a Diabetes and Genetic Epidemiology Unit, Department of Epidemiology and Health Promotion, National Public Health Institute, Mannerheimintie 166, FIN-00300 Helsinki, Finland
b Department of Public Health, University of Helsinki, Helsinki, Finland
c Department of Public Health and General Practice, University of Kuopio, Kuopio, Finland
Received 1 June 2004; revised 4 October 2004; accepted 7 October 2004 * Corresponding author. Tel.: +358 9 19127366; fax: +358 9 19127313 (E-mail: hu.gang{at}ktl.fi).
See page 2183 for the editorial comment on this article (doi:10.1016/j.ehj.2004.10.014)
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Abstract |
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METHODS AND RESULTS: The study comprised 18,892 Finnish men and women aged 2574 years without history of coronary heart disease, stroke, or heart failure at baseline. Physical activity, different indicators of obesity, education, smoking, blood pressure, total and high-density lipoprotein cholesterol and history of diabetes were measured at baseline. An incident CVD event was defined as the first stroke or coronary heart disease event or CVD death based on national hospital discharge and mortality register data. The median follow-up time was 9.8 years. Physical activity had a strong, independent, and inverse association with CVD risk in both genders. All obesity indicators had a significant direct association with CVD risk after adjustment for age, smoking, education and physical activity. Further adjustment for the obesity-related risk factors weakened the associations and they remained statistically significant in men only. Physical activity and the obesity indicators both predicted CVD risk in men, but in women the joint effect was inconsistent.
CONCLUSION: Both regular physical activity and normal weight can reduce the risk of CVD. Physical inactivity seems to have an independent effect on CVD risk, whereas obesity increases the risk partly through the modification of other risk factors.
Keywords Exercise; Obesity; Incidence; Cardiovascular disease
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Introduction |
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Some prospective studies examining the relation between body weight and CVD mortality have reported varying findings, including a J-shaped,14,15 direct association,9,1618 or no association.19 Body mass index (BMI) is commonly used to estimate the association of body fattiness and CVD risk in clinical practice and epidemiological studies, but the principal limitation of BMI is that it does not distinguish fat mass from lean body mass.2 Abdominal obesity measured by waist circumference or waist-to-hip ratio (WHR) is an important potential risk factor for chronic diseases.2,3,2023
Two recent reviews have evaluated the relation between physical activity and CVD/cancer incidence and mortality.6,7 They conclude that individuals who report regular physical activity are less likely than sedentary individuals to die from coronary heart disease, stroke, CVD, certain cancers and all causes. Several studies have assessed the independent and combined effects of fattiness and physical fitness on mortality.17,19,24 Moderate or high level of cardiorespiratory fitness may be protective against the excess mortality among overweight and obese individuals. However, very few studies have assessed the joint associations of physical activity and different indicators of obesity with CVD risk, especially among women.5,8
The aim of this study was to examine both single and joint associations of physical activity, and three indicators of obesity (BMI, waist circumference, and WHR), with the risk of CVD in a large population-based cohort of middle aged and elderly men and women, and further to what extent the risk is modified by other behavioural and biological CVD risk factors.
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Methods |
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Baseline measurements
A self-administered questionnaire was mailed to the participants in advance. It included questions about smoking, socioeconomic factors, physical activity, and medical history. Education level, measured as the total number of school years, was divided into birth cohort specific tertiles. The participants were classified as never, past, and current smokers.
Physical activity included occupational and leisure-time physical activity. A detailed description of the questions has been presented elsewhere,1012,27,28 and these questions were similar to those used and validated in the 'Seven Countries Study'.29 The subjects reported their occupational physical activity according to the following three categories: (i) light was physically very easy, sitting office work, e.g., secretary; (ii) moderate was work including standing and walking, e.g. store assistant; and (iii) active was work including walking and lifting, or heavy manual labour, e.g. industrial work, farm work. Self-reported leisure-time physical activity was classified into three categories: (i) low was defined as almost completely inactive, e.g. reading, watching TV, or doing some minor physical activity but not of moderate or high level; (ii) moderate was doing some physical activity more than four hours a week, e.g. walking, cycling, etc; and (iii) high was performing vigorous physical activity more than three hours a week, e.g. running, jogging, skiing, or regular exercise in competitive sports several times a week. Occupational and leisure-time physical activity were merged and regrouped into three categories: (i) low was defined as subjects who reported light levels of both occupational and leisure-time physical activity; (ii) moderate was defined as subjects who reported moderate or high level of either occupational or leisure-time physical activity; and (iii) high was defined as subjects who reported a moderate or high level of both occupational and leisure-time physical activity.
At the study site, specially trained research nurses measured the height, weight, waist and hip circumferences, as well as blood pressure using a standardised protocol.26 Height and weight were measured without shoes and with light clothing. BMI was calculated as weight in kilograms divided by the square of the height in metres. Waist circumference was measured midway between the lower rib margin and iliac crest. Hip circumference was measured at the level of widest circumference over the greater trochanters. WHR was calculated as waist circumference divided by hip circumference. The subjects were classified in four BMI categories: <20 (lean), 2024.9 (reference group), 2529.9 (overweight) and ⩾30 kg/m2 (obese). Sex-specific quartiles of waist circumference and WHR were used in the analyses.
Blood pressure was measured from the right arm of the participant who was seated for five minutes before the measurement. After blood pressure measurement, a venous blood specimen was taken. Total and high-density lipoprotein (HDL) cholesterol levels were determined from fresh serum samples by using an enzymatic method (CHOD-PAP, Boehringer MANNHEIM, Mannheim, Germany). All samples were analysed in the same laboratory.
Follow-up
Follow-up information was based on the Finnish hospital discharge register for non-fatal outcomes (hospitalised myocardial infarction and stroke) and the mortality register by the Statistics Finland for fatal outcomes (cardiovascular death). These registers were linked to the risk factor surveys using social security numbers assigned to every citizen of Finland. Combined non-fatal (myocardial infarction and stroke) and fatal (CVD) cases were defined as CVD incidence in the analysis. Follow-up data were available through 31 December 2001. Eighth, Ninth and Tenth Revisions of the International Classification of Diseases (ICD) were used to identify non-fatal myocardial infarction (410411 and I21I22, I24) and stroke (430438 and I60I66) cases, and fatal CVD (390459 and I00I99) cases.
Statistical analyses
SPSS for Windows 11.5 was used for statistical analysis. Differences in risk factors at different levels of physical activity were tested using analysis of variance or logistic regression after adjustment for age and study year. The Cox proportional hazards model was used to estimate the single or joint effect of different levels of physical activity, BMI, waist circumference, and WHR on the risk of CVD. The proportional hazards assumption in the Cox model was assessed with graphical methods, and with models including time-by-covariate interactions.30 In general, all proportionality assumptions were appropriate. Dummy variables for BMI (<30 versus ⩾30 kg/m2), waist circumference, and WHR (quartiles of 13 versus the highest quartile), inactivity (low level of physical activity) versus activity (moderate or high level of physical activity) were used in the analyses of joint association. The analyses were first carried out adjusting for age and study year, and then further for systolic blood pressure, total and HDL cholesterol, education, smoking, and diabetes at baseline. To avoid the potential bias of our results from early mortality in the low activity group, additional analyses were carried out excluding the subjects who died during the first two years of follow-up. Chi-squared log-likelihood ratio test was used to compare relative abilities of the different physical activity and obesity measures on the CVD risk. A p-value less than 0.05 was considered as statistically significant. Exact p-values and confidence intervals are given in tables.
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Results |
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Fig. 1 shows the joint association of physical activity, BMI, waist circumference, and WHR with CVD risk. In these analyses, the subjects were classified into four categories: both active and non-obese (the reference group), active but obese, inactive but non-obese, both inactive and obese. Obesity was defined either as BMI⩾30 or the highest quartile of waist circumference or WHR. Among men, physical inactivity or obesity alone increased the risk of CVD by 2040%, and the combination of physical inactivity and obesity doubled the risk in comparison with the reference group. Among women, BMI⩾30 or physical inactivity alone increased the risk of CVD by 56% and 70%, respectively, and those women who had both high BMI and were inactive had a double risk compared to the reference group. The joint associations of physical inactivity and waist circumference, and particularly WHR, were inconsistent.
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Discussion |
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Most studies,4,9,1418 but not all,19 have indicated that overall obesity assessed by BMI is associated with increased risk of CHD or CVD incidence, and CHD or CVD mortality. Abdominal obesity, assessed by WHR or waist circumference, has been found to be a better predictor of total, CHD, and CVD mortality than BMI in some population groups,20,21 but the prospective data of the effects of abdominal obesity on the CVD incidence are still scant. Some studies indicated higher death rates in the subjects with abdominal obesity who had an underweight (a low BMI and high WHR) than in those without abdominal obesity who were overall obese (a high BMI and low WHR).20,21 Several studies found that both overall obesity and abdominal obesity were associated with the risk of CHD in both men and women.22,23 In the present study, we found that BMI rather than waist circumference or WHR predicted CVD risk, especially in women.
A recent review on guidelines for healthy weight by Willett et al.2 pointed out three potential methodological problems that can distort the association between obesity and health outcomes. The most serious problem is called reverse causation, another major concern is the failure to control for smoking, and the third problem is the inappropriate control for other risk factors. In the present study, we excluded the subjects with a history of CHD, stroke, and heart failure at baseline. We analysed the data also after exclusion of the early events, which did not change the results. In the analyses, smoking status was considered as a confounding factor in the intermediate model, and the physiological effects of excess fattiness (blood pressure, diabetes, and total and HDL cholesterol) were considered as mediating factors and included in the final model.
Our results are consistent with the findings of a number of prospective studies about the strong inverse association of physical activity, physical fitness with incidence of CHD, stroke, and CVD.58 In general, these studies have reached a similar conclusion that the protective effect of physical activity is found in different population groups and is usually stronger in women than in men.6 Walking also reduced the incidence of CHD among men and women.5,8 However, occupational physical activity has been largely ignored in these surveys. This may cause greater errors in estimates of overall physical activity particularly in women and persons from lower socioeconomic groups.3 National Institutes of Health Consensus Development Conference on Physical Activity and Cardiovascular Health concluded that intermittent or shorter bouts of activity (at least 10 min), including occupational, non-occupational, or tasks of daily living, also have similar cardiovascular and health benefits if performed at a level of moderate intensity (such as brisk walking, cycling, swimming, home repair, and yard work) with an accumulated duration of at least 30 min/day.31 In our analyses, we included occupational physical activity as a component in the total physical activity.
A few prospective studies have evaluated the joint associations of physical activity, physical fitness, and body weight with CVD mortality, and the data are especially scarce among women. The Aerobic Center Longitudinal Study found that low cardiorespiratory fitness was a strong and independent predictor of CVD mortality among men, independent of body composition and other CVD risk factors.17 Furthermore, they also indicated that overweight or obese men with moderate to high levels of cardiorespiratory fitness had a significantly lower risk of CVD mortality than normal-weight or overweight men with a low level of cardiorespiratory fitness.17 The Lipid Research Clinics Study also assessed the effect of fitness and fattiness on longevity using data from 2506 men and 2860 women of mean age 46 years.24 There was an increased risk of CVD mortality in men and women who were classified as fit-fat, unfit-unfat, and unfit-fat compared with people classified as fit-unfat. The result from the Nurses' Health Study and the Health Professionals' Follow-up Study found a strong, graded inverse association between physical activity and the risk of CHD, and this association was present in non-obese (BMI ⩽29 kg/m2) and obese (BMI>29 kg/m2) nurses, and in healthy weight (BMI<25 kg/m2), and overweight (2529.9 kg/m2) men.5,8 The analysis from the first National Health and Nutrition Examination Survey assessed the CVD mortality rates among subjects with different levels of physical activity and BMI.9 CVD mortality rates were the highest among those with both the least physical activity and obesity. On the other hand, the lowest CVD mortality rates were found among those with more exercise and normal weight.9
Our finding also supports the hypothesis that the adequate level of either occupational or leisure time physical activity, or both, can protect against the premature CVD in overweight and obese individuals. Weight reduction in obese people reduces the risk of death and CVD,2 but it is well known that reducing weight is very difficult and, even at best, only a limited weight reduction may be achieved.32 Therefore, it is also important to identify other ways to reduce the mortality and morbidity risks. It seems that increased physical activity is useful in this respect.
There are several strengths and limitations in our study. First, our study is population-based comprising a large number of both men and women from a homogeneous population. The median follow-up, 9.8 years, was sufficiently long during which a large number of CVD endpoint events were ascertained without losses of follow-up. Second, occupational physical activity was also included in the total physical activity. Third, we had data on standardised measurement of three different indicators of obesity, and a large number of other obesity-related risk factors, which may modify the association of obesity with the CVD risk. A limitation of our study was the self-report of physical activity. Using a questionnaire to assess habitual physical activity is crude and imprecise. Misclassification, particularly over-reporting of the amount of physical activity leads to an underestimation of effects of physical activity on CVD risk. It has been shown that measured physical fitness predicts mortality slightly better than self-reported physical activity.33 Residual confounding may also have affected our results to some extent. Leisure-time physical activity has a direct, and physical activity at work has an inverse, association with socio-economic status. Even though the analyses were adjusted for education, unmeasured components of socio-economic status may strengthen the protective effect of leisure-time activity and weaken the protective effect of occupational activity. Moreover, several risk factors, such as triglycerides and apolipoprotein B, are not available for the present analysis. These factors, however, are most probably mediators (such as blood pressure, cholesterol, and diabetes) in the obesity and physical activity-related CVD risk, and therefore, including them in the analyses should not have influenced the interpretation of the role of obesity and sedentary lifestyle on CVD risk.
In conclusion, our study confirmed that both physical inactivity and obesity are important risk factors for CVD. Physical inactivity had a strong and consistent independent association with the CVD risk. The risk of CVD associated with obesity was partly mediated through other risk factors, such as blood pressure, blood lipid, and diabetes, in women particularly. All obesity indicators predicted the risk of CVD in men, but in women only BMI had an independent association after adjustment for the obesity-related risk factors.
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Acknowledgments |
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References |
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