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ORIGINAL RESEARCH COMMUNICATION |
1 From the Department of Nutrition, School of Public Health, University of North Carolina at Chapel Hill, Chapel Hill, NC (PG-L, NH, and BMP); the Epidemiology and Prevention Section, Division of Research, Kaiser Permanente, Oakland, CA (SS and BS); the Division of Preventive Medicine, University of Alabama at Birmingham, Birmingham, AL (CEL); the Department of Epidemiology, School of Public Health, University of Minnesota, Minneapolis, MN (DRJ); and the Department of Nutrition, University of Oslo, Oslo, Norway (DRJ).
2 The CARDIA Study is supported by the National Heart, Lung, and Blood Institute (N01-HC-95095, N01-HC-48047-48050, and N01-HC-05187). The analysis was supported by NCI (R01-CA12115, R01 CA109831) and NICHD (K01-HD044263). Additional support was from NIH (R01-AA12162); the University of North Carolina (UNC)-CH Center for Environmental Health and Susceptibility (NIH P30-ES10126); the UNC-CH Clinic Nutrition Research Center (NIH DK56350); the Carolina Population Center, the University of Alabama at Birmingham, Coordinating Center, N01-HC-95095; the University of Alabama at Birmingham, Field Center, N01-HC-48047; the University of Minnesota, Field Center, N01-HC-48048; Northwestern University, Field Center, N01-HC-48049; the Kaiser Foundation Research Institute; and the National Heart, Lung, and Blood Institute (N01-HC-48050). 3 Reprints not available. Address correspondence to P Gordon-Larsen, University of North Carolina at Chapel Hill Carolina Population Center, University Square, 123 West Franklin Street, Chapel Hill, NC 27516-3997. E-mail: gordon_larsen{at}unc.edu.
| ABSTRACT |
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Objective: The objective was to evaluate the association between changes in leisure-time walking and weight gain over a 15-y period.
Design: Prospective data from the Coronary Artery Risk Development in Young Adults (CARDIA) Study of 4995 men and women aged 18–30 y at baseline (1985–1986) from 4 US cities and reexamined 2, 5, 7, 10, and 15 y later. Sex-stratified, repeated-measures, conditional regression modeling with data from all 6 examination periods (n = 23,633 observations) was used to examine associations between walking and annualized 15-y weight change, with control for 15-y nonwalking physical activity, baseline weight (and their interaction), marital status, education, smoking, calorie intake, and baseline age, race, and field center.
Results: Mean (±SE) baseline weights were 77.0 ± 0.3 kg (men) and 66.2 ± 0.3 kg (women), weight gain was
1 kg/y, and the mean duration of walking at baseline was <15 min/d. After accounting for nonwalking physical activity, calorie intake, and other covariates, we found a substantial association between walking and annualized weight change; the greatest association was for those with a larger baseline weight. For example, for women at the 75th percentile of baseline weight, 0.5 h of walking/d was associated with 8 kg less weight gain over 15 y compared with women with no leisure time walking.
Conclusion: Walking throughout adulthood may attenuate the long-term weight gain that occurs in most adults.
See corresponding editorial on page 15.
| INTRODUCTION |
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Many studies have reported a decreased physical activity and an increased prevalence of overweight/obesity across all sex, age, and race/ethnic groups examined in the past 2 decades (10–13). Walking may contribute to the longitudinal change in overall activity patterns over time. Findings from the first 7 y of the Coronary Artery Risk Development in Young Adults (CARDIA) Study indicate an average decline in the physical activity score of
50% from age 18 to 37 y across all race-sex groups, with declines in most moderate and vigorous activities, including walking and hiking (11).
Research findings suggest an inverse relation between walking and adiposity (14, 15). However, very little data have been published on longitudinal trends in walking, how such trends might impact weight change over the course of adulthood, and whether changes in walking behavior and weight outcomes differ by sex. Of particular relevance is whether walking, a relatively low-intensity activity, can play a positive role in the reduction of long-term weight gain. In this study we used longitudinal data from the CARDIA Study spanning 15 y and 6 measurement occasions to investigate the association of longitudinal changes in walking, total physical activity, and weight change over a 15-y follow-up.
| SUBJECTS AND METHODS |
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Of the initial 5115 participants, there were a total possible 30,690 observations across the 6 examination periods. We excluded observations for women who were pregnant at the time of examination (n = 257 observations; including period-specific nonpregnant observations), observations with missing adjacent weight measures to derive weight change (6188 observations), and missing covariate data (n = 612 observations). The final sample for analysis included all available exposure, outcome, and covariate data across the 6 examination periods, totaling 23,633 observations for 4995 individuals. The current secondary data analysis was approved by the CARDIA Steering Committee and the Institutional Review Board of University of North Carolina at Chapel Hill.
Exposure and outcome measures
Weight change
Weight was measured to the nearest 0.1 kg with a calibrated balance-beam scale from participants wearing light indoor clothing and no shoes. Weight change was treated as a continuous variable, calculated as the difference between measurements. In statistical models, we used annualized weight change to correct for the unequal time between observations. In addition, we created a 3-level categorical weight change measure based on changes between each examination period (ti–ti-1): weight maintenance was defined as a change within ± 1 kg based on distribution of the sample (approximate mean annualized weight change +1 kg/y), weight gain as an increase >1 kg, and weight loss as a loss >1 kg.
Walking patterns and trends
At each examination, self-reported physical activity was ascertained with the use of an interviewer-administered questionnaire designed for the CARDIA Study. Participants were asked about the frequency of participation in 13 different activity categories (8 vigorous and 5 moderate) of recreational sports, exercise, leisure, and occupational activities over the previous 12 mo. Vigorous activities included running, racquet sports, bicycling faster than 10 miles/h, swimming, vigorous exercise classes, sports (eg, basketball and football), heavy lifting, carrying or digging on the job, and home activities such as snow shoveling or lifting heavy objects. Moderate activities included nonstrenuous sports (eg, softball), walking, bowling, golf, home maintenance (eg, gardening and raking), and calisthenics. Physical activity scores are expressed in exercise units (EU) computed by multiplying the frequency of participation by the intensity of the activity separately for heavy (ie, vigorous) and moderate activities and summing the 2 subscores for a total physical activity score. As an example, a score of 100 EU is roughly equivalent to participation in a vigorous activity 2–3 h/wk for 6 mo of the year. The reliability and validity of the instrument is comparable with that of other activity questionnaires (17, 18).
We created a specific walking score derived from walking items in the physical activity questionnaire described above. We used a continuous walking score, ranging from 0 to 144 units, 144 representing regular walking
4 h/wk over 12 mo at 3 metabolic equivalents (METs) (72 EU is equivalent to
2 h/wk, and 36 EU is equivalent to
1 h/wk). We also categorized walking: period-specific nonwalkers (walking score: 0), tertiles within walking scores ranging from 1 to 143 [level 1 (score: 1–24), level 2 (score: 24–48), and level 3 (score: 49–143)], and consistent (level 4) walkers (score: 144). A nonwalking physical activity score (total physical activity score minus walking score) was also created.
Although period-specific nonwalkers were included, consistent nonwalkers (scores of 0 for walking at all examination years) were excluded (n = 241) to allow investigation of time-varying shifts in walking scores among those who walked at any point during the 15 y. Comparisons (t tests) between consistent nonwalkers and the analysis sample indicated no statistically significant differences in weight changes and total nonwalking physical activity between excluded and included individuals in any of the examination years, although a greater proportion of consistent nonwalkers were black men (P < 0.01).
Additional covariates
Time-invariant measures included race/ethnicity, sex, and baseline clinic study center. Time-varying measures included age, educational attainment, marital status, smoking status (current, former, or never), and calorie intake, calculated from the participants dietary questionnaires at baseline and at the year 7 examinations.
The CARDIA diet-history questionnaire collected information about usual dietary practices and quantitative food frequency over the previous 28 d (19), with reliability and validity based on correlations between daily nutrient intakes and calorie-adjusted nutrient values from 2 histories ranging from 0.50 to 0.80 for whites and from 0.30 to 0.70 for blacks (20). To make use of the temporal data, we used the baseline measure for examination years 0–5 and the year 7 measure for examination years 7–15. Given the fair to moderate tracking of calorie intake shown in the literature, regardless of cohort age, study duration, or diet collection method (21–23), we used the baseline and year 7 measures as a rough control for calorie intake.
Statistical analysis
Statistical analyses were conducted by using Stata software (version 9.2; Stata Corp, College Station, TX) (24). Descriptive statistics were computed for walking and physical activity scores, weight status, calorie intake, smoking, and sociodemographic factors. Percentages were calculated for categorical variables. Continuous variables are presented either as means and SEs or as medians and interquartile ranges (for skewed measures).
We used longitudinal, repeated-measures conditional regression modeling to estimate the longitudinal association between walking and weight change. These models, conditioned on the subject, do not estimate parameters for variables constant within subjects (ie, race, sex, and study center), but have the advantage of adjusting for potential confounding by all measured and unmeasured characteristics of individuals (or within-person effects). The models adjust for the correlation between repeated observations taken in the same subject and have the advantage of handling longitudinal data on subjects with varying number and unequally spaced observations, thereby allowing for inclusion of the maximum number of data points (25–27). These models used all available data across 15 y and 6 examination periods.
We regressed annualized 15-y weight change (ti–ti-1) (continuous) on walking score (continuous) across the 6 examinations, controlling for time-varying factors: demographic factors [including age (continuous), education (high school or >high school), marital status (married or marriage-like relation or single)], lifestyle factors (including nonwalking physical activity, continuous EU/d), daily calorie intake (continuous), smoking status (current, former, or never smoker), and time-invariant, baseline factors [including baseline race (black or white), sex (women or men), and study center (Birmingham, Chicago, Minneapolis, or Oakland, referent). Interactions between baseline weight and walking score, walking score and sex, walking score and race, and walking score and age were tested by including the appropriate cross-product terms in the model and assessing likelihood ratio tests (P
0.01). Final models were stratified by sex and included an interaction term for walking score and baseline weight. Variables were retained in models if backward elimination resulted in a >10% change in the estimated effect measures or if variables were conceptually relevant (eg, control for clinic site). Given the interaction terms and complexity of interpretation of the repeated-measures conditional regression model results, we present predictions based on model coefficients from the estimation equation, which estimate predicted cumulative 15-y weight changes, adjusted for model covariates.
Using longitudinal, repeated-measures conditional regression modeling, we also predicted a categorical 15-y weight change. This model assessed the relation between categories of walking score across the 6 examinations (1–24 EU, 24–48 EU, 49–143 EU, and 144 EU relative to 0 EU) and 3 categories of 15-y annualized weight change (kg/y) based on changes between each examination period (ti–ti-1) (weight maintenance ±1 kg/y and >1 kg/y weight loss relative to >1 kg/y weight gain), with control for demographic and lifestyle factors as the longitudinal, repeated-measures conditional regression model. Tests for interaction (cross product term effect measures and likelihood ratio tests) were undertaken. On the basis of this model, interaction terms were not warranted and thus were not retained in the final model.
| RESULTS |
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0.05). Annual weight change (kg/y) was statistically different from zero (P
0.05).
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0.05) and fairly high within-subject variation (intraclass correlation: 0.27; 95% CI: 0.26, 0.29). However, the nonwalking physical activity score decreased significantly between examination years 0 and 2 and years 5 and 7 (P
0.01). Walking and nonwalking activities were positively associated at all examination years (P = 0.0001). In a crude regression model, on average across all examination years, a 1-unit increase in the walking score predicted a 0.91-unit (95% CI: 0.85, 0.98) increase in total nonwalking physical activity.
Across all years, women had significantly higher mean walking scores than did men (Table 2). The full sample had an annualized weight gain of
1 kg/y in the first 3 examinations of follow-up, with a somewhat reduced mean weight gain in the past 2 observation periods. Women had a higher mean annualized weight gain than did men at year 10 only.
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0.5 h/wk); with 23–29% reported no walking per week.
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To facilitate interpretation of the walking and baseline weight interaction term from the repeated-measures conditional regression model, we present predictions generated from the model coefficients (Figure 3), interpreted as the average association of a change in walking score with total annualized weight change over 15 y for different levels of baseline weight. In the figure, total 15-y weight change for women at the highest baseline weight (
75th percentile) with no walking (walking score: 0 EU) was predicted to be 13 kg, whereas it was only 5 kg (or 8 kg less weight gain over the 15 y) for those with the highest 15-y walking score (144 EU). In contrast, for men, the greatest difference in predicted weight gain was 4 kg for the comparison between those at the highest baseline weight (walking score: 144 EU) of walking relative to those with no walking (walking score: 0 EU), regardless of baseline weight. The inverse association between walking and weight gain was evident across all baseline weight categories for women and men.
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| DISCUSSION |
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4 h/wk (144 EU) was associated with less weight gain (
0.5 kg/y), or 8 kg less over the 15-y period relative to women with a walking score of 0 EU, whereas walking 2 h/wk (walking score: 72 EU) for women at the 75th percentile of baseline weight was associated with less weight gain (0.3 kg/y), or 4 kg less over the 15-y period relative to women with a walking score of 0 EU. Essentially, these results translate to a reduced weight gain of
0.5 kg/y with each 0.5 h of walking per week for women who were heavier at baseline. It was our aim to explore the association between walking and weight change, holding other forms of physical activity constant. Thus, in this study, we were explicitly not interested in the physiologic effects of walking compared with other forms of physical activity. Nonetheless, using an interaction between walking and nonwalking physical activity (data not shown), we found that the negative association between walking and annual weight change was stronger for participants with low than for women with high nonwalking physical activity. Furthermore, we were most interested in determining policy and intervention practicality of consistent (as opposed to inconsistent) walking over time.
Our findings are in line with research on other forms of physical activity spanning shorter time frames (28). For example, others found evidence suggesting that physical activity may attenuate weight gain (29–32). However, these findings are based on shorter time periods of follow-up and fewer repeated measures (generally just 2 repeated visits). Other research shows a negative association between walking and adiposity (14, 15). However, additional research suggests that the relation between adiposity and vigorous activity depends on BMI. For example, among women, for each mile of running per week, the decrease in BMI was 9-fold greater at the 95th than at the 5th percentile of BMI (33, 34). A cross-sectional analysis on walking suggests that associations of walking with adiposity may also be greatest among heavy women (35).
Our findings also contribute to the literature on small changes in physical activity and the prevention of weight gain (36, 37). Particularly relevant is the contrast between old-order Amish who walk an average of 18,000 (men) and 14,000 (women) steps/d and who have a very low prevalence of obesity (38) and that of Colorado adults who walk <7000 steps/d on average (with obese adults walking an average of 2000 fewer steps than normal-weight adults) (39). Whereas our findings on the role of walking on weight gain attenuation indicate modest associations, they can have a substantial impact on both the individual and population levels, especially over long periods. Furthermore, adding between 2 and 4 h of walking per week are clearly achievable targets from a public health perspective. Of particular relevance is our finding of a greater association in heavier women at baseline, because heavier weight is often a barrier to physical activity (40). Walking is a particularly good form of activity to target. Furthermore, walking can be integrated beyond leisure into active transportation or commuting (41–44) and overall lifestyle or utilitarian activity (1, 6–8).
The strengths of this study include its use of complete, detailed, longitudinal data over a 15-y time span and standardized repeated measures of physical activity, including estimates of a variety of types of activities made with an instrument with known reliability and validity. We examined the independent associations of walking, controlling for other forms of self-reported physical activity as well as total calorie intake, to assess the independent associations of walking with long-term weight change. Furthermore, longitudinal, repeated-measures conditional regression modeling is the most powerful statistical technique for exploring average associations of walking with average weight gain over time.
Despite these strengths, this study had some limitations. The CARDIA Study data are observational in nature, and our results do not imply causality. We used weight change as our outcome measure and thus were unable to distinguish between weight gain in fat (adverse) and in lean (nonadverse) compartments. The study was further limited by self-reported physical activity data and other lifestyle factors, and we could not completely control for misreporting, which may have resulted in overreporting of walking and nonwalking physical activities. Furthermore, whereas the use of usual patterns is a well-validated approach to collecting time use data and has been extended over the past decade to physical activity measures, it is possible that the yearly recall measure does not capture the variability of walking within the year. Although the CARDIA Study boasts high retention rates over the 15 y of study, some study subjects were not available for adjacent measurements, which precluded our ability to create a measure of weight change for these subjects. It is possible that such data are not missing at random. Similarly, we do not have diet data at every examination, so we cannot discount the possibility that the heavier women were trying to lose weight by walking, changing their diets, or engaging in other weight-loss behaviors, which may be associated with increased actual (or recalled) walking. Individuals who did not lose weight through walking may underreport their walking, whereas those who did lose weight may overreport walking, which may lead to an overestimate of the association between walking and weight change. Analyses of measures of change are also limited by floor and ceiling effects that would tend to attenuate the observed relations.
In summary, this study provides evidence that a higher frequency of walking is accompanied by a reduced weight gain and an increased likelihood of weight loss and weight maintenance over young-to-middle adulthood. That is, each extra 0.5 h/d of walking was associated with an annual reduced weight gain of 1 lb (0.54 kg) or 15 lb over 15 y for women who were heaviest at baseline. The results were similar, but of less magnitude, in men. Importantly, this association held when we separated walking from nonwalking physical activity and held all other energy expenditures constant. Thus, the women who were heaviest at baseline may have received the greatest benefit from walking. Walking is of particular relevance because it is generally an affordable and accessible form of physical activity for most people. The proposition in this study was not that walking is physiologically more beneficial than other forms of physical activity, but rather that walking may be more practical in terms of policy and intervention purposes and that substantial weight control can be attained by walking.
| ACKNOWLEDGMENTS |
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The authors' responsibilities were as follows—PG-L, NH, BMP, CEL, and DRJ: conception and design of the study and acquisition of data; PG-L, NH, BMP, CEL, DRJ, SS, and BS: analysis of data; PG-L, NH, BMP, and DRJ: drafting of manuscript; CEL, SS, and BS: revision of manuscript; PG-Larsen, NH, and DRJ: statistical analysis; PG-L, BMP, CEL, DRJ, SS, and BS: funding; PG-L, BMP, and CEL: administrative, technical, or material support; and PG-L: supervision, full access to all of the data in the study, and responsibility for the integrity of the data and the accuracy of the data analysis. All of the authors gave final approval of the version of the manuscript to be published. None of the authors had any conflicts of interest.
The study sponsors had no role in the secondary analysis, the study design, the analysis and interpretation of the data, the writing of the paper, or the decision to submit it for publication. The funders had no role in any aspect of the analysis or in the draft, review, or approval of the manuscript.
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M. E Nelson and S. C Folta Further evidence for the benefits of walking Am. J. Clinical Nutrition, January 1, 2009; 89(1): 15 - 16. [Full Text] [PDF] |
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