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1 Division of Population Science, Fox Chase Cancer Center, Philadelphia, Pennsylvania; 2 National Institute on Alcohol Abuse and Alcoholism, Bethesda, Maryland; 3 Department of Health Behavior and Health Education, University of North Carolina, Chapel Hill, North Carolina; and 4 Epidemiology and Biostatistics Program, Division of Cancer Epidemiology and Genetics, National Cancer Institute, Bethesda, Maryland
| Abstract |
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| Introduction |
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Epidemiological and laboratory research suggests that dietary intake is one factor that might be modified to reduce risk (2 , 3) . In particular, ecological (4, 5, 6) and migrant (7) studies have implicated a "Western" dietary pattern as a risk factor for prostate cancer. Whether dietary patterns measured at the level of the individual are associated with prostate cancer risk has not been studied previously, in part because of the relative novelty of the approach but also because standard methods for identifying, measuring, and interpreting dietary patterns are only now being developed. By examining exposure to several related dietary factors simultaneously, quantifying the aggregate risk associated with a particular combination of foods, and offering results that are based on actual dietary practice and more easily translated into useful recommendations, a dietary pattern approach provides a useful complement to findings based on single nutrients or single food groups.
In research using principal components analysis (PCA) to identify and quantify dietary patterns, two patterns emerge fairly consistently in samples from the United States: one characterized by intake of vegetables and fruits and a Western-style pattern based on red meat and starch (8, 9, 10) . The Western pattern has been related to increased risk of colon cancer (8 , 11) , cardiovascular disease (12) , and diabetes (13) . The objectives of our analyses were to identify dietary patterns in a nationally representative sample of United States men using PCA and to examine for the first time their associations with prostate cancer risk in prospectively collected data, with the goal of clarifying the importance of specific dietary patterns to the development of prostate cancer.
| Materials and Methods |
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NHEFS was a longitudinal study of the 14,407 participants between the ages of 25 and 74 years at the time of the initial survey (16, 17, 18, 19) . Participants were followed for health and vital status through 1992. At interviews conducted in 198284, 1986, 1987, and 1992, participants or their proxies were interviewed. Also, health records were obtained for instances in which participants reported an overnight stay in a health care facility between the baseline examination and last follow-up visit. Death certificates were obtained for deaths during the follow-up period and were identified by the National Death Index or other tracing mechanisms. Health records were obtained for over 70% of reported overnight stays, and death certificates were obtained for 99% of deaths occurring between 197175 and the 1992 follow-up (19) .
Because food frequency data obtained in the 197175 interview included questions on only 13 broad food categories, we used more detailed data from a 105-item food frequency questionnaire administered in 198284. Thus, 198284 served as the baseline for these analyses. Of the 14,407 NHEFS participants, 5,811 were men. Of these, 1,202 died before the 198284 interview, 351 could not be traced, and 333 were not interviewed in 198284. Subjects were further excluded from the remaining study sample if they had a diagnosis of prostate cancer at or before the 198284 interview (n = 57), did not complete the diet questionnaire (n = 79), or had energy intake of <500 or >4,400 kcal/day (n = 10), leaving 3,779 men available for analysis.
Identification of Prostate Cancer Cases.
Cases of invasive prostate cancer were identified following a procedure described by Breslow et al. (20)
. Briefly, potential cases were all men with an International Classification of Diseases, Ninth Revision, Clinical Modification code of 185 (invasive prostate cancer), 233.4 (prostate carcinoma in situ), V10.46 (personal history of malignant prostate neoplasm), or 60.360.5 (prostatectomy surgical procedures) recorded in at least one of the following sources of data: (a) a first diagnosis of prostate cancer reported at any of the follow-up interviews conducted in 1986, 1987, or 1992; (b) one or more hospital stays during the follow-up period with a discharge diagnosis coded as any of the codes given above; (c) a death certificate with underlying or nonunderlying cause of death coded as any of the codes given above. Archived records of interviews and overnight health care facility stays were then reviewed. No in situ cases were considered in our analyses. "Definite" case status was assigned if cancer could be confirmed from histopathology reports or medical records. Determinations based only on interview or death certificate data were assigned "probable" case status. Of 136 cases diagnosed during the follow-up of the 3,779 men from the 198284 interview, 89 were considered "definite" cases, and an additional 47 were considered "probable" cases.
Data Collection.
Information on dietary intake was obtained from a 105-item food frequency questionnaire administered in the 198284 interview. The questionnaire was designed to include foods commonly consumed in the United States diet and covered the major food groups, including meats, fish, poultry, grains, fruits, vegetables, dairy products, sweets, snacks, and beverages. Intake of specific nutrients such as energy, total fat, and vitamin A was estimated by multiplying frequency of intake of each food by the nutrient content for the foods portion size. Because the 198284 NHEFS dietary interview collected only frequency information, information on nutrient content and portion size for each food was based on sex- and age-specific 24-h recall data from the NHANES II, a separate national survey conducted in 197680. A detailed description of the method used to assign nutrient content and portion size to each food item in the NHEFS dietary questionnaire using NHANES II data has been published (21)
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Other information available from the 198284 interview included race, place of residence, longest held occupation, family income, first-degree family history of prostate cancer, current weight, alcohol intake, smoking behavior, sun exposure, level of physical activity, and current multivitamin use. Information on height and level of education was available from the 197175 interview.
Identification of Dietary Patterns.
Patterns of food intake were identified by PCA (22
, 23)
using frequency responses to the dietary questionnaire. (An example of SAS programming statements used to run the analysis is provided at http://www.fccc.edu/research/labs/tseng/TsengDOD01.html.) Individuals were randomly placed into one of two equally sized groups, or split-samples, to confirm reproducibility of the principal components identified. For the first split sample, a matrix of correlations among frequency of consumption for the questionnaire food items was constructed and entered in the PCA. Extraction of principal components was followed by orthogonal rotation of retained components to allow for interpretability (22
, 23)
. The number of components to retain for rotation was based on examination of scree plots and interpretability of the components (23)
; although another common strategy is to rotate all factors with eigenvalues >1.0, this method has been shown to overestimate the number of components (23)
. The analysis was repeated in the second split sample to confirm reproducibility of results. Cronbachs coefficient
(24)
was used to evaluate internal consistency for each component retained. In psychometric research, a coefficient
of
0.70 generally indicates acceptable reliability (25)
, although in previous research, dietary pattern scales with coefficient
as low as 0.50.6 were predictive of disease (26)
. As an additional assessment of the robustness of the patterns identified, we used oblique rather than orthogonal rotation, but the same patterns emerged.
A component score was calculated for each dietary pattern for each individual to represent the individuals level of intake for the pattern. The score for each pattern was computed as a linear composite of the foods with meaningful loadings (
|0.20|) for only that pattern. Scores were calculated by taking the unweighted sum of standardized frequencies of intake for each food associated with the pattern. When we computed pattern scores as a linear composite of all variables weighted based on regression results (27)
, scores that were calculated the two different ways were highly correlated (r > 0.85), and estimates of relative risk (RR) for prostate cancer were similar.
We examined construct validity of the patterns, or the extent to which they behave as expected theoretically with respect to other variables (28) , by describing their associations with sociodemographic and lifestyle variables among 3,544 men with complete variable data. The variables, selected based on social and historical descriptions of the development of those patterns (29, 30, 31) , included age, place of residence (rural, urban, suburban), socioeconomic status (SES), and various health-related behaviors.
Data Analysis.
Active follow-up ended in 1992, but non-cases were censored at the last date they were known to be alive and free of prostate cancer: specifically, at their date of last interview. Follow-up time was calculated by subtracting the 198284 interview date from the censoring date for non-cases and the interview date from the date of prostate cancer diagnosis for cases. For four cases identified from death certificate data only, the 198284 interview date was subtracted from date of death rather than from date of diagnosis.
Adjusted RR of prostate cancer was estimated for tertiles of pattern scores using Cox proportional hazards models while adjusting for age (continuous years) and race (white, black, or other race). Other variables including United States region, urban/rural residence, education, first-degree family history of prostate cancer, current body mass index, recreational physical activity, recreational and occupational sun exposure, multivitamin use, smoking status, and past and current alcohol consumption were evaluated as confounders based on their associations with predictor and response variables and by comparing unadjusted and adjusted estimates from regression analyses. Final multivariate models included 3,616 men with complete covariate data and were adjusted for age, race, United States region (Northeast, Midwest, South, West), residence (rural, urban, suburban), education (<high school, high school completion, >high school), recreational sun exposure (little, occasional, frequent), recreational physical activity (little/none, moderate, much), smoking status (never, former, current), current alcohol intake (none, little, moderate, heavy), and energy intake (tertiles). All covariates were coded using dummy variables to allow for nonlinear associations across categories. Controlling for energy as a continuous variable produced no meaningful changes in estimates. Although proxy interview data were obtained for 2.5% of participants in the 198284 NHEFS interview, none of the dietary data for the 3,616 men included in our final analyses was obtained through a proxy.
Ps for linear trend were obtained for each dietary pattern by including an ordinal variable representing the scaled median value for each tertile in the multivariate model controlling for the covariates listed above. To examine the possibility of effect modification by race, we ran proportional hazards models in black and non-black men separately; men of ethnicities other than white or black were too few (n = 46) to allow for separate analysis. Because of the small number of black cases (n = 27), we dichotomized pattern scores for all men at the median value for black men. Ps for interaction were obtained from a model including all men, with a pattern category x race interaction term.
In multivariate models controlling for the same covariates, we also examined the effects of specific foods and nutrients potentially related to risk of prostate cancer, including red meat, dairy, fruits and vegetables, tomatoes, energy, total and saturated fat, calcium, vitamin A, and dietary fiber (32, 33, 34, 35)
. Nutrient values were log-transformed as necessary and energy-adjusted using the residual method (36)
. RRs were estimated for tertiles of intake relative to the lowest tertile, but for infrequently consumed items such as okra and grits, estimates were for consumption versus nonconsumption. To account for sample weighting from the survey design, all final models also included the following design variables: age (<65 versus
65 years), poverty census enumeration district (residence versus nonresidence), and family income (<$3,000, $3,000-$6,999, $7,000-$9,999, $10,000-$14,999, and
$15,000; Ref. 37
), although results from models with and without design variables were similar.
| Results |
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In PCA, the following three dietary patterns emerged consistently across the split samples (Table 1)
: (a) a "vegetable-fruit" pattern with high loadings for vegetables, fruits, fish, and shellfish; (b) a "red meat-starch" pattern with high loadings for red meats, potatoes, salty snacks, cheese, sweets, and desserts; and (c) a "Southern" pattern with high loadings for beans, rice, and such traditionally Southern United States foods as cornbread, grits, sweet potatoes, and okra. The same three patterns emerged when we conducted the analysis in black men only (results not shown). Thus, calculation of pattern scores was based on the PCA solution including all men.
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Since 1986, when the United States Food and Drug Administration approved the prostate-specific antigen test for monitoring prostate cancer progression, incidence has increased more steeply in men of higher SES and, presumably, with better awareness of or access to screening modalities (40) . To explore the possibility of detection bias, we conducted additional analyses including only cases identified before 1986. The inverse association for the Southern pattern persisted (3rd versus 1st tertile RR, 0.4; 95% CI, 0.20.9), but estimates were based on only 46 cases.
| Discussion |
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Identification of the vegetable-fruit and Western patterns in this sample is consistent with findings of previous United States studies (8, 9, 10) and with anthropological and historical accounts of traditional American eating habits (29, 30, 31) . Moreover, their associations with sociodemographic and health-related characteristics were as expected based on observations of the historical emergence of those patterns (29) , confirming the validity of their measurement using PCA (28 , 41) . Although other studies have identified patterns specific to Mexican Americans (26 , 42) , ours is the first, to our knowledge, to identify a Southern United States pattern in a sample not limited to a specific ethnic or regional group. Our results further suggest that the pattern is not a spurious finding; e.g., the pattern emerged across split samples in our analyses, was easily recognizable as a distinct pattern, and its associations with sociodemographic characteristics were consistent with social/cultural descriptions of the pattern (31) , supporting the patterns construct validity.
We surmise that we were able to identify the Southern pattern because the food frequency questionnaire included such specifically Southern items as cornbread, grits, and okra, and because we did not group the 105 food items from the questionnaire for the analysis. We chose not to collapse food items for several reasons. First, creating groups of potentially dissimilar foods may diminish the ability to identify more specific patterns. Indeed, when we collapsed foods into 35 predefined food groups (9) , only two rather than three patterns clearly emerged: the vegetable-fruit and red meat-starch patterns (results not shown). Ability to identify dietary patterns, therefore, is strongly dependent both on the food items included in the instrument and on how foods are aggregated into groups for analysis. That the Southern pattern was reproducible across split samples and was associated with other variables as theoretically expected suggests that its identification in our data was not a spurious finding; rather, collapsing foods into groups might have prevented finding a true pattern.
Grouping foods before PCA may also attenuate or increase the variance of measures of association between dietary patterns and disease (43) . Collapsing foods into groups would likely have produced patterns that explained more of the total variation in food intake than the 11% explained by the three patterns in our study. However, the primary objective of performing PCA in diet-disease studies is not to explain total variation but to examine associations of conceptually meaningful patterns with disease risk. Indeed, McCann et al. (43) have demonstrated that increasing the amount of variance explained by collapsing foods into groups does not improve estimates of disease risk.
Factors that might have obscured or biased associations in our study merit discussion. Using PCA to quantify dietary patterns may involve some measurement error, for example. However, reasonably high (>0.60) coefficient
for the three patterns indicates good internal reproducibility for each pattern, and using an alternative method to calculate pattern scores (27)
produced similar associations with risk. Also worth noting with respect to measurement error is that, in contrast to indices in which uncorrelated items are selected based on a priori criteria, PCA-based scores represent the common and presumably causal source of variation underlying the item set; by aggregating information in correlated items, PCA essentially maximizes signal (shared source of variation) and minimizes noise (item-specific sources of variation) in the sum score.
Associations may also be obscured if undiagnosed cases with early-stage tumors were included among non-cases. Although prostate-specific antigen testing was relatively uncommon before 1991 (44) , some bias in detecting prostate cancer cases remains possible as well, given the associations of dietary patterns with urban/rural residence and SES. Information on access to screening and screening behavior was not available to evaluate this possibility directly. Excluding in situ cancers in this analysis, however, likely minimized bias that might result from including early-stage, PSA-identified tumors. In addition, RR estimates were largely unchanged when we controlled for sociodemographic factors that may be linked to screening such as education (40) and when we limited cases to those identified before government approval of prostate-specific antigen testing in 1986.
We found a slightly elevated prostate cancer risk with intermediate intake of the vegetable-fruit pattern but no clear trend. When we examined fruits and vegetables separately, we observed no association for vegetables but a slightly elevated risk for an intermediate level of fruit intake. Our finding is similar to that of other studies that observed a positive association with fruit intake (32) , but the explanations for this finding are not known. We observed no elevation in risk for selected nutrients associated with fruit or vegetable intake.
Our results do not support the hypothesis that a Western pattern increases risk of prostate cancer. In our sample, red meat-starch pattern intake, intake of red meat as a food group, and intake of energy, total fat, and saturated fat were not associated with disease, although previous cohort studies have fairly consistently found positive associations for red meat and for saturated and animal fat (34) . Besides detection bias, this may also reflect simply the lack of strong influence of overall adult diet on risk, insufficient variability in intake, or inaccurate measurement of the underlying pattern. A clearer understanding of dietary pattern measurement is warranted before more definite conclusions can be drawn. Notably, a Western pattern was also not associated with colorectal or breast cancer in recent analyses in the Swedish Mammography cohort (45 , 46) .
We observed a nonsignificant but suggestive inverse association for the Southern pattern. This finding is especially intriguing because black men were more likely to consume this pattern but remained at higher risk for prostate cancer. In race-specific analyses, the apparent inverse association persisted in both black and non-black men. The association was not attributable to any individual foods within the pattern or to any nutrients of prior interest. Our finding suggests that prostate cancer incidence might increase with movement away from a traditional Southern cuisine. Alternatively, the finding raises additional questions regarding interpretation of dietary pattern measures. For example, a Southern dietary pattern may reflect a history of living in the South and serve as an integrative marker of sunlight exposure rather than a simple measure of overall dietary habits. Sunlight has been hypothesized to protect against prostate cancer by catalyzing synthesis of 7-dehydrocholesterol in the skin to 25-hydroxyvitamin D, which is subsequently converted in the kidney, and possibly in the prostate, to its biologically active form, 1,25-dihydroxyvitamin D (47 , 48) . In experimental studies, 1,25-dihydroxyvitamin D reduces cell proliferation, induces cell differentiation and apoptosis, and disturbs cell survival signals in the signaling pathway (49 , 50) ; in animal models, these effects have been confirmed in prostate epithelial and cancer cells (51) . Ecological analyses in the United States have demonstrated a North-South trend in prostate cancer mortality, with lower rates in the South (52) , and a recent epidemiological study also offers evidence that both childhood and cumulative lifetime sun exposure is associated with reduced risk (53) . Although we controlled for other lifestyle factors in our analysis, including current residence in the South, and we considered several others as potential confounders in preliminary analyses, it remains possible that our measure for the Southern pattern represents earlier-life or long-term sunlight exposure. Our findings emphasize the importance of considering the context of any given dietary pattern to understand the relevance of the diet or of its associated lifestyle on health status.
In summary, we found that prostate cancer risk was not clearly associated with either the red meat-starch or the vegetable-fruit pattern, but we observed a suggestive, inverse association for the Southern pattern. The association was observed in both black and non-black men and was not attributable to any individual foods within the pattern or to any nutrients of prior interest. A Southern dietary pattern may reflect a history of living in the South and serve as an integrative marker of sunlight exposure and protection through 1,25-dihydroxyvitamin production. However, better characterization of the pattern would offer more information on potentially beneficial features of the diet or of its associated lifestyle. Thus, our findings should be explored and confirmed in other data to clarify interpretation of these observations. Although a pattern approach might yield a valuable perspective in diet-disease studies, strategies for improving methods of identifying and evaluating dietary patterns also require additional consideration.
| Acknowledgments |
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| Footnotes |
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The costs of publication of this article were defrayed in part by the payment of page charges. This article must therefore be hereby marked advertisement in accordance with 18 U.S.C. Section 1734 solely to indicate this fact.
Requests for reprints: Marilyn Tseng, Fox Chase Cancer Center, 333 Cottman Avenue, Philadelphia, PA 19111. Phone: (215) 728-5677; Fax: (215) 214-1632; E-mail: m_tseng{at}fccc.edu
Received 5/15/03; revised 9/ 5/03; accepted 9/29/03.
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