Literature DB >> 20194067

Association of intrauterine and early-life exposures with diagnosis of uterine leiomyomata by 35 years of age in the Sister Study.

Aimee A D'Aloisio1, Donna D Baird, Lisa A DeRoo, Dale P Sandler.   

Abstract

BACKGROUND: Early-life exposures to hormonally active compounds and other factors may affect later response to estrogen or progesterone and hence may influence development of uterine leiomyomata (fibroids).
OBJECTIVES: We evaluated associations of in utero and early-life exposures, including soy formula, with self-report of physician-diagnosed fibroids by 35 years of age.
METHODS: Our study included 19,972 non-Hispanic white women who were 35-59 years of age when they enrolled in the Sister Study in 20032007. We estimated risk ratios (RRs) and 95% confidence intervals (CIs) using log-binomial regression models for fibroid associations with adjustment for participant's age and education, maternal age at participant's birth, birth order, and childhood family income.
RESULTS: Greater risk of early fibroid diagnosis was associated with soy formula during infancy (RR = 1.25; 95% CI, 0.971.61), maternal prepregnancy diabetes (RR = 2.05; 95% CI, 1.163.63), low childhood socioeconomic status (RR = 1.28; 95% CI, 1.011.63), and gestational age at birth (RR = 1.64; 95% CI, 1.272.13, for being born at least 1 month early). In utero diethylstilbestrol (DES) exposure was also associated with early fibroid diagnosis (RR = 1.42; 95% CI, 1.131.80), but this association was driven by women reporting probable rather than definite exposure.
CONCLUSIONS: There are plausible biological pathways by which these early-life factors could promote fibroid pathogenesis. This is the first epidemiologic study to evaluate such exposures, with the exception of in utero DES, in relation to fibroid risk, and replication of findings in other populations is needed.

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Year:  2010        PMID: 20194067      PMCID: PMC2854766          DOI: 10.1289/ehp.0901423

Source DB:  PubMed          Journal:  Environ Health Perspect        ISSN: 0091-6765            Impact factor:   9.031


Uterine leiomyomata (fibroids) are benign smooth-muscle tumors, which are associated with pelvic pain, heavy bleeding, and reproductive problems (Stewart 2001), and this accounts for their being the most common indication for hysterectomies in the United States (Farquhar and Steiner 2002). The National Institute of Environmental Health Sciences (NIEHS) Uterine Fibroid Study, which used ultrasound screening to detect fibroids in participants, estimated that the risk of fibroids by 50 years of age exceeds 80% among African Americans and is nearly 70% among Caucasians (Baird et al. 2003). However, prevalence estimates based on clinically evident diagnoses have been approximately 25% (Stewart 2001). Age in premenopausal women and African-American race/ethnicity have been the most consistently reported risk factors (Baird et al. 2003; Faerstein et al. 2001; Marshall et al. 1997). Both estrogen and progesterone have been implicated in fibroid pathogenesis, although the mechanisms by which these hormones act have not been elucidated (Marsh and Bulun 2006). Early-life and childhood exposures can affect uterine development and women’s response to estrogen or progesterone later in life and thus may influence fibroid development (Baird 2004). For instance, infants fed with soy formula are exposed to higher levels per unit body weight of estrogenic isoflavones than are adults consuming soy-based foods (Setchell et al. 1997). Although data in humans on long-term outcomes are limited, one small study has shown greater side effects of menstruation among women fed soy formula (Strom et al. 2001). Other early-life and childhood exposures also have not been previously investigated in relation to fibroids, except for in utero diethylstilbestrol (DES) (Baird and Newbold 2005; Wise et al. 2005a), age at menarche (Marshall et al. 1998; Wise et al. 2004), and childhood obesity (Terry et al. 2007). We examined whether in utero, early-life, and childhood exposures were associated with self-report of fibroid diagnosis by 35 years of age among non-Hispanic white participants in the NIEHS Sister Study. Specifically, we evaluated the following participant factors: birth weight, gestational age at birth, birth order, being from a singleton or multiple birth, breast milk or soy formula consumption during infancy, relative height and weight during childhood, age at menarche; and the following childhood socioeconomic factors: maternal education, highest level of education in the household, food insecurity, and relative family income. In addition, we evaluated maternal factors related to the pregnancy with the participant: age at birth, living and working on a farm, smoking during pregnancy, prepregnancy diabetes, DES use, and complications of pregnancy (preeclampsia, pregnancy-related hypertension, and gestational diabetes).

Materials and Methods

Study population

The NIEHS Sister Study (NIEHS 2010) is a prospective cohort study that evaluates environmental and genetic risk factors for breast cancer and other end points in approximately 50,000 U.S. and Puerto Rican volunteer women 35–74 years of age. Eligibility criteria also included no previous diagnosis of breast cancer and a full or half-sister who was diagnosed with breast cancer. Study materials were available in English and Spanish. Recruitment for the Sister Study began in August 2003 with a vanguard group of women from four U.S. cities. The Sister Study opened nationally in October 2004 and closed in March 2009. Of 62,812 eligible women who agreed to enroll, 50,884 completed all baseline enrollment activities (fully enrolled) by 31 July 2009. The geographic distribution of participants for U.S. census regions and Puerto Rico is approximately 22% (West), 27% (Midwest), 17% (Northeast), 33% (South), and 2% (Puerto Rico). Participants were mailed kits containing three questionnaires for self-completion (diet, family history, and use of personal care products), written consent documents, and support information for telephone interviews and home visits. A prepaid phone card was included to encourage participants to contact their mother or other relatives about early-life events and family medical history. Home visits included measurement of participants’ height and weight and retrieval of completed questionnaires. Participants completed a computer-assisted telephone interview to collect information on known and suspected risk factors for breast cancer and other end points. The Sister Study was approved by the Institutional Review Board of the NIEHS, National Institutes of Health, and all participants provided their informed consent. Baseline data were available for 32,071 women who completed their interview and home visit by 21 September 2007. We restricted our analysis to 20,061 non-Hispanic whites who were 35–59 years of age when fully enrolled into the Sister Study. We excluded women > 59 years of age because of the likelihood of secular differences in use of ultrasounds for fibroid diagnoses and decreased ability to get information from their mothers about early-life events. Because of racial/ethnic differences in fibroid risk and related morbidity (Baird et al. 2003; Faerstein et al. 2001; Marshall et al. 1997; Wise et al. 2005b), we restricted our study population to non-Hispanic whites because we did not have sufficient numbers to separately evaluate other races/ethnicities at the time of our analysis. The present analysis includes 19,972 women after excluding 43 women who were missing data on fibroid status, 40 with missing age at diagnosis, and 6 who reported childhood or adolescent ages at diagnosis (< 15 years). Although the Sister Study is a prospective cohort study, our analysis is based on retrospectively collected information on factors that occurred before the diagnosis of fibroids.

Fibroid assessment

During the baseline interview, women reported whether they were ever told by a doctor or health professional that they had uterine fibroids and their age at time of diagnosis. Because ultrasound screening has shown that the prevalence of fibroids increases rapidly after 35 years of age in U.S. white women (Baird et al. 2003), many older women will have undiagnosed fibroids. Therefore, we limited our case group to those who reported a fibroid diagnosis by 35 years of age to reduce disease misclassification in noncases.

Exposure and covariate assessment

We used self-administered family history questionnaires to assess most intrauterine and early-life exposures: birth weight (pounds/ounces), gestational age at birth (categories), singleton or multiple birth, breast milk or soy formula consumption during infancy; and maternal exposures: age at birth, living and working on a farm, smoking during pregnancy, prepregnancy diabetes, DES use, and complications of pregnancy (preeclampsia, pregnancy-related hypertension, and gestational diabetes). Except for questions on gestational age, birth weight, singleton or multiple birth, and maternal age at birth, the response categories were “definitely,” “probably,” “probably not,” and “definitely not” to allow for possible uncertainty about early-life events. Questionnaires also assessed the duration that participants were fed with breast milk or soy formula and whether they were fed with soy formula during the first 2 months of life. However, we did not evaluate duration of breast-feeding or soy formula in relation to fibroids because of a considerable proportion of missing responses among women who reported being breast-fed (> 20%) or fed soy formula (> 30%). For analyses, we did not consider mothers as having gestational diabetes if they were reported to have diabetes before pregnancy. If participants reported that their mothers had both preeclampsia and pregnancy-related hypertension, we considered their mothers as having preeclampsia in analyses, and we considered mothers as having pregnancy-related hypertension only if preeclampsia was not also reported. Birth order was estimated from birth dates of brothers reported on the family history questionnaires and sisters reported during the computer-assisted telephone interviews. We included all full siblings and half-siblings who shared the same mother for defining birth order. Childhood exposure data—maternal education and maximum level of education for parents or guardian in the household when participant was 13 years of age, relative family income based on self-reported categories (poor, low, middle, or well off), not enough to eat at times during childhood, age at menarche, and height and weight relative to peers at age 10—were collected during the telephone interview. Participant’s age, highest level of education, smoking status, alcohol intake, parity, and menopausal status were also assessed during the telephone interview, and body mass index was calculated using weight and height measured at the home visit.

Statistical analyses

All statistical analyses were conducted using SAS (version 9.1; SAS Institute Inc., Cary, NC). We used log-binomial regression to estimate risk ratios (RRs) with 95% confidence intervals (CIs) for associations between each of the intrauterine, early-life, and childhood exposures and fibroid diagnosis by 35 years of age. For each of the relevant exposures, we combined women who reported definite or probable exposure for estimation of RRs and considered women unexposed if they reported probably not or definitely not. We later performed sensitivity analyses in which we estimated associations separately for women who reported definite exposure and those who reported probable exposure. We estimated associations with fibroids within the following categories of birth weight: < 2,500 g, 2,500–2,999 g, 3,000–3,499 g, 3,500–3,999 g, and ≥ 4,000 g. For maternal age, we initially examined associations with 5-year age categories and then further combined categories that were associated with a similar risk of fibroids. Likewise, we initially explored fibroid associations across all categories of birth order and maternal and household education, and then combined categories with similar fibroid risk for reporting of associations. Although approximately 40% of women did not report gestational age at birth, we evaluated its association with fibroids, categorizing women as having been born at least 1 month early, 2–4 weeks early, and not early (< 2 weeks before due date, on time, or late). Birth weight analyses were repeated with exclusion of women who reported being born at least 1 month early to further our understanding of birth weight and gestational age associations. We estimated RRs that were adjusted for participant factors (participant’s age and education) that may affect reporting of fibroids and exposures. We also adjusted RRs for early-life factors (birth order, maternal age at birth, and family income) that may be associated with other exposures and fibroids but were not considered to be on the causal pathway. The sample sizes for age-adjusted and fully adjusted models shown in tables differ. Although these differences are only about 2%, we repeated the age-adjusted analyses for the 19,531 women with complete data on variables included in the fully adjusted models and verified that results were similar to those for the complete sample of 19,972 women (data not shown).

Results

The prevalence of self-reported fibroids diagnosed at any age was 25% (data not shown), with 8% of women reporting early diagnosis by 35 years of age (Table 1). Women reporting early diagnosis of fibroids (cases) were slightly less likely than women without early diagnosis (noncases) to be younger (35–44 years, 16% vs. 20%) or to have a bachelor’s or graduate degree (53% vs. 57%). As expected, cases were more likely than noncases to report being surgically menopausal at enrollment (48% vs. 21%). We also found that a greater proportion of cases reported having a hysterectomy by 35 years of age than noncases (21% vs. 5%) (data not shown). We had expected a greater proportion of cases than noncases to have been nulliparous at 35 years of age, but proportions were similar (25% vs. 26%). However, as suggested by Baird and Dunson (2003), we further restricted our evaluation of live or still births to those that occurred between 25 and 35 years of age and found that cases were more likely to report having no live or still births during these ages than were noncases (45% vs. 39%) (data not shown).
Table 1

Participant characteristics [n (%)] by uterine fibroids status of non-Hispanic whites, 35–59 years of age, in the Sister Study, 2003–2007 (n = 19,972).a

CharacteristicCasesNoncases
Total1,52618,446
Age (years)
 35–44241 (15.8)3,712 (20.1)
 45–591,285 (84.2)14,734 (79.9)
Highest level of educationb
 High school or lessc201 (13.2)2,159 (11.7)
 Some college/vocational school519 (34.0)5,809 (31.5)
 Bachelor’s degree403 (26.4)5,706 (30.9)
 Graduate degree403 (26.4)4,771 (25.9)
Smoking statusb
 Current195 (12.8)2,105 (11.4)
 Former496 (32.5)6,125 (33.2)
 Never835 (54.7)10,213 (55.4)
Alcohol intake (drinks per week)b
 0242 (15.9)2,529 (13.7)
 0.01–0.49446 (29.3)5,189 (28.2)
 0.50–2.00341 (22.4)4,257 (23.1)
 2.01–6.99305 (20.0)3,821 (20.7)
 ≥ 7.00190 (12.5)2,637 (14.3)
Body mass indexb
 < 25614 (40.4)8,217 (44.8)
 25–29.9479 (31.5)5,421 (29.5)
 ≥ 30428 (28.1)4,720 (25.7)
Parityb,d
 0381 (25.0)4,883 (26.5)
 1297 (19.5)3,049 (16.5)
 2553 (36.3)6,751 (36.6)
 ≥ 3293 (19.2)3,754 (20.4)
Menopausal statusb
 Premenopausal449 (29.4)8,733 (47.4)
 Natural346 (22.7)5,793 (31.4)
 Surgicale731 (47.9)3,914 (21.2)

Cases were self-reported diagnosis of fibroids at ≤ 35 years of age, excluding 89 women missing fibroid status or age at diagnosis or who reported childhood or adolescent ages at diagnosis (< 15 years).

Number does not sum to total because of missing data.

Less than high school: fibroids (n = 13), no fibroids (n = 79).

Total number of live and still births by 35 years of age.

Includes women with hysterectomy or endometrial ablation in which actual timing of hormonal transition is unknown.

Early-life factors

Five of the 14 early-life factors we examined were associated with more than a 20% increase in risk of early fibroid diagnosis (DES, prepregnancy diabetes, gestational diabetes, soy formula, and gestational age at birth) (Table 2). We noted the strongest association with fibroids for maternal diabetes before pregnancy (fully adjusted RR = 2.05; 95% CI, 1.16–3.63). We found an increased risk of fibroids in association with being fed soy formula within the first 2 months of life (adjusted RR = 1.25; 95% CI, 0.90–1.73), which was similar to that for any soy formula use (adjusted RR = 1.25; 95% CI, 0.97–1.61). Although only 60% of women reported gestational age at birth, we found a strong association with being born at least 1 month early (adjusted RR = 1.64; 95% CI, 1.27–2.13). Weak associations of at least a 10% increase in risk of fibroids were also noted for being firstborn, low birth weight (< 2,500 g), and reporting maternal pregnancy-related hypertension or preeclampsia. However, when we excluded women who reported being born at least 1 month early, there was no association with low birth weight (adjusted RR = 0.99; 95% CI, 0.79–1.25). Maternal age at participant’s birth also was weakly associated with increased fibroid risk. However, when we excluded firstborn women from analyses, the risk of fibroids was no longer elevated for having younger mothers (< 20 years), although the association for having older mothers (≥ 40 years) remained (data not shown). Having a mother who worked and lived on a farm or smoked during her pregnancy, being from a multiple birth, and having been breast-fed were not associated with fibroids.
Table 2

RRs for associations of uterine fibroids with in utero and early-life exposures among non-Hispanic whites, 35–59 years of age, in the Sister Study, 2003–2007.a

Age adjusted (n = 19,972)b
Fully adjusted (n = 19,531)b
ExposurenNo. of casesRR95% CInNo. of casesRR95% CI
Maternal pregnancy factors
Worked and lived on farmc,d
 Yes1,6111341.080.91–1.281,5881321.020.86–1.22
 Noe16,8231,2751.0016,6391,2621.00

Smokingc,d
 Yes6,9875331.010.91–1.126,8935291.020.92–1.13
 No12,1429161.0012,0259051.00

DES usec,d
 Yes658691.401.11–1.76643681.421.13–1.80
 No16,7231,2341.0016,5631,2241.00

Prepregnancy diabetesc,d
 Yes64102.081.18–3.6964102.051.16–3.63
 No19,5411,4841.0019,3291,4681.00

Gestational diabetesc,d
 Yesf10191.250.67–2.3410191.280.68–2.38
 No18,2831,3731.0018,1011,3591.00

Preeclampsia/eclampsiac,d
 Yes394371.260.92–1.71390361.200.87–1.64
 No17,2471,2831.0017,0771,2701.00

Pregnancy-related hypertensionc,d
 Yesg243201.110.73–1.70243201.120.73–1.71
 No16,4591,2381.0016,2991,2261.00

Maternal age at birth (years)c
 < 20688681.311.04–1.66676671.190.92–1.53
 20–244,3343451.060.94–1.204,3103421.010.89–1.15
 25–3410,8018061.0010,7648031.00
 35–392,7871950.950.82–1.112,7801950.960.82–1.11
 ≥ 401,003831.140.91–1.411,001831.140.92–1.42

Participant factors
Firstbornc
 Yes3,8503261.120.99–1.253,8343261.110.97–1.27
 No15,8421,1731.0015,6971,1641.00

Birth weight (g)c
 < 2,5001,3821201.130.93–1.371,3611181.120.92–1.36
 2,500–2,9993,0862441.040.90–1.213,0502421.040.89–1.20
 3,000–3,4996,1914711.006,1414661.00
 3,500–3,9993,9282810.940.82–1.093,8972780.940.82–1.09
 ≥ 4,0001,3641081.050.86–1.281,3541071.050.86–1.29

Gestational age at birthc
 Born ≥ 1 month early464541.631.26–2.11459541.641.27–2.13
 Born 2–4 weeks early1,017771.080.86–1.351,010761.080.86–1.36
 Not born ≥ 2 weeks early10,1297161.0010,0317061.00

Multiple birthc
 Yes692490.930.71–1.22679480.930.70–1.22
 No19,0371,4541.0018,8251,4391.00

Fed breast milkc,d
 Ever7,2405380.950.86–1.057,1675260.930.84–1.03
 None11,5438901.0011,4218871.00

Fed soy formulac,d
 Ever645601.281.00–1.64641581.250.97–1.61
 None16,1801,2121.0016,0121,2011.00

Fed soy formula, age ≤ 2 monthsc
 Yes386341.220.88–1.69384341.250.90–1.73
 No16,3871,2261.0016,2151,2151.00

Fibroids status based on self-reported diagnosis at ≤ 35 years of age, excluding 89 women missing fibroid status or age at diagnosis or who reported childhood or adolescent ages at diagnosis (< 15 years).

Each age-adjusted model included participant’s age; each fully adjusted model included the following covariates: participant’s age and education, maternal age, firstborn status, and childhood family income.

n does not sum to total because of missing data. Percent with missing data was as high as 20%, with the exception of 40% with missing gestational age at birth.

Yes or ever represents reporting of definitely or probably. No or none represents reporting of probably not or definitely not.

Excludes those reporting mothers who worked or lived on a farm during pregnancy (age adjusted, n = 956; fully adjusted, n = 949).

Excludes those reporting mothers who definitely or probably had diabetes before pregnancy.

Excludes those reporting mothers who definitely or probably had preeclampsia during pregnancy.

Overall, the age-adjusted and fully adjusted RR estimates for the 14 evaluated exposures were similar, although the association between young maternal age (< 20 years) and fibroids was attenuated in the fully adjusted model. After repeating our analyses by estimating fibroid associations separately for women who reported “definitely” and those who reported “probably” for relevant early-life exposures, reporting of probable in utero exposure to DES (fully adjusted RR = 2.07; 95% CI, 1.53–2.80) and gestational diabetes (fully adjusted RR = 1.88; 95% CI, 0.94–3.74) were associated with fibroids, but there were no associations with definite in utero exposure to DES and gestational diabetes (Table 3).
Table 3

RRs considering certainty of in utero and early-life exposures in uterine fibroid associations among non-Hispanic whites, 35–59 years of age, in the Sister Study, 2003–2007.a

Definite
Probable
ExposurenNo. of casesaRRb95% CInNo. of casesaRRb95% CI
Worked and lived on farmc970801.020.82–1.27618521.040.79–1.35
Smoking during pregnancy5,0403680.970.87–1.101,8531611.140.97–1.34
DES use404311.040.74–1.46239372.071.53–2.80
Prepregnancy diabetes2952.261.02–5.013551.880.83–4.23
Gestational diabetesd5020.600.15–2.335171.880.94–3.74
Preeclampsia/eclampsia248221.150.77–1.72142141.280.78–2.11
Pregnancy-related hypertensione115111.300.74–2.2812890.960.51–1.80
Fed breast milk6,3564620.920.83–1.03811640.990.77–1.26
Fed soy formula481461.321.00–1.75160121.030.60–1.78

aRR, adjusted risk ratio.

Fibroids status based on self-report of diagnosis at ≤ 35 years of age, excluding 89 women missing fibroid status or age at diagnosis or who reported childhood or adolescent ages at diagnosis (< 15 years).

Each model included the following covariates: participant’s age and education, maternal age, firstborn status, and childhood family income (n = 19,531). The reference group is women who reported probably not or definitely not for each exposure.

Excludes from the reference group those reporting mothers who worked or lived on a farm (but not both) during pregnancy (n = 949).

Excludes those reporting mothers who definitely or probably had diabetes before pregnancy.

Excludes those reporting mothers who definitely or probably had preeclampsia during pregnancy.

Childhood factors

Childhood socioeconomic factors, including less than high school for highest level of household education, not enough to eat at times during childhood, and being poor in childhood, were associated with fibroids, with the strongest association for being poor (RR = 1.24; 95% CI, 0.99–1.55) (Table 4). Because these socioeconomic factors are correlated, we evaluated whether fibroid associations were stronger with having multiple factors indicating low socioeconomic status. Having two or three of these childhood socioeconomic factors resulted in a slightly stronger association with fibroids (RR = 1.28; 95% CI, 1.01–1.63) than having only one of these factors (RR = 1.17; 95% CI, 1.01–1.35). As expected from previous studies (Marshall et al. 1998; Wise et al. 2004), earlier age at menarche was associated with greater risk of early fibroid diagnosis. Taller height and heavier weight at 10 years of age relative to peers were only weakly associated with fibroids.
Table 4

RRs for associations of uterine fibroids with childhood socioeconomic and developmental factors among non-Hispanic whites, 35–59 years of age, in the Sister Study, 2003–2007.a

Age adjusted (n = 19,972)b
Fully adjusted (n = 19,531)b
ExposurenNo. of casesRR95% CInNo. of casesRR95% CI
Maternal education at participant age 13c
 < High school2,9882501.100.96–1.252,9252461.050.91–1.21
  ≥ High school16,3391,2201.0015,9861,1881.00

Maximum household education at participant age 13c
 < High school1,8761731.211.04–1.411,8331711.150.98–1.36
  ≥ High school18,0071,3471.0017,6181,3131.00

Family incomec
 Poor819771.241.00–1.55793761.240.99–1.55
 Low4,2793451.070.95–1.204,1923421.070.95–1.21
 Middle/well off14,8591,1041.0014,5461,0721.00

Not enough to eatc
 Yes1,4001291.221.02–1.441,3461281.160.96–1.40
 No18,5671,3961.0018,1801,3611.00

Age at menarche (years)c
 < 101,1061201.541.27–1.871,0761171.541.26–1.87
 112,5652421.351.16–1.572,5112321.321.13–1.53
 125,4934471.171.03–1.335,3764411.181.04–1.34
 136,0234191.005,8994091.00
 142,7601780.930.79–1.102,6921730.930.78–1.10
  ≥ 152,0061190.860.70–1.041,9581170.860.71–1.05

Height relative to peers at age 10c
 Taller5,9624861.090.97–1.225,8304741.100.98–1.23
 Same8,9646751.008,7706581.00
 Shorter5,0273640.960.85–1.094,9123570.970.86–1.10

Weight relative to peers at age 10c
 Heavier4,0543251.090.96–1.243,9663171.090.96–1.24
 Same9,1626761.008,9606601.00
 Lighter6,7255211.050.94–1.176,5755091.050.94–1.17

Fibroids status based on self-reported diagnosis at ≤ 35 years of age, excluding 89 women missing fibroid status or age at diagnosis or who reported childhood or adolescent ages at diagnosis (< 15 years).

Each age-adjusted model included participant’s age; each fully adjusted model included the following covariates: participant’s age and education, maternal age, firstborn status, and childhood family income.

n does not sum to total because of missing data.

Discussion

We estimated an increased risk of early fibroid diagnosis in association with being fed soy formula during infancy, having a mother with prepregnancy diabetes, being born at least 1 month early, and reporting factors indicating low socioeconomic status during childhood (low household education, being poor, and not having enough to eat). We also noted associations with fibroids for having a mother with gestational diabetes and DES use during pregnancy, although these associations were restricted to reporting probable rather than definite exposure. The association with soy formula is of interest given the estrogenic isoflavones found in soy products. Infants fed soy formula are exposed to isoflavone levels that are more than five times higher than typical levels for adults consuming soy-based foods (Setchell et al. 1997). Genistin is the naturally occurring isoflavone predominantly contained in soy formula, which can easily be hydrolyzed in the gut to the estrogenically active form of the compound, genistein, based on reporting of high plasma (Setchell et al. 1997) and urinary (Cao et al. 2009; Hoey et al. 2004) concentrations of genistein in infants fed soy formula. The increased risk of fibroids in association with being fed soy formula within the first 2 months of life, which may include the time period most sensitive to genistein exposure, was similar to the association with soy formula at any time during infancy. Genistein has been extensively investigated in laboratory animals. In particular, neonatal treatment of mice with genistein has been associated with development of uterine adenocarcinoma (Newbold et al. 2001), abnormalities with mammary gland development and differences with mammary gland levels of estrogen and progesterone receptors (Padilla-Banks et al. 2006), alterations with estrous cycles and reduced fertility (Jefferson et al. 2005, 2007), and early reproductive senescence (Jefferson et al. 2005). However, studies with adult outcomes in humans have been lacking, except for one small study reporting longer duration and increased pain with menstrual bleeding for women who were fed soy formula (Strom et al. 2001). This finding is interesting given that pelvic pain and heavy bleeding are the most common symptoms of fibroids. Our strongest association with fibroids was for maternal prepregnancy diabetes. Prenatal exposure to diabetes has also been associated with increased risk of obesity, abnormal glucose tolerance, and type 2 diabetes in adulthood (Dabelea 2007; Fetita et al. 2006). However, this is the first study to evaluate whether in utero exposure to maternal diabetes affects fibroid risk in early adulthood. One hypothetical mechanism by which in utero exposure to diabetes would affect later fibroid pathogenesis is the alteration of methylation patterns in regions that affect expression of relevant genes. In particular, expression of imprinted genes is especially sensitive to changes in methylation patterns (Thompson et al. 2001; Waterland and Jirtle 2004). Two studies in mice have reported that exposure of fetuses to induced maternal diabetes and of embryos before implantation to in vitro insulin affected expression of two imprinted neighboring genes, H19 and IGF2, by altering their methylation status and resulted in changes in fetal development and birth weight (Shao et al. 2007, 2008). Seven microarray studies reviewed by Arslan et al. (2005) reported at least a 2-fold increase in IGF2 expression in fibroids relative to normal myometrium. Using the animal model of fibroids, the Eker rat, Cook et al. (2007) found an association between early exposure to DES and later fibroid development. Consistent with the animal model, Baird and Newbold (2005) reported a positive association of self-reported in utero DES exposure with fibroid diagnosis based on ultrasound assessment within the NIEHS Uterine Fibroid Study. However, Wise et al. (2005a) reported no association between maternal DES use and fibroids based on medically documented DES exposure and surgical fibroid cases. Given our inconsistent associations for women who report definite versus probable in utero DES exposure, conclusions from our study are unclear. We found a consistent association of fibroids with three indicators of low socioeconomic status during childhood (low household education, food insecurity, and poverty). These factors may influence development of fibroids through changes in methylation patterns in childhood that persist and affect gene expression as adults. Plausibility of this hypothesis is based on animal and human data on early-life neglect or abuse. Different methylation patterns within the hippocampus of adult rats were detected based on whether they received maternal care early in life (Weaver et al. 2004). In a small sample of adult men who committed suicide, methylation patterns in similar genes in the hippocampus varied based on whether they were abused during childhood (McGowan et al. 2009). Whether being exposed to low socioeconomic conditions during childhood can affect methylation patterns in genes relevant to fibroid pathogenesis needs further investigation. We also found a strong association with fibroids for being born at least 1 month before mother’s due date. A weak association with low birth weight was no longer present after excluding women who were born at least 1 month early. Because levels of estrogen and progesterone rise throughout pregnancy, one hypothesis is that women who are born early are deprived of the estrogen needed for full differentiation of their reproductive system (Trotter and Pohlandt 2000). Our analyses were limited by having only 60% of women who reported gestational age at birth. Missing data may be related to the true values of gestational age or other birth-related variables, but results were similar when we repeated the analyses assuming women missing gestational age data were not born ≥ 2 weeks early (data not shown). Selection bias is a potential limitation for other exposures as well, given that the proportion of missing values was as high as 20%. There were slight differences in the proportion with fibroids based on whether exposures were missing, with generally more women reporting fibroids among those with missing responses. Based on the assumption that women with missing data for rare exposures (preeclampsia, pregnancy-related hypertension, soy formula, DES use, prepregnancy diabetes, and gestational diabetes) were likely to be unexposed, we repeated analyses in which we considered women with missing values for these factors as unexposed. However, changes in RR estimates were minimal (data not shown). There is also the potential for misclassification of exposures given that women were reporting exposures during infancy and related to their mother’s pregnancy. However, women were provided phone cards to encourage them to ask these questions directly of their mothers, and we excluded older women (> 59 years) who would be less likely to have living mothers to ask about these exposures. In addition, response categories for many of the exposures included options of “definite” and “probable” that allowed for uncertainty in reporting. Associations with fibroids were generally consistent for definite and probable exposure, except associations with in utero DES exposure and maternal gestational diabetes, for which associations were much stronger with reporting probable exposure. Because none of these exposures is known to be related to fibroids, exposure misclassification would likely be nondifferential, which would generally result in RR estimates biased toward the null. Our assessment of fibroid diagnoses was based exclusively on self-report. However, because fibroid incidence increases strongly with age, we only considered diagnoses by 35 years of age to reduce misclassification in the noncase group. Our estimated risk of 8% for early diagnosis of fibroids was similar to the risk of 11% for self-reported fibroids by 35 years of age in white women (35–49 years of age) from the NIEHS Uterine Fibroid Study (Baird DD, unpublished observations). We also reported a substantially greater proportion of women with early diagnosis of fibroids having hysterectomies compared with women without early diagnosis, which suggests that many of the women with fibroid diagnoses included in our case definition had fibroid-related morbidity. However, we do not have information on fibroid-related symptoms at time of diagnosis. We also excluded older women from our analyses because of possible secular differences in use of ultrasounds for fibroid diagnoses. Because studied factors may also be related to fibroids diagnosed later in life, including women with fibroids diagnosed after 35 years of age as noncases may have resulted in an underestimation of RRs. However, repeating our analyses after exclusion of women with later diagnoses of fibroids (> 35 years) from the noncase group did not affect RR estimates with early diagnosis of fibroids for four of our main findings (maternal prepregnancy diabetes, soy formula, low childhood socioeconomic status, and being born at least 1 month early (data not shown). Strengths of this study include a large sample size, which allowed us to examine associations with rare intrauterine and early-life exposures. We adjusted for factors that may affect recall of exposures, including participant’s age and education. In addition, despite the potential for misclassification bias from self-reported exposure information and fibroid diagnoses, we observed expected associations between specific factors, including a positive association between early age at menarche and fibroids and an increased reporting of maternal preeclampsia among firstborn women and those from a multiple birth (data not shown).

Conclusions

Our study suggests that being fed with soy formula during infancy, having a mother with prepregnancy diabetes, being born at least 1 month early, and growing up with low socioeconomic conditions may increase the development of fibroids in early adulthood. This is the first study to explore these early-life and childhood factors in relation to the risk of fibroids. There are plausible biological mechanisms by which these factors could affect uterine physiology later in life and thus increase risk of fibroid development. Replication of findings in other populations including higher risk groups such as African Americans is needed.

Correction

In Table 1, the values for body mass index were incorrect in the manuscript originally published online. They have been corrected here.
  33 in total

Review 1.  Disruption of the female reproductive system by the phytoestrogen genistein.

Authors:  Wendy N Jefferson; Elizabeth Padilla-Banks; Retha R Newbold
Journal:  Reprod Toxicol       Date:  2006-12-09       Impact factor: 3.143

2.  Prenatal diethylstilbestrol (DES) exposure is associated with uterine leiomyoma development.

Authors:  Donna Day Baird; Retha Newbold
Journal:  Reprod Toxicol       Date:  2005 May-Jun       Impact factor: 3.143

3.  Adverse effects on female development and reproduction in CD-1 mice following neonatal exposure to the phytoestrogen genistein at environmentally relevant doses.

Authors:  Wendy N Jefferson; Elizabeth Padilla-Banks; Retha R Newbold
Journal:  Biol Reprod       Date:  2005-06-01       Impact factor: 4.285

4.  Neonatal exposure to the phytoestrogen genistein alters mammary gland growth and developmental programming of hormone receptor levels.

Authors:  Elizabeth Padilla-Banks; Wendy N Jefferson; Retha R Newbold
Journal:  Endocrinology       Date:  2006-07-20       Impact factor: 4.736

Review 5.  Consequences of fetal exposure to maternal diabetes in offspring.

Authors:  Lila-Sabrina Fetita; Eugène Sobngwi; Patricia Serradas; Fabien Calvo; Jean-François Gautier
Journal:  J Clin Endocrinol Metab       Date:  2006-07-18       Impact factor: 5.958

Review 6.  The predisposition to obesity and diabetes in offspring of diabetic mothers.

Authors:  Dana Dabelea
Journal:  Diabetes Care       Date:  2007-07       Impact factor: 19.112

7.  Anthropometric characteristics and risk of uterine leiomyoma.

Authors:  Kathryn L Terry; Immaculata De Vivo; Susan E Hankinson; Donna Spiegelman; Lauren A Wise; Stacey A Missmer
Journal:  Epidemiology       Date:  2007-11       Impact factor: 4.822

8.  Exposure of preimplantation embryos to insulin alters expression of imprinted genes.

Authors:  Wei-Juan Shao; Ling-Yun Tao; Jian-Yun Xie; Cheng Gao; Jian-Hua Hu; Ru-Qian Zhao
Journal:  Comp Med       Date:  2007-10       Impact factor: 0.982

9.  Alterations in methylation and expression levels of imprinted genes H19 and Igf2 in the fetuses of diabetic mice.

Authors:  Wei-Juan Shao; Ling-Yun Tao; Cheng Gao; Jian-Yun Xie; Ru-Qian Zhao
Journal:  Comp Med       Date:  2008-08       Impact factor: 0.982

10.  Identification of a sensitive period for developmental programming that increases risk for uterine leiomyoma in Eker rats.

Authors:  Jennifer DeAnn Cook; Barbara J Davis; Julia Alicia Goewey; Tia D Berry; Cheryl Lyn Walker
Journal:  Reprod Sci       Date:  2007-02       Impact factor: 3.060

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  43 in total

1.  Self-report versus ultrasound measurement of uterine fibroid status.

Authors:  Sharon L Myers; Donna Day Baird; Andrew F Olshan; Amy H Herring; Jane C Schroeder; Leena A Nylander-French; Katherine E Hartmann
Journal:  J Womens Health (Larchmt)       Date:  2011-11-01       Impact factor: 2.681

Review 2.  Epigenetic effects of endocrine-disrupting chemicals on female reproduction: an ovarian perspective.

Authors:  Aparna Mahakali Zama; Mehmet Uzumcu
Journal:  Front Neuroendocrinol       Date:  2010-07-04       Impact factor: 8.606

Review 3.  The pros and cons of phytoestrogens.

Authors:  Heather B Patisaul; Wendy Jefferson
Journal:  Front Neuroendocrinol       Date:  2010-03-27       Impact factor: 8.606

4.  Proceedings from the Third National Institutes of Health International Congress on Advances in Uterine Leiomyoma Research: comprehensive review, conference summary and future recommendations.

Authors:  James H Segars; Estella C Parrott; Joan D Nagel; Xiaoxiao Catherine Guo; Xiaohua Gao; Linda S Birnbaum; Vivian W Pinn; Darlene Dixon
Journal:  Hum Reprod Update       Date:  2014-01-08       Impact factor: 15.610

5.  Uterine leiomyomata in a cohort of Great Lakes sport fish consumers.

Authors:  Anissa Lambertino; Mary Turyk; Henry Anderson; Sally Freels; Victoria Persky
Journal:  Environ Res       Date:  2011-02-09       Impact factor: 6.498

6.  Anthropometric Factors and Thyroid Cancer Risk by Histological Subtype: Pooled Analysis of 22 Prospective Studies.

Authors:  Cari M Kitahara; Marjorie L McCullough; Silvia Franceschi; Sabina Rinaldi; Alicja Wolk; Gila Neta; Hans Olov Adami; Kristin Anderson; Gabriella Andreotti; Laura E Beane Freeman; Leslie Bernstein; Julie E Buring; Francoise Clavel-Chapelon; Lisa A De Roo; Yu-Tang Gao; J Michael Gaziano; Graham G Giles; Niclas Håkansson; Pamela L Horn-Ross; Vicki A Kirsh; Martha S Linet; Robert J MacInnis; Nicola Orsini; Yikyung Park; Alpa V Patel; Mark P Purdue; Elio Riboli; Kimberly Robien; Thomas Rohan; Dale P Sandler; Catherine Schairer; Arthur B Schneider; Howard D Sesso; Xiao-Ou Shu; Pramil N Singh; Piet A van den Brandt; Elizabeth Ward; Elisabete Weiderpass; Emily White; Yong-Bing Xiang; Anne Zeleniuch-Jacquotte; Wei Zheng; Patricia Hartge; Amy Berrington de González
Journal:  Thyroid       Date:  2016-02       Impact factor: 6.568

7.  High use of complementary and alternative medicine among a large cohort of women with a family history of breast cancer: the Sister Study.

Authors:  Heather Greenlee; Christine L Sardo Molmenti; Laura Falci; Ross Ulmer; Sandra Deming-Halverson; Lisa A DeRoo; Dale P Sandler
Journal:  Breast Cancer Res Treat       Date:  2016-03-26       Impact factor: 4.872

8.  Developmental Environmental Exposure Alters the Epigenetic Features of Myometrial Stem Cells.

Authors:  Qiwei Yang; Ayman Al-Hendy
Journal:  Gynecol Obstet Res       Date:  2016-12-01

9.  Coexposure to phytoestrogens and bisphenol a mimics estrogenic effects in an additive manner.

Authors:  Anne Katchy; Caroline Pinto; Philip Jonsson; Trang Nguyen-Vu; Marchela Pandelova; Anne Riu; Karl-Werner Schramm; Daniel Samarov; Jan-Åke Gustafsson; Maria Bondesson; Cecilia Williams
Journal:  Toxicol Sci       Date:  2013-11-27       Impact factor: 4.849

Review 10.  Epidemiology of Uterine Fibroids: From Menarche to Menopause.

Authors:  Lauren A Wise; Shannon K Laughlin-Tommaso
Journal:  Clin Obstet Gynecol       Date:  2016-03       Impact factor: 2.190

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