Literature DB >> 14583769

Dietary fat and breast cancer risk revisited: a meta-analysis of the published literature.

N F Boyd1, J Stone, K N Vogt, B S Connelly, L J Martin, S Minkin.   

Abstract

Animal experiments and human ecological studies suggest that dietary fat intake is associated with a risk of breast cancer, but individual-based studies have given contradictory results. We have carried out a meta-analysis of this association to include all papers published up to July 2003. Case-control and cohort studies that examined the association of dietary fat, or fat-containing foods, with risk of breast cancer were identified. A total of 45 risk estimates for total fat intake were obtained. Descriptive data from each study were extracted with an estimate of relative risk and its associated 95% confidence interval (CI), and were analysed using the random effects model of DerSimonian and Laird. The summary relative risk, comparing the highest and lowest levels of intake of total fat, was 1.13 (95% CI: 1.03-1.25). Cohort studies (N=14) had a summary relative risk of 1.11 (95% CI: 0.99-1.25) and case-control studies (N=31) had a relative risk of 1.14 (95% CI 0.99-1.32). Significant summary relative risks were also found for saturated fat (RR, 1.19; 95% CI: 1.06-1.35) and meat intake (RR, 1.17; 95% CI 1.06-1.29). Combined estimates of risk for total and saturated fat intake, and for meat intake, all indicate an association between higher intakes and an increased risk of breast cancer. Case-control and cohort studies gave similar results.

Entities:  

Mesh:

Substances:

Year:  2003        PMID: 14583769      PMCID: PMC2394401          DOI: 10.1038/sj.bjc.6601314

Source DB:  PubMed          Journal:  Br J Cancer        ISSN: 0007-0920            Impact factor:   7.640


Breast cancer is the leading cause of cancer death, and the most frequently diagnosed cancer in women worldwide (Lacey ). Large differences in rates of the disease exist between countries, with higher rates in North America and Western Europe, and lower rates in Asia and South America (Lacey ). These differences are likely to be due to environmental rather than genetic factors. The rates of breast cancer change in migrants from low- to high-risk countries, who eventually acquire the rates of their adopted country (Ziegler ; Pike ). Menstrual and reproductive risk factors for breast cancer do not appear to account for these differences in rates (Wu ). The differences in dietary practices between countries are well established, and could contribute to the differences in breast cancer risk. Support for an influence of dietary fat on breast cancer rates comes from its effect on mammary carcinogenesis in animals, and human ecological data. Two major meta-analyses, combining results from over 140 studies examining the relationship between dietary fat and breast cancer risk in rats and mice, show dietary fat to be a promoter of mammary carcinogenesis (Fay ). This effect is independent of the effects of caloric intake (Freedman ). Human ecological studies show a strong correlation (0.7 or more) between dietary fat intake, estimated from national food balance data, and incidence and mortality of breast cancer worldwide. (Prentice and Sheppard, 1990). However, case–control and cohort studies that have examined the relationship between dietary fat and breast cancer risk in humans have given inconclusive results. In 1993, we conducted a meta-analysis of the 23 studies then published that gave risk estimates for the total dietary fat, type of fat or for fat-containing foods (Boyd ). The number of published primary research papers on this issue has since then more than doubled. The present analysis updates and expands our earlier meta-analysis to include all studies on this relationship published since 1993.

METHODS

Assembly of literature

Case–control and cohort studies for inclusion in the analysis were identified by searching the MEDLINE and PUBMED databases for literature on the intake of fat, fat subtypes and fat-containing foods, and breast cancer risk over the period from January 1966 to July 2003. Reference lists of review articles and primary studies were also searched for additional relevant literature. A total of 46 risk estimates for total fat intake were obtained from the 45 independent studies included in the meta-analysis (see Table 1 for references). Risk estimates for types of fat were also extracted from the 33 studies that provided them.
Table 1

Selected characteristics of (A) case–control studies: total fat and (B) cohort studies: total fat

AuthorCountryNo. of casesNo. of controlsType of controlsDietary assessmentPartitionRR total fatQuality score
(A)
Challier (1998)France345345CentreDiet historya,bQuintile1.71 (0.77,3.76)6/7
De stefani et al (1998)Uruguay365397HospitalFood freqb,cQuartile1.53 (0.89,2.62)6/7
Ewertz and Gill (1990)Denmark14741322PopulationFood freqb,cQuartile1.45 (1.17,1.80)3/7
Franceschi et al (1996)Italy25692588HospitalFood freqb,cQuintile0.81 (0.63,0.99)6/7
Graham et al (1982)USA1803917HospitalFood freqb,cQuartile0.9 (0.5,1.5)5/7
Graham et al (1991)USA439494PopulationFood freqb,cQuartile0.93 (0.63,1.38)5/7
Hirohata et al (1985)Japan212424Hospital and neighbourhoodDiet historybQuartile1.01 (0.60,1.71)3/7
Hirohata et al (1987)Hawaii       
 Japanese J 183183NeighbourhoodDiet historybQuartile1.5 (0.8,2.9)5/7
 Caucasian C 161161NeighbourhoodDiet historybQuartile1.3 (0.6,2.6) 
Holmberg et al (1994)Sweden265432PopulationFood freqb,cQuartile1.3 (not given)6/7
Ingram et al (1991)Australia99209PopulationFood freqb,cMedian of fat intake1.4 (0.8,2.5)5/7
Katsouyanni et al (1988)Greece120120HospitalFood freqc90th vs 10th percentiles1.36 (0.69,2.67)4/7
Katsouyanni et al (1994)Greece8201546HospitalFood freqcQuintile0.94 (0.85,1.05)5/7
Landa et al (1994)Spain100100HospitalFood freqcTertile0.29 (0.1,0.7)4/7
Lee et al (1991)Singapore200420HospitalFood freqcTertile0.75 (0.41,1.36)4/7
Levi et al (1993)Switzerland107318HospitalFood freqcTertile1.53 (0.86,2.71)5/7
Mannisto et al (1999)Finland310454PopulationFood freqacQuintile0.7 (0.3,1.6)7/7
Martin-Moreno et al (1994)Spain762988PopulationFood freqacQuartile0.98 (0.74,1.29)7/7
Miller et al (1978)Canada400400PopulationDiet historybTertile1.6 (0.9,3.0)5/7
Nunez et al (1996)dSpain139136HospitalDiet historyTertile2.04 (0.84,4.99)4/7
Potischman et al (1998)USA16471501PopulationFood freqcQuartile1.00 (0.8,1.2)4/7
Pryor et al (1989)USA172190PopulationFood freqb,cQuartile0.7 (0.3,1.5)5/7
Richardson et al (1991)France409515HospitalDiet historyTertile1.6 (1.1,2.2)6/7
Rohan et al (1988)Australia451451PopulationFood freqacQuintile0.9 (0.59,1.38)6/7
Shun-Zhang et al (1990)China186372Population & hospitalDiet historybQuintile1.67 (1.01,2.05)6/7
Toniolo et al (1989)Italy250499PopulationDiet historybQuartile1.8 (0.98,3.29)6/7
Trichopoulou et al (1995)Greece8201548HospitalFood freqb,cQuintile1.01 (0.94,1.08)6/7
Van't Veer et al (1990, 1991)Netherlands133289PopulationDiet historybPer 24 g fat1.54 (1.06,2.22)6/7
Wakai et al (2000)Indonesia226452HospitalFood freqb,cQuartile5.43 (2.14,13.77)6/7
Witte et al (1997)USA/Canada140222SistersFood freqacQuartile0.4 (0.2,0.8)6/7
Yuan et al (1995)China834834PopulationFood freqcPer 90 g fat1.2 (0.7,2.0)5/7
Zaridze et al (1991)Moscow139139ClinicFood freqcQuartile0.52 (0.04, 6.99)5/7
 
Total cases16 280       
Total controls18 966       
 
(B)
Bingham et al (2003)UK168672PopulationDiet historybQuintile1.31 (0.65,2.64)6/6
Cho (2003)USA71490 655PopulationFood freqacQuintile1.25 (0.98, 1.59)6/6
Gaard et al (1995)Norway24824 897PopulationFood freqacQuartile1.25 (0.86,1.81)6/6
Graham et al (1992)USA35918 586PopulationFood freqacQuintile0.99 (0.69,1.41)6/6
Holmes et al (1999)USA295688 795PopulationFood freqacQuartile0.97 (0.94,1.00)5/6
Howe et al (1991a, b)Canada51956 837ePopulationDiet historya,bQuartile1.35 (1.00,1.82)6/6
Jones et al (1987)USA995495Population24 h recallQuartile0.34 (0.16,0.73)3/6
Knekt et al (1990)Finland543988PopulationDiet historybTertile1.72 (0.61,4.82)6/6
Kushi et al (1992)USA45934 388PopulationFood freqacQuartile1.16 (0.87,1.55)6/6
Thiebaut and Clavel-Chapelon (2001)fFrance83865 879gPopulationFood freqacQuartile1.37 (0.99,1.89)6/6
Toniolo et al (1994)USA18014 291hPopulationFood freqacQuintile1.49 (0.89,2.48)6/6
van den Brandt et al (1993)Netherlands47162 573iPopulationFood freqacQuintile1.08 (0.73,1.59)6/6
Velie et al (2000)USA99640 022PopulationFood freqacQuintile1.07 (0.86.1.32)6/6
Wolk et al (1998)Sweden67461 471PopulationFood freqacQuartile1.0 (0.76,1.32)6/6
 
Total cases8735       
Total population568 549       

Self-administered.

Diet assessment method validated.

Food Frequency Questionnaire.

Article translated from Spanish.

No. of controls in calculation of RR=1182.

Article translated from French.

No. of controls in calculation of RR=62 211.

No. of controls in calculation of RR=829.

No. of controls in calculation of RR=1598.

Self-administered. Diet assessment method validated. Food Frequency Questionnaire. Article translated from Spanish. No. of controls in calculation of RR=1182. Article translated from French. No. of controls in calculation of RR=62 211. No. of controls in calculation of RR=829. No. of controls in calculation of RR=1598. Studies were also identified that contained information regarding food groups and breast cancer risk. The three most common foods for which risk estimates were given in these studies were determined (meat, milk and cheese) and used in the present meta-analysis. Two studies, which defined food groups in a manner that could not be adapted to this analysis, were excluded (Katsouyanni ; Lubin ). Risk estimates pertaining to the intake of these foods were obtained from a total of 36 papers (see Table 2 for references), 16 of which also contained relative risk estimates associated with total fat intake. Nested case–control studies were treated as cohort studies for these analyses. If study results were presented in more than one article, the most recent analysis was used.
Table 2

Selected characteristics of (A) case–control studies: food and (B) cohort studies: food

AuthorCountryNo. of casesNo. of controlsType of controlsDietary assessmentFoodNo of categoriesaRRiCIQuality score
(A)
Ambrosone et al (1998)USA740810PopulationFood freqbMeatc40.92(0.25, 3.32)5/7
De stefani et al (1997)Uruguay352382HospitalFood freqb,dMeat42.26(1.24, 4.12)5/7
Ewertz and Gill (1990)Denmark14741322PopulationFood freqb,dMeat60.94(0.63, 1.40)3/7
      Milk51.45(1.02, 2.07)5/7
Franceschi et al (1995)Italy25692588HospitalFood freqb,dMeat40.99(0.69, 1.41)6/7
      Milk50.81(0.67, 0.98) 
      Cheese50.98(0.81, 1.18) 
 
Hirohata et al (1987)USA183183PopulationDiet historydMeat41.5(0.7,3.1)5/7
Hislop et al (1986)Canada846862PopulationFood freqb,eMeat31.16(0.90, 1.48)3/7
      Milk31.55(1.18, 2.05) 
 
Holmberg et al (1994)Sweden265432PopulationFood freqb,dMeat80.8(0.5, 1.2)6/7
Ingram et al (1991)Australia99209PopulationFood freqbMeat21.6(0.9, 2.8)3/7
      Milk20.9(0.5, 1.6) 
 
Kato et al (1992)Japan908908HospitalUnspecifiedMeat30.75(0.60, 0.94)2/7
Landa et al (1994)Spain100100HospitalFood freqbMeat31.21(0.31, 4.66)4/7
La Vecchia et al (1987)Italy11081281HospitalFood freqbMeat31.39(1.12, 1.71)4/7
Le et al (1986)France10101950HospitalFood freqbMilk31.8(1.3, 2.4)5/7
      Cheese31.5(1.0, 2.3) 
 
Lee et al (1991)Singapore200420HospitalFood freqbMeat31.4(0.77, 2.53)4/7
Levi et al (1993)Switzerland107318HospitalFood freqbMeatc31.45(0.56, 3.72)5/7
      Milk31.15(0.68, 1.96) 
      Cheese32.99(1.7, 5.25) 
 
Lubin et al (1981)Canada577826PopulationFood freqbMeat31.42(1.0, 2.0)4/7
      Milk40.77(0.5, 1.3) 
      Cheese31.11(0.9, 1.4) 
 
Mannisto et al (1999)Finland310454PopulationFood freqb,d,eMeat50.66(0.12, 3.72)7/7
      Milk41.7(0.8, 3.66) 
      Cheese40.75(0.3, 1.7) 
 
Matos et al (1991)Argentina196205NeighbourhoodFood freqbMeat31.4(0.7, 2.9)4/7
Potischman et al (1998)USA16471501PopulationFood freqbMeat41.18(1.0, 1.5)4/7
Richardson et al (1991)France409515HospitalDiet historybMeat31(0.7, 1.4)6/7
      Cheese31.4(1.0, 1.9) 
 
Talamini et al (1984)Italy368373HospitalFood freqMeat31.3(0.7, 2.2)4/7
      Milk33.2(1.85, 5.8) 
 
Toniolo et al (1989)Italy250499PopulationDiet historydMeatc41.15(0.82, 1.62)6/7
      Milk41.73(1.16, 2.6) 
      Cheese42.6(1.7, 4.0) 
 
Trichopoulou et al (1995)Greece8201548Hospital visitorsFood freqb,dMeat51.07(0.99, 1.15)6/7
      Milk51.0(0.93, 1.08) 
 
Van't Veer et al (1989)Netherlands133289PopulationDiet historyMilkPer 225 g0.81(0.59, 1.12)4/7
      CheesePer 60 g0.56(0.33, 0.95) 
 
Witte et al (1997)USA/Canada140222PopulationFood freqb,d,eMeat40.6(0.3, 1.3)6/7
Wang et al (2000)fChina20632063NeighbourhoodFood freqbMilkPer 500 g1.49Not given 
 
Total cases16 734         
Total controls20 038         
 
(B)
Cho (2003)USA71490 655PopulationFood freqb,e,dMeatc51.11(0.92, 1.35)6/6
Gaard et al (1995)Norway24825 897PopulationFood freqb,e,dMeat42.28(1.29, 4.03)6/6
      Milk41.71(0.86, 3.38) 
 
Gertig et al (1999)USA466466PopulationFood freqb,d,eMeatc31.06(0.48, 2.33)6/7
Hirayama (1978)Japan139142 857PopulationNational nutrition surveyMeat21.7(0.8, 3.8)3/6
Hjartaker et al (2001)Norway31748 844PopulationFood freqb,d,eMilk30.51(0.27, 0.96)5/6
Kinlen (1982)Britain622813PopulationUnspecifiedMeat21.2(0.8, 1.6)2/6
Knekt et al (1996)Finland884697PopulationFood freqb,dMilk30.42(0.24, 0.74)4/6
      Cheese31.25(0.75, 2.08) 
 
Mills et al (1989)USA21520 341PopulationFood freqMeatc31.11(0.47, 2.66)4/6
      Milk30.94(0.66, 1.33) 
      Cheese31.43(0.99, 2.06) 
 
Thiebaut and Clavel-Chapelon (2001)gFrance83865 879PopulationFood freqb,d,eCheese40.92(0.74, 1.13)6/6
Toniolo et al (1994)USA180829PopulationFood freqb,d,eMeat51.44(0.68, 3.04)6/6
van den Brandt et al (1993)Netherlands43762 573hPopulationFood freqb,d,eMeatNot given1.23(0.63, 2.37)6/6
Vatten et al (1990)Norway15214 500PopulationFood freqb,dMeat31.8(1.1, 3.1)4/6
 
Total cases3783         
Total controls476 200         

Food Frequency Questionnaire.

Self-administered.

Diet assessment method validated.

No. of categories refers to the number of categories of frequency of consumption into which the food intakes were partitioned. The RR is the highest vs lowest level of consumption.

Article translated from Chinese.

Article translated from French.

No. of controls in calculation of RR=1598.

Measurement of food intake assessed for validity.

RR presented for various types of meat combined to reflect total meat consumption.

Food Frequency Questionnaire. Self-administered. Diet assessment method validated. No. of categories refers to the number of categories of frequency of consumption into which the food intakes were partitioned. The RR is the highest vs lowest level of consumption. Article translated from Chinese. Article translated from French. No. of controls in calculation of RR=1598. Measurement of food intake assessed for validity. RR presented for various types of meat combined to reflect total meat consumption.

Extraction and classification of data

Descriptive data regarding the number and type of subjects, estimates of mean daily dietary fat intake, method of dietary assessment and the partitioning of intakes for the calculation of relative risks were extracted from each article along with an estimate of relative risk and its associated 95% confidence (CI) interval. In these studies, the intake of fat or fat-containing foods was usually partitioned into tertiles, quartiles or quintiles. The relative risk of breast cancer comparing the highest with the lowest category of intake was extracted from each study. Relative risks and CIs were calculated for three studies (Graham , 1991; Yuan ) and confidence intervals were calculated for five studies (Hirayama, 1978; Kinlen, 1982; Levi ; Landa ; Toniolo ) by cell frequencies shown in the data or standard error values (Fleiss, 1981), and are thus unadjusted for other variables. If the risk of breast cancer associated with the dietary variables was expressed in more than one way, the estimate extracted from the study was the one that reflected the greatest degree of controlling for confounders (i.e. risk factors and/or energy). When both hospital and population controls were used for comparison separately, the results for population controls were chosen for analysis. As few studies provided complete data for pre- and postmenopausal women separately, we chose the relative risk for the whole group if available. In some reports unadjusted relative risks were given, accompanied by an explicit statement that the estimate was unchanged by adjustment for energy or other risk factors. In these cases, the relative risk given was regarded as having been adjusted. In some instances, more than one estimate of risk were combined in order to increase the comparability of the studies. For example, in a number of studies of fat-containing foods, separate estimates of risk for red meat, poultry or pork consumption were reported. These separate risk estimates were combined into a total meat group by averaging the log of the risk estimates. CIs were calculated for the average relative risk using the variances of each separate risk estimate. In two studies, relative risk estimates were given for pre- and postmenopausal women separately (Pryor ; Ambrosone ) and in one study, risk estimates were given for pre- and postmarriage separately (Wakai ). In each of these cases, the estimates were combined into one to represent all women in the manner described above. Similarly, in the cohort study reported by Hirayama (1978), relative risks given for meat intake divided by age category were combined to produce one risk estimate for the population.

Methodological standards

A quality score was calculated for each study included in the meta-analysis. Four investigators (NFB, LJM, KNV and BSC) independently scored the studies based on predetermined methodological standards and any differences were resolved by discussion. The criteria included the provision of details on how the population had been assembled, whether histological confirmation of breast cancer had been obtained, the methods used to control for observer bias, a description of the method of measurement of nutrient and/or food intake, including data on validation and reproducibility and whether or not adjustment of risk estimates for potential confounding factors such as energy intake and traditional risk factors for breast cancer had been performed. Quality scores were not used to weigh the individual estimates of risk, but were used to divide the studies into groups for a stratified analysis based on quality score.

Statistical methods and analysis

Studies were classified as case–control or cohort and statistical analyses were performed for each study design separately as well as for all studies combined. Analyses were also performed on subgroups of studies based on quality score, geographical area, type of control population and other study characteristics. Statistical analyses were performed using SAS (SAS Institute, Inc., Cary, NC, USA) software and graphical displays of the results produced using S-PLUS (Insightful, Inc., Seattle, WA, USA) software. The data required by SAS for each study included the natural log of the adjusted odds ratios, and its 95% CI. From these, the program calculated the summary risk estimate and the associated standard error, which was used to determine the 95% CI. Owing to diversity in the location, design and analysis of the various studies, we were aware that the true effects being estimated were likely to vary among studies. There were two sources of variability that had to be addressed: the usual sampling variation in the estimates and variation in the underlying parameter. To account for both sources of variation in this meta-analysis, we used the method of DerSimonian and Laird (1986), employing the SAS MIXED procedure in which the magnitude of the heterogeneity is estimated, and accounted for by assigning a greater variability to the estimate of the overall effect. Thus, we did not assume that the studies represented the same effect. Rather, the effects came from some statistical distribution of effects. The random effects model does not rely on homogeneity; on the contrary, it assumes heterogeneity. We also employed additional subgroup and regression analyses to try to account for the observed differences between studies, and to examine the potential influence of study design and execution, study population, geographical location, adjustment variables, partitioning cut points and methods of analysis.

RESULTS

Characteristics of studies reported

A total of 45 published studies, containing 46 estimates of risk, examined the role of dietary fat in relation to breast cancer risk by an analysis of nutrient intake. Of these, 31 were case control and 14 were cohort in design, and they contained a total of 25 015 cases of breast cancer and over 580 000 control or comparison subjects. Table 1 summarises selected characteristics of the published studies that examined the role of dietary fat in relation to breast cancer risk through an analysis of nutrient intake. In all, 22 studies were carried out in European countries (including Russia), five in Asian countries, and 15 in North America. In addition, two studies were conducted in Australia and one in Uruguay. The studies included in Table 1 had varied methods of execution and analysis. A total of 27 studies used population-based comparison or controls, 12 selected comparison subjects from hospital or clinics, two studies selected comparison subjects from both these sources and four selected controls from other defined populations (i.e. sisters, neighbourhood, or centre). In total, 32 studies obtained dietary data using food frequency questionnaires, 12 with diet histories, one with a 24-h diet recall and one with food records and food frequency questionnaire. Food frequency questionnaires were sometimes administered by interview, and sometimes self-administered, and differed substantially in the number of food items included (data not shown in the table). All the studies included in Table 1 analysed the relationship between breast cancer risk and nutrient intake by partitioning intake, 13 by quintiles, 21 by quartiles, seven by tertiles and one at the median. One study used deciles of intake and two used specific increments in fat intake. A total of 26 studies met at least six of the methodological standards that were applied, 16 met four or five standards and three met fewer than four standards.

Estimates of risk for nutrient consumption

Figure 1 shows the estimates of the risk of breast cancer generated by these studies for total fat, as well as saturated, monounsaturated and polyunsaturated fat, and indicates where risk estimates have been adjusted for energy intake and for established breast cancer risk factors. For total fat, the summary relative risk for all 46 estimates was 1.13 (95% CI: 1.03–1.25). Cohort studies had a summary relative risk of 1.11 (95% CI: 0.99–1.25) and case–control studies had a relative risk of 1.14 (95% CI: 0.99–1.32). Summary relative risks for both cohort and case–control studies that adjusted for energy intake and traditional risk factors for breast cancer were 1.13 (95% CI: 1.04–1.23) and 1.22 (95% CI: 0.91–1.63), respectively. The summary relative risks for saturated fat were greater than unity for all studies combined (RR, 1.19; 95% CI: 1.06–1.35), case–control studies alone (RR, 1.23; 95% CI: 1.03–1.46) and cohort studies alone (RR, 1.15; 95% CI: 1.02–1.30). The summary relative risk for monounsaturated fat was 1.11 (95% CI: 0.96–1.28) for all studies, 1.12 for case–control studies alone (95% CI: 0.94–1.32) and 1.10 for cohort studies alone (95% CI: 0.83–1.44). The summary relative risks for polyunsaturated fats were below unity for all studies and case–control studies alone (all studies, 0.94; 95% CI: 0.80–1.10, case control, 0.50; 95% CI: 0.39–0.63), but above unity for cohort studies alone (1.11; 95% CI: 1.00–1.22).
Figure 1

Relative risks for (A) total fat (B) saturated fat (C) monounsaturated fat and (D) polyunsaturated fat intake and breast cancer risk. CIs are 95%. Closed diamond=relative risk adjusted for energy intake. Open diamond=relative risk unadjusted for energy intake. Grey diamond=summary relative risk results of the meta-analysis.

Relative risks for (A) total fat (B) saturated fat (C) monounsaturated fat and (D) polyunsaturated fat intake and breast cancer risk. CIs are 95%. Closed diamond=relative risk adjusted for energy intake. Open diamond=relative risk unadjusted for energy intake. Grey diamond=summary relative risk results of the meta-analysis.

Replication of published results of a combined analysis of cohort studies

To determine whether the methods used in the present paper could replicate those based upon an analysis using the data from individual studies, we applied our methods to a group of studies that were the subject of a previously published pooled analysis of seven cohort studies by Hunter . For our analysis, we extracted risk estimates and 95% CIs from the original papers and calculated the summary risk estimates as described above. Estimates for total fat were available for five of the seven studies analysed by Hunter et al (Howe ; Graham ; Kushi ; Willett ; van den Brandt ). Comparing our results with those of Hunter's analysis, the summary relative risks for total fat were, respectively, 1.06 (95% CI: 0.92–1.23) and 1.05 (95% CI: 0.94–1.16), for saturated fat 1.05 (95% CI: 0.90–1.23) and 1.07 (95% CI: 0.95–1.20), for monounsaturated fat 0.96 (95% CI: 0.83–1.10) and 1.01 (95% CI: 0.88–1.16) and for polyunsaturated fat 1.14 (95% CI: 0.98–1.34) and 1.07 (95% CI: 0.97–1.17), respectively. Our calculations thus produced risk estimates and CIs very similar to those reported from the pooled analysis.

Characteristics of studies reporting analysis according to foods

The 37 studies that examined food consumption in relation to breast cancer risk, 25 case–control and 12 cohort in design, included a total of 20 571 cases and over 490 000 control or comparison subjects. The 37 studies contained 31 estimates of risk for meat, 16 for milk and 11 for cheese. There is some overlap, as 16 studies reported risk in relation to consumption of both nutrients and foods, and are therefore included in both Figures 1 and 2.
Figure 2

Relative risks for (A) meat (B) milk and (C) cheese intake and breast cancer risk. CIs are 95%. Closed diamond=relative risk adjusted for energy intake. Open diamond=relative risk unadjusted for energy intake. Grey diamond=summary relative risk results of the meta-analysis.

Relative risks for (A) meat (B) milk and (C) cheese intake and breast cancer risk. CIs are 95%. Closed diamond=relative risk adjusted for energy intake. Open diamond=relative risk unadjusted for energy intake. Grey diamond=summary relative risk results of the meta-analysis. Table 2 summarises selected characteristics of the published studies that examined the role of diet in relation to breast cancer risk by an analysis of food intake. A total of 20 studies were carried out in European countries, 10 in North America, four in Asian countries and one in each of Argentina, Australia and Uruguay. A total of 24 studies used population-based comparison or controls, 10 selected comparisons from hospitals and three selected comparisons from other populations (i.e. neighbourhood and hospital visitors). All but seven studies obtained dietary data using a food frequency questionnaire, of which two used unspecified methods. All the studies included in Table 2 analysed the relationship between breast cancer risk and food intake by partitioning intake. Differences in the methods of partitioning existed not only between studies but also within studies analysing intake of different foods. In all, 13 studies met at least six of the methodological standards that were applied, 18 met four or five, and six met fewer than four standards.

Estimates of risk for food consumption

Figure 2 shows the distribution of the estimates of risk of breast cancer and the 95% CIs generated by the studies for intake of meat, milk and cheese. The summary relative risks for meat intake were 1.17 (95% CI: 1.06–1.29) for all studies, 1.13 (95% CI: 1.01–1.25) for case–control studies alone and 1.32 (95% CI: 1.12–1.56) for cohort studies alone. The summary relative risks for milk were 1.12 (95% CI: 0.88–1.43) for all studies, 1.25 (0.99–1.58) for case–control studies alone and 0.76 (95% CI: 0.42–1.40) for cohort studies alone, and the summary relative risks for cheese were 1.26 (95% CI: 0.96–1.66) for all studies and 1.30 (95% CI: 0.89–1.92) for case–control studies alone.

Analysis of sources of variation for studies of total fat and breast cancer risk

As has already been noted, the studies included in the analysis differed in a number of aspects of their design and execution, and were reported from countries that are known to have wide differences in breast cancer risk. We examine below the influence of some of these sources of heterogeneity on the results presented in the previous sections. Owing to the small number of studies available after division into subgroups, we have confined our attention to those studies that reported the results of nutrient analysis for total fat intake and breast cancer risk. The principal sources of variation in the study methodology examined were the extent to which studies met the methodological standards described above, the sources from which control or comparison groups were selected, the partitioning of nutrient intake and the geographic region where the studies were carried out.

Methodological standards

The summary relative risks were calculated for studies classified according to the proportion of methodological standards met (see Methods section). The summary relative risk for the relationship of total fat intake to breast cancer risk, for all 26 studies that met 80% or more of the standards, was 1.17 (95% CI: 1.03–1.32). For the 11 studies that met between 70 and 80% of standards, the summary relative risk was 1.08 (95% CI: 0.93–1.24), and for the nine studies that met 70% or less of the standards the relative risk was 0.91 (95% CI: 0.59–1.40).

Source of controls

The summary relative risk for total fat and breast cancer risk was 1.14 (95% CI: 1.04–1.25) for the 25 studies in Figure 1 that selected control or comparison groups from defined nonhospital populations. The 11 case–control studies in this group had a summary relative risk of 1.12 (95% CI: 0.96–1.31). The 14 case–control studies that selected controls from hospital populations had a summary relative risk of 1.11 (95% CI: 0.84–1.47).

Partitioning of nutrient intake

The summary relative risk for studies that partitioned nutrient intake into quintiles was 1.07 (95% CI: 0.94–1.21) for all studies and 1.01 (95% CI: 0.83–1.24) for case–control studies; for studies that used quartiles, 1.12 (95% CI: 0.95–1.32) for all studies and 1.16 (95% CI: 0.91–1.48) for case–control studies; and for studies that used tertiles, 1.15 (95% CI: 0.66–1.99) for all studies and 1.07 (95% CI: 0.56–2.05) for case–control studies.

Geographic variation

To examine the possible influence of the country in which they were carried out, studies were divided into four geographical categories. The summary relative risk for European studies (n=22) was 1.17 (95% CI: 1.02–1.34); for North American studies (n=15) 1.04 (95% CI: 0.91–1.18) and for Asia (n=6) 1.42 (95% CI: 0.87–2.30).

Regression analysis

To examine the independent contribution of the factors considered above, regression analysis was carried out, in which the log of the relative risk for total fat intake in each study, weighted by the reciprocal of its variance, was the dependent variable and study quality score, geographical area, study design and type of controls were the independent variables. However, univariate analysis showed none of these variables to be significantly associated with the response; but, the type of controls and geographic location were significantly associated with the log-relative risk when they were both in the model. Studies using population-based controls had higher relative risks than those using hospital-based controls (P=0.002), and both European and Asian studies had higher relative risks than North American studies (P=0.006 and 0.05, respectively). Interactions between all four variables were examined and no significant interactions were found.

DISCUSSION

This quantitative summary of the published literature on the risk of breast cancer associated with dietary fat intake suggests that a higher intake of fat is associated with an increased risk of breast cancer. The summary relative risk for all studies that examined nutrient intake is calculated from the results of cohort and case–control studies, and in contrast to our previous publication, the results from these different designs for epidemiological investigation gave very similar results. This conclusion is based on 45 studies that contain a total of 25 015 cases of breast cancer and 580 000 control or comparison subjects. The summary risk estimates from all case–control and cohort studies were very similar, although neither was statistically significant. The combined estimate, however, was statistically significant as was the summary risk estimate for cohort studies that met 80% or more of the quality standards. Other differences between our earlier analysis and the present findings are summarised in Table 3 . (The software used for our earlier analysis contained a programming error, which had a small influence on the results, but did not affect the conclusions of the paper. The table shows the corrected values of the published results.) Compared to the 1993 analysis, which was based on 23 studies, the present analysis based on 45 studies, gave smaller odds ratios for case–control studies, and slightly larger relatives risks for cohort studies. Neither study design gave significant estimates of risk in the previous or present analysis, but the combined estimates were significant in both. Among studies of higher quality, the estimate from cohort studies was significant in the present results, while the estimate from case–control studies was no longer significant. Strong evidence of substantial variation in results according to the geographical location of the study was present in both analyses. Point estimates of risk associated with fat intake were highest in Asia, lowest in North America and intermediate in Europe, findings that may be related to differences in the underlying variation in dietary fat intake in the populations in these regions.
Table 3

Summary risks for 1993 and present meta-analyses

Fat/food typeVariable1993 revised analysisPresent analysis
Total fatNumber of studies
 Case–control1631
 Cohort714
 Combined2345
 All studies
 Case–control1.26 (1.10–1.45)1.14 (0.99–1.32)
 Cohort1.02 (0.80–1.31)1.11 (0.99–1.25)
 Combined1.17 (1.03–1.32)1.13 (1.03–1.25)
 High quality
 Case–control1.45 (1.15–1.84), N=51.22 (0.91–1.63), N=13
 Cohort1.07 (0.93–1.24), N=61.13 (1.04–1.23), N=13
 Combined1.23 (1.06–1.43), N=111.17 (1.03–1.32), N=26
 Country
 North America1.03 (0.85–1.24), N=101.04 (0.91–1.18), N=14
 Europe1.44 (1.30–1.60), N=81.17 (1.02–1.34), N=21
 Asia1.42 (0.87–2.30), N=6
 Other1.13 (0.84–1.51), N=51.20 (0.93–1.56), N=4
    
Types of fat   
SaturatedNumber of studies1122
 Summary risk, all studies1.21 (0.98–1.49)1.18 (1.04–1.34)
MonounsaturatedNumber of studies1524
 Summary risk, all studies1.19 (1.01–1.40)1.10 (0.95–1.28)
PolyunsaturatedNumber of studies1524
 Summary risk, all studies0.97 (0.83–1.13)0.92 (0.78–1.09)
    
Food types   
MeatNumber of studies1731
 Summary risk, all studies1.20 (1.07–1.34)1.17 (1.06–1.29)
MilkNumber of studies1016
 Summary risk, all studies1.22 (0.91–1.64)1.12 (0.88–1.43)
CheeseNumber of studies611
 Summary risk, all studies1.32 (0.90–1.93)1.26 (0.96–1.66)
Different studies partitioned fat intake in different ways, but an examination of the results obtained suggested that partitioning by tertiles, quartiles or quintiles gave very similar estimates. Among the major subtypes of fat, we found that saturated fat was significantly associated with breast cancer risk in both case–control and cohort studies, and that results were significant in the present but not the previous analysis. Mono- and polyunsaturated fat were not significantly associated with breast cancer in either case–control or cohort studies, or in summaries of all studies in the present analysis. Our conclusion about the relationship of dietary fat to risk of breast cancer is supported to some degree by studies of specific foods. Of the studies that examined intake of foods in relation to risk of breast cancer, the largest number had examined meat consumption, which was significantly associated with breast cancer risk in this meta-analysis, in the overall estimate of risk and in both case–control and cohort studies considered separately. Fewer studies examined milk and cheese intake in relation to breast cancer risk, and although point estimates for the summary relative risks of all studies were greater than unity for both foods, neither was statistically significant. Although this meta-analysis was based on published results, we were able to generate results similar to those of a previously published combined analysis of a subset of the cohort studies examined here. The differences between the results obtained in case–control and cohort studies might be attributable to recall bias, but as similar results were found here in the two research designs it is not likely that this potential source of bias has a major influence. The biological plausibility of an association between dietary fat and breast cancer risk is shown by the effect that dietary fat intake has on mammary carcinogenesis in animals (see, for reviews, Freedman ; Welsch, 1994),which appears to be distinct from the effect of calories, as well as by the known biological effects of fat. Potential mechanisms include the generation from fatty acids of eicosanoids, the generation of free radicals and mutagenic compounds such as malondialdehyde by lipid peroxidation and the modulation of genes that are involved in mammary carcinogenesis (Cohen ). Despite the strong evidence that breast cancer is influenced by environmental factors, and the consistency of the ecological analyses suggesting that dietary fat is one of these factors, epidemiological investigations of the relationship of dietary fat to breast cancer incidence based upon the measurement of dietary intakes in individuals with case–control and cohort studies, have given much less consistent results. However, in considering these results, and those given above in our quantitative summary of the published literature, we need to consider the effects of the relative homogeneity of fat intake within populations and error in the measurement of fat intake, both factors that are expected to attenuate any true association between dietary fat and breast cancer. For example, homogeneity is shown by the range across quintiles of total fat intake in the Nurses Health Study (Willett ), a large cohort study in North America, which was only 32–44% of calories, compared to the international range of 15% or less to more than 40% of calories. This narrow range of fat intake is expected, from international data, to be associated with a relative risk of only 1.4 in the highest quintile of fat intake relative to the lowest. When the measurement error known to be associated with the food frequency questionnaire used is taken into account, this estimate of the relative risk is reduced to 1.16, a figure that is close to the summary relative risk of our meta-analysis (Prentice ). Measurement error in the food frequency questionnaires used in most studies may lead to overestimation of the range of intakes and may also lead to attenuation of risk (Prentice, 2003). The cohort study of Bingham showed a small and nonsignificant increase in the risk of breast cancer when fat intake was estimated from a food frequency questionnaire, but a larger and significant increase when estimated from food records obtained from the same subjects. Experimental trials, in which the range of fat intake is increased beyond that seen in most Western populations, are a means of overcoming the limitations of observational epidemiology that arise from homogeneity of intake and measurement error, and provide the strongest evidence available concerning a causal relationship of dietary fat intake to breast cancer risk. Further, such trials are the only means available to determine whether breast cancer risk in high-risk subjects can be reduced by changing dietary fat intake.
  81 in total

1.  Dietary factors and the risk of breast cancer.

Authors:  C La Vecchia; A Decarli; S Franceschi; A Gentile; E Negri; F Parazzini
Journal:  Nutr Cancer       Date:  1987       Impact factor: 2.900

2.  A case-control study of dietary and nondietary risk factors for breast cancer in Shanghai.

Authors:  S Z Yu; R F Lu; D D Xu; G R Howe
Journal:  Cancer Res       Date:  1990-08-15       Impact factor: 12.701

3.  Adolescent diet and breast cancer in Utah.

Authors:  M Pryor; M L Slattery; L M Robison; M Egger
Journal:  Cancer Res       Date:  1989-04-15       Impact factor: 12.701

4.  Frequency of meat and fish intake and risk of breast cancer in a prospective study of 14,500 Norwegian women.

Authors:  L J Vatten; K Solvoll; E B Løken
Journal:  Int J Cancer       Date:  1990-07-15       Impact factor: 7.396

5.  Risk of breast cancer among Greek women in relation to nutrient intake.

Authors:  K Katsouyanni; W Willett; D Trichopoulos; P Boyle; A Trichopoulou; S Vasilaros; J Papadiamantis; B MacMahon
Journal:  Cancer       Date:  1988-01-01       Impact factor: 6.860

6.  Consumption of fermented milk products and breast cancer: a case-control study in The Netherlands.

Authors:  P van't Veer; J M Dekker; J W Lamers; F J Kok; E G Schouten; H A Brants; F Sturmans; R J Hermus
Journal:  Cancer Res       Date:  1989-07-15       Impact factor: 12.701

7.  A population-based case-control study of diet and breast cancer in Australia.

Authors:  T E Rohan; A J McMichael; P A Baghurst
Journal:  Am J Epidemiol       Date:  1988-09       Impact factor: 4.897

8.  Calorie-providing nutrients and risk of breast cancer.

Authors:  P Toniolo; E Riboli; F Protta; M Charrel; A P Cappa
Journal:  J Natl Cancer Inst       Date:  1989-02-15       Impact factor: 13.506

Review 9.  Aspects of the rationale for the Women's Health Trial.

Authors:  R L Prentice; F Kakar; S Hursting; L Sheppard; R Klein; L H Kushi
Journal:  J Natl Cancer Inst       Date:  1988-08-03       Impact factor: 13.506

10.  Dietary habits and breast cancer incidence among Seventh-day Adventists.

Authors:  P K Mills; W L Beeson; R L Phillips; G E Fraser
Journal:  Cancer       Date:  1989-08-01       Impact factor: 6.860

View more
  59 in total

1.  Dietary fat and breast cancer in postmenopausal women according to ethnicity and hormone receptor status: the Multiethnic Cohort Study.

Authors:  Song-Yi Park; Laurence N Kolonel; Brian E Henderson; Lynne R Wilkens
Journal:  Cancer Prev Res (Phila)       Date:  2011-12-13

2.  Macronutrient composition influence on breast cancer risk in Hispanic and non-Hispanic white women: the 4-Corners Breast Cancer Study.

Authors:  Maureen A Murtaugh; Jennifer Herrick; Carol Sweeney; Anna Guiliano; Kathy Baumgartner; Tim Byers; Martha Slattery
Journal:  Nutr Cancer       Date:  2011       Impact factor: 2.900

3.  Dietary polyunsaturated fatty acids and breast cancer risk in Chinese women: a prospective cohort study.

Authors:  Harvey J Murff; Xiao-Ou Shu; Honglan Li; Gong Yang; Xiauyan Wu; Hui Cai; Wanqing Wen; Yu-Tang Gao; Wei Zheng
Journal:  Int J Cancer       Date:  2010-11-23       Impact factor: 7.396

4.  Dietary lipids and endometrial cancer: the current epidemiologic evidence.

Authors:  Elisa V Bandera; Lawrence H Kushi; Dirk F Moore; Dina M Gifkins; Marjorie L McCullough
Journal:  Cancer Causes Control       Date:  2007-06-16       Impact factor: 2.506

5.  Consumption of Cow's Milk and Possible Risk of Breast Cancer.

Authors: 
Journal:  Breast Care (Basel)       Date:  2010-02-25       Impact factor: 2.860

6.  Diet Before and After Breast Cancer.

Authors:  Jung Eun Lee
Journal:  Adv Exp Med Biol       Date:  2021       Impact factor: 2.622

7.  The nanny model for IDPs.

Authors:  Peter Tsvetkov; Nina Reuven; Yosef Shaul
Journal:  Nat Chem Biol       Date:  2009-11       Impact factor: 15.040

8.  Dealing with dietary measurement error in nutritional cohort studies.

Authors:  Laurence S Freedman; Arthur Schatzkin; Douglas Midthune; Victor Kipnis
Journal:  J Natl Cancer Inst       Date:  2011-06-08       Impact factor: 13.506

9.  Red meat consumption during adolescence among premenopausal women and risk of breast cancer.

Authors:  Eleni Linos; Walter C Willett; Eunyoung Cho; Graham Colditz; Lindsay A Frazier
Journal:  Cancer Epidemiol Biomarkers Prev       Date:  2008-07-31       Impact factor: 4.254

10.  Stearate preferentially induces apoptosis in human breast cancer cells.

Authors:  Lynda M Evans; Stephanie L Cowey; Gene P Siegal; Robert W Hardy
Journal:  Nutr Cancer       Date:  2009       Impact factor: 2.900

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.