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Institute of Community Medicine, University of Tromsø, Breivika N-9037 Norway [I. T. G.]; Department of Epidemiology, School of Public Health, University of Alabama at Birmingham, Birmingham, Alabama 35294 [E. F.]; and Department of Mammography, Falun Central Hospital, S-791 82 Falun, Sweden [L. T.]
| Abstract |
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| Introduction |
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It has been hypothesized that a womans level of physical activity is inversely associated with her risk of breast cancer (8 , 9) . A recent review (10) showed that, of the 21 epidemiologic studies published by December 1997, 15 studies supported this notion, whereas 4 studies found no association, and 2 studies found an increased risk of breast cancer associated with physical activity. Use of intermediate end points for breast cancer may be useful when the association between physical activity and breast cancer risk is explored. The relationship between physical activity and high-risk mammographic patterns is largely unknown. The purpose of this study was to investigate whether moderate physical activity may influence the mammographic pattern among women, ages 4056 years, involved in a population-based screening.
| Materials and Methods |
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Mammographic Classification.
All screening mammograms except those demonstrating breast cancer were classified into five groups, patterns IV, according to the Tabar classification by one of the authors (L. T.). This classification is based on anatomical-mammographic correlations made after three-dimensional (thick-slice technique) histopathological-mammographic comparisons rather than the simple pattern reading described by Wolfe (12)
. The primary difference between the two classification systems concerns Tabars pattern I. This pattern is regarded as a low-risk pattern but would probably be classified as a high-risk pattern, i.e., either a P2 or a DY depending on the womans age, in the Wolfe system (12)
. Patterns II and III would probably be classified as N1 and P1, respectively, while patterns IV and V would probably be classified as a P2 and DY, respectively. Pattern I usually evolves to either pattern II or pattern III. Details of the Tabar classification are given elsewhere (13)
. The mammographer knew only the age of the screenee at the time of classification. For analysis, patterns I through III were combined into a low-risk group and patterns IV and V into a high-risk group (14)
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Physical Activity Indicators.
In both surveys, the participants were asked to grade their physical activity during working hours and leisure time during the preceding year. The four categories of physical activity at work were as follows: (a) work that was mostly sedentary; (b) work involving a lot of walking; (c) work requiring a lot of lifting and walking; and (d) heavy manual labor. The leisure-time activity was categorized as: (a) mostly sedentary; (b) walking at least 4 h/week; (c) exercising at least 4 h/week; and (d) participating in competitive sports several times a week. The three additional questions asked in the 19861987 survey were as follows: (a) "How frequently are you physically active enough to cause sweating or hard breathing for at least 20 min? (seldom or never, weekly, several times a week, daily)"; (b) "If you usually do this at least once a week, how much time do you spend during a week on such activity? (<30 min, 3060 min, 12 h, >2 h)"; and (c) "Is your level of physical activity less than, greater than, or about equal to the level that it was 5 years ago?"3
Data Analysis.
Information from women who participated in both surveys was obtained by linkage of their personal identification numbers with the corresponding identifiers for each survey. Women, ages 4056 at the time of the mammogram, who participated in both surveys (including returning the questionnaire completed at home) were included in the analysis. The two most extreme categories of work-time activity, of leisure-time activity, and of frequency of being physically active were combined because very few women reported strenuous physical activity. The amount of time per week spent being physically active was categorized as seldom/never,
2 h/week, and >2 h/week. A composite variable of work-time physical activity across the two surveys was defined, as was one for leisure-time physical activity. Each composite variable consisted of three levels: sedentary for both individual indices, moderately physically active for both, and the remainder, which consisted of either some physical activity for both or a mixture of indices. Associations among the physical activity indices were assessed using Spearman rank correlation coefficients.
Prevalence ORs4
with 95% CIs were used to express the degree of association between physical activity indices and mammographic patterns. Univariate and multivariate analyses were conducted. We modeled the data using multiple logistic regression to allow for the effects of several potential confounders (15)
. Each of the following factors was evaluated as a potential confounder of the physical activity mammographic pattern relation: (a) age; (b) education; (c) menopausal status; (d) number of children; (e) age at first birth; (f) age at menarche; (g) body mass index (height in cm divided by weight in kg2); (h) family history of breast cancer; (i) oral contraceptive use; (j) alcohol intake; and (k) dietary intake of fruits, vegetables, meat, and fat at dinner. A factor was considered a confounder if it was associated with mammographic patterns and with at least one of the physical activity indices.
2 tests and ANOVA were used to assess potential confounders. Every factor assessed, except family history of breast cancer and the dietary factors, was determined to be a potential confounder and thus included in the logistic regression models. Alcohol intake and education were included in the models as ordinal variables, menopausal status and the use of oral contraceptives as dichotomous variables, and the remainder were entered as continuous variables. Analyses were conducted for the entire study population and were also stratified by menopausal status, parity, body mass index, and change in physical activity. The multiple logistic regression analyses were performed using the logistic procedure in the SAS statistical package (16)
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| Results |
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Table 1
shows the distribution of selected physical activity indices: overall and by menopausal status. One-half of the responders reported seldom or never being physically active enough to cause sweating or hard breathing. Relatively few women reported, at both surveys, being physically active either at work (7.1%) or during leisure time (4.1%). More postmenopausal women reported being physically active at work than did premenopausal women (P < 0.001).
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Table 2
displays the crude and adjusted ORs of high-risk versus low-risk mammographic patterns associated with selected indices of physical activity, overall and by menopausal status. Overall and among premenopausal women, there is a consistent inverse association between women reporting the highest level of physical activity and high-risk mammographic patterns. Among postmenopausal women, similar results are displayed for two of the indices, whereas those who reported moderate physical activity during leisure had an OR estimate above unity (OR, 1.3; 95% CI, 0.44.2). All of the associations reported in Table 2
are weak, and none are statistically significant. The association with physical activity at work is due primarily to the level of activity reported in the Tromsø II (19791980) survey and not the activity reported in Tromsø III (19861987), which is when the mammograms were taken. Confounding of the association between physical activity at work and high-risk patterns is almost exclusively explained by parity and body mass index. Analysis was repeated stratified by parity and body mass index because these factors were such strong confounders (Table 3)
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Table 4
displays the association between the same three physical-activity indices and high-risk patterns stratified by the level of physical activity during the 5 years before the mammography screening. Women who reported being physically active for more than 2 h/week at the time of the mammogram but having been more active 5 years earlier (i.e., they are less active today) had an OR of 0.2 (95% CI, 0.01.2) for having high-risk mammographic patterns compared with those who reported being sedentary. Likewise among women who reported that they used to be more active, those who reported being in the highest category of physical activity at work were 50% less likely (OR, 0.5; 95% CI, 0.14.7), and those in the highest category of leisure time activity were 40% less likely (OR, 0.6; 95% CI, 0.16.0) to have high-risk patterns compared with those who reported being sedentary.
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| Discussion |
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No previous study has, to our knowledge, examined the relationship between physical activity and mammographic patterns or mammographic densities. Several studies based on self-reported physical activity suggest an overall inverse association between physical activity and breast cancer risk (17, 18, 19, 20, 21, 22, 23, 24) , but not all of them have found an inverse association (25, 26, 27, 28, 29, 30) . The recent report from the Nurses Health Study II, which comprised more than 100,000 women, did not reveal any association between breast cancer risk in young women and self-reported physical activity in late adolescence or in the recent past (30) . The inconsistent results in the above-mentioned breast cancer studies, as well as those in our own study, may indicate that the findings are due to chance. The inconsistency may also be due to an inability to measure physical activity adequately. The two questions about leisure-time and work-related physical activity in our study were identical with those in the study by Thune et al. (22) , in which an inverse association between physical activity and breast cancer risk was found in a cohort of 25,000 Norwegian women. Neither of the questions used in that study was designed to explore the relationship between physical activity and breast cancer. However, these questions have been validated and found useful in previous screening studies that focused on coronary heart disease (31, 32, 33) . In our study, the highest level of physical activity was moderate activity and included less than 10% of the population in any physical activity index. One-half of the women in our study were sedentary, and few were involved in strenuous physical activity. Thus, the crude measures of physical activity and the narrow range of the various physical activity levels in our population are two major limitations.
Another limitation is that we do not have information on the temporal relationship between the physical activity and the mammographic patterns. The mammograms were obtained in the last survey, and we do not know whether the mammographic patterns had changed between the two surveys. We consider the classification of mammograms used in this study a strength. We have previously shown the overall agreement in the intrarater reliability assessment to be high (83.3%) when classifying the mammograms into high- and low-risk groups (13) . Furthermore, the mammographer had no knowledge of the risk factors surveyed. We have previously shown (7 , 34) that several breast cancer risk factors (e.g., parity and age at first birth) are strongly associated with the Tabar classification of high-risk patterns in the expected direction. This suggests that both the risk factors and the mammograms had an internal valid classification in the present study. The study was part of a large population-based screening with a high attendance rate. We assume that selection bias was small because the attendees had previously been shown not to differ from the nonattendees with respect to several breast cancer risk factors (35) . We also found that the women who attended both the Tromsø II and Tromsø III studies did not differ from those who attended only the latter on hours physically active, activity at work and leisure, overall, and by menopausal status. Thus, restricting our study population to include only those with physical activity measures from both studies should not bias our findings.
Numerous biologic mechanisms such as changes in hormonal concentrations, immune function, energy balance, body size, and menstrual patterns have been suggested as plausible explanations for the relationship between physical activity and breast cancer (36) . Bernstein et al. (37) have reported that moderate physical activity may be associated with luteal phase insufficiency as well as anovulation. Changing the hormonal environment has been proposed as the most effective method of preventing breast cancer (38) . It has been hypothesized that physical activity reduces lifetime exposure of cyclic estrogen and progesterone thus lowering breast cancer risk (39) .
Several studies have shown that nulliparous women are more likely to have high-risk patterns than those with many children (1, 2 , 7) . This supports the role of hormonal influences on mammographic patterns. One explanation for the stronger association seen among nulliparous, compared with parous, women may be that nulliparous women are more prone to hormonal changes induced by exercise because they have not been exposed to the hormonal changes induced by giving birth. However, few women in our study were nulliparous, and very few of them were in the highest category of physical activity; these results may be due to chance. The weak, although consistent, associations seen among the more than 2000 parous women in our study also have wide CIs, which also makes chance a likely explanation for the findings.
The use of subjective measures of physical activity is another limitation of this study as well as of several other studies (40) . The category of obese women claiming to be at the highest level of physical activity at work reported at the same time that they were physically active enough to cause sweating or hard breathing for less than 1 h/week. Thus, misclassification may be one explanation for the increased likelihood of having high-risk mammographic patterns among the women in this category.
Physical activity may be one of the few modifiable breast cancer risk factors. Our study is only suggestive of an inverse association between moderate physical activity and high-risk patterns. Our findings are also consistent with the null hypothesis. The relationship between physical activity and high-risk mammographic patterns should be examined further as a means to explore the biological mechanisms relating physical activity to breast cancer risk.
| Acknowledgments |
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| Footnotes |
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1 Supported in part by the Norwegian Cancer Society and the Aakre Foundation for the Fighting of Cancer. ![]()
2 To whom requests for reprints should be addressed, at Institute of Community Medicine, University of Tromsø, Breivika N-9037 Norway. Phone: 47-77-64-48-16 or 47-77-64-53-60 (direct); Fax: 47-77-64-48-31; E-mail: inger.torhild.gram{at}ism.uit.no ![]()
3 The third question is paraphrased. ![]()
4 The abbreviations used are: OR, odds ratio; CI, confidence interval. ![]()
Received 7/28/98; revised 11/ 5/98; accepted 11/19/98.
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