studies with comprehensive adjustment for potential confounders, in larger studies (that is, those with ≥200 cases), and in the studies with a higher quality score. The association between shorter telomeres and cerebrovascular disease was comparable with the association with coronary heart disease. It was not, however, significant in meta-analyses restricted to prospective studies or the higher quality studies. Further well powered prospective studies are required to clarify the association between telomere length and cerebrovascular disease. Finally, there was an inverse correlation in our meta-analysis between telomere length and age that was weaker than the correlation reported in a previous systematic review42 (r=−0.13 v r=−0.30). This could be because of differences among the studies included in the two reviews. For example, we observed that the correlation with age was stronger in studies of higher quality, more variable age, and larger size.

Association or causation

There was a significant inverse association between telomere length and coronary heart disease in studies that used comprehensive statistical adjustment for potential confounders. As our meta-analysis was based on results from observational studies, however, the association could still be subject to residual confounding or reverse causation bias and therefore does not allow inference of a cause-effect association. In a recent meta-analysis of 14 genome-wide association studies (GWAS),43 involving up to 22 233 people with coronary heart disease and 64 762 controls of European descent, seven single nucleotide polymorphisms (SNPs) were identified that each explained <1% of the variation in mean leucocyte telomere length. When all seven polymorphisms were combined into a single genetic risk score, the alleles associated with shorter telomere length were also associated with increased risk of coronary heart disease. The reported genetic effect would be equivalent to a relative risk of 1.67 (95% confidence interval 1.12 to 2.56) in the shortest versus longest third of the telomere length distribution. As genotypes are randomly determined at conception and are therefore not generally susceptible to reverse causation bias and confounding,44 estimates from genetic analyses can be viewed as causal. The genetic effect estimate is compatible with the observational estimate of 1.54 (1.30 to 1.83) in our meta-analysis. As to the mechanisms of a causal association, telomere shortening might contribute to atherosclerosis through various biological ageing pathways, such as cellular senescence. For example, the accumulation of senescent cells, a prominent feature of atherosclerotic plaques, reduces the regenerative potential of affected tissues and promotes apoptosis, which can further exacerbate inflammatory reactions, and endothelial dysfunction.45 46 It has also been hypothesised that, by reducing the proliferative potential of vascular smooth muscle cells, cellular senescence promotes the thinning of fibrous caps and the instability of atherosclerotic plaques.47 As to potential therapeutic interventions to modify telomere length, ectopic expression of telomerase or telomerase reverse transcriptase can reverse some of the effects of cellular senescence, such as the loss of the proliferative potential of vascular smooth muscle cells and endothelial dysfunction.45 47

Strengths and limitations

As far as we are aware, this is the first systematic review and meta-analysis of the association between telomere length and risk of coronary heart disease and cerebrovascular disease in general populations. The existence of widely varying methods for reporting associations in the literature has made comparing results across studies challenging. By harmonising the reported associations across studies to a common scale, however, we were able to quantify the magnitude of the association between telomere length and cardiovascular disease in general populations, to explore sources of heterogeneity between studies, and to estimate the potential impact of publication bias. Our review also has some limitations. Firstly, the results of this meta-analysis were based on telomere length measured in blood leucocytes, and telomere shortening in more relevant tissues, such as the vasculature, might show stronger associations with coronary heart disease. Nevertheless, telomere length within individuals is generally strongly correlated across tissues, suggesting that leucocyte measures accurately reflect the same construct in other tissues.4 Secondly, we were unable to test the shape of the association between telomere length and coronary heart disease or cerebrovascular disease. If the association were non-linear, telomere length at different thresholds might show stronger associations. Thirdly, our results reflect the measurement of telomere length at a single time point, and longitudinal changes in telomere length might show stronger associations with risk of cardiovascular disease.22 48 Fourthly, the results of the included studies reflect average telomere length measured across all chromosomes. Measurement of telomere length of individual chromosomes might be more important, as telomeric dysfunction of one chromosome is sufficient to induce cell apoptosis.49 Such detailed measurements, however, are currently not feasible in large scale epidemiological studies. Fifthly, our meta-analysis was limited to aggregate data obtained from the published literature and through correspondence. Access to individual participant data would allow detailed characterisation of the shape of any dose-response relations, consistent statistical adjustment for potential confounders across studies, direct comparison of telomere length with traditional cardiovascular risk factors, assessment of the associations of telomere length in different population subgroups, and exploration of the usefulness of telomere length in prediction of risk of cardiovascular disease by calculation of risk prediction metrics, such as risk discrimination and risk reclassification.

Should measurement of telomere length be offered as a marker of age related chronic diseases?

In 2010, two companies in the United States and Spain were founded that offer telomere length measurement services, claiming that shorter telomere length is a reliable marker of many age related chronic diseases. By 2013, one company (www.lifelength.com) offered measurement to the general public (through a requesting physician or laboratory) and the other (www.telomeredx.com) stated they intended to do so soon. Whether telomere testing can provide reliable information about risk of chronic disease to individuals from the general population, however, has not been firmly established.6 7 8 50 For example, in a meta-analysis involving 26 studies and 11 255 patients with cancer, telomere length was not associated with cancer risk in the subset of studies with a prospective design. In our meta-analysis, shorter telomeres were associated with coronary heart disease under a wide range of circumstances, but the association with cerebrovascular disease did not persist in prospective studies or the highest quality studies. Although our meta-analysis suggests that telomere length is an independent risk factor for coronary heart disease, judgment on whether it is a clinically useful predictor of risk that can help guide treatment decisions will require formal evaluation of its predictive value in large prospective studies with long follow-up.

Conclusions

Available observational data show an inverse association between telomere length and risk of coronary heart disease, independent of conventional vascular risk factors. The association with cerebrovascular disease is less certain. Additional meta-analyses based on individual participant data are required to characterise the shape of any dose-response associations, to further characterise the nature of the association in different population subgroups, and to explore the usefulness of telomere length in prediction of risk of cardiovascular disease. Because of its presumed role in biological ageing, telomere length has been proposed as a marker of age related chronic diseases There is conflicting evidence in the literature on the association between telomere length and cardiovascular disease Observational evidence from this meta-analysis shows that shorter leucocyte telomeres are associated with risk of coronary heart disease in general populations, independently of conventional vascular risk factors The association with cerebrovascular disease is less certain
  47 in total

1.  Quantifying heterogeneity in a meta-analysis.

Authors:  Julian P T Higgins; Simon G Thompson
Journal:  Stat Med       Date:  2002-06-15       Impact factor: 2.373

2.  hTERT (-1327)T/C polymorphism is not associated with age-related telomere attrition in peripheral blood.

Authors:  Katarina Nordfjäll; Pia Osterman; Olle Melander; Peter Nilsson; Göran Roos
Journal:  Biochem Biophys Res Commun       Date:  2007-04-24       Impact factor: 3.575

3.  Bias in meta-analysis detected by a simple, graphical test.

Authors:  M Egger; G Davey Smith; M Schneider; C Minder
Journal:  BMJ       Date:  1997-09-13

Review 4.  Telomere length in epidemiology: a biomarker of aging, age-related disease, both, or neither?

Authors:  Jason L Sanders; Anne B Newman
Journal:  Epidemiol Rev       Date:  2013-01-09       Impact factor: 6.222

Review 5.  Vascular smooth muscle cell senescence in atherosclerosis.

Authors:  Isabelle Gorenne; Mary Kavurma; Stephen Scott; Martin Bennett
Journal:  Cardiovasc Res       Date:  2006-06-06       Impact factor: 10.787

6.  Relative leukocyte telomere length and risk of incident ischemic stroke in men: a prospective, nested case-control approach.

Authors:  Robert Y L Zee; Amy J Castonguay; Nathaniel S Barton; Paul M Ridker
Journal:  Rejuvenation Res       Date:  2010-08       Impact factor: 4.663

7.  Lack of causal relationship between leukocyte telomere length and coronary heart disease.

Authors:  Guanglin Cui; Jing Sun; Lina Zhang; Rui Li; Yan Wang; Katherine Cianflone; Hu Ding; Dao Wen Wang
Journal:  Atherosclerosis       Date:  2014-01-19       Impact factor: 5.162

8.  Association of shorter telomeres with coronary artery disease in Indian subjects.

Authors:  M Mukherjee; S Brouilette; S Stevens; K R Shetty; N J Samani
Journal:  Heart       Date:  2008-11-21       Impact factor: 5.994

9.  Leukocyte telomere length is associated with measures of subclinical atherosclerosis.

Authors:  A G Panayiotou; A N Nicolaides; M Griffin; T Tyllis; N Georgiou; D Bond; R M Martin; D Hoppensteadt; J Fareed; S E Humphries
Journal:  Atherosclerosis       Date:  2010-02-04       Impact factor: 5.162

10.  Telomeres are shorter in myocardial infarction patients compared to healthy subjects: correlation with environmental risk factors.

Authors:  Cécilia G Maubaret; Klelia D Salpea; Anjly Jain; Jackie A Cooper; Anders Hamsten; Julie Sanders; Hugh Montgomery; Andrew Neil; Devaki Nair; Steve E Humphries
Journal:  J Mol Med (Berl)       Date:  2010-04-11       Impact factor: 4.599

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  311 in total

1.  Depression and telomere length: A meta-analysis.

Authors:  Kathryn K Ridout; Samuel J Ridout; Lawrence H Price; Srijan Sen; Audrey R Tyrka
Journal:  J Affect Disord       Date:  2015-12-02       Impact factor: 4.839

2.  Short Telomeres, but Not Telomere Attrition Rates, Are Associated With Carotid Atherosclerosis.

Authors:  Simon Toupance; Carlos Labat; Mohamed Temmar; Patrick Rossignol; Masayuki Kimura; Abraham Aviv; Athanase Benetos
Journal:  Hypertension       Date:  2017-06-19       Impact factor: 10.190

Review 3.  Mutations, Cancer and the Telomere Length Paradox.

Authors:  Abraham Aviv; James J Anderson; Jerry W Shay
Journal:  Trends Cancer       Date:  2017-03-27

Review 4.  Risk of cardiovascular disease morbidity and mortality in frail and pre-frail older adults: Results from a meta-analysis and exploratory meta-regression analysis.

Authors:  Nicola Veronese; Emanuele Cereda; Brendon Stubbs; Marco Solmi; Claudio Luchini; Enzo Manzato; Giuseppe Sergi; Peter Manu; Tamara Harris; Luigi Fontana; Timo Strandberg; Helene Amieva; Julien Dumurgier; Alexis Elbaz; Christophe Tzourio; Monika Eicholzer; Sabine Rohrmann; Claudio Moretti; Fabrizio D'Ascenzo; Giorgio Quadri; Alessandro Polidoro; Roberto Alves Lourenço; Virgilio Garcia Moreira; Juan Sanchis; Valeria Scotti; Stefania Maggi; Christoph U Correll
Journal:  Ageing Res Rev       Date:  2017-01-28       Impact factor: 10.895

5.  Leukocyte telomere length and ideal cardiovascular health in American Indians: the Strong Heart Family Study.

Authors:  Hao Peng; Mihriye Mete; Sameer Desale; Amanda M Fretts; Shelley A Cole; Lyle G Best; Jue Lin; Elizabeth Blackburn; Elisa T Lee; Barbara V Howard; Jinying Zhao
Journal:  Eur J Epidemiol       Date:  2016-09-22       Impact factor: 8.082

6.  Aberrant Telomere Length in Circulating Cell-Free DNA as Possible Blood Biomarker with High Diagnostic Performance in Endometrial Cancer.

Authors:  Marco Benati; Martina Montagnana; Elisa Danese; Martina Mazzon; Elisa Paviati; Simone Garzon; Antonio Simone Laganà; Jvan Casarin; Silvia Giudici; Ricciarda Raffaelli; Fabio Ghezzi; Massimo Franchi; Giuseppe Lippi
Journal:  Pathol Oncol Res       Date:  2020-05-27       Impact factor: 3.201

7.  The Effect of Cancer Treatments on Telomere Length: A Systematic Review of the Literature.

Authors:  Lisa Gallicchio; Shahinaz M Gadalla; John D Murphy; Naoko I Simonds
Journal:  J Natl Cancer Inst       Date:  2018-10-01       Impact factor: 13.506

8.  Lifespan adversity and later adulthood telomere length in the nationally representative US Health and Retirement Study.

Authors:  Eli Puterman; Alison Gemmill; Deborah Karasek; David Weir; Nancy E Adler; Aric A Prather; Elissa S Epel
Journal:  Proc Natl Acad Sci U S A       Date:  2016-10-03       Impact factor: 11.205

9.  Resilience to adversity and the early origins of disease.

Authors:  Gene H Brody; Tianyi Yu; Steven R H Beach
Journal:  Dev Psychopathol       Date:  2016-10-03

10.  Weight Loss Maintenance and Cellular Aging in the Supporting Health Through Nutrition and Exercise Study.

Authors:  Ashley E Mason; Frederick M Hecht; Jennifer J Daubenmier; David A Sbarra; Jue Lin; Patricia J Moran; Samantha G Schleicher; Michael Acree; Aric A Prather; Elissa S Epel
Journal:  Psychosom Med       Date:  2018-09       Impact factor: 4.312

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