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. 2016 Aug 23;13(8):e1002105. doi: 10.1371/journal.pmed.1002105

Genetically Predicted Body Mass Index and Breast Cancer Risk: Mendelian Randomization Analyses of Data from 145,000 Women of European Descent

Yan Guo 1, Shaneda Warren Andersen 2, Xiao-Ou Shu 2, Kyriaki Michailidou 3, Manjeet K Bolla 3, Qin Wang 3, Montserrat Garcia-Closas 4,5, Roger L Milne 6,7, Marjanka K Schmidt 8, Jenny Chang-Claude 9,10, Allison Dunning 11, Stig E Bojesen 12,13,14, Habibul Ahsan 15, Kristiina Aittomäki 16, Irene L Andrulis 17,18, Hoda Anton-Culver 19, Volker Arndt 20, Matthias W Beckmann 15, Alicia Beeghly-Fadiel 2, Javier Benitez 21,22, Natalia V Bogdanova 23, Bernardo Bonanni 24, Anne-Lise Børresen-Dale 25,26, Judith Brand 27, Hiltrud Brauch 28,29,30, Hermann Brenner 20,28,31, Thomas Brüning 32, Barbara Burwinkel 33,34, Graham Casey 35, Georgia Chenevix-Trench 36, Fergus J Couch 37, Angela Cox 38, Simon S Cross 11, Kamila Czene 27, Peter Devilee 39, Thilo Dörk 40, Martine Dumont 41, Peter A Fasching 42,43, Jonine Figueroa 44, Dieter Flesch-Janys 45,46, Olivia Fletcher 5, Henrik Flyger 47, Florentia Fostira 48, Marilie Gammon 49, Graham G Giles 6,7, Pascal Guénel 50,51, Christopher A Haiman 35, Ute Hamann 52, Maartje J Hooning 53, John L Hopper 7, Anna Jakubowska 54, Farzana Jasmine 15, Mark Jenkins 7, Esther M John 55,56, Nichola Johnson 5, Michael E Jones 4, Maria Kabisch 52, Muhammad Kibriya 15, Julia A Knight 57,58, Linetta B Koppert 53, Veli-Matti Kosma 59,60,61, Vessela Kristensen 25,26,62, Loic Le Marchand 63, Eunjung Lee 35, Jingmei Li 27, Annika Lindblom 64, Robert Luben 65, Jan Lubinski 54, Kathi E Malone 66, Arto Mannermaa 59,60,61, Sara Margolin 67, Frederik Marme 68,69, Catriona McLean 70, Hanne Meijers-Heijboer 71, Alfons Meindl 72, Susan L Neuhausen 73, Heli Nevanlinna 74, Patrick Neven 75, Janet E Olson 76, Jose I A Perez 77, Barbara Perkins 78, Paolo Peterlongo 79, Kelly-Anne Phillips 80,81,82, Katri Pylkäs 83, Anja Rudolph 9, Regina Santella 84,85, Elinor J Sawyer 86, Rita K Schmutzler 87,88,89,90, Caroline Seynaeve 53, Mitul Shah 78, Martha J Shrubsole 2, Melissa C Southey 91, Anthony J Swerdlow 4,92, Amanda E Toland 93, Ian Tomlinson 94, Diana Torres 52, Thérèse Truong 50,51, Giske Ursin 95, Rob B Van Der Luijt 96, Senno Verhoef 8, Alice S Whittemore 56, Robert Winqvist 83,97, Hui Zhao 98,99, Shilin Zhao 1, Per Hall 27, Jacques Simard 41, Peter Kraft 100,101, Paul Pharoah 3,78, David Hunter 100,101, Douglas F Easton 3,78, Wei Zheng 2,*
Editor: Andrew H Beck102
PMCID: PMC4995025  PMID: 27551723

Abstract

Background

Observational epidemiological studies have shown that high body mass index (BMI) is associated with a reduced risk of breast cancer in premenopausal women but an increased risk in postmenopausal women. It is unclear whether this association is mediated through shared genetic or environmental factors.

Methods

We applied Mendelian randomization to evaluate the association between BMI and risk of breast cancer occurrence using data from two large breast cancer consortia. We created a weighted BMI genetic score comprising 84 BMI-associated genetic variants to predicted BMI. We evaluated genetically predicted BMI in association with breast cancer risk using individual-level data from the Breast Cancer Association Consortium (BCAC) (cases  =  46,325, controls  =  42,482). We further evaluated the association between genetically predicted BMI and breast cancer risk using summary statistics from 16,003 cases and 41,335 controls from the Discovery, Biology, and Risk of Inherited Variants in Breast Cancer (DRIVE) Project. Because most studies measured BMI after cancer diagnosis, we could not conduct a parallel analysis to adequately evaluate the association of measured BMI with breast cancer risk prospectively.

Results

In the BCAC data, genetically predicted BMI was found to be inversely associated with breast cancer risk (odds ratio [OR]  =  0.65 per 5 kg/m2 increase, 95% confidence interval [CI]: 0.56–0.75, p = 3.32 × 10−10). The associations were similar for both premenopausal (OR   =   0.44, 95% CI:0.31–0.62, p  =  9.91 × 10−8) and postmenopausal breast cancer (OR  =  0.57, 95% CI: 0.46–0.71, p  =  1.88 × 10−8). This association was replicated in the data from the DRIVE consortium (OR  =  0.72, 95% CI: 0.60–0.84, p   =   1.64 × 10−7). Single marker analyses identified 17 of the 84 BMI-associated single nucleotide polymorphisms (SNPs) in association with breast cancer risk at p < 0.05; for 16 of them, the allele associated with elevated BMI was associated with reduced breast cancer risk.

Conclusions

BMI predicted by genome-wide association studies (GWAS)-identified variants is inversely associated with the risk of both pre- and postmenopausal breast cancer. The reduced risk of postmenopausal breast cancer associated with genetically predicted BMI observed in this study differs from the positive association reported from studies using measured adult BMI. Understanding the reasons for this discrepancy may reveal insights into the complex relationship of genetic determinants of body weight in the etiology of breast cancer.


Using Mendelian randomization analysis, Wei Zheng and colleagues probe potentially causal associations between BMI and breast cancer risk in both pre- and postmenopausal women.

Author Summary

Why Was This Study Done?

  • Body mass index (BMI) has been linked to breast cancer risk in conventional population studies.

  • In these studies, high BMI is associated with reduced risk of breast cancer in premenopausal women but with increased risk in postmenopausal women. These changed risks may be caused by BMI or caused by environmental factors that are associated with BMI.

  • We sought to use a research tool from the genetics field to understand BMI’s causal role in breast cancer.

What Did the Researchers Do and Find?

  • We took advantage of previously identified genetic sequence variations that are associated with BMI in European populations and used these variants to predict BMI. These variants are set at birth and are not affected by environmental factors; thus, outcomes associated with high BMI as predicted by genetic variants are more likely to be caused by high BMI itself rather than by environmental factors that are associated with high BMI.

  • Using databases containing individual genetic sequences and breast cancer diagnoses in a European population, we tested whether genetically predicted BMI was associated with diagnosis of breast cancer in either pre- or postmenopausal women.

  • We found that genetically predicted high BMI was associated with decreased breast cancer risk, in both cancer databases. Unexpectedly, this was true for both pre- and postmenopausal women.

What Do These Findings Mean?

  • Our results from postmenopausal women contradict prior findings from population studies, which used measured, rather than genetically predicted, BMI.

  • BMI predicted using genetic variants identified to date may be more closely related to body weight in early life or midlife, which is negatively associated with risk of breast cancer. Measured high BMI later in life may be influenced by environmental factors that are associated with increased risk of breast cancer.

  • More research is needed on the interrelationship of genetic factors, environment, and BMI in the risk of breast cancer.

Introduction

The association between body mass index (BMI) and breast cancer risk has been extensively investigated in observational epidemiologic studies. Most prospective cohort studies reported an inverse association between BMI and premenopausal breast cancer risk [17]. A modest positive association has been reported between BMI and postmenopausal breast cancer risk [1,3,8], and this association was primarily limited to women who did not use postmenopausal hormone therapy (HT) [2,9,10] or women diagnosed with estrogen receptor (ER)-positive breast cancer [10].

Several explanations have been proposed for the opposite direction of the association between BMI and breast cancer risk by menopausal status. For example, it is postulated that overweight and obese women are more likely to experience anovulatory menstrual cycles, potentially leading to lower exposure to ovarian hormones and thus reducing the risk of breast cancer in premenopausal women [11,12]. Among postmenopausal women, the primary source of estrogen is the conversion of androgens in adipose tissue. Overweight women have been found to have higher estrogen levels than normal weight women, providing a possible explanation for positive associations observed between BMI and breast cancer risk in postmenopausal women. Although these postulated explanations are biologically plausible for the different associations observed between measured BMI and breast cancer risk in pre-and postmenopausal women, it remains unclear whether BMI is causally associated with breast cancer risk or serves as a surrogate measure for other risk factors. These uncertainties should be clearly communicated in public health messages about breast cancer prevention.

Recent genome-wide association studies (GWAS) have identified multiple loci associated with BMI. A genetic score, comprising BMI-associated single nucleotide polymorphisms (SNPs) capturing the portion of BMI determined by genetic factors, can be used in Mendelian randomization (MR) as the instrumental variable to evaluate the association between BMI and breast cancer risk by eliminating concerns of reverse causation and reducing the likelihood of selection bias and confounding in conventional epidemiologic studies. This is because the alleles associated with BMI should be randomly assigned to offspring from parents during gamete formation. In this study, data from two large consortia were used to conduct a MR analysis to assess the association between BMI and breast cancer risk.

Methods

Study Population: BCAC and DRIVE Consortia

We obtained data from two large consortia, the Breast Cancer Association Consortium (BCAC) and the Discovery, Biology, and Risk of Inherited Variants in Breast Cancer (DRIVE) Project. All participating studies obtained written, informed consent from all subjects and received study protocol approval from their respective Institutional Review Boards. Our first analysis included 39 studies contributing participants of European ancestry to the BCAC Collaborative Oncological Gene Environment Study (COGS) project (S1 Table). This analysis included data from 46,235 breast cancer cases and 42,482 controls. Selected characteristics of BCAC participants by study are provided in S2 Table. Details of the genotyping protocol in the BCAC are described elsewhere [13] (http://ccge.medschl.cam.ac.uk/research/consortia/icogs/). Genotype data were obtained either by direct genotyping using a custom Illumina iSelect genotyping array (iCOGS) that contains 211,155 SNPs [13] or by imputation, using data from the iCOGS array and the 1000 Genomes Project Phase I integrated variant set (March 2012 release) as the reference using the program IMPUTE2 [14]. Population-specific variations in allele frequencies of the SNPs were accounted for by eight principal components using a set of 37,000 uncorrelated SNPs, including those selected as ancestry-informative markers, as previously described [13].

To further assess the association between genetically predicted BMI and breast cancer risk, we analyzed data from the DRIVE project, for which summary-level statistics from 16,003 breast cancer cases and 41,335 controls of European ancestry from 11 participating studies were available (S3 Table). DRIVE project genotyping data were generated by Illumina and Affymetrix SNP genotyping arrays or by genotype imputation with the HapMap phase 2 CEU panel as reference using MACH v1.0 [15] or IMPUTE [14].

Selection of BMI-Associated SNPs

SNPs associated with variation in BMI were identified from the NHGRI-EBI Catalog of Published Genome-Wide Association Studies in August 2015 [16]. Furthermore, we included all BMI-associated SNPs from the latest finding of Genetic Investigation of Anthropometric Traits (GIANT) [17]. SNPs associated with BMI at genome-wide significance levels (p < 5 × 10−8) in populations of European ancestry were selected for this study. We selected independent SNPs, defined as r2 < 0.1 based on International HapMap Project phase 3 data. For any two SNPs with an r2 ≥ 0.1, the SNP with the lower p-value for association with BMI was selected. In total, 84 SNPs were selected for analysis. In BCAC data, 50 of the 84 SNPs were successfully genotyped, and the remaining 34 SNPs were imputed with high quality (imputation r 2 > 0.8).

Statistical Analysis

Genetic scores for BMI (BMI-GS) used for MR were computed using previously described methods [1822]. The GS used in our primary analysis was constructed using external weights, and calculated using the following formula: GS=i=184βiSNPi, where β i is the effect of the ith SNP for BMI reported in previous studies [17] and SNP i is the dosage of the effect allele (range: 0 to 2) of the ith SNP. To scale the GS to the unit of BMI, we first performed a linear regression among controls, observed BMI ~ GS + error, where the expectation of error is zero. From this regression we obtained β 0 (slope = 18.99) and β 1 (effect = 0.451). Then, we used the values of β 0 and β 1 to compute BMI-GS using the formula, BMI-GS = β 0 + β 1 * GS. The BMI-GS is a linear transformation of GS, and thus, these two variables were perfectly correlated (r = 1.0).

Pooled analyses and meta-analysis were conducted to evaluate the association of BMI-GS with breast cancer risk. In pooled analysis, subjects from all BCAC studies were analyzed with adjustment for the BCAC study sites. In meta-analysis, we estimated the risk of breast cancer associated with BMI-GS in each of the BCAC studies, and then combined the results using a fixed effects model. Sensitivity analyses were performed using an unweighted BMI-GS to evaluate the robustness of the association (S4 Table). The percentage of BMI variation explained by BMI-GS was calculated using linear regression models. We performed Egger regression [23] analysis to detect possible pleiotropic effects of the instrumental variable used in our analyses.

Logistic regression was used to calculate adjusted odds ratios for the association between BMI-GS (continuously and categorically: 25.5–25.9, 26.0–26.5, and ≥26.5 kg/m2), versus <25.5. Traditional World Health Organization BMI cutoffs were not used because of the narrow range of the BMI predicted by BMI-GSs (range: 24.14–28.53).

We performed stratified analyses by factors that could potentially modify the association, including age, menopausal status, and postmenopausal HT. We assessed heterogeneity by hormone receptor status. Potential confounders included in logistic regression models were BCAC study site, age, and the eight principal components as described previously [13]. In some analyses, we also adjusted for known and suspected breast cancer risk factors, including age at menarche, HT use, and smoking. We used the two-sample method [24] to analyze the association of BMI-GS and breast cancer risk using the summary statistics data obtained from the DRIVE project (available on the Genetic Associations and Mechanisms in Oncology [GAME-ON] website: http://gameon.dfci.harvard.edu). The potential causal association between BMI (X) and breast cancer risk (Y) was modeled using BMI-associated SNPs as the instrumental variable [25]. Specifically, the causal effect (β YX) was calculated by using the Wald estimator: βYX=βYGβXG, where β YG is the natural log-scale odds ratio (OR) for breast cancer risk associated with the instrumental variable; β XG is the regression coefficient of the instrumental variable for BMI obtained from previous GWAS [17]. The standard error for the causal effect was computed using the delta method [26]: SEYX=((SYGβXG)2+(SXGβYG)2βXG4); S YG and S XG are the corresponding standard errors. We used an inverse-variance weighted method [27] to evaluate the combined association of the 84 BMI-associated SNPs with breast cancer risk.

To evaluate the associations between individual SNPs and breast cancer risk, summary estimates from the BCAC and DRIVE datasets were combined using the inverse-variance weighted method [28]. Analyses were performed using PLINK (v 1.07), R (v 3.02), and SAS (v 9.3). A two-sided p-value < 0.05 was considered statistically significant unless stated otherwise.

Results

In pooled analyses including BCAC controls, the point estimates for the associations between all 84 SNPs and BMI were in the same direction as reported in the literature. However, only 39 of the 84 SNPs showed associations with BMI at p ≤ 0.05, likely because of small sample size (S5 Table).

As expected, we observed a positive association between BMI-GS and observed BMI in pooled analyses using data from controls (p < 0.001 for premenopausal women, p < 0.001for postmenopausal women, and p < 0.001for all controls combined) (Table 1). Using data from cases and controls combined, we showed associations of BMI-GS with age at menarche (p < 0.001), postmenopausal HT use (p  = 0.004), smoking (p < 0.001), and weight (p  < 0.001). Results were unchanged after adjusting for observed BMI (S6 Table).

Table 1. Associations of the weighted BMI-GSs with BMI and traditional breast cancer risk factors.

Outcome Number of Participants Summary Effect* Standard Error P-value
BMI (kg/m 2 )
 Controls 22,056 0.451 0.0286 1.55 × 10−55
 Premenopausal controls 5,532 0.456 0.0565 9.38 × 10−16
 Postmenopausal controls 15,025 0.449 0.0345 4.96 × 10−38
Traditional Risk Factors **
 Age (years) 88,807 0.0012 0.0034 0.71
 Age at menarche (years) 53,990 −0.0719 0.0061 4.06 × 10−32
 Menopausal status (post versus pre) 61,686 0.0044 0.0082 0.59
 Age at menopause (years) 26,921 0.0359 0.0322 0.26
 Family history of breast cancer (yes versus no) 47,417 −0.0102 0.0111 0.36
 Parous (yes versus no) 62,683 0.0118 0.0103 0.25
 Parity (numbers) 61,837 0.0049 0.0049 0.32
 Age at first live birth (years) 44,735 −0.0563 0.0206 0.006
 Use of HRT (postmenopausal) (ever versus never) 22,400 −0.0367 0.0128 0.004
 Breastfeeding (ever versus never) 43,321 0.0125 0.0095 0.19
 Smoking (ever versus never) 39,562 0.0305 0.009 0.0007
 Weight (control) (kg) 15,410 1.3769 0.0971 2.35 × 10−45
 Height (cm) 50,706 0.0336 0.0255 0.19

HRT, hormone replacement therapy. The results stratified by menopausal status for significant risk factors are as follows: formatted as (summary effect, standard error, and p-value); age at menarche: premenopausal (−0.0802, 0.0106, 6.63 × 10−14) and postmenopausal (−0.0099, 0.001, 5.75 × 10−23); age at first birth: premenopausal (−0.0634, 0.0392, 0.11) and postmenopausal (−0.0431, 0.0246, 0.08); smoking: premenopausal (0.0382, 0.0168, 0.02) and postmenopausal (0.0285, 0.0109, 0.009); and weight: premenopausal (1.4767, 0.2133, 5.31 × 10−12) and postmenopausal: (1.3893, 0.1175, 5.24 × 10−32).

* The regression coefficient is presented for continuous variables and natural log-scale OR for dichotomous variables, per unit increase of the weighted BMI-GS.

There was no heterogeneity in the association of the weighted BMI-GS with observed BMI among cases and controls.

** The linear regression models fitting weight included only controls; models of all other traditional breast cancer risk factors included all subjects. The total number of subjects is 88,807 (cases + controls) in our dataset. A total of 22,056 controls have observed BMI. The premenopausal controls and the postmenopausal controls do not add up to the total number of controls because of missing menopausal status.

In pooled analyses of BCAC data, an inverse association was observed between breast cancer risk and genetically predicted BMI (Table 2). The OR per 5 kg/m2 increase in BMI using meta-analyses was 0.65 (95% CI: 0.56–0.75, p < 3.32×10−10), which was similar to that derived from the pooled analyses, OR = 0.68 (95% CI: 0.58–0.81, p < 2.50 × 10−5). There was no apparent evidence for heterogeneity in the OR among BCAC studies (heterogeneity p = 0.06) (Fig 1). MR-Egger regression testing on funnel plot asymmetry yielded p = 0.44, suggesting no violation of the basic assumptions for MR (S1 Fig). In pooled analysis, adjusting for observed BMI did not change the results (OR = 0.57, 95% CI: 0.45–0.70, p  = 8.17×10−9 ). As a part of the sensitivity analysis, we also performed pooled analysis adjusting for breast cancer risk factors as covariables. As expected, adjustment of these variables slightly attenuated the association. However, the association remained highly statistically significant (Fig 2). The OR for the association between genetically predicted BMI and breast cancer risk was similar for pre- and postmenopausal women (heterogeneity test, p = 0.45), and in postmenopausal women, it was similar for women with and without use of HT (heterogeneity test, p = 0.42). There was some evidence for a stronger association for ER-positive tumors than ER-negative tumors (heterogeneity test, ER p = 0.03). Associations were similar in population-based studies (OR = 0.52, 95% CI: 0.38–0.70, p  = 1.84×10−6) and non-population-based studies (OR = 0.71, 95% CI: 0.54–0.92, p  = 0.007). Analyses using categorical variables of genetically predicted BMI showed inverse results similar to analyses treating predicted BMI as a continuous variable. We also stratified subjects by age (<50 y, 50–55 y, 55–65 y, >65 y) and found an inverse association between genetically predicted BMI and breast cancer risk for all age groups ≤ 65 y (S7 Table). No association between predicted BMI and breast cancer was observed in the age group > 65 (OR = 0.85, 95% CI: 0.62–1.15, p = 0.29). The BMI predicted using unweighted GS was also associated with reduced breast cancer risk (Fig 2). The effect sizes were similar, but somewhat weaker for unweighted analyses. The BMI-GS explained 1.23% of variation in BMI in the BCAC control group. Analyses of summary statistics from the DRIVE project replicated the inverse association between genetically predicted BMI and breast cancer risk, OR = 0.72 (95% CI: 0.60–0.84, p = 1.64×10−7) (S8 Table). The strength of the association observed was similar to that observed in the BCAC dataset.

Table 2. Associations between genetically predicted BMI and breast cancer risk.

By BMI Group* Per 5 kg/m2 Increase
Subjects 25.5–25.9 26.0–26.5 ≥26.5
OR (95% CI) OR (95% CI) OR (95% CI) OR (95% CI) P-value
All Women Combined
 All subjects 88,807 0.95 (0.87–1.02) 0.90 (0.82–0.98) 0.84 (0.71–0.97) 0.65 (0.56–0.75) 3.32 × 10−10
By Menopausal Status
 Premenopausal 19,262 0.96 (0.88–1.05) 0.91 (0.83–1.00) 0.78 (0.67–0.9.0) 0.44 (0.31–0.62) 9.91 × 10−8
 Postmenopausal 42,424 0.96 (0.9–1.01) 0.91 (0.85–0.96) 0.88 (0.81–0.96) 0.57 (0.46–0.71) 1.88 × 10−8
  Never HRT use 11,433 0.98 (0.87–1.09) 0.92 (0.80–1.03) 0.89 (0.75–1.04) 0.60 (0.38–0.90) 0.0097
  Ever HRT use 10,967 0.93 (0.82–1.04) 0.86 (0.74–0.97) 0.84 (0.69–0.99) 0.47 (0.29–0.73) 0.0002
By ER Status
 ER-positive 69,556 0.98 (0.93–1.02) 0.93 (0.89–0.98) 0.90 (0.84–0.96) 0.68 (0.57–0.81) 2.74 × 10−6
 ER-negative 49,770 1.01 (0.87–1.15) 0.95 (0.88–1.02) 0.91 (0.83–0.98) 0.45 (0.33–0.59) 3.41 × 10−10
By PR Status
 PR-positive 62,231 0.98 (0.93–1.02) 0.93 (0.87–0.98) 0.89 (0.82–0.95) 0.65 (0.53–0.78) 9.52 × 10−7
 PR-negative 52,208 1.13 (1.01–1.25) 0.92 (0.86–0.98) 0.90(0.84–0.97) 0.47 (0.36–0.60) 2.84 × 10−11
By ER/PR Status
 ER/PR-positive 61,430 0.97 (0.92–1.02) 0.93 (0.87–0.98) 0.89 (0.82–0.95) 0.66 (0.55–0.8) 5.46 × 10−6
 ER/PR-negative 28,855 0.93 (0.85–1.01) 0.90 (0.82–0.98) 0.80 (0.69–0.90) 0.42 (0.3–0.58) 7.19 × 10−10

ER, estrogen receptor; PR, progesterone receptor. Models were adjusted for age, first eight principal components, study sites, age at menarche, parity, use of contraceptive, use of hormone replacement therapy, breast feeding, and smoking status.

* BMI <25 is used as reference.

Results are presented for per 5 kg/m2 increase.

Fig 1. Meta-analysis of the association between genetically predicted BMI and breast cancer risk in the BCAC.

Fig 1

The summary OR was calculated by combining individual analysis results from each study in BCAC (p for heterogeneity = 0.06).

Fig 2. Sensitivity analyses using pooled data for associations between genetically predicted BMI and breast cancer risk in the BCAC.

Fig 2

(A) Adjusted for age, study sites, and the first eight principal components. (b) Adjusted for age, study sites, the first eight principal components, and additional breast cancer risk factors: age at menarche, parity, use of contraceptive, use of hormone replacement therapy, breast feeding, and smoking status. Weighted: the BMI-GS was constructed using the additive model weighted by external beta reported from previous literatures. Unweighted: the BMI-GS was constructed using the additive model without any weight.

In pooled analysis of the BCAC data, 15 of the 84 SNPs analyzed in the study showed an inverse association with breast cancer risk, and one showed positive association with breast cancer risk at p < 0.05 (S9 and S10 Tables). In the DRIVE dataset, 12 of the 84 SNP were significantly inversely associated with breast cancer risk, including 9 SNPs that were also significant in the BCAC data (S8 and S10 Tables). When the datasets were combined, 17 SNPs showed an association with breast cancer risk at p < 0.05, and 16 of them showed an inverse association (Table 3 and S10 Table). Five of the associations remained statistically significant after adjusting for multiple comparisons (p < 0.0006 for 84 comparisons).

Table 3. Significant associations detected at p < 0.05 between breast cancer risk and BMI-related SNPs.

BCAC* GAME-ON DRIVE Combined
SNP Chr Position Gene Alleles EAF OR (95% CI) P EAF OR (95% CI) P OR (95% CI)* P
rs1558902 16 53803574 RABEP1(N) A/T 0.41 0.93 (0.91–0.95) 2.77 × 10−14 0.68 0.95 (0.91–0.99) 0.008 0.93 (0.91–0.95) 3.63 × 10−16
rs713586 2 25158008 STXBP6(N) C/T 0.47 0.94 (0.92–0.97) 1.82 × 10−6 0.48 0.96 (0.93–1.00) 0.03 0.95 (0.93–0.97) 3.19 × 10−7
rs7903146 10 114758349 NRXN3 C/T 0.72 0.96 (0.94–0.98) 7.01 × 10−5 0.70 0.96(0.92–1.00) 0.04 0.96 (0.94–0.98) 8.65 × 10−6
rs7599312 2 213413231 LMX1B(B,N) G/A 0.72 0.96 (0.94–0.98) 0.0004 0.96 0.94(0.84–1.03) 0.17 0.96 (0.94–0.98) 0.0002
rs17024393 1 110154688 BDNF(B/M) C/T 0.03 0.93 (0.87–0.98) 0.007 0.41 0.96 (0.92–0.99) 0.009 0.94 (0.91–0.97) 0.0003
rs2867125 2 622827 GNPDA2(N) C/T 0.83 0.96 (0.94–0.99) 0.003 0.64 0.97 (0.94–1.00) 0.07 0.96 (0.94–0.99) 0.0008
rs2287019 19 46202172 LI NG02(D,N) C/T 0.79 0.96 (0.93–0.99) 0.009 0.80 0.96 (0.92–1.00) 0.06 0.96 (0.94–0.99) 0.0010
rs3810291 19 47569003 CLIP1(N) A/G 0.67 0.98 (0.95–1.00) 0.01 0.43 0.96 (0.92–0.99) 0.01 0.97 (0.95–0.99) 0.002
rs571312 18 57839769 NT5C2(N) A/C 0.24 0.97 (0.95–1.00) 0.02 0.23 0.96 (0.92–1.00) 0.04 0.97 (0.95–0.99) 0.002
rs543874 1 177889480 ELAVL4(B,D,N,Q) G/A 0.19 0.97 (0.95–1.00) 0.04 0.20 0.96 (0.92–1.00) 0.04 0.97 (0.95–0.99) 0.005
rs12401738 1 78446761 HIP1(B,N) A/G 0.38 0.98 (0.96–1.00) 0.05 0.38 0.96 (0.93–1.00) 0.05 0.97 (0.96–0.99) 0.008
rs1528435 2 181550962 EHBP1(B,N) T/C 0.62 0.97 (0.95–0.99) 0.01 0.63 0.98 (0.94–1.01) 0.22 0.97 (0.96–0.99) 0.008
rs2112347 5 75015242 PRKDI(N) T/G 0.63 0.98 (0.96–1.00) 0.03 0.44 0.97 (0.94–1.00) 0.08 0.98 (0.96–0.99) 0.008
rs10733682 9 129460914 FUBPI(N) A/G 0.49 0.97 (0.95–0.99) 0.009 0.47 0.99 (0.95–1.02) 0.41 0.98 (0.96–0.99) 0.01
rs13191362 6 163033350 GPRC5B(C/Q) A/G 0.88 1.03 (1.00–1.06) 0.047 0.87 1.04 (0.98–1.09) 0.18 1.03 (1.01–1.06) 0.02
rs17405819 8 76806584 PRKD1(N) T/C 0.69 0.97 (0.95–1.00) 0.02 0.69 0.99 (0.95–1.02) 0.5 0.98 (0.96–1.00) 0.02
rs3736485 15 51748610 CADM2 A/G 0.47 0.98 (0.96–1.00) 0.12 0.43 0.98 (0.94–1.01) 0.15 0.98 (0.96–1.00) 0.04

* Results are presented for per allele increase of BMI-related SNP. Chr, chromosome; EAF, effective allele frequency. BCAC models were adjusted for age, study, and first eight principal components.

Using data from BCAC, we conducted pooled analyses to evaluate the association of observed BMI with breast cancer risk by study design. Data from prospective cohort studies showed a positive association between observed BMI and breast cancer risk among postmenopausal women, while an inverse association was seen among premenopausal women (S11 Table). Data from nonprospective studies, however, showed an inverse association for both pre- and postmenopausal women. Additional adjustment for BMI-GS did not alter the association between observed BMI and breast cancer risk.

Discussion

Utilizing data from two large consortia, we found in this large MR study a consistent inverse association between BMI predicted by GWAS-identified genetic variants and premenopausal breast cancer risk in all subgroups examined, which is qualitatively consistent with the majority of published epidemiologic studies using measured BMI, although our predicted association, a 46% reduction in risk per 5 kg/m2 increase in BMI, is larger than that estimated in observational studies using measured BMI [1,3,5,8,29]. Prominent hypotheses regarding the underlying cause of the association between higher BMI and decreased premenopausal breast cancer risk implicate more frequent anovulation, lower endogenous estrogen levels, and fewer breast cell divisions in obese women as compared to leaner women.

Our MR analyses demonstrate an inverse association between genetically predicted BMI and postmenopausal breast cancer risk, with a predicted effect similar to that seen in premenopausal women. In contrast, previous large observational studies indicate a 5%–15% increased risk for postmenopausal breast cancer per 5 kg/m2 increase in BMI [1,8]. In our analysis of prospective cohort studies included in BCAC, we observed a similar increase in breast cancer risk associated with observed BMI among postmenopausal women. However, this positive association was not found in the analysis of data from case-control studies included in BCAC, perhaps due to reverse causation. Because disease diagnosis and progress could change body weight, BMI measured after cancer diagnosis, which is done in most case-control studies, does not reflect usual or long-term BMI, and case-control studies are biased in evaluating the association of BMI and cancer risk. Because no BMI data from cases were used in our MR analyses, we have effectively overcome the possible influence of reverse causation in our study results from MR analyses.

The finding for an inverse association between BMI predicted using GWAS-identified SNPs and postmenopausal breast cancer risk differs from findings reported previously in studies using measured BMI, revealing a complex relationship of genetic determinants of BMI, weight gain, and breast cancer risk. A recent study found that a BMI-GS composed of 31 GWAS-identified SNPs (the majority of which are included in our study) was positively associated with annual weight gain between age 20 y and the time of the study baseline interview when participants were middle-aged [30]. On the other hand, this GS was related to a reduced weight in later adulthood. These results suggest that the genetic portion of BMI, as measured using the BMI-GS in our study, may reflect an early-life BMI.

Several studies found that early-life BMI was inversely associated with breast cancer risk, and this inverse association is consistent in premenopausal [31,32] and postmenopausal [31,33] women. It is possible that weight gain during later adulthood, not adult BMI per se, is related to increased postmenopausal breast cancer risk among overweight women as determined using measured BMI. However, we were unable to directly evaluate this hypothesis in our study because adult weight change was not consistently measured in the BCAC contributing studies. Furthermore, the SNPs used to construct the BMI-GS were identified from genetic association studies that included mostly middle-aged adults, and thus, they may not be able to measure weight gain in later adulthood adequately.

After menopause, the primary source of estrogen is formed in adipose tissue, [11,34] causing overweight and obese postmenopausal women to have higher circulating overall and free estradiol levels than their normal BMI counterparts. In premenopausal women, a high BMI is related to anovulatory menstrual cycles. Women with high BMI in both pre- and postmenopause may have lower lifetime estrogen exposure (and thus lower risk of breast cancer) than those who gain weight primarily after menopause. Additionally, measured BMI in postmenopausal women may be a surrogate breast cancer risk factor for adiposity-related changes occurring near or after menopause, such as age-associated slowing metabolism and inflammation associated with increased abdominal fat [35]. Previous investigations support the theory that adult weight gain is positively associated with postmenopausal breast cancer risk, and some investigators have suggested that weight gain may be a more important risk factor for postmenopausal woman than postmenopausal BMI [36,37]. Future research will be necessary to determine the potentially complicated causal mechanisms underlying the association between BMI and breast cancer risk for postmenopausal women.

In our study, we observed associations of high BMI-GS with early age at menarche, low prevalence of postmenopausal HT use, and high prevalence of cigarette smoking. It is known that high body weight is associated with an early age at menarche [38], and overweight women are more likely to smoke cigarettes regularly to reduce or maintain body weight [39,40]. Overweight women are less likely to use HT [41] (likely because their endogenous estrogen levels are higher than normal/underweight women, and thus, they are less likely to experience postmenopausal symptoms—the major reason for HT use). Therefore, it is most likely that the association of these variables with the BMI-GS is mediated through BMI, indicating that the association of the BMI-GS with these breast cancer risk factors does not violate the assumption of MR analyses in our study. Indeed, analyses without adjusting for these variables revealed a stronger association of BMI-GS with breast cancer risk than those with adjustments of these variables. Some of the BMI-associated variants may be associated with certain functions in the central nervous system [17], and these functions in turn are associated with BMI and perhaps other behaviors currently unknown to us. It is also possible that some of the BMI-associated SNPs may be related to other traits. However, we were unable to evaluate these hypotheses in our study. It would be interesting to further evaluate possible pleiotropic effects of BMI-GS in future large MR analyses with extensively measured environmental factors.

We evaluated whether postmenopausal HT use may modify the association between BMI-GS and breast cancer risk or whether the association may vary by tumor hormone receptor status. Unlike some conventional observational studies on observed BMI-postmenopausal breast cancer association [9,42], we did not find the association for BMI-GS to be modified by HT use. We found that the association between the BMI-GS and breast cancer risk was consistent across hormone receptor subtypes. Although ER-positive and ER-negative breast cancer are heterogeneous clinically, they do have a number of shared risk factors, such as age at menarche, benign breast disease, and family history [43].

Our study has certain limitations. To date, GWAS-identified SNPs represent a small, but statistically significant, portion of the explained variance of observed BMI—approximately 2.7% [17,44,45]. Nevertheless, the instrumental variable created in our study is sufficiently strong for conducting MR analyses [46]. Only summary statistics data were available from the DRIVE project, and thus, we were unable to perform analyses stratified by menopausal status and hormone receptor status. However, most of the subjects included in the DRIVE project were postmenopausal women, and the strength of the association between BMI-GS and breast cancer observed in BCAC and DRIVE consortia was similar.

Using data from approximately 146,000 women involved in two large consortia, we provide strong evidence of an inverse association between genetically predicted BMI and breast cancer risk for both premenopausal and postmenopausal women. The present study adds to the body of knowledge on the influence of body mass on breast cancer risk and points to further work required to elucidate the mechanisms responsible for the complex relationship between BMI and breast cancer risk. Our study, along with recent findings of an association of BMI-GS with weight gain in early adult life but weight loss in late adult life, suggests that weight gain later in adulthood may explain, at least partially, the positive association reported from previous studies between measured adult BMI and postmenopausal breast cancer risk, providing further support for lifestyle modification to reduce obesity as the primary prevention of breast cancer.

Supporting Information

S1 Fig. Egger regression funnel plot from the meta-analysis.

The presence of funnel plot asymmetry indicates bias.

(EPS)

S1 Table. Description of BCAC studies participating in this analysis.

(DOCX)

S2 Table. Characteristics of study participants included in the BCAC.

(DOCX)

S3 Table. Description of GAME-ON DRIVE Consortium studies participating in this analysis.

(DOCX)

S4 Table. GS computed for sensitivity analyses.

(DOCX)

S5 Table. Associations of the 84 SNPs with observed BMI in the BCAC.

(DOCX)

S6 Table. Associations of the weighted BMI-GS with traditional breast cancer risk factors adjusting for observed BMI.

(DOCX)

S7 Table. Association of genetically predicted BMI and breast cancer risk, stratified by age group.

(DOCX)

S8 Table. MR analysis of BMI and breast cancer risk in women using summary data from published BMI GWAS and DRIVE Breast Cancer GWAS.

(DOCX)

S9 Table. Associations of the 84 SNPs with breast cancer risk in the BCAC.

(DOCX)

S10 Table. Association of breast cancer risk with 84 BMI-related SNPs.

(DOCX)

S11 Table. The associations between observed BMI and breast cancer risk using BCAC data.

(DOCX)

S1 Text. Complete funding statement.

(DOCX)

Acknowledgments

We thank Meir Stampfer for his helpful comments and all the individuals who took part in these studies and all the researchers, clinicians, technicians and administrative staff who have enabled this work to be carried out. We also would like to thank the following: Andrew Berchuck (OCAC); Rosalind A. Eeles, Ali Amin Al Olama, Zsofia Kote-Jarai, and Sara Benlloch (PRACTICAL); Antonis Antoniou, Lesley McGuffog, and Ken Offit (CIMBA); Andrew Lee, Ed Dicks, Craig Luccarini, and the staff of the Centre for Genetic Epidemiology Laboratory; the staff of the CNIO genotyping unit; Sylvie LaBoissière, Frederic Robidoux, and the staff of the McGill University and Génome Québec Innovation Centre; the staff of the Copenhagen DNA laboratory; and Julie M. Cunningham, Sharon A. Windebank, Christopher A. Hilker, Jeffrey Meyer, and the staff of Mayo Clinic Genotyping Core Facility. The authors also wish to thank the following: Maggie Angelakos, Judi Maskiell, and Gillian Dite (ABCFS); Annegien Broeks, Sten Cornelissen, Richard van Hien, Frans Hogervorst, Senno Verhoef, Laura van 't Veer, Emiel Rutgers, Ellen van der Schoot, and Femke Atsma (ABCS); Matthias Rübner, Silke Landrith, Alexander Hein, Michael Schneider, and Sonja Oeser (BBCC); Eileen Williams, Elaine Ryder-Mills, and Kara Sargus (BBCS); Niall McInerney, Gabrielle Colleran, Andrew Rowan, and Angela Jones (BIGGS); Peter Bugert, and Medical Faculty Mannheim (BSUCH); staff and participants of the Copenhagen General Population Study, Dorthe Uldall Andersen, Maria Birna Arnadottir, Anne Bank, and Dorthe Kjeldgård Hansen for the excellent technical assistance, and The Danish Breast Cancer Group (DBCG) for the tumor information (CGPS); Charo Alonso and Primitiva Menendez (CNIO-BCS); Leslie Bernstein, James Lacey, Sophia Wang, Huiyan Ma, Yani Lu, and Jessica Clague DeHart at the Beckman Research Institute of City of Hope, Dennis Deapen, Rich Pinder, Eunjung Lee, and Fred Schumacher at the University of Southern California, Pam Horn-Ross, Peggy Reynolds, Christina Clarke Dur and David Nelson at the Cancer Prevention Institute of California, and Argyrios Ziogas, and Hannah Park at the University of California Irvine (CTS); Hartwig Ziegler, Sonja Wolf, and Volker Hermann (ESTHER); Heide Hellebrand and Stefanie Engert (GC-HBOC); The GENICA Network (Dr. Margarete Fischer-Bosch-Institute of Clinical Pharmacology, Stuttgart, and University of Tübingen, Germany [HB, Wing-Yee Lo, Christina Justenhoven], Department of Internal Medicine, Evangelische Kliniken Bonn gGmbH, Johanniter Krankenhaus, Bonn, Germany [Yon-Dschun Ko, Christian Baisch], Institute of Pathology, University of Bonn, Germany [Hans-Peter Fischer], Molecular Genetics of Breast Cancer, Deutsches Krebsforschungszentrum (DKFZ) [Ute Hamann], Heidelberg, Germany and Institute for Prevention and Occupational Medicine of the German Social Accident Insurance, Institute of the Ruhr University Bochum (IPA), Bochum, Germany [TB, Beate Pesch, Sylvia Rabstein, Anne Lotz], Institute of Occupational Medicine and Maritime Medicine, University Medical Center Hamburg-Eppendorf, Germany [Volker Harth]); Kirsimari Aaltonen, Karl von Smitten, Sofia Khan, Tuomas Heikkinen, and Irja Erkkilä (HEBCS); Peter Hillemanns, Hans Christiansen, and Johann H. Karstens (HMBCS); Eija Myöhänen and Helena Kemiläinen (KBCP); Heather Thorne and Eveline Niedermayr (kConFab/AOCS); Gilian Peuteman, Dominiek Smeets, Thomas Van Brussel, and Kathleen Corthouts (LMBC); Petra Seibold, Judith Heinz, Nadia Obi, Alina Vrieling, Ursula Eilber, Sabine Behrens, Muhabbet Celik, and Til Olchers (MARIE); Paolo Peterlongo of IFOM, the FIRC Institute of Molecular Oncology, Siranoush Manoukian, Bernard Peissel, and Daniela Zaffaroni of the Fondazione IRCCS Istituto Nazionale dei Tumori [INT], Monica Barile, and Irene Feroce of the Istituto Europeo di Oncologia [IEO] and Loris Bernard and the personnel of the Cogentech Cancer Genetic Test Laboratory (MBCSG); Martine Tranchant at CHU de Québec Research Center, and Marie-France Valois, Annie Turgeon, and Lea Heguy at McGill University Health Center, Royal Victoria Hospital, McGill University (MTLGEBCS); NBCS study group (NBCS); Meeri Otsukka and Kari Mononen (OBCS); Teresa Selander, Gord Glendon, and Nayana Weerasooriya (OFBCR); Ellie Krol-Warmerdam, Jannet Blom, and Jan Molenaar (ORIGO); Louise Brinton, Mark Sherman, Stephen Chanock, Neonila Szeszenia-Dabrowska, Beata Peplonska, Witold Zatonski, Pei Chao, and Michael Stagner (PBCS); The Swedish Medical Research Counsel (pKARMA and SASBAC); Ans van den Ouweland, Anja Nieuwlaat, Ellen Crepin, and Petra Bos (RBCS); Sue Higham, Helen Cramp, Dan Connley, Ian Brock, Malcolm Reed, and Sabapathy Balasubramanian (SBCS); the SEARCH and EPIC teams (SEARCH); and Robert Pilarski, Charles Shapiro, the OSU Breast Cancer Tissue Bank, and the Human Genetics Sample Bank (TNBCC). We thank Margreet Ausems, Christi van Asperen, Senno Verhoef, and Rogier van Oldenburg for providing samples from their Clinical Genetic centers; Pascal Arp, Mila Jhamai, Marijn Verkerk, Lizbeth Herrera, and Marjolein Peters for their help in creating the GWAS database; and Karol Estrada and Maksim V. Struchalin for their support in creation and analysis of imputed data.

Abbreviations

BCAC

Breast Cancer Association Consortium

BMI

body mass index

COGS

Collaborative Oncological Gene Environment Study

DRIVE

Discovery, Biology, and Risk of Inherited Variants in Breast Cancer

ER

estrogen receptor

GAME-ON

Genetic Associations and Mechanisms in Oncology

GIANT

Genetic Investigation of Anthropometric Traits

GS

genetic score

GWAS

genome-wide association studies

HRT

hormone replacement therapy

HT

hormone therapy

MR

Mendelian randomization

OR

odds ratio

SNP

single nucleotide polymorphism

Data Availability

The GAME-ON summary statistics are free to access (http://epi.grants.cancer.gov/gameon/). To request the data from the Breast Cancer Association Consortium (BCAC), readers are instructed to submit a concept proposal, which will be reviewed by the BCAC Data Access Coordination Committee (DACC) (http://ccge.medschl.cam.ac.uk/consortia/bcac/). Over the past seven years, more than 500 concept proposals have been approved, including many from non-BCAC investigators.

Funding Statement

The work conducted for this project at Vanderbilt University is supported primarily by National Cancer Institute research grants (R37CA070867 and R25CA160056) and endowment funds for the Ingram Professorship and Anne Potter Wilson Chair. JF is a volunteer for the NCI in the Epidemiology and Biostatistics Program and has no role in funding decisions. A complete funding statement is available in the Supporting Information. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Supplementary Materials

S1 Fig. Egger regression funnel plot from the meta-analysis.

The presence of funnel plot asymmetry indicates bias.

(EPS)

S1 Table. Description of BCAC studies participating in this analysis.

(DOCX)

S2 Table. Characteristics of study participants included in the BCAC.

(DOCX)

S3 Table. Description of GAME-ON DRIVE Consortium studies participating in this analysis.

(DOCX)

S4 Table. GS computed for sensitivity analyses.

(DOCX)

S5 Table. Associations of the 84 SNPs with observed BMI in the BCAC.

(DOCX)

S6 Table. Associations of the weighted BMI-GS with traditional breast cancer risk factors adjusting for observed BMI.

(DOCX)

S7 Table. Association of genetically predicted BMI and breast cancer risk, stratified by age group.

(DOCX)

S8 Table. MR analysis of BMI and breast cancer risk in women using summary data from published BMI GWAS and DRIVE Breast Cancer GWAS.

(DOCX)

S9 Table. Associations of the 84 SNPs with breast cancer risk in the BCAC.

(DOCX)

S10 Table. Association of breast cancer risk with 84 BMI-related SNPs.

(DOCX)

S11 Table. The associations between observed BMI and breast cancer risk using BCAC data.

(DOCX)

S1 Text. Complete funding statement.

(DOCX)

Data Availability Statement

The GAME-ON summary statistics are free to access (http://epi.grants.cancer.gov/gameon/). To request the data from the Breast Cancer Association Consortium (BCAC), readers are instructed to submit a concept proposal, which will be reviewed by the BCAC Data Access Coordination Committee (DACC) (http://ccge.medschl.cam.ac.uk/consortia/bcac/). Over the past seven years, more than 500 concept proposals have been approved, including many from non-BCAC investigators.


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