Literature DB >> 26261158

Estimated 10-year cardiovascular mortality seriously underestimates overall cardiovascular risk.

Harald T Jørstad1, Ersen B Colkesen1, S Matthijs Boekholdt1, Jan G Tijssen1, Nicholas J Wareham2, Kay-Tee Khaw3, Ron J Peters1.   

Abstract

OBJECTIVE: The European Society of Cardiology's prevention guideline suggests that the risk of total (fatal plus non-fatal) cardiovascular disease (CVD) may be calculated from the risk of CVD mortality using a fixed multiplier (3×). However, the proposed multiplier has not been validated. We investigated the ratio of total CVD to CVD mortality in a large population-based cohort.
METHODS: CVD mortality and total CVD (fatal plus non-fatal CVD requiring hospitalisation) were analysed using Kaplan-Meier estimates among 24 014 men and women aged 39-79 years without baseline CVD or diabetes mellitus in the prospective population-based European Prospective Investigation of Cancer and Nutrition-Norfolk cohort. CVD outcomes included death and hospitalisations for ischaemic heart disease, heart failure, cerebrovascular disease, peripheral artery disease or aortic aneurysm. The main study outcome was the ratio of 10-year total CVD to 10-year CVD mortality stratified by age and sex.
RESULTS: Ten year CVD mortality was 3.9% (900 CVD deaths, 95% CI 3.6% to 4.1%); the rate of total CVD outcomes was 21.2% (4978 fatal or non-fatal CVD outcomes, 95% CI 20.7% to 21.8%). The overall ratio of total CVD to CVD mortality was 5.4. However, we found major differences in this ratio when stratified by gender and age. In young women (39-50 years), the ratio of total CVD to CVD mortality was 28.5, in young men (39-50 years) 11.7. In the oldest age group, these ratios were considerably lower (3.2 in women and 2.4 in men aged 75-79 years).
CONCLUSIONS: The relationship between 10-year total CVD and CVD mortality is dependent on age and sex, and cannot be estimated using a fixed multiplier. Using CVD mortality to estimate total CVD risk leads to serious underestimation of risk, particularly in younger age groups, and particularly in women. Published by the BMJ Publishing Group Limited. For permission to use (where not already granted under a licence) please go to http://www.bmj.com/company/products-services/rights-and-licensing/

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Year:  2015        PMID: 26261158      PMCID: PMC4717404          DOI: 10.1136/heartjnl-2015-307668

Source DB:  PubMed          Journal:  Heart        ISSN: 1355-6037            Impact factor:   5.994


Introduction

The most recent ESC guidelines on cardiovascular disease (CVD) prevention suggest that there is a fixed relationship between CVD mortality and the total burden of CVD events, defined as the composite of fatal and non-fatal CVD.1 2 It is suggested that in high-risk individuals with a 10-year CVD mortality risk of ≥5%, as estimated using Systematic COronary Risk Evaluation (SCORE), total CVD is threefold higher, and possibly more in young men, and less in women and in older individuals.1 3 This has led to the suggestion of using a fixed multiplier (3×) for calculating total CVD based on CVD mortality only. From a patient's perspective, total CVD risk is the most relevant parameter for initiating CVD prevention,4 and using CVD mortality only can result in underestimation of the total CVD burden.5 Although mortality is a more robust clinical outcome, cardiovascular morbidity is equally relevant to providers of healthcare, policy makers and insurance companies. Currently, the relationship between total CVD and CVD mortality in the general population is unclear, and the proposed multiplier for conversion from CVD mortality to total CVD has not been validated. We hypothesised that the ratio of total CVD (fatal and non-fatal events) and CVD mortality is dependent on age and sex. We tested this hypothesis in the European Prospective Investigation of Cancer and Nutrition-Norfolk (EPIC-Norfolk), a large prospective population-based cohort, with detailed information on various chronic diseases, including CVD mortality and morbidity.

Methods

Source population

We used data from the EPIC-Norfolk prospective population study, a cohort of 25 639 men and women aged 39–79 years residing in the county of Norfolk, UK. Details of the study have been described elsewhere.6 In brief, between 1993 and 1997, 77 630 adults were invited from general practices to participate in the study. Of these, 25 639 (33%) provided signed informed consent for study participation and attended a baseline health assessment. Participants completed questionnaires about their personal and family history of disease, drug use and lifestyle, including smoking. Participants were also asked whether a doctor had ever told them that they had any of the following conditions: diabetes mellitus, myocardial infarction or stroke. Anthropometric and blood pressure measurements were performed and non-fasting blood samples were collected at the health assessment. The EPIC-Norfolk cohort was similar to a nationally representative sample for anthropometric indices, blood pressure measurements and serum lipid levels, but with a lower proportion of smokers.6 The participants’ National Health Service number was used to determine their hospital stay through the East Norfolk Health Authority database, which records all hospital contacts throughout England and Wales for Norfolk residents. Vital status for all EPIC-Norfolk participants was obtained through death certification at the Office for National Statistics. The underlying cause of death or hospital admission was coded by trained nosologists according to the International Classification of Diseases (ICD), Tenth Revision. The EPIC-Norfolk study complies with the Declaration of Helsinki.6

Study design

For this analysis, the study population consisted of all EPIC-Norfolk participants who did not report a history of diabetes mellitus, myocardial infarction or stroke at the baseline health assessment. We excluded individuals with diabetes mellitus, as diabetes mellitus is not included as a variable in the SCORE algorithm. CVD mortality was defined as death where CVD was reported as the underlying cause of death on the death certificate. Total CVD was defined as CVD mortality plus hospitalisation with CVD as the underlying cause. Previous validation studies in this cohort indicated high specificity of such case ascertainment.7 We defined cardiovascular events or disease as the combination of ischaemic heart disease (ICD codes I20–I25), cardiac failure (ICD codes I11, I13, I50), cerebrovascular disease (ICD I60–I69), peripheral artery disease (ICD I70–I79) and aortic aneurysm (ICD I71). We defined 30-day CVD mortality as CVD mortality within 30 days of hospitalisation for a first non-fatal CVD event. CVDs or events not requiring hospitalisation, such as stable angina pectoris, heart failure without hospitalisation or intermittent claudication, were not included in our analysis. We report results for follow-up up to 31 March 2008, a mean follow-up of 11 years.

Statistical methods

Baseline characteristics were summarised separately for men and women, using numbers and percentages for categorical data, means, 95% CI and SD for continuous data with a normal distribution, and median and IQR for continuous variables with a non-normal distribution. Ten-year rates of CVD mortality and total CVD were estimated using the Kaplan-Meier (KM) method. Ratios and differences between cardiovascular mortality and morbidity rates were calculated for the total population and in age groups (39–50 years, 50–55 years, 55–60 years, 60–65 years, 65–70 years, 70–75 years and 75–79 years), for men and women separately and according to SCORE (<5%, ≥5%). We evaluated the calculated total CVD/CVD mortality ratios, including 95% CIs, by performing individual resampling bootstrapping with 1000 iterations with the same sample size as the original sample. SCORE was calculated using the algorithm for low-risk countries in individuals younger than 65 years, using age at baseline, sex, smoking status, total cholesterol and systolic blood pressure. SCORE was only calculated in individuals with a complete data set of the abovementioned variables. Statistical analyses were performed in SPSS V.21 and STATA V.12.

Results

A total of 25 639 individuals attended the baseline visit. Of these participants, 1625 had diabetes mellitus or a history of vascular disease. The study population consisted of 24 014 men and women without prevalent CVD or diabetes mellitus. Table 1 shows baseline characteristics of the study participants. In total, 56.2% of the study participants were women. Mean age was 58.8 (SD 9.3) years, and 11.8% were current smokers. Mean values for body mass index, total cholesterol and low-density lipoprotein (LDL) cholesterol were slightly above levels recommended in primary prevention setting, respectively, at 26.3 kg/m2 (SD 3.9) and 6.2 mmol/L (SD 1.2) and 4.0 mmol/L (SD 1.1). There were no clinically relevant differences in CVD risk factors between men and women.
Table 1

Population characteristics

Population characteristics (n=24 014)TotalMaleFemale
(n=24 014)(n=10 509)(n=13 505)
Age, years58.8±9.359.0 ±9.358.7 ±9.3
Weight, kg73.3±13.180.3±11.467.9±11.8
Body mass index, kg/m226.3±3.926.4±3.326.2±4.3
Waist/hip ratio0.85±0.090.93±0.060.79±0.06
Current smokers2836 (11.8)1297 (12.3)1539 (11.4)
Systolic blood pressure, mm Hg135.2±18.3137.1±17.5133.7±18.8
Diastolic blood pressure, mm Hg82.4±11.284.4±11.180.9±11.1
Total cholesterol, mmol/L6.2±1.26.0±1.16.3±1.1
LDL cholesterol, mmol/L4.0±1.03.9±1.04.0±1.1
HDL cholesterol, mmol/L1.4±0.41.2±0.31.6±0.4
Triglycerides, mmol/L1.5 (1.1–2.2)1.7 (1.2–2.5)1.4 (1.0–2.0)
SCORE, % (n=15 171)1.55±1.82.35±2.20.95±1.1

Data are presented as number (percentage), mean±SD or median (IQR).

HDL, high-density lipoprotein; LDL, low-density lipoprotein; SCORE, Systematic Coronary Risk Evaluation, expressed as estimated 10-year mortality risk.

Population characteristics Data are presented as number (percentage), mean±SD or median (IQR). HDL, high-density lipoprotein; LDL, low-density lipoprotein; SCORE, Systematic Coronary Risk Evaluation, expressed as estimated 10-year mortality risk. Figure 1 shows the 10-year KM curves for cardiovascular mortality and morbidity. A total of 4978 study participants died of or were hospitalised for CVD, yielding a 10-year cumulative event rate for total CVD of 21.2% (95% CI 20.7% to 21.8%). A total of 900 study participants died of a CVD or event, yielding a 10-year CVD mortality rate of 3.9% (95% CI 3.6% to 4.1%). The overall ratio of total CVD/CVD mortality was 5.4. Of the 4978 study participants with a CVD or event, 360 individuals had a fatal event as first event (7.2% of total CVD); when 30-day CVD mortality was included this number was 643 (12.9% of total CVD). Of the 4618 non-fatal CVD events/hospitalisations, the majority was ischaemic heart disease (45.6%) followed by peripheral arterial disease (19.7%) and congestive heart failure (16.9%). Only 2.9% of the non-fatal events/hospitalisations were caused by an aortic aneurysm (table 2).
Figure 1

Kaplan-Meier estimates of the 10-year cumulative total cardiovascular disease (CVD) and CVD mortality. CVD mortality is death from a CVD. Total CVD is all fatal and non-fatal CVD or events requiring hospitalisation.

Table 2

Non-fatal 10-year CVD according to type

Type of eventTotalMaleFemale
n(Per cent)n(Per cent)n(Per cent)
Ischaemic heart disease2105(45.6)1260(46.9)845(43.8)
Congestive heart failure781(16.9)444(16.5)337(17.5)
Cerebrovascular disease686(14.9)332(12.4)354(18.4)
 Haemorrhagic118(2.6)55(2.1)63(3.3)
 Ischaemic568(12.3)277(10.3)291(15.1)
Peripheral arterial disease912(19.7)547(20.4)365(18.9)
Aortic aneurysm134(2.9)104(3.9)30(1.6)

Non-fatal 10-year CVD includes CVD diseases or events requiring hospitalisation. Fatal CVD is not included in the table. Data are presented as number (percentage). Percentages may not add up to 100 because of rounding.

CVD, cardiovascular disease.

Non-fatal 10-year CVD according to type Non-fatal 10-year CVD includes CVD diseases or events requiring hospitalisation. Fatal CVD is not included in the table. Data are presented as number (percentage). Percentages may not add up to 100 because of rounding. CVD, cardiovascular disease. Kaplan-Meier estimates of the 10-year cumulative total cardiovascular disease (CVD) and CVD mortality. CVD mortality is death from a CVD. Total CVD is all fatal and non-fatal CVD or events requiring hospitalisation. Table 3 presents 10-year CVD mortality and total CVD by age and sex. In men, the KM estimate for total CVD was 24.9%, for CVD mortality this was 5.4%, yielding an overall ratio of 4.6. In women, total CVD was 18.4%, CVD mortality 2.7%, with an overall ratio of 6.8. Among 2219 men aged 39–50 years, the KM estimate for total CVD was 8.2% and for CVD mortality 0.7%, resulting in a ratio of 11.7. Among 3061 women aged 39–50 years, total CVD was 5.7% and CVD mortality 0.2%, resulting in a ratio of 28.5. Event rates increased with age. Among 328 men aged 75–79 years, total CVD was 56.3% and CVD mortality 24.9%, amounting to a ratio of 2.4. Among 366 women aged 75–79 years, total CVD was 47.3% and CVD mortality 14.6%, resulting in a ratio of 3.2. Neither the ratio of nor the difference between total CVD and CVD mortality was constant across categories of age in either sex (table 3, right panels; figure 2). Overall, the total CVD/CVD mortality ratios were inversely related to age, and with greater variation among women as compared with men (figure 2).
Table 3

Cumulative 10-year CVD mortality and total CVD by sex and age

SexAge group10-year CVD mortality10-year total CVDKM differenceKM ratioBSP ratio
NnKM rate95% CInKM rate95% CI95%CI of BSP ratio
Male
 39–502219150.7(0.4 to 1.1)1818.2(7.2 to 9.5)7.511.712.21(12.07 to 12.36)
50–551780261.5(1.0 to 2.2)26014.8(13.2 to 16.5)13.39.910.01(9.93 to 10.09)
55–601637342.1(1.5 to 3.0)32019.9(18.6 to 22.0)17.89.59.37(9.30 to 9.44)
60–651633674.2(3.4 to 5.4)46229.0(26.8 to 31.3)24.86.96.84(6.81 to 6.87)
65–7016221278.3(7.0 to 9.8)56536.5(34.2 to 39.0)28.24.44.42(4.41 to 4.43)
70–75129020917.7(15.6 to 20.0)58648.8(46.0 to 51.7)31.12.82.77(2.76 to 2.77)
75–793286523.3(18.7 to 28.8)16756.3(50.6 to 62.1)332.42.41(2.40 to 2.42)
Total10 5095435.4(4.9 to 5.8)254124.9(24.1 to 25.7)19.54.64.66(4.65 to 4.67)
Female
39–50306150.2(0.07 to 0.4)1735.7(4.9 to 6.6)5.528.536.06(35.28 to 36.88)
 50–552333110.5(0.3 to 0.9)2259.8(8.6 to 11.1)9.319.620.24(19.95 to 20.55)
55–602129170.8(0.5 to 1.3)29914.2(12.8 to 15.8)13.417.817.65(17.44 to 17.87)
60–652014432.2(1.6 to 2.9)39520.1(18.4 to 21.9)17.99.19.16(9.10 to 9.22)
65–701995864.5(3.6 to 5.5)55628.8(26.8 to 30.9)24.36.46.47(6.44 to 6.50)
70–7516071459.5(8.2 to 11.1)62440.7(38.3 to 43.2)31.24.34.28(4.27 to 4.30)
75–793665014.6(11.3 to 18.8)16547.3(42.2 to 52.7)32.73.23.26(3.24 to 3.27)
Total13 5053572.7(2.4 to 3.0)243718.4(17.8 to 19.1)15.76.86.80(6.79 to 6.82)

CVD mortality is death from a CVD. Total CVD is all fatal and non-fatal CVD or events requiring hospitalisation.

Cumulative total CVD and CVD mortality rates were calculated using the KM method.

KM difference is difference of total CVD and CVD mortality of the KM estimates. KM ratio is the ratio of total CVD to CVD mortality of the KM estimates. BSP ratio is the ratio of total CVD to CVD mortality of the bootstrap procedure estimates.

BSP, bootstrap procedure; CVD, cardiovascular disease;, KM, Kaplan-Meier.

Figure 2

Ratios of 10-year cumulative total CVD to CVD mortality by sex and age groups. CVD, cardiovascular disease.

Cumulative 10-year CVD mortality and total CVD by sex and age CVD mortality is death from a CVD. Total CVD is all fatal and non-fatal CVD or events requiring hospitalisation. Cumulative total CVD and CVD mortality rates were calculated using the KM method. KM difference is difference of total CVD and CVD mortality of the KM estimates. KM ratio is the ratio of total CVD to CVD mortality of the KM estimates. BSP ratio is the ratio of total CVD to CVD mortality of the bootstrap procedure estimates. BSP, bootstrap procedure; CVD, cardiovascular disease;, KM, Kaplan-Meier. Ratios of 10-year cumulative total CVD to CVD mortality by sex and age groups. CVD, cardiovascular disease. SCORE was calculated in 15 171 individuals up to 65 years of age as shown in table 4. Mean predicted CVD mortality according to SCORE was 1.55% (95% CI 1.52% to 1.58%); in men 2.35% (95% CI 2.29% to 2.40%) and in women 0.95% (95% CI 0.92% to 0.97%). In individuals with ≥5% SCORE, 10-year CVD mortality was 7.3%, whereas 10-year total CVD was 41.2%, yielding a ratio of 5.6. In men with a SCORE ≥5%, this ratio was 5.4, in women 9.4. In individuals with a SCORE <5%, these ratios varied considerably: 12.5 in the total population, in men 10.4, in women 15.9.
Table 4

Cumulative 10-year CVD mortality and total CVD by sex and SCORE

Score10-year CVD mortality10-year total CVDKM ratioBSP ratio
NnKM rate95% CInKM95% CI95% CI
Total population
 <5%14 4911391.0(0.8 to 1.2)178312.5(11.9 to 13.0)12.512.83(12.77 to 12.93)
 ≥5%680487.3(5.5 to 9.6)27441.2(37.6 to 45.1)5.65.68(5.65 to 5.72)
Male
 <5%5906811.4(1.1 to 1.7)84214.5(13.6 to 15.4)10.410.34(10.29 to 10.39)
 ≥5%603457.7(5.8 to 10.2)24641.7(37.8 to 45.7)5.45.42(5.39 to 5.46)
Female
 <5%8585580.7(0.5 to 0.9)94111.1(10.5 to 11.8)15.916.28(16.19 to 16.38)
 ≥5%7734.0(1.3 to 11.2)2837.7(27.8 to 49.7)9.49.52(9.28 to 9.75)

CVD mortality is death from a CVD. Total CVD is all fatal and non-fatal CVD or events requiring hospitalisation.

Cumulative total CVD and CVD mortality rates were calculated using the KM method. Ratios are total CVD to CVD mortality.

BSP, bootstrap procedure; CVD, cardiovascular disease; KM, Kaplan-Meier; SCORE, Systematic Coronary Risk Evaluation.

Cumulative 10-year CVD mortality and total CVD by sex and SCORE CVD mortality is death from a CVD. Total CVD is all fatal and non-fatal CVD or events requiring hospitalisation. Cumulative total CVD and CVD mortality rates were calculated using the KM method. Ratios are total CVD to CVD mortality. BSP, bootstrap procedure; CVD, cardiovascular disease; KM, Kaplan-Meier; SCORE, Systematic Coronary Risk Evaluation. Total CVD/CVD mortality ratios as assessed using bootstrap resampling were comparable across the total population and the subset wherein SCORE was calculated. Only in the youngest age group, in women more than men, these ratios were higher when calculated using bootstrap resampling (women aged 39–50 years KM-ratio 28.5 vs bootstrap ratio 36.06 (95% CI 35.28 to 36.88), men aged 39–50 years KM-ratio 11.7 vs bootstrap ratio 12.21 (95% CI 12.07 to 12.36)), most likely related to the low number of mortality events in these subgroups.

Discussion

Our analysis demonstrates a complex relationship between 10-year total CVD and CVD mortality in the EPIC-Norfolk prospective population study, a large European cohort. Men and women showed a decreasing CVD morbidity/mortality ratio with increasing age, and with a greater ratio for women in all age groups. Thus, our results suggest that the ratios of total CVD/CVD mortality are age-dependent and sex-dependent. Furthermore, only 12.9% of first CVD events were fatal. By focusing on CVD mortality only, the overall burden of CVD is seriously underestimated, leaving large numbers of individuals untreated, despite the fact that their risk of CVD events is substantial. The ESC prevention guidelines use the 10-year cardiovascular mortality risk predictor SCORE as a decision-making tool in primary prevention.2 8 Using SCORE risk charts, clinicians can identify individuals with a high risk (≥5%) of 10-year CVD mortality. Based on data from the FINRISK study, it is suggested that at the level at which risk management is recommended (5% risk of 10-year cardiovascular mortality), total event risk, that is, including morbidity, is about three times higher (15%). The guideline suggests this ratio may be used as a multiplier in calculating total CVD risk based on estimated CVD mortality.1–3 In our study, the total CVD/CVD mortality ratio in individuals with a SCORE ≥5% was markedly higher (5.6) than the suggested multiplier (3), more so in women (9.4) as compared with men (5.4). Noteworthy is that only 77 women up to 65 years of age had a SCORE≥5%. Also when not stratified by SCORE, these ratios were overall higher (total population 5.4, in men 4.6, in women 6.8). The ratio was especially high (28.5 in women, 11.7 in men) in the lower age subgroups (39–50 years), and decreased with age. While risk scores such as SCORE identify individuals at high risk of CVD mortality, our findings show that risk of CVD mortality cannot be readily extrapolated to risk of total CVD using a fixed multiplier. A high risk of CVD mortality suggests a high risk of total CVD, regardless of age and sex, with all inherent implications for primary prevention. However, our study shows that a low risk of CVD mortality does not translate into a proportionally low risk of CVD morbidity, particularly in young individuals, and in women more than men. This discrepancy should be taken into account in the clinical decision-making process regarding preventive measures in young patients. The majority of first non-fatal events or hospitalisations were caused by ischaemic CVD (in total 77.6% including ischaemic heart disease, ischaemic cerebrovascular disease and peripheral arterial disease). As healthy lifestyles and preventive medication have been shown to significantly reduce the risk for such events, this underlines the need for preventive measures in these individuals. Although CVD mortality is clearly the most robust clinical outcome, cardiovascular morbidity is likely to be at least as relevant to patients, providers of healthcare, policy makers and insurance companies. Currently, 10% of the global disease burden is attributed to CVD, with CVD being responsible for 151.377 million disability-adjusted life years.9 CVD mortality alone contributed to 17.3 million deaths in 2008, representing 30% of all global deaths, with a projected number of deaths of almost 23.6 million in 2030.9 The burden of total CVD is likely to show a similar or even greater increase, as CVD mortality has declined relative to CVD morbidity in recent decades.10 11 This relative decline in mortality can be attributed to improved acute and chronic CVD treatments, as well as improvements in primary and secondary prevention. Considering the individual, economic and societal implications of CVD morbidity, guidelines could be significantly improved by including morbidity in the estimation of risk. Different fatal/non-fatal ratios have been published in previous studies, for which several explanations may be found. Similar to our results, van Dis et al12 showed that the ratio of total CVD to CVD mortality was 4.0 in men and 5.2 in women in a large Dutch population. However, they did not present ratios across different age groups. In a number of primary prevention trials in selected populations, the ratios of total CVD to CVD mortality varied between 3.2 and 4.5 for the overall population.13–16 In comparison to our study, these trials were conducted in a predominantly male study population, and did not report numbers of events in sex and age subgroups. In the landmark trials of aspirin use in primary prevention of coronary heart disease, this ratio was 3.7 (fatal CVD vs non-fatal myocardial infarction and stroke) in the US Physicians Health Study, while the British counterpart study showed a ratio of 1.1 (fatal CVD vs non-fatal myocardial infarction).17 18 Both studies used different diagnostic categories which were narrower than those used in our study. It has previously been hypothesised that these differences in ratios reflect diagnostic differences (such as ascertainment and diagnostic thresholds) rather than underlying disease differences.19 Furthermore, study power may play a role. Greenland et al20 showed lower ratios of non-fatal myocardial infarction to fatal CVD, especially in the very young (ages 18–39 years men 1.5, women 2.2, ages 40–59 years men 0.8, women 0.9). However, the number of non-fatal outcome events in our study was roughly 10-fold the number in their study. In our study, we chose to address CVD (all arterial territories) instead of coronary disease alone, as the SCORE risk factors impact on all arterial territories. In addition, we used a broader definition of non-fatal CVD compared with the study by Greenland et al, as we believe that the ‘milder’ forms of non-fatal CVD also represent clinically important CVD. These non-fatal presentations of CVD have implications for symptomatic treatment and preventive measures, and play an important role in healthcare finances and healthcare utilisation. Currently, most major guidelines focus on 10-year risk estimation, based on different risk algorithms with outcomes including various combinations of fatal and non-fatal events in different arterial territories.21 Our results emphasise the limitations of calculating the risk of fatal CVD events in a limited number of arterial territories for a period of 10 years. Lifetime risk instead of 10-year risk may also be used to characterise the relationship between fatal and total CVD. However, with a lifetime of CVD mortality estimated at 26% in women and 36% in men (Caucasian, all ages combined), the impact of morbidity may again be underestimated.22 Particularly, the addition of substantial numbers of disease-free years of life is an important goal of preventive therapy. Studies in modern population-based cohorts with lifetime event rates available may better characterise the current and future public burden of CVD, improve decision making on preventive therapy and improve communication of risk between patients and clinicians.

Strengths and limitations

There are several strengths to our study. First, our analysis was performed in a large, population-based cohort with long-term follow-up and detailed information on mortality and hospitalisations, and we were able to estimate cumulative mortality and hospitalisation rates in the overall population and in large age and sex subgroups. Second, the EPIC-Norfolk cohort is similar to a nationally representative sample for anthropometric variables, blood pressure and serum lipids.6 23 However, it should be noted that the population in the Norfolk area is healthier than the general UK population with a standardised mortality ratio of 0.94 (source: Office for National Statistics). Third, we have previously shown that the SCORE low-risk algorithm performs better than the high-risk algorithm in prediction 10-year CVD mortality.24 The recent reclassification of the UK as a low-risk country in the ESC prevention guidelines is in line with our findings.2 24 Some aspects of our study warrant consideration. First, we used data from a prospective cohort, originally designed for the investigation of parameters other than cardiovascular events and hospitalisations, with the limitations inherent in this type of analysis. Second, while we were able to calculate SCORE in a large number of individuals (15 171), there were only 77 women with a SCORE of ≥5%, meaning that nearly all women had a SCORE under the threshold where risk management is recommended. These women had a very low rate of fatal CVD, but a considerable risk of non-fatal CVD, contributing to the very high ratios of total/fatal-CVD. This underlines the fact that CVD mortality cannot readily be used to calculate total CVD, and we do not recommended using these ratios to calculate total CVD from fatal CVD. However, these ratios illustrate the limitations of mortality as a single outcome parameter, particularly at young ages and in women, and emphasise the need to include non-fatal outcomes in estimations of the risk of cardiovascular events. Finally, the definition of CVD events is essential in any study investigating the relationship between total CVD and CVD mortality. We defined total CVD as any event or disease requiring hospitalisation, including ischaemic heart disease, cardiac failure, cerebrovascular disease, peripheral artery disease and aortic aneurysm. CVD not requiring hospitalisation, including ‘mild’ peripheral artery disease, ‘mild’ heart failure or stable angina pectoris, was not included in our analysis. While these variants of CVD frequently do not require hospitalisation, they are expressions of clinically relevant atherosclerotic disease and form a relevant indicator for the initiation or intensification of preventive measures in individual patients. Using a broader definition of CVD would result in a higher rate of non-fatal CVD, leading to a further increase in the overall ratios of total CVD/CVD mortality, and potentially change the threshold for preventive therapy.

Conclusion

In summary, among patients without a history of CVD or diabetes mellitus, the relation between total CVD including hospitalisations and CVD mortality is highly variable. The total CVD to CVD mortality ratio is inversely related to age, and is higher in women as compared with men. Our findings do not support using a fixed multiplier to calculate total CVD risk based on CVD mortality risk, and caution is warranted when extrapolating the risk of CVD mortality to the risk of total CVD. Future guidelines may be revised to reflect these relationships. The European Society of Cardiology's Prevention Guideline suggests that total (fatal and non-fatal) cardiovascular disease (CVD) risk may be calculated from the risk of CVD mortality by using a fixed multiplier (3×) The relationship between total CVD and CVD mortality in the general population is unclear, and the suggested fixed multiplier has not been validated The relationship between 10-year total CVD and CVD mortality is dependent on age and sex, and cannot be estimated using a fixed multiplier Using CVD mortality to estimate total CVD risk leads to serious underestimation of risk, particularly in younger age groups, and particularly in women These findings have major implications for individual decision making on preventive therapy and for future guidelines on prevention A significantly greater proportion of individuals will benefit from preventive treatments than is estimated by current European Society of Cardiology guidelines, particularly in young age groups
  22 in total

Review 1.  Cardiovascular risk-estimation systems in primary prevention: do they differ? Do they make a difference? Can we see the future?

Authors:  Marie Therese Cooney; Alexandra Dudina; Ralph D'Agostino; Ian M Graham
Journal:  Circulation       Date:  2010-07-20       Impact factor: 29.690

2.  Lifetime risks of cardiovascular disease.

Authors:  Jarett D Berry; Alan Dyer; Xuan Cai; Daniel B Garside; Hongyan Ning; Avis Thomas; Philip Greenland; Linda Van Horn; Russell P Tracy; Donald M Lloyd-Jones
Journal:  N Engl J Med       Date:  2012-01-26       Impact factor: 91.245

3.  Effect of including nonfatal events in cardiovascular risk estimation, illustrated with data from The Netherlands.

Authors:  Ineke van Dis; Johanna M Geleijnse; Jolanda Ma Boer; Daan Kromhout; Hendriek Boshuizen; Diederick E Grobbee; Yvonne T van der Schouw; Wm Monique Verschuren
Journal:  Eur J Prev Cardiol       Date:  2012-03-22       Impact factor: 7.804

4.  Cardiovascular risk factor changes in Finland, 1972-1997.

Authors:  E Vartiainen; P Jousilahti; G Alfthan; J Sundvall; P Pietinen; P Puska
Journal:  Int J Epidemiol       Date:  2000-02       Impact factor: 7.196

5.  Estimation of ten-year risk of fatal cardiovascular disease in Europe: the SCORE project.

Authors:  R M Conroy; K Pyörälä; A P Fitzgerald; S Sans; A Menotti; G De Backer; D De Bacquer; P Ducimetière; P Jousilahti; U Keil; I Njølstad; R G Oganov; T Thomsen; H Tunstall-Pedoe; A Tverdal; H Wedel; P Whincup; L Wilhelmsen; I M Graham
Journal:  Eur Heart J       Date:  2003-06       Impact factor: 29.983

6.  European guidelines on cardiovascular disease prevention in clinical practice: executive summary: Fourth Joint Task Force of the European Society of Cardiology and Other Societies on Cardiovascular Disease Prevention in Clinical Practice (Constituted by representatives of nine societies and by invited experts).

Authors:  Ian Graham; Dan Atar; Knut Borch-Johnsen; Gudrun Boysen; Gunilla Burell; Renata Cifkova; Jean Dallongeville; Guy De Backer; Shah Ebrahim; Bjørn Gjelsvik; Christoph Herrmann-Lingen; Arno Hoes; Steve Humphries; Mike Knapton; Joep Perk; Silvia G Priori; Kalevi Pyorala; Zeljko Reiner; Luis Ruilope; Susana Sans-Menendez; Wilma Scholte op Reimer; Peter Weissberg; David Wood; John Yarnell; Jose Luis Zamorano; Edmond Walma; Tony Fitzgerald; Marie Therese Cooney; Alexandra Dudina
Journal:  Eur Heart J       Date:  2007-08-28       Impact factor: 29.983

7.  European Guidelines on cardiovascular disease prevention in clinical practice (version 2012). The Fifth Joint Task Force of the European Society of Cardiology and Other Societies on Cardiovascular Disease Prevention in Clinical Practice (constituted by representatives of nine societies and by invited experts).

Authors:  Joep Perk; Guy De Backer; Helmut Gohlke; Ian Graham; Zeljko Reiner; Monique Verschuren; Christian Albus; Pascale Benlian; Gudrun Boysen; Renata Cifkova; Christi Deaton; Shah Ebrahim; Miles Fisher; Giuseppe Germano; Richard Hobbs; Arno Hoes; Sehnaz Karadeniz; Alessandro Mezzani; Eva Prescott; Lars Ryden; Martin Scherer; Mikko Syvänne; Wilma J M Scholte op Reimer; Christiaan Vrints; David Wood; Jose Luis Zamorano; Faiez Zannad
Journal:  Eur Heart J       Date:  2012-05-03       Impact factor: 29.983

8.  The Systematic COronary Risk Evaluation (SCORE) in a large UK population: 10-year follow-up in the EPIC-Norfolk prospective population study.

Authors:  Harald T Jørstad; Ersen B Colkesen; Madelon Minneboo; Ron J G Peters; S Matthijs Boekholdt; Jan G P Tijssen; Nicholas J Wareham; Kay-Tee Khaw
Journal:  Eur J Prev Cardiol       Date:  2013-09-03       Impact factor: 7.804

9.  Efficacy and safety of more intensive lowering of LDL cholesterol: a meta-analysis of data from 170,000 participants in 26 randomised trials.

Authors:  C Baigent; L Blackwell; J Emberson; L E Holland; C Reith; N Bhala; R Peto; E H Barnes; A Keech; J Simes; R Collins
Journal:  Lancet       Date:  2010-11-08       Impact factor: 79.321

10.  Trends in longer-term survival following an acute myocardial infarction and prescribing of evidenced-based medications in primary care in the UK from 1991: a longitudinal population-based study.

Authors:  Sarah L Hardoon; Peter H Whincup; Irene Petersen; Simon Capewell; Richard W Morris
Journal:  J Epidemiol Community Health       Date:  2010-06-01       Impact factor: 3.710

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  12 in total

1.  Statins for primary prevention in people with a 10% 10-year cardiovascular risk: too much medicine too soon?

Authors:  Dharani Yerrakalva; Simon J Griffin
Journal:  Br J Gen Pract       Date:  2017-01       Impact factor: 5.386

Review 2.  Molecular Imaging in Drug Discovery and Development.

Authors:  Jonathan R Lindner; Jeanne Link
Journal:  Circ Cardiovasc Imaging       Date:  2018-02       Impact factor: 7.792

3.  Statin Eligibility for Primary Prevention of Cardiovascular Disease According to 2021 European Prevention Guidelines Compared With Other International Guidelines.

Authors:  Martin Bødtker Mortensen; Anne Tybjærg-Hansen; Børge G Nordestgaard
Journal:  JAMA Cardiol       Date:  2022-08-01       Impact factor: 30.154

4.  Cardiovascular health after menopause transition, pregnancy disorders, and other gynaecologic conditions: a consensus document from European cardiologists, gynaecologists, and endocrinologists.

Authors:  Angela H E M Maas; Giuseppe Rosano; Renata Cifkova; Alaide Chieffo; Dorenda van Dijken; Haitham Hamoda; Vijay Kunadian; Ellen Laan; Irene Lambrinoudaki; Kate Maclaran; Nick Panay; John C Stevenson; Mick van Trotsenburg; Peter Collins
Journal:  Eur Heart J       Date:  2021-03-07       Impact factor: 29.983

5.  Prediction of cardiovascular events in rheumatoid arthritis using risk age calculations: evaluation of concordance across risk age models.

Authors:  Grunde Wibetoe; Joseph Sexton; Eirik Ikdahl; Silvia Rollefstad; George D Kitas; Piet van Riel; Sherine Gabriel; Tore K Kvien; Karen Douglas; Aamer Sandoo; Elke E Arts; Solveig Wållberg-Jonsson; Solbritt Rantapää Dahlqvist; George Karpouzas; Patrick H Dessein; Linda Tsang; Hani El-Gabalawy; Carol A Hitchon; Virginia Pascual-Ramos; Irazu Contreas-Yañes; Petros P Sfikakis; Miguel A González-Gay; Iris J Colunga-Pedraz; Dionicio A Galarza-Delgado; Jose Ramon Azpiri-Lopez; Cynthia S Crowson; Anne Grete Semb
Journal:  Arthritis Res Ther       Date:  2020-04-23       Impact factor: 5.156

6.  Type of menopause, age of menopause and variations in the risk of incident cardiovascular disease: pooled analysis of individual data from 10 international studies.

Authors:  Dongshan Zhu; Hsin-Fang Chung; Annette J Dobson; Nirmala Pandeya; Eric J Brunner; Diana Kuh; Darren C Greenwood; Rebecca Hardy; Janet E Cade; Graham G Giles; Fiona Bruinsma; Panayotes Demakakos; Mette Kildevæld Simonsen; Sven Sandin; Elisabete Weiderpass; Gita D Mishra
Journal:  Hum Reprod       Date:  2020-08-01       Impact factor: 6.918

7.  The Dutch SCORE-based risk charts seriously underestimate the risk of cardiovascular disease.

Authors:  H T Jørstad; S M Boekholdt; N J Wareham; K T Khaw; R J G Peters
Journal:  Neth Heart J       Date:  2017-03       Impact factor: 2.380

8.  Ethnic disparities in estimated cardiovascular disease risk in Amsterdam, the Netherlands : The HELIUS study.

Authors:  W Perini; M B Snijder; R J G Peters; A E Kunst
Journal:  Neth Heart J       Date:  2018-05       Impact factor: 2.380

9.  Coronary endothelial function is better in healthy premenopausal women than in healthy older postmenopausal women and men.

Authors:  Lena Mathews; Micaela Iantorno; Michael Schär; Gabriele Bonanno; Gary Gerstenblith; Robert G Weiss; Allison G Hays
Journal:  PLoS One       Date:  2017-10-26       Impact factor: 3.240

10.  Age at natural menopause and risk of incident cardiovascular disease: a pooled analysis of individual patient data.

Authors:  Dongshan Zhu; Hsin-Fang Chung; Annette J Dobson; Nirmala Pandeya; Graham G Giles; Fiona Bruinsma; Eric J Brunner; Diana Kuh; Rebecca Hardy; Nancy E Avis; Ellen B Gold; Carol A Derby; Karen A Matthews; Janet E Cade; Darren C Greenwood; Panayotes Demakakos; Daniel E Brown; Lynnette L Sievert; Debra Anderson; Kunihiko Hayashi; Jung Su Lee; Hideki Mizunuma; Therese Tillin; Mette Kildevæld Simonsen; Hans-Olov Adami; Elisabete Weiderpass; Gita D Mishra
Journal:  Lancet Public Health       Date:  2019-10-03
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