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1 Medical Research Council Dunn Human Nutrition Unit; 2 Institute of Cancer Research, London, United Kingdom and 3 Cancer Research UK, Department of Oncology, Strangeways Research Laboratory and European Prospective Investigation of Cancer and Nutrition, Institute of Public Health and Strangeways Research Laboratory, Cambridge, United Kingdom
Requests for reprints: Sheila A. Bingham, Medical Research Council Dunn Human Nutrition Unit, Wellcome Trust/Medical Research Council Building, Hills Road, Cambridge CB2 2XY, United Kingdom. Phone: 44-1223-252760; Fax: 44-1223-252765. E-mail: sab{at}mrc-dunn.cam.ac.uk
| Abstract |
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Key Words: cross-sectional diet phytoestrogens estradiol SHBG polymorphism EPIC-Norfolk CYP19 SHBG COMT ESR1
| Introduction |
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Circulating concentrations of estradiol are strongly and positively related to breast cancer risk in postmenopausal women (3). Sex hormone binding globulin (SHBG) binds circulating estradiol and restricts biological activity. In studies with cell lines, Adlercreutz et al. showed that lignans and isoflavones can increase both the synthesis and the secretion of SHBG in human liver cancer cells (4-6). In cross-sectional studies, they also found that urinary phytoestrogens correlated positively with plasma SHBG (4, 7). These findings led to the hypothesis that phytoestrogens may stimulate the synthesis and release of SHBG, thus reducing the proportion of free estradiol circulating in plasma and indirectly lowering breast cancer risk. Apart from their effects via SHBG, there is also some evidence that phytoestrogens may directly modulate concentrations of circulating estradiol by inhibiting enzymes involved in estrogen biosynthesis and metabolism (8), such as 17ß-hydroxysteroid oxidoreductase (9-11), aromatase (12, 13), and steroid sulfatase (14).
However, intervention studies and cross-sectional studies, which investigated such hormonal effects of phytoestrogens in postmenopausal women, have produced mixed results (4, 7, 15-27). To the best of our knowledge, all of the cross-sectional studies conducted thus far used only a single marker quantifying phytoestrogen exposure in either diet or urine. Analytic methods of measuring phytoestrogens in urine and serum at low levels are difficult, and no study of serum phytoestrogens has been reported. In addition, plasma estradiol concentration is regulated by a network of several different enzymes, and polymorphisms in genes encoding for enzymes involved in estradiol metabolism may affect the concentrations of plasma estradiol. In none of the previous studies were the effects of genetic polymorphisms on phytoestrogens and sex hormone levels investigated.
This article presents the first cross-sectional study to investigate the relationship among phytoestrogen exposure, genetic variants involved in estrogen metabolism, and plasma estradiol and SHBG levels in postmenopausal women using three different markers of phytoestrogen exposure (dietary, urinary, and serum). Five single nucleotide polymorphisms (SNP) in four genes (CYP19, SHBG, COMT, and ESR1) involved in estrogen metabolism and signaling were examined in this study. SNPs in the CYP19 and SHBG genes have already been shown to be associated with estradiol and SHBG levels in postmenopausal women in European Prospective Investigation of Cancer and Nutrition (EPIC)-Norfolk (28). Aromatase, encoded by the CYP19 gene, converts and rostenedione and testosterone to estrone and estradiol and is inhibited by phytoestrogens (12, 13). Catechol-O-methyltransferase (encoded by COMT) is involved in the deactivation of estradiol via conversion of 4-hydroxyestradiol to 4-methoxyestradiol. There is potentially a relationship between 4-hydroxyestradiol exposure and breast cancer risk (28). The ESR1 gene is involved in the signaling response to estradiol and possibly also to phytoestrogens, and we noted an interaction between ESR1 PvuII polymorphisms and a reduction in breast density in our previous intervention study (29).
| Subjects and Methods |
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Subjects of this study were drawn from a nested case-control study on diet and breast cancer (n = 333) in the EPIC-Norfolk cohort (30). Of the 333 eligible women (ages 45-76 years), there were 185 women who were classified as postmenopausal based on self-report of not having menstrual periods for >5 years. Of these, 29 women who were using exogenous sex hormones at the time of the questionnaire or blood and urine collection and 31 women who were found to have sex hormone levels inconsistent with postmenopausal status (either follicle-stimulating hormone <30 IU/L or estradiol >100 pmol/L) were excluded, leaving a final total of 125 eligible subjects in this study. Average (range) age of subjects was 64.1 years (47.3-76.5 years). Subjects had a mean body mass index (BMI) of 27.1 kg/m2 [95% confidence interval (95% CI), 26.3-27.9] and were 14.1 years after menopause on average (95% CI, 13.0-15.2).
Spot urine samples were stored at 20°C until analyzed for creatinine and phytoestrogens. Blood samples were processed into straws of plasma, serum, red cells, and buffy coats and stored at 190°C until analysis of plasma for hormones. Serum samples were available for 109 of the 125 subjects and had been stored at 40°C until analyzed for phytoestrogens (32).
Dietary Data
Dietary data were obtained from 7-day food diaries. These diaries were given out at the health check after instruction (33) and were completed and returned by post (93% compliance). Dietary isoflavone intakes were determined using a food composition database based on daidzein and genistein concentrations measured in 300 commonly eaten foods. Details on the sampling of foods and the analysis of daidzein and genistein and their contents in different foods have been reported elsewhere (34-37). Isoflavone content of foods gathered from a literature search of published values were also incorporated into the food composition database for use in the analysis. The food composition database of isoflavones used in this study represents United Kingdom's contribution to the Vegetal Estrogens in Nutrition and the Skeleton database, a regional food composition database established to facilitate the estimation of exposure levels to phytoestrogens in four European countriesItaly, the Netherlands, Ireland, and the United Kingdom (38, 39).
Urinary Phytoestrogen Analysis
Spot urine samples were analyzed for three isoflavones (daidzein, genistein, and glycitein), two metabolites of daidzein [O-desmethylangolensin (O-DMA) and equol], and two lignans (enterodiol and enterolactone). Triply 13C-labeled standards in methanol were added to 200 µL sample, and the phytoestrogen conjugates were enzymatically hydrolyzed to the aglycones. These were then extracted on Strata C18-E SPE cartridges (Phenomenex, Macclesfield, United Kingdom) and derivatized to trimethylsilyl derivatives for analysis using isotope dilution gas chromatography/mass spectrometry. Details and information on quality assurance have been reported elsewhere (40). Limits of detection ranged from 1.8 ng/mL (enterodiol) to 8.0 ng/mL (enterolactone). The average intra-assay coefficient of variation ranged from 1.8% (equol) to 6.5% (glycitein). The average interassay coefficient of variation for all analytes were <9%, except for O-DMA (20.2%) and glycitein (26.5%), both of which did not have a corresponding triply 13C-labeled standard at the time of analysis.
Urinary Creatinine Analysis
Urinary creatinine concentrations were measured based on a kinetic modification of the Jaffe reaction using the Roche reagent for creatinine on a Roche Cobas Mira Plus chemistry analyzer (Roche Products Ltd., Hertfordshire, United Kingdom).
Serum Phytoestrogen Analysis
Available serum samples (n = 109 of 125) were analyzed for three isoflavones (daidzein, genistein, and glycitein), two metabolites of daidzein (O-DMA and equol), and two lignans (enterodiol and enterolactone). Triply 13C-labeled standards in methanol were added to 200 µL sample, and the phytoestrogen conjugates were enzymatically hydrolyzed to the aglycones. These were then extracted on Strata C18-E SPE cartridges, dried under nitrogen, and redissolved in 40% methanol for analysis using isotope dilution liquid chromatography/tandem mass spectrometry. Details and information on quality assurance have been reported elsewhere (41). Limits of detection ranged from 0.04 ng/mL (daidzein) to 0.11 ng/mL (equol). The average intra-assay coefficient of variation ranged from 2.8% (enterolactone) to 5.7% (glycitein). The average interassay coefficient of variation ranged from 3.0% (genistein) to 4.4% (O-DMA).
Plasma Estradiol and SHBG Analyses
Plasma samples were analyzed for estradiol and SHBG. The low postmenopausal levels of plasma estradiol were measured by radioimmunoassay after ether extraction (42). The sensitivity limit was 3.0 pmol/L. All estradiol analyses were conducted in duplicate. Five quality control sera were included at the beginning and end of each assay. The within-assay variability was 9.4% and between-assay variability was 12.8% at a mean level of 26 pmol/L. Plasma SHBG was measured using a liquid-phase immunoradiometric kit from Orion Diagnostica (Espoo, Finland). The sensitivity limit was 0.5 nmol/L, and the within-batch and between-batch coefficients of variation were 2.1% and 7.4%, respectively, at a concentration of 11 nmol/L.
Genotype Analyses
All genotyping was carried out using end point Taqman assays (Applied Biosystems, Warrington, United Kingdom) in 384-well arrays, which included blank wells as negative controls. Assays were run on MJ Tetrad thermal cyclers (Genetics Research Instrumentation, Essex, United Kingdom), and genotypes were subsequently read on a 7900 Sequence Detector (Applied Biosystems) according to the manufacturer's instructions. An automated robotic high-throughput system in a low-volume, 384-well format was used, thereby reducing the chance of errors. The quality of each assay was tested on a specific test set of 96 DNA samples (80 unique, 14 duplicates, and 2 no template controls). The assays were found to be of good quality with clear clustering and showed 100% concordance in the duplicates. Genotype data were obtained on 95 women. The genotype distributions of the five polymorphisms analyzed were found to be in Hardy-Weinberg equilibrium.
Data Analysis
The statistical analyses were done using SPSS software version 11.0 (SPSS Ltd., Surrey, United Kingdom). The spot nature of urinary concentrations was corrected using urinary creatinine concentration. Urinary excretion of phytoestrogens was expressed as microgram per millimole of urinary creatinine. Kruskal-Wallis test was used to compare differences in dietary, urinary, and serum phytoestrogen concentrations among subjects with different genotypes for each SNP. All dietary, urinary, and serum phytoestrogen data and plasma estradiol and SHBG data were skewed. Therefore, data were logarithmically transformed to obtain approximately normal frequency distributions, and all subsequent statistical testings were done on log-transformed data. For data sets with 0 values (representing values below limits of detections), 1 was added to the value before log transformation. ANOVA was used to compare differences in plasma estradiol and SHBG concentrations among subjects with different genotypes for each SNP. Trend tests were used to assess any linear associations between plasma estradiol and SHBG concentrations across common homozygotes, heterozygotes, and rare homozygotes for the respective SNPs. Hierarchical multiple regression and partial correlations were used to assess the degree of association between urinary, serum, and dietary phytoestrogens and plasma estradiol and SHBG, controlling for age and BMI. All P-values were two sided, and P < 0.05 was considered statistically significant.
| Results |
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| Discussion |
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Two small cross-sectional studies published in 1987 (n = 50; ref. 7) and 1992 (n = 30; ref. 4) reported positive correlations between urinary phytoestrogens and plasma SHBG, with one of the studies also reporting that urinary phytoestrogens correlated negatively with plasma free estradiol. Dietary data were only available in recent larger cross-sectional studies of postmenopausal women, and these failed to show any significant correlation between phytoestrogen intake and plasma SHBG and/or estradiol (25-27).
There are several possible reasons for the conflicting results reported thus far. In intervention studies, differences in supplementation dose, form, type of phytoestrogen, supplementatisson period, or even differences in gut microflora of subjects could contribute to the disparate results. In cross-sectional studies, errors due to difficulties in accurately quantifying phytoestrogens exposure pose a challenge. We have recently developed fast, sensitive, accurate, and reliable techniques for the analysis of three isoflavones, two metabolites of daidzein, and two lignans in serum and urine (40, 41). Analyses for isoflavone contents of foods have also been published and incorporated into food databases (34-39).
We have reported previously that among free-living women in EPIC-Norfolk, phytoestrogen concentrations in spot urine (adjusted for urinary creatinine) correlated strongly with those in serum, with partial correlation coefficients of >0.8. Trend tests showed significant dose-response relationships (P < 0.02) for both urinary and serum concentrations of isoflavones across increasing tertiles of dietary intakes. Hence, phytoestrogen concentrations in untimed spot urine and serum samples can serve as biomarkers of phytoestrogen intake in this group of women (30).
In this study, we used all three sources of material to quantify phytoestrogen exposure (i.e., dietary isoflavones, urinary phytoestrogens, and serum phytoestrogens). Serum and urinary phytoestrogens were expected to yield similar results due to the high degree of correlation between the two. Indeed, both serum and urinary levels of daidzein, genistein, and glycitein showed negative associations with plasma estradiol levels. There was however no association between equol and estradiol levels despite equol being the most estrogenic metabolite and the one that has been postulated to be most physiologically active (46). Equally, although it has been postulated that phytoestrogens may exert their cancer-protective effect through stimulation of SHBG production, thus reducing estradiol bioavailability (4-7), no correlation was found between phytoestrogens and plasma SHBG concentration after adjusting for BMI and age.
We have shown previously that the relationship between urinary and serum phytoestrogen levels is much stronger than the relationships between diet and either urinary or serum levels (30). This probably accounts for the fact that estimates of dietary intake showed no relation with either plasma estradiol or SHBG in contrast to the findings with urinary and serum measurements of isoflavones. Reviewing the literature, we found five cross-sectional studies that investigated the relationship between phytoestrogen exposure and plasma sex hormones. Interestingly, two studies, which had used urinary phytoestrogens, had found significant correlations between phytoestrogen exposure with plasma estradiol and SHBG (4, 7), whereas three studies, which had used dietary intake to quantify exposure, did not detect any significant relationship (25-27). It seems possible that the choice of markers used may at least partially explain the inconsistent results reported in studies published thus far.
One of the main mechanisms by which phytoestrogens are thought to exert biological effects is by interacting with several of the enzymes involved in estradiol biosynthesis and metabolism. Polymorphisms in the genes encoding for these enzymes could affect circulating levels. We chose to analyze for SNPs in CYP19 and SHBG because these were associated with differences in hormone levels in our previous findings (28). Polymorphisms in CYP17 were not studied here due to their absence of effect on hormone levels (28). In the present smaller study, there was no effect in the SHBG SNPs studied, in contrast to our previous findings, and no association with the SNPs studied in COMT. The previously seen trend of estradiol levels according to genotype for CYP19 3' untranslated region SNP was also shown (28), but we were unable to show an interaction with phytoestrogens. CYP19 encodes aromatase. Earlier studies have found that concentrations (
100 µmol/L) of isoflavones that were required to inhibit aromatase in vitro are far more than the serum levels observed in our subjects (47). This could possibly explain why we were unable to show any interaction in our subjects.
There was however a clear effect of ESR1 PvuII on plasma estradiol when we analyzed the data stratified according to different genotypes. Women with the CC genotype had significantly higher plasma estradiol levels (Table 2). Furthermore, in women with CC genotype, there were strong negative correlations between daidzein, genistein, and glycitein levels and plasma estradiol levels. This correlation was not seen in women with the ESR1 PvuII CT and TT genotypes. Our data indicate that the negative correlation observed between phytoestrogen measurements and serum estradiol in the women as a whole is mainly due to the small group of women with ESR1 PvuII CC genotype (Fig. 1). This observation has not been reported previously, and the mechanisms by which the ESR1 PvuII polymorphism could modulate the relationship between measured phytoestrogen intake and serum estradiol levels are unknown. The ESR1 PvuII polymorphism is intronic and could potentially affect receptor function via one of several mechanisms: (a) it could alter splicing of the mRNA (48), although this is unlikely because the SNP lies
400 bp from the nearest intron-exon boundary; (b) it could lie within a regulatory sequence, such as an enhancer, and affect levels of ESR1 gene expression (49); or (c) it could be a silent variant in linkage disequilibrium with another, as yet unknown, variant in the gene that does have a functional effect.
In this study, blood samples from our subjects were not collected at the same time of the day. Although it is possible that circadian variation may affect estradiol levels, the circadian variation in estradiol is very modest and we did not detect this in a previous study conducted by our own laboratory using highly sensitive assay (50). In addition, we had chosen to analyze plasma estradiol but not estrone. Although estrone is the major circulating estrogen in postmenopausal women, estradiol is a far more potent estrogen. Furthermore, the precision of measurement of estradiol for postmenopausal women using our specialist assays is greater than for estrone. However, this does negate the possibility of us establishing an effect on estrone specifically or on the estradiol/estrone ratio.
In conclusion, we showed that higher isoflavone (daidzein, genistein, and glycitein) exposure was associated with lower plasma estradiol levels among postmenopausal women in EPIC-Norfolk. Isoflavones have also been shown to be estrogenic themselves (47) and may thus partially replace the endogenous estrogens. A recent meta-analysis of nine prospective studies found that the relative risk of breast cancer associated with the doubling of estradiol levels was 1.29 (95% CI, 1.15-1.44; P < 0.001; ref. 3). In our study of 125 postmenopausal women, the geometric means of plasma estradiol concentrations for the highest and lowest tertiles of daidzein exposure (determined via urine and serum levels) were around 19 and 24 pmol/L, respectively. It is therefore unlikely that such values would translate to significant differences in breast cancer risk. However, in the small subgroup of women with the ESR1 PvuII CC genotype, the geometric means of plasma estradiol for the highest and lowest tertiles of serum daidzein were considerably different (17.5 versus 42.7 pmol/L) and would translate to >30% difference in breast cancer risk. This observation raises the interesting possibility of diet-gene interaction where the effect of phytoestrogen exposure may be exceptionally pronounced in women with a particular genotype but was attenuated when women of different genotypes were considered as a whole (Fig. 1). Given the very small numbers of women in this study with the ESR1 PvuII CC genotype, no definitive conclusions can be drawn. However, this intriguing possibility might explain some of the contradictory findings in the literature with respect to phytoestrogen intake and breast cancer risk (30) and this merits further investigation in larger study sets.
| Acknowledgments |
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| Footnotes |
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The costs of publication of this article were defrayed in part by the payment of page charges. This article must therefore be hereby marked advertisement in accordance with 18 U.S.C. Section 1734 solely to indicate this fact.
Note: P.B. Grace is currently at HFL, Newmarket Road, Fordham, Cambridgeshire CB7 5WW, United Kingdom.
Received 6/11/04; revised 8/18/04; accepted 8/27/04.
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