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Author Manuscript
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Published in final edited form as:
Hum Genet. 2013 March ; 132(3): 323–336. doi:10.1007/s00439-012-1246-3.
Gene-environment interactions and obesity traits among
postmenopausal African-American and Hispanic women in the
Women’s Health Initiative SHARe Study
Digna R. Velez Edwards1, Adam C. Naj2, Keri Monda3, Kari E. North3, Marian Neuhouser4,
Oyunbileg Magvanjav1, Ibukun Kusimo1, Mara Z. Vitolins5, JoAnn E. Manson6, Mary Jo
O’Sullivan7, Evadnie Rampersaud8, and Todd L. Edwards1
1Center for Human Genetics Research, Vanderbilt Epidemiology Center Institute of Medicine and
Public Health, Vanderbilt University, Nashville, TN
2Department
of Biostatistics and Epidemiology, Center for Clinical Epidemiology and Biostatistics,
University of Pennsylvania, Pennsylvania, PA
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3Department
4Fred
of Epidemiology, Carolina Center for Genome Sciences, UNC, Chapel Hill, NC
Hutchinson Cancer Research Center, Seattle, WA
5Department
of Epidemiology & Prevention, Division of Public Health Sciences, Wake Forest
University Health Sciences, Winston-Salem, NC
6Harvard
Medical School, Boston, MA
7Department
8Hussman
of Obstetrics and Gynecology, University of Miami, Miami, FL, USA
Institute for Human Genomics, University of Miami, Miller School of Medicine, Miami,
FL, USA
Abstract
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Genome-wide association studies of obesity measures have identified associations with single
nucleotide polymorphisms (SNPs). However, no large-scale evaluation of gene-environment
interactions has been performed. We conducted a search of gene-environment (G×E) interactions
in post-menopausal African-American and Hispanic women from the Women’s Health Initiative
SNP Health Association Resource GWAS study. Single SNP linear regression on body mass index
(BMI) and waist-to-hip circumference ratio (WHR) adjusted for multidimensional-scaling-derived
axes of ancestry and age was run in race-stratified data with 871,512 SNPs available from
African-Americans (N=8,203) and 786,776 SNPs from Hispanics (N=3,484). Tests of G×E
interaction at all SNPs for recreational physical activity (met-hrs/wk), dietary energy intake (kcal/
day), alcohol intake (categorical), cigarette smoking years, and cigarette smoking (ever vs. never)
were run in African-Americans and Hispanics adjusted for ancestry and age at interview, followed
by meta-analysis of G×E interaction terms. The strongest evidence for concordant G×E
interactions in African-Americans and Hispanics was for smoking and marker rs10133840 (Q
statistic P=0.70, beta=−0.01, P=3.81×10−7) with BMI as the outcome. The strongest evidence for
G×E interaction within a cohort was in African-Americans with WHR as outcome for dietary
energy intake and rs9557704 (SNP×kcal =−0.04, P=2.17×10−7). No results exceeded the
Bonferroni–corrected statistical significance threshold.
CORRESPONDENCE: Todd L. Edwards, 2525 West End Avenue, Suite 600 6th fl, Nashville, TN 37203,
todd.l.edwards@vanderbilt.edu, Telephone: 615-322-3652.
The authors have no conflicts of interest to disclose.
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Keywords
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BMI; WHR; genetic epidemiology; disparity; obesity; GWAS
INTRODUCTION
Globally, the prevalence of obese (body mass index (BMI)≥30) and overweight (BMI≥25)
adults (persons with age≥15y) has increased to approximately 1.6 billion individuals
worldwide according to WHO estimates (2009). The public health impact of obesity is
substantial, since the condition is associated with increased risks for several common comorbidities, including type 2 diabetes, cardiovascular disease, dyslipidemia, hypertension,
sleep apnea, and several forms of cancer including postmenopausal breast cancer (Field et
al., 2001; Must et al., 1999). As a result, the obesity epidemic has become major a global
public health problem and economic burden.
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Multiple lines of evidence indicate that a large proportion of obesity risk is mediated by
genetic factors, with studies estimating that 40–90% of human population variation of BMI
is due to genetic risk factors (Hjelmborg et al., 2008; Maes et al., 1997; Wardle et al., 2008).
Over the last few years, several genome wide association studies (GWAS) have succeeded
in identifying novel reproducible associations in candidate genes, although these appear to
explain only a small proportion of obesity risk. Several of these genes are expressed or are
known to function in the central nervous system (CNS) (Frayling et al., 2007; Loos et al.,
2008; Meyre et al., 2009; Speliotes et al., 2010; Thorleifsson et al., 2009; Willer et al., 2009)
supporting their role in regulating food intake and metabolism.
In the US, the obesity epidemic disproportionately affects ethnic minorities, including
African-Americans (Ogden et al., 2006). Hispanic and African-American (non-Hispanic)
adults in the U.S. are overweight and obese more often than European-American (nonHispanic) adults (Flegal et al., 2010). For example, about half of non-Hispanic AfricanAmerican and Hispanic women in their forties and fifties are obese, whereas only 36 percent
of same-age European American women are obese (Flegal et al., 2010). The causes of the
excess are poorly understood, but may be related to behavioral, environmental and genetic
risk factors (Ogden et al., 2006). Although understanding the way in which genotype and
environmental/behavioral risk factors interact may offer insights into modifiable behavioral
changes that could reduce obesity risk, few studies have been performed to evaluate those
phenomena (Hetherington and Cecil, 2010).
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In the present study, we examined G×E interactions between single nucleotide
polymorphisms (SNPs) genotyped in multi-ethnic GWAS that included African-American
and Hispanic postmenopausal women in the Women’s Health Initiative (WHI)Observational Study and the WHI-Clinical Trial. Our primary outcomes of interest were
BMI and waist-to-hip ratio (WHR) and we focused on environmental/behavioral risk factors
known to be associated with body weight, including recreational physical activity levels,
total dietary energy intake, cigarette smoking, and alcohol intake.
MATERIALS AND METHODS
Study Population
The data used in this study were obtained from African-American and Hispanic women
genotyped as part of the WHI-Observational Study (WHI-OS) and randomized clinical trial
(WHI-CT) SNP Health Associated Resource (SHARe) GWAS of minority women. The
WHI-OS is a prospective study that recruited 93,676 postmenopausal women ages 50–79
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across 40 clinical centers in the United States between October 1, 1993 and December 31,
1998 who were not participating in the WHI-CT (1998;2009; Curb et al., 2003; Hays et al.,
2003; Langer et al., 2003). The original protocol followed women until 2005; the women
were then invited to participate in the WHI-OS Extension Study for continued follow-up
through 2010. Women were excluded from participating in the WHI-OS if they were
currently participating in an existing randomized trial, had medical complications that
predicted survival at less than 3 years, or conditions that prevented study participation or
adherence (1998;2009; Curb et al., 2003; Hays et al., 2003; Langer et al., 2003). The WHICT enrolled 68,132 postmenopausal women between 50–79 years of age from 1993–1998
and grouped women into trials focused on three prevention strategies: hormone therapy,
dietary modification, and calcium/vitamin D (Carty et al., 2011; Manson et al., 2007;
Neuhouser et al., 2009). Within the cohort of women that include the WHI-OS and WHI-CT
we conducted a retrospective case-control study of African-American and Hispanic women
who provided blood samples and were subsequently genotyped as part of the WHI-OS
SHARe GWAS for minority women.
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Information regarding demographics, clinical, behavioral characteristics, medical history,
lifestyle/behavioral factors, and details of physical activity, among other risk factors, were
obtained by standardized self-administered questionnaires at baseline. Measurements for
weight, height, waist, and hip were ascertained during a baseline physical examination
conducted by WHI. Protocols and ascertainment for WHI have been previously described
(1998;2009; Curb et al., 2003; Hays et al., 2003; Langer et al., 2003). Variables examined in
this study include: age at baseline interview (years [y]), BMI (kg/m2), WHR measurements,
recreational physical activity (met-hrs/week), total dietary energy intake (kcal/day), cigarette
smoking (y), cigarette smoking (ever vs. never), and alcohol intake (categorical, nondrinkers
[referent], past drinkers, <1 drink/month, <1 drink/week, 1 to 7 drinks/week, ≥7 drinks/
week).
The primary outcomes for this study were BMI and WHR, as measured in baseline
interviews. Among the 12,008 women who were genotyped as part of the WHI SHARe
GWAS dataset 8,400 African-American women and 3,587 Hispanic women had either BMI
or measurements of WHR from the baseline interview.
Genotyping
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The Affymetrix Human SNP Array 6.0 (Affymetrix®, Inc Santa Clara, CA) was used for
genome wide SNP genotyping. Genomic DNA was quantitated via an ND-8000
spectrophotometer and DNA quality was evaluated via gel electrophoresis. The genomic
DNA samples were processed according to standard Affymetrix procedures for processing
of the assay. The data were processed for genotype calling using the Affymetrix® Genotypic
Console software using the Birdseed calling algorithm version 2.0 (Affymetrix®, Inc., Santa
Clara, CA) (Korn et al., 2008).
Quality Control
Data on 909,622 SNPs and 12,008 individuals were available prior to implementation of
quality control. No individuals were removed after excluding individuals with low
genotyping efficiency (<95%). 251 individuals were removed after kinship estimates
identified related individuals using identity-by-descent sharing from a random selection of
100,000 autosomal SNPs. When a pair of related individuals was identified, only one
member (parent or sibling) of the family was included, with priority given to parent over
offspring. 11,757 unrelated women remained in the final dataset, and among these 11,687
had baseline measures of BMI.
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All SNPs were tested for deviation from Hardy-Weinberg equilibrium (HWE) using PLINK
software, stratified by race (Purcell et al., 2007). We excluded SNPs with HWE P≤10−6,
dropping 17,562 SNPs in African-Americans and 8,571 SNPs in Hispanics. Markers with
low genotyping efficiency (<95%) were also excluded, 6,020 SNPs in African-Americans
and 6,967 SNPs in Hispanics. SNPs with a MAF<0.01 were also excluded, dropping 14,528
SNPs in African-Americans and 47,845 SNPs in Hispanics. Finally, those SNPs that did not
map to a chromosomal position were excluded. This resulted in the removal of 62 SNPs in
African-American and 57 SNPs in Hispanic women. Only SNPs with a MAF≥0.05 were
considered to maintain stability of effect estimates and statistical validity for hypothesis tests
at interaction terms, resulting in the removal of 84,674 SNPs in African-Americans and
130,820 SNPs in Hispanics and a total of 786,776 SNPs in African-Americans and 706,791
SNPs in Hispanics available for analysis. Quality control procedures are presented in
Supplemental Figure 1.
In order to assess population stratification among African-American and Hispanic samples
multi-dimensional scaling (MDS) was employed using PLINK software (Purcell et al.,
2007) to estimate continuous axes of ancestry. The top two MDS components were
extracted among African-American and Hispanic groups individually and used as covariates
in the statistical models to test for association (Supplemental Figure 2).
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Quantitative and ordinal variables were examined for normality, skewness, and kurtosis by
performing the Shapiro-Wilk test of normality, visual inspection of normal quantile and
histogram plots, and kurtosis and skewness summary statistics available from analysis in the
Stata statistical software package, version 11 (StataCorp, College Station, TX, USA).
Quantile-quantile (QQ) plots for each gene-environment interaction were examined and are
provided in Supplemental Figures 3–4.
Statistical Analyses
The associations between each genetic marker and BMI, and WHR adjusted for BMI were
assessed using linear regression stratified by race while adjusting for age and MDS-derived
axes of ancestry using PLINK (Purcell et al., 2007). Demographic variables were analyzed
with two-sample Wilcoxon rank-sum tests to compare between racial groups when variables
were continuous, and Chi-squared tests were used for binary variables. Analyses of
demographic data and transformations were conducted using Stata 11.
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The relationship between BMI and WHR and environmental risk factors related to obesity
were investigated separately for BMI and WHR as outcomes. Each factor was regressed
separately on BMI and WHR adjusted for BMI in a linear regression model while adjusting
for age. A robust measure of standard error was used in these regression analyses. BMI and
WHR were not normally distributed; therefore we performed a Box-Cox transformation for
both BMI and WHR. The normality of regression residuals was verified to evaluate the
modeling approach. Histograms of the BMI and WHR distributions are provided in
Supplemental Figure 5A and 5B and Supplemental Figure 6A and 6B. Dietary energy was
also non-normally distributed and had a highly right-skewed distribution; after evaluating
transformations, a log transformation was used.
For the G×E interaction investigation of BMI and WHR adjusted for BMI, we also included
adjustments for MDS-derived axes of ancestry, age at interview, and terms for the
environmental variable and additively encoded SNP genotypes in linear regression models.
We followed up G×E interaction analyses with random-effects meta-analysis between
African-American and Hispanic results using PLINK (Purcell et al., 2007), because
underlying differences in population histories, correlations among SNPs, and modifiers may
lead to heterogeneity in interaction effects. All P-values are two-sided.
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The most significant gene-environment interactions in AAAfrican-American and Hispanic
subjects with BMI as outcome were also evaluated using logistic regression subdividing
BMI into strata (BMI<25.0 [referent], 25.0–29.9, 30.0–34.9, and ≥35.0 kg/m2) and
evaluating each category vs. BMI<25.0 kg/m2 as the outcome to estimate the change in risk
of overweight, obesity, and severe obesity, respectively. These models were adjusted for age
at interview and ancestry.
RESULTS
Demographic data
This study included 8,203 African-American and 3,484 Hispanic female participants (Table
1). African-Americans had a higher BMI overall (mean=31.0 kg/m2±6.4) and proportion of
obese (BMI≥30.0 kg/m2) individuals (50.3%) compared to Hispanics (mean BMI=28.9±5.6
kg/m2, 35.9% obese) (P<10−4). However, WHR was higher overall among Hispanics
(mean=0.82±0.07) than African-Americans (mean=0.79±0.59) (P<10−4). AfricanAmericans reported approximately 14.5% more individuals who had ever smoked cigarettes
when compared to Hispanics (37.6% “ever” smokers) (P<10−4). African-Americans also
reported more years of cigarette smoking (mean = 1.93 years) when compared to Hispanics
(mean=1.14y) (P<10−4). Hispanics reported higher mean recreational physical activity hrs/
week overall, total dietary energy intake, and alcohol intake (servings [12 ounces]/week).
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Environmental/behavioral risk factors and BMI and WHR
Table 2 summarizes the association between BMI and WHR and other candidate
environmental/behavioral risk factors. We examined age at interview, years of cigarette
smoking, “ever” vs. “never” cigarette smoking, recreational physical activity, total dietary
energy intake, and alcohol intake (categorically coded with nondrinker as referent). We
observed statistically significant associations with BMI decreasing and WHR increasing
with age at interview. BMI and WHR were inversely associated with recreational physical
activity and alcohol intake in African-Americans and Hispanics. Increasing dietary energy
intake significantly increased both WHR and BMI in African-Americans and Hispanics. We
also observed decreases of BMI with years of cigarette smoking among African-Americans,
but not Hispanics where they were weakly positively correlated, but without statistically
significant association (Beta=0.001, 95% CI [−0.02–0.02], P=0.953). We also observed
significant increases in WHR with years of smoking in African-Americans and Hispanics.
All evaluated factors except recreational physical activity and alcohol intake increased either
BMI or WHR with greater exposure.
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Gene-environment interactions
Potential interactions between each additively modeled genetic marker and continuous
candidate obesity risk factors were examined within each racial group. The most statistically
significant result from each set of tests for the transformed outcomes is provided in Table 3
for African-Americans and Table 4 for Hispanics. In order to facilitate interpretation of p
values untransformed Betas are provided in Supplemental Tables 1 and 2. Summaries of
single locus tests of association for SNPs highlighted for G×E interactions are provided in
Supplemental Tables 3–4. We also present estimates of risk modification for other featured
models of GxE interactions in Supplemental Table 5.
BMI Outcome
The strongest gene by environment interaction with BMI as outcome among AfricanAmericans was for the interaction between rs7350721 and cigarette smoking (years)
(Betainteraction=0.41, 95% CI [0.25,0.58]; P=5.97×10−7). This SNP was not located within a
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gene but was between LOC645687 and the gene pellino homolog 2 (PELI2). This SNP also
had the strongest gene– “ever” vs. “never” cigarette smoking interaction with BMI
(Betainteraction=0.02, 95% CI [0.01, 0.02]; P=3.90×10−6). Among the strongest gene by
environment interactions among African-Americans with BMI as outcome, only one
interaction involved a SNP located within a gene-rs4549702. The gene was contactin
associated protein-like 2 (CNTNAP2) and interacted with dietary energy intake
(Betainteraction =0.02, 95% CI [0.01,0.03]; P=1.41×10−6).
The strongest association with BMI among Hispanics was for an interaction between
rs10133840 and dietary energy intake (Betainteraction=−0.01, 95% CI [−0.01, −0.005];
P=1.28×10−6) (Table 4), a SNP located between the ribosomal protein L15 pseudogene 2
(RPL15P2) gene and LOC730118 on chromosome 14q32.13. Although variation in
CNTPAP2 did not interact with dietary energy intake for BMI, the same SNP that interacted
among African-Americans (rs4549702) modified the effect of recreational physical activity
on BMI among Hispanics (Betainteraction=−0.01, 95% CI [−0.02, −0.01]; P=1.37×10−6).
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Among the strongest G×E interactions with BMI in each racial group, we examined effect
modification with BMI coded categorically (BMI<25 [referent] versus BMI=25.0–29.9,
30.0–34.9, and ≥35) and analyzed with logistic regression. Examining the interactions
between rs7350721 and years of cigarette smoking among African-Americans and between
rs10133840 and dietary energy intake among Hispanics, showed that effect modification
was stronger among subjects with higher BMI (>30) for both interactions (Table 5). The
results were not consistent across racial groups.
WHR Outcome
The strongest G×E interaction for WHR among African-Americans was between SNP
rs9557704 in the integrin, beta-like 1 (ITGBL1) gene and dietary energy intake
(Betainteraction=−0.04, 95% CI [−0.06, −0.03]; P=2.17×10−7). Also notable is an association
observed between SNP rs11016883 in the methylguanine-DNA methyltransferase (MGMT)
gene and cigarette smoking (ever/never) (Betainteraction=0.01, 95% CI [0.007,0.02];
P=8.51×10−7).
The strongest G×E interaction among Hispanics examining WHR as outcome was between
the SNP rs5980075, located between LOC100128521 and motile sperm domain-containing
protein 2 isoform 1 (MOSPD2) gene, and dietary energy intake (Betainteraction=0.04, 95% CI
[0.03,0.06]; P=5.09×10−7).
DISCUSSION
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Evaluating the WHI GWAS data for G×E interactions affecting both BMI and WHR in two
distinct ethnic cohorts of women, we observed several novel interactions. While strong
interactions were detected, these interactions did not replicate across cohorts. Possible
contributors to the heterogeneity between the two ethnic groups examined include
differences in patterns of environmental exposures and demographic histories. Furthermore,
since these analyses were conducted using common variants from GWAS, differences in
linkage disequilibrium and the potential for latent functional rare variants to be private
across racial groups may lead to failure to formally replicate. In this study, all tested
environmental/behavioral factors differed between African-Americans and Hispanic
subjects. Hispanic subjects had significantly lower BMI and higher WHR than AfricanAmericans. Hispanic subjects were younger, had higher physical activity, dietary energy
intake, and alcohol consumption than African-Americans, although they smoked less, and
had a smaller proportion of subjects with T2D.
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We detected associations between most lifestyle factors and BMI and/or WHR. We
observed an inverse association between years of smoking and BMI in African-Americans,
and a positive association between both years of smoking and “ever”/“never” smoking and
WHR in both ethnicities, which is consistent with previous findings (Chouraki et al., 2008;
Simon et al., 1997). There were significant positive associations with BMI and WHR across
populations for dietary energy intake and negative associations with BMI and WHR for
physical activity and alcohol consumption. Age was negatively associated with BMI but
positively associated with WHR in both groups, which is consistent with previous reports
that show increasing WHR with age even in the absence of weight gain, and decreasing BMI
with age.(Stevens et al., 2010)
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The SNP rs10133840 interacted with dietary energy intake in Hispanics and in the metaanalysis. This SNP lies in an intergenic region of chromosome 14q32, bounded by the
ribosomal protein L15 pseudogene and dicer 1, ribonuclease type III (DICER1) gene.
Ribosomal protein L15 pseudogene encodes an untranscribed ribosomal protein; however,
DICER1 is an important mediator of vertebrate development (Murchison and Hannon, 2004)
and is essential for life (Bernstein et al., 2003; Wienholds et al., 2003). DICER1 is a member
of the ribonuclease III family and is involved in the processing of microRNAs, which
modulate gene expression after transcription (Macrae et al., 2006). Additionally, variation
nearby DICER1 has been associated with the response of blood lipid levels to statin therapy
(Barber et al., 2010a). Potential implications for a role of variation in DICER1 on BMI also
include dysregulation of metabolism due to association of DICER1 variants and risk of
multinodular thyroid goiters (Rio et al., 2011). These connections to thyroid dysfunction and
lipid homeostasis suggest that this gene plays a role in metabolism and energy balance. Our
findings support this model for DICER1, and suggest that these effects may also be
mediated by dietary energy intake.
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SNPs rs141320 and rs2144134, located in the gene serine palmitoyltransferase, long-chain
base subunit 3 (SPTLC3), interacted with physical activity and alcohol consumption,
respectively, with BMI in the meta-analysis. Notably, these interactions were in opposite
directions where the interaction with physical activity increased BMI, and the interaction
with alcohol decreased BMI. SPTLC3 encodes an isoform of the third subunit of serine
palmitoyltranferase, which catalyzes the rate-limiting step of sphingolipid synthesis.
Sphingolipids are important components of cellular plasma membranes, and are involved in
cell proliferation, differentiation, senescence, apoptosis, and inflammation, and are
particularly enriched in nervous system tissues (Hannun and Obeid, 2002). The sphingolipid
synthesis genes are conserved back to yeast and are also essential for embryonic
development (Hojjati et al., 2005; Ikushiro et al., 2001; Ikushiro et al., 2003). This gene has
also been associated with levels of sphingolipids and bipolar disorder in previous GWAS
studies (Alliey-Rodriguez et al., 2011; Hicks et al., 2009).
The SNP rs4549702 in the gene CNTNAP2 interacted with physical activity to decrease
BMI in Hispanics, and interacted with dietary energy intake to increase BMI in AfricanAmericans. CNTNAP2 is a member of the neurexin superfamily, a group of proteins that
mediate cell-cell interactions in the nervous system. Rare recessive genetic variation in
CNTNAP2 has been associated with loss-of-function mutations in epilepsy, intellectual
disability, and autism spectrum disorders, accompanied by a range of neuropathologic
findings (Strauss et al., 2006). Additional findings suggest associations with specific
language impairment, as well as rare mutations in Tourette syndrome, syndromic intellectual
disability, and schizophrenia (State MW, 2010). Further support for a connection between
CNTNAP2 and autism was also provided by a whole-exome resequencing study (O’Roak et
al., 2011). Previous reports have suggested that autistic patients have increased risk for
obesity, even in childhood (Curtin et al., 2010; Tyler et al., 2011), and several mutations
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have been observed that seem to confer risk of both obesity and various developmental
delays (Bochukova et al., 2010; Dykens et al., 2011; Shinawi et al., 2011; Walters et al.,
2010). CNTNAP2 was also associated with schizophrenia and bipolar in a recent GWAS
(Wang et al., 2010), as well as bone mass and geometry (Kiel et al., 2007). The apparent
biological relationship between obesity, developmental delay and neurological dysregulation
is consistent with a role for CNTNAP2 in obesity susceptibility, although this association
seems to be modified by environmental factors related to energy balance.
The SNP rs1013063 near the gene potassium channel, voltage gated, ISK-related subfamily,
member 2 (KCNE2) interacted with years of smoking to decrease BMI. KCNE2 has been
associated with lung function (Artigas et al., 2011), height (Lango et al., 2010), and earlyonset myocardial infarction (Kathiresan et al., 2009). Studies in humans and mice have also
demonstrated that KCNE2 gene products form a thyroid stimulating hormone-stimulated
potassium channel that is required for thyroid hormone biosynthesis (Roepke et al., 2009).
KCNE2 is important for controlling metabolism and energy balance, and smoking or
secondary effects on lung function may perturb this regulatory system.
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Several other associated SNPs lie nearby or within genes with previously described
behavioral, metabolism, or body composition phenotypes. The SNP rs9557704, located in
the ITGBL1 gene interacted with dietary energy intake to increase WHR in AfricanAmericans. Homozygous deletion of the ITGBL1 gene was observed in a pediatric case with
growth hormone deficiency (Cody et al., 2010). The SNP rs7864204, near the gene
phosphatidylinositol-4-phosphate 5-kinase, type I, beta (PIP5K1B) interacted with
recreational physical activity in African-Americans. Variation in PIP5K1B has been
associated with chronic kidney disease risk in European ancestry individuals (Kottgen et al.,
2010). The SNP rs8008758 interacted with alcohol to increase BMI in African-Americans
and lies in a paternally imprinted region containing the gene deiodinase, iodothyrodine, type
III (DIO3), which catalyzes the inactivation of thyroid hormone, and has also been
associated with type I diabetes risk (Wallace et al., 2010). The SNP rs17002342 in the gene
septin 11 (SEPT11) interacted with alcohol intake to increase WHR in African-Americans.
Variation in SEPT11 has been associated with schizophrenia and bipolar disorder by a
comparative protein expression study in hippocampus samples (Focking et al., 2011). The
SNP rs11876941 in the gene deleted in colorectal carcinoma (DCC) interacted with history
of smoking to increase BMI in the meta-analysis, and DCC has been associated with risk of
alcoholism (Heath et al., 2011). The SNP rs4877280 near the gene solute carrier family 28,
member 3 (SLC28A3) interacted with dietary energy intake to increase WHR in the metaanalysis, and has been associated with lipid-lowering response to statins (Barber et al.,
2010b). The SNP rs1871045 near the gene poliovirus receptor related 2 (PVRL2) interacted
with years of smoking in Hispanics to increase WHR. Variation in PVRL2 has been
associated with Alzheimer’s disease risk and age of onset in studies of European and
African-Americans (Abraham et al., 2008; Kamboh et al., 2011; Logue et al., 2011; Naj et
al., 2010), and has also been associated with high-density lipoprotein cholesterol levels in
East Asians (Kim et al., 2011). Also the SNP rs10212363 near the gene zona pellucida-like
domain containing 1 (ZPLD1) interacted with alcohol intake to increase WHR in Hispanics.
Variation in ZPLD1 has been nominally associated with type 2 diabetes in Southeast Asians
(Sim et al., 2011).
Although not all interactions had clear relationship with the genes and/or SNPs involved in
the interactions based on what is known about these genes and/or SNPs in the literature,
agnostic studies like this may provide novel insights into the biology of complex traits.
Similarly, some of these models may only seem implausible because little is known about
the biology of the implicated genes in the context of lifestyle. We did not obtain conclusive
statistical evidence for these models from this study, and so these results will provide
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support to future investigations for the candidacy of these genes as obesity risk loci. Many
of the SNPs discussed here are plausible candidates for roles in behavior, body size, shape,
and composition. Genes implicated in interactions here are involved in metabolic processes,
such as endocrine diseases like diabetes, lipid metabolism and transport or bone
development and maintenance, or are known neurological factors with effects on
development and psychological well-being. While none of the results presented here survive
correction for multiple comparisons, they suggest that genes with known effects on
metabolism and behavior are likely to modify the roles of important environmental
exposures on obesity phenotypes. Accounting for effect modification by behavioral and
cultural factors may be essential for discovering the genetic determinants of human obesity,
as these phenomena may collectively explain more variance for these traits than direct
effects by these genes. These findings merit further replication in necessary in order to
validate these interactions.
Supplementary Material
Refer to Web version on PubMed Central for supplementary material.
Acknowledgments
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This work was funded by Vanderbilt Clinical and Translational Research Scholar award (5KL2RR024975) to TLE.
We would also like to acknowledge the Women’s Health Initiative Presentations and Publications committee for
helpful comments during the preparation of this manuscript. Additional funds were provided by the Building
Interdisciplinary Research Careers in Women’s Health career development program (K12HD4383) to DRVE.
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TABLE 1
African-American (N=8,203)
Hispanic (N=3,484)
N
Mean(S.D)/%
N
Mean(S.D)/%
8,203
61.6 (7.0)
3,484
60.3 (6.7)
<10−4
8,203
31.0 (6.4)
3,484
28.9 (5.6)
<10−4
<25
1,329
16.2%
880
25.3%
<10−4
≥25–<30
2,745
33.5%
1355
38.9%
≥30–<35
2,192
26.7%
808
23.2%
≥35
1,937
23.6%
441
12.7%
Waist-Hip Ratio
8,203
0.79 (0.59)
3,468
0.82 (0.07)
<10−4
Weight (kg)
8,203
81.9 (17.3)
3,484
71.6 (14.4)
<10−4
Diabetes
8,190
No
7,047
85.9%
3,192
91.7%
Yes
1,143
13.9%
291
8.4%
Variable
Age at Interview (years)
BMI
(kg/m2)
Hum Genet. Author manuscript; available in PMC 2013 July 08.
Cigarette Smoking
Never
Ever
P-Value
3,885
<10−4
3,483
8,111
<10−4
3,447
47.9%
2,150
Velez Edwards et al.
Summary of demographic data
62.4%
4,226
52.1%
1,297
37.6%
Cigarette Smoking (years)
7,942
1.93 (2.20)
3,373
1.14 (1.79)
<10−4
Recreational Physical Activity (met–hrs/week)
8,021
9.7 (12.7)
3,312
10.8 (13.8)
0.0003
Total Dietary Energy Intake (kcal/day)
8,190
1,599.6 (950.6)
3,478
1,656.8 (972.2)
0.001
Alcohol (servings (12 oz. [ounces] /week)
8,180
1.10(4.4)
3,467
1.27(3.8)
<10−4
Alcohol intake
8,190
Non drinker
1,296
16.0%
636
18.6%
Past drinker
2,692
33.3%
736
21.5%
< 1 drink/month
1,093
13.5%
461
13.5%
< 1drink/week
1,535
19.0%
778
22.7%
1 to 7 drinks/week
1,130
14.0%
643
18.8%
≥7 drinks/week
346
4.3%
174
5.1%
<10−4
3,428
Page 17
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TABLE 2
Hispanic (N=3,484)
African-American (N=8,203)
P
Variable
Beta
95% CI
Age at Interview (years)
−0.09
−0.11 −0.07
Cigarette Smoking (years)
−0.10
Cigarette Smoking (ever/never)
−0.09
P
Beta
95% CI
<10−10
−0.01
−0.02, −0.005
2.31×10−4
−0.17– −0.03
0.008
0.001
−0.02, 0.02
0.953
0.34–0.21
0.537
0.05
−0.04, 0.13
0.278
−0.01
−0.02, −0.01
<10−10
BMI Outcome
Hum Genet. Author manuscript; available in PMC 2013 July 08.
Recreational Physical Activity (met–hrs/week)
−.08
−0.09– −0.07
<10−10
Total Dietary Energy Intake (kcal/day)
0.03
0.03–0.04
1.00×10−10
0.008
0.006, 0.01
<10−10
Alcohol Intake (categorical)
−0.59
−0.70– −0.49
<10−10
−0.10
−0.13, −0.08
<10−10
Age at Interview (years)
0.11
0.08–0.14
<10−10
0.15
0.11, 0.20
<10−10
Cigarette Smoking (years)
0.39
0.30–0.48
<10−10
0.36
0.19, 0.53
3.99×10−5
Velez Edwards et al.
Association between BMI or WHR adjusted for BMI and environmental/behavioral risk factors adjusted for age at interview and ancestry
WHR Outcome
Cigarette Smoking (ever/never)
1.31
0.92–1.70
<10−10
0.96
0.34, 1.58
0.002
Recreational Physical Activity (met–hrs/week)
−0.08
−0.10– −0.07
<10−10
−0.07
−0.10, −0.05
<10−10
Total Dietary Energy Intake (kcal/day)
0.03
0.02–0.03
1.20×10−9
0.02
0.005, 0.03
0.005
−0.53– −0.26
1.05×10−8
−0.65
−0.84, −0.46
1.00×10−10
Alcohol Intake (categorical)
*
*
−0.39
divided variables by 100 to simplify presentation
Total dietary energy intake was log transformed
Page 18
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TABLE 3
Nearby Gene
Chr.
Interaction
Position (bp)
MA
MAF
BetaSNP (95% CI)
BetaEnv (95% CI)
BetaIntrxn (95% CI)
LOC645687||PELI2
14
rs7350721-Smoking(years)
55403266
C
LOC347097||PIP5K1B
9
rs7864204-Recreational Physical Activity
70418999
CNTNAP2
7
rs4549702-Dietary Energy
LOC100128373||DIO3OS
14
LOC645687||PELI2
P-Value Intrxn
0.09
−0.01 (−0.02, −0.01)
−0.15 (−0.22, −0.08)
0.41 (0.25, 0.58
5.97×10−7
A
0.44
0.005 (0.002, 0.01)
−0.04 (−0.06, −0.02)
−0.04 (−0.06, −0.02)
8.70×10−7
147531949
G
0.40
−0.03 (−0.04, −0.01)
0.02 (0.01, 0.03)
0.02 (0.01, 0.03)
1.41×10−6
rs8008758-Alcohol Intake
100759798
A
0.25
−0.01 (−0.02, −0.01)
−0.70 (−0.83, −0.57)
0.39 (0.23, 0.55)
2.32×10−6
14
rs7350721-Smoking(ever/never)
55403266
C
0.09
−0.01 (−0.02, −0.01)
−0.08 (−0.11, −0.06)
0.02 (0.01, 0.02)
3.90×10−6
ITGBL1
13
rs9557704-Dietary Energy
101025496
A
0.13
0.05 (0.03, 0.07)
0.02 (0.02, 0.03)
−0.04 (−0.06, −0.03)
2.15×10−7
MGMT
10
rs11016883-Smoking(ever/never)
131390930
C
0.25
−0.01 (−0.01, −0.003)
0.15 (0.12, 0.17)
0.01 (0.01, 0.02)
8.51×10−7
ZNF385D||LOC728516
3
rs1388551-Recreational Physical Activity
22267575
A
0.17
0.01 (0.001, 0.01)
−0.03 (−0.05, −0.02)
−0.07 (−0.10, −0.04)
1.87×10−6
LOC642340
2
rs16827293-Smoking(years)
150217578
A
0.12
0.01 (0.002, 0.01)
0.52 (0.43, 0.62)
−0.44 (−0.63, −0.25
5.23×10−6
SEPT11
4
rs17002342-Alcohol Intake
78174229
T
0.13
−0.02 (−0.03, −0.01)
−0.30 (−0.45, −0.16)
0.61 (0.34, 0.88)
9.22×10−6
BMI Outcome
Velez Edwards et al.
Summary of strongest gene x environment associations with transformed BMI and WHR adjusted for BMI among African-Americans adjusted for age at
interview and ancestry.
Hum Genet. Author manuscript; available in PMC 2013 July 08.
WHR Outcome
*
BetaSNP-Beta coefficient for the SNP in the model; BetaEnv-Beta coefficient for the lifestyle factor included in the interaction; BetaIntrxn-Beta coefficient for the interaction term in the model; CI-
Confidence interval; Intrxn-interaction
Page 19
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TABLE 4
Nearby Gene
Chr.
Interaction
Position (bp)
MA
MAF
BetaSNP (95% CI)
BetaEnv (95% CI)
BetaIntrxn (95% CI)
P-Value Intrxn
RPL15P2||DICER1
14
rs10133840-Dietary Energy
94480282
C
0.14
0.01 (0.005, 0.01)
0.01 (0.007, 0.01)
−0.01 (−0.01, −0.005)
1.28×10−6
SLC39A11
17
rs4969049-Smoking(ever/never)
68512535
C
0.17
−0.001 (−0.002, −0.0004)
−0.001 (−0.002, 0.0001)
0.004 (0.002, 0.01)
1.35×10−6
CNTNAP2
7
rs4549702-Recreational Physical Activity
147531949
G
0.34
0.001 (0.0003, 0.002)
−0.01 (−0.01, −0.003)
−0.01 (−0.02, −0.01)
1.37×10−6
LOC100130240||KCNE2
21
rs1013063-Smoking (years)
34620260
T
0.38
0.0004 (−0.0003, 0.001)
0.07 (0.03, 0.10)
−0.08 (−0.11, −0.04)
4.56×10−6
LRP8
1
rs2788032-Alcohol Intake
53550219
C
0.08
−0.004 (−0.01, −0.002)
−0.12 (−0.15, −0.09)
0.15 (0.09, 0.22)
5.68×10−6
MOSPD2||LOC100128521
X
rs5980075-Dietary Energy
14860452
T
0.47
−0.04 (−0.06, −0.03)
−0.04 (−0.06, −0.02)
0.04 (0.03, 0.06)
5.09×10−7
LOC152225||ZPLD1
3
rs10212363-Alcohol Intake
103331251
A
0.22
−0.02 (−0.03, −0.01)
−0.64 (−0.86, −0.42)
0.73 (0.43, 1.02)
1.58×10−6
CDK4PS||LOC727839
1
rs11184708-Smoking(ever/never)
106231810
T
0.13
−0.01 (−0.02, −0.004)
0.002 (−0.004, 0.01)
0.03 (0.02, 0.04)
2.11×10−6
BCAM||PVRL2
19
rs1871045-Smoking (years)
50018608
T
0.39
−0.003 (−0.01, 0.002)
0.002 (−0.22, 0.23)
0.52 (0.30, 0.74)
3.95×10−6
LOC100132060||TBR1
2
rs1064576-Recreational Physical Activity
161976354
A
0.06
0.02 (0.01, 0.03)
−0.02 (−0.04, −0.001)
−0.15 (−0.21, −0.08)
3.04×10−5
BMI Outcome
Hum Genet. Author manuscript; available in PMC 2013 July 08.
*
Velez Edwards et al.
Summary of strongest gene x environment associations with transformed BMI and WHR adjusted for BMI among Hispanics adjusted for age at interview
and ancestry
WHR Outcome
BetaSNP-Beta coefficient for the SNP in the model; BetaEnv-Beta coefficient for the lifestyle factor included in the interaction; BetaIntrxn-Beta coefficient for the interaction term in the model; CI-
Confidence interval; Intrxn-interaction
Page 20
NIH-PA Author Manuscript
NIH-PA Author Manuscript
NIH-PA Author Manuscript
TABLE 5
Population
Interaction
African-Americans
rs7350721- Smoking(years)
Hum Genet. Author manuscript; available in PMC 2013 July 08.
Hispanics
African-Americans
Hispanics
*
rs7350721- Smoking(years)
rs10133840- Dietary Energy
rs10133840- Dietary Energy
BMI Category
N
ORSNP (95% CI)
OREnv (95% CI)
ORIntrxn (95% CI)
P-Value Intrxn
<25
1,329
1.00 (Reference)
1.00 (Reference)
1.00 (Reference)
-
≥25–<30
2,745
0.89 (0.73, 1.09)
0.97 (0.94, 1.01)
1.02 (0.96, 1.10)
0.487
≥30–<35
2,192
0.74 (0.59, 0.92)
0.95 (0.92, 0.99)
1.12 (1.04, 1.21)
0.002
≥35
1,937
0.65 (0.50, 0.83)
0.95 (0.92, 0.99)
1.17 (1.07, 1.27)
2.03×10−4
880
1.00 (Reference)
1.00 (Reference)
1.00 (Reference)
-
≥25–<30
<25
1,355
0.96 (0.82, 1.12)
1.02 (0.96, 1.09)
1.02 (0.95, 1.10)
0.502
≥30–<35
808
1.07 (0.89, 1.28)
1.03 (0.96, 1.11)
1.02 (0.93, 1.11)
0.726
=35
441
1.12 (0.91, 1.38)
1.01 (0.92, 1.38)
0.96 (0.86, 1.07)
0.498
<25
1,329
1.00 (Reference)
1.00 (Reference)
1.00 (Reference)
-
≥25–<30
2,745
2.40 (1.11, 5.20)
1.55 (1.11, 5.20)
0.48 (0.25, 0.93)
0.028
≥30–<35
2,192
1.23 (0.55, 2.71)
2.43 (1.74, 3.37)
0.84 (0.43, 1.64)
0.607
≥35
1,937
2.24 (0.92, 5.47)
4.76 (3.38, 69.72)
0.50 (0.24, 1.05)
0.066
880
1.00 (Reference)
1.00 (Reference)
1.00 (Reference)
-
≥25–<30
<25
1,355
4.63 (1.90, 11.26)
3.93 (2.50, 6.19)
0.28 (0.13, 0.61)
0.001
≥30–<35
808
6.36 (2.39, 16.93)
7.73 (4.50, 13.26)
0.20 (0.09, 0.46)
1.74×10−4
≥35
441
8.29 (2.25, 30.50)
19.94 (10.30, 38.6)
0.14 (0.05, 0.44)
0.001
Velez Edwards et al.
Summary of strongest associated gene x environment associations (TABLE 3 and 4) by BMI strata
ORSNP-Odds ratio for SNP association in the model; OREnv-Odds ratio for lifestyle factor in the model; ORIntrxn-Odds ratio for interaction term in the model; CI-Confidence interval; Intrxn-interaction
Page 21
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NIH-PA Author Manuscript
TABLE 6
Position (bp)
MA
Beta(R)
Q
I2
P-Value (R)
rs10133840-Dietary Energy
94480282
C
−0.01
0.70
0.00
3.81×10−7
6
rs1763500-Smoking (years)
67343218
C
0.26
0.46
0.00
1.71×10−6
PA2G4P2||SPTLC3
20
rs1413020-Recreational Physical Activity
12678042
G
0.02
0.33
0.00
3.04×10−6
SPTLC3||LOC100130692
20
rs2144134-Alcohol Intake
13096152
G
−0.09
0.87
0.00
3.68×10−6
DCC
18
rs11876941-Smoking (ever/never)
49160029
A
−0.003
0.90
0.00
4.72×10−6
LOC359819||EEF1B3
5
rs10067755-Smoking (years)
134602211
C
−0.12
0.45
0.00
1.64×10−6
POU3F1||LOC400750
1
rs11802770-Smoking (ever/never)
38494250
T
0.01
0.57
0.00
2.90×10−6
DNAJC10||FRZB
2
rs10931041-Dietary Energy
183393807
A
−0.02
0.79
0.00
9.02×10−6
SLC28A3||NTRK2
9
rs4877280-Recreational Physical Activity
86376225
T
0.04
0.85
0.00
8.52×10−6
MAML2
11
rs11021499-Alcohol Intake
95631777
A
−0.39
0.48
0.00
1.86×10−6
Nearby Gene
Chr.
Interaction
RPL15P2||DICER1
14
SGK1||LOC442261
BMI Outcome
Velez Edwards et al.
Summary of strongest gene x environment associations with BMI and WHR adjusted for BMI for random-effects meta-analysis of African-American and
Hispanic gene x environment interactions
Hum Genet. Author manuscript; available in PMC 2013 July 08.
WHR Outcome
Page 22