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Dietary carbohydrate intake, glycaemic load, glycaemic index and ovarian cancer risk in African-American women

Published online by Cambridge University Press:  16 December 2015

Bo Qin*
Affiliation:
Department of Population Science, Rutgers Cancer Institute of New Jersey, New Brunswick, NJ 08903, USA
Patricia G. Moorman
Affiliation:
Department of Community and Family Medicine, Duke Cancer Institute, Durham, NC 27705, USA
Anthony J. Alberg
Affiliation:
Hollings Cancer Center and Department of Public Health Sciences, Medical University of South Carolina, Charleston, SC 29425, USA
Jill S. Barnholtz-Sloan
Affiliation:
Case Comprehensive Cancer Center, Case Western Reserve University School of Medicine, Cleveland, OH 44106, USA
Melissa Bondy
Affiliation:
Cancer Prevention and Population Sciences Program, Baylor College of Medicine, Houston, TX 77030, USA
Michele L. Cote
Affiliation:
Department of Oncology and the Karmanos Cancer Institute, Population Studies and Disparities Research Program, Wayne State University School of Medicine, Detroit, MI 48201, USA
Ellen Funkhouser
Affiliation:
Division of Preventive Medicine, University of Alabama at Birmingham, Birmingham, AL 35205, USA
Edward S. Peters
Affiliation:
Epidemiology Program, Louisiana State University Health Sciences Center School of Public Health, New Orleans, LA 70112, USA
Ann G. Schwartz
Affiliation:
Department of Oncology and the Karmanos Cancer Institute, Population Studies and Disparities Research Program, Wayne State University School of Medicine, Detroit, MI 48201, USA
Paul Terry
Affiliation:
Departments of Public Health and Surgery, University of Tennessee-Knoxville, Knoxville, TN 37996, USA
Joellen M. Schildkraut
Affiliation:
Department of Community and Family Medicine, Duke Cancer Institute, Durham, NC 27705, USA Department of Public Health Sciences, University of Virginia, Charlottesville, VA 22908, USA
Elisa V. Bandera
Affiliation:
Department of Population Science, Rutgers Cancer Institute of New Jersey, New Brunswick, NJ 08903, USA
*
*Corresponding author: B. Qin, fax +1 732 235 8808, email bonnie.qin@rutgers.edu
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Abstract

Epidemiological evidence regarding the association between carbohydrate intake, glycaemic load (GL) and glycaemic index (GI) and risk of ovarian cancer has been mixed. Little is known about their impact on ovarian cancer risk in African-American women. Associations between carbohydrate quantity and quality and ovarian cancer risk were investigated among 406 cases and 609 controls using data from the African American Cancer Epidemiology Study (AACES). AACES is an ongoing population-based case–control study of ovarian cancer in African-Americans in the USA. Cases were identified through rapid case ascertainment and age- and site-matched controls were identified by random-digit dialling. Dietary information over the year preceding diagnosis or the reference date was obtained using a FFQ. Multivariable logistic regression models were used to estimate odds ratios and 95 % CI adjusted for covariates. The OR comparing the highest quartile of total carbohydrate intake and total sugar intake v. the lowest quartile were 1·57 (95 % CI 1·08, 2·28; Ptrend=0·03) and 1·61 (95 % CI 1·12, 2·30; Ptrend<0·01), respectively. A suggestion of an inverse association was found for fibre intake. Higher GL was positively associated with the risk of ovarian cancer (OR 1·18 for each 10 units/4184 kJ (1000 kcal); 95 % CI 1·04, 1·33). No associations were observed for starch or GI. Our findings suggest that high intake of total sugars and GL are associated with greater risk of ovarian cancer in African-American women.

Type
Full Papers
Copyright
Copyright © The Authors 2015 

Ovarian cancer is the leading cause of death from gynaecological cancers in developed counties including the USA( 1 , Reference Torre, Bray and Siegel 2 ), of which nearly 90 % are epithelial ovarian carcinomas( Reference Berek, Friedlander and Bast 3 ). Approximately 10 % of cases are thought to arise from inherited germline mutations while the rest are thought to be sporadic( Reference Berek, Friedlander and Bast 3 ). As at present there is no reliable screening available for ovarian cancer, most cases are diagnosed at an advanced stage, with a poor prognosis( Reference Goff, Mandel and Muntz 4 ). Moreover, compared with European-Americans, African-American women tend to have a worse 5-year survival rate( Reference Chornokur, Amankwah and Schildkraut 5 ), highlighting a critical need for identifying modifiable preventive factors. However, there is a scarcity of epidemiological studies in this area for African-American women.

Although there are a few established modifiable risk factors for ovarian cancer, the role of diet has been proposed. Carbohydrates in particular have been a focus of research( 6 ), as long-term consumption of high levels of carbohydrates, especially sugars, could plausibly contribute to ovarian carcinogenesis( Reference Cohen and LeRoith 7 , Reference Kaaks and Lukanova 8 ). The majority of epidemiological studies evaluating associations between intakes of carbohydrate( Reference Tzonou, Hsieh and Polychronopoulou 9 Reference Silvera, Jain and Howe 15 ), total sugars and added sugars( Reference Nagle, Kolahdooz and Ibiebele 13 , Reference Silvera, Jain and Howe 15 Reference Tasevska, Jiao and Cross 19 ) and fibre( Reference Tzonou, Hsieh and Polychronopoulou 9 Reference Kushi, Mink and Folsom 14 , Reference Pelucchi, La Vecchia and Chatenoud 20 , Reference Silvera, Jain and Howe 21 ) and ovarian cancer risk have been conducted in European or European-American populations with mixed results. Inconsistencies in findings have been attributed to the different type, amount and rate of digestion of carbohydrates( Reference Nagle, Kolahdooz and Ibiebele 13 ). These factors may lead to varied blood glucose and postprandial insulin responses, which have been suggested to play critical roles in ovarian tumour development( Reference Nagle, Kolahdooz and Ibiebele 13 ). Therefore, it is necessary to evaluate the impact of both the quality and the quantity of carbohydrate intake on ovarian cancer risk.

Glycaemic index (GI) is a quality measure of carbohydrates, whereas glycaemic load (GL) reflects both the average quality and the quantity of carbohydrates. GI is a numerical index that is defined as the incremental area under the blood glucose response curve after a 50-g carbohydrate intake of a test food relative to an equivalent carbohydrate portion of bread or glucose( Reference Wolever, Jenkins and Jenkins 22 ). Through combining the food’s GI value and the carbohydrate content of the food’s usual serving size, GL reflect the overall effects of a food on postprandial blood glucose concentrations( Reference Salmeron, Manson and Stampfer 23 ). A few studies have evaluated the relation between GL, GI and ovarian cancer risk, and the evidence is mixed( Reference Nagle, Kolahdooz and Ibiebele 13 , Reference Silvera, Jain and Howe 15 , Reference King, Olson and Paddock 18 , Reference George, Mayne and Leitzmann 24 , Reference Augustin and Polesel 25 ). In three of these studies, positive associations were observed for GL only or both GI and GL( Reference Nagle, Kolahdooz and Ibiebele 13 , Reference Silvera, Jain and Howe 15 , Reference Augustin and Polesel 25 ), and were stronger in postmenopausal women( Reference Silvera, Jain and Howe 15 , Reference Augustin and Polesel 25 ), or overweight and obese women( Reference Nagle, Kolahdooz and Ibiebele 13 ). Two other studies found a null relation( Reference King, Olson and Paddock 18 ) or an inverse association for GI( Reference George, Mayne and Leitzmann 24 ).

Compared with European-Americans, African-Americans have similar total carbohydrate intake, but tend to have lower fibre consumption and higher intake of total sugars and added sugars( 26 Reference Lovejoy, Champagne and Smith 28 ). Fibre intake has been hypothesised to be beneficial for ovarian cancer prevention, whereas sugar intake is suggested to play the opposite role( Reference Bosetti and Negri 16 , Reference Pelucchi, La Vecchia and Chatenoud 20 ). Furthermore, there are important differences in the physiology of glucose homoeostasis between African-Americans and European-Americans, with higher insulin secretion and more insulin resistance in African-Americans( Reference Das, Sharma and Zhang 29 , Reference Haffner, Ralph and Saad 30 ). Therefore, our study aimed to examine the associations between types of carbohydrate intake, GL and GI and ovarian cancer risk in African-American women. We specifically examined whether associations may be stronger in postmenopausal or overweight/obese women based on previous findings( Reference Nagle, Kolahdooz and Ibiebele 13 , Reference Silvera, Jain and Howe 15 , Reference Augustin and Polesel 25 ), and assessed whether there might be greater associations among diabetics as they may suffer from long-term higher insulin response to carbohydrate intake( Reference Kaaks and Lukanova 8 ). As some studies have suggested differences in ovarian cancer risk factors by histological subtypes( Reference Pearce, Templeman and Rossing 31 , Reference Yang, Trabert and Murphy 32 ), we also proposed to examine these associations by ovarian cancer subtypes (serous v. non-serous). To our knowledge, this is the first study that has examined the association between carbohydrate quality and quantity and ovarian cancer risk in African-Americans.

Methods

Study population

The African American Cancer Epidemiology Study (AACES) has been described in detail elsewhere( Reference Schildkraut, Alberg and Bandera 33 ). In brief, AACES is an ongoing population-based case–control study of ovarian cancer in African-American women in eleven sites in the USA (Alabama, Georgia, Illinois, Louisiana, Michigan, North Carolina, New Jersey, Ohio, South Carolina, Tennessee and Texas). Cases were identified by rapid case ascertainment utilising state cancer registries, SEER (Surveillance, Epidemiology and End Results) registries or via hospitals’ gynaecological oncology departments. Eligible cases included all self-identified African-American women aged between 20 and 79 years, with newly diagnosed, histologically confirmed invasive epithelial ovarian cancer. Controls who self-identified as African-American were selected using random-digit dialling and were matched to cases by 5-year age groups and state of residence. Women who had a previous history of ovarian cancer or a bilateral oophorectomy were ineligible controls. Only women able to complete an interview in English were eligible to participate. Among those who could be contacted, 66·5 % of potential cases and 72 % of potential controls agreed to participate in the main telephone interview( Reference Schildkraut, Alberg and Bandera 33 ). The present study was approved by the Institutional Review Boards at all study sites.

We used data from AACES participants recruited from December 2010 to December 2014, which included 495 cases and 711 controls. Among them, 421 cases (85 %) and 635 controls (89 %) completed the FFQ for dietary assessment. We compared characteristics of women completing and not completing the FFQ and found no difference with respect to age, education, region, BMI and smoking status (results not shown). Participants were excluded from the analysis if they reported an extreme energy intake defined as greater than twice the interquartile range of the log energy intake (case, n 1; control, n 3) or if they were missing important covariates (case, n 14; control, n 23), such as tubal ligation and family history of ovarian/breast cancer. The final analytical sample comprised 406 cases and 609 controls.

Data collection

Upon signing informed consent, participants completed a computer-assisted telephone interview. The questionnaire included detailed questions on demographic information, personal and family history of cancer, reproductive history, medication use, lifestyle characteristics and other factors of particular relevance to African-American women such as perceived discrimination, access to healthcare facilities and cultural beliefs.

Dietary intake was assessed using a self-administered Block 2005 FFQ, which included questions on frequency and portion size on 110 food items. The FFQ was mailed to participants with portion size pictures to facilitate recall. Participants were asked to estimate their usual consumption of each of these food items during the year before their reference date. Nutrient intakes were derived from the FFQ through the Block Dietary Data Systems based on the US Department of Agriculture (USDA) Food and Nutrient Database for Dietary Studies, version 1.0. The validity of the Block FFQ has been evaluated( Reference Boucher, Cotterchio and Kreiger 34 , Reference Mares-Perlman, Klein and Klein 35 ). The correlations between estimates from the questionnaire and 2-d food records were >0·50 for most nutrients. In particular, the correlation of energy-adjusted carbohydrate intake was 0·60 and 0·61, respectively, for women below or above age 65 years( Reference Mares-Perlman, Klein and Klein 35 ). Total carbohydrate values consist of total sugars (including added sugars), starch and fibre intakes.

The GI and GL values for food items in our study were based on the published international tables of values( Reference Foster-Powell, Holt and Brand-Miller 36 ), or from direct testing of food items at the University of North Carolina Nutrition Obesity Research Center, using glucose as the reference. The GL value of each food was calculated by multiplying the non-fibre carbohydrate contained in a specified serving size of the food by the GI value of that food, divided by 100. The daily GL value of each individual was the sum of all foods after multiplying the GL of each food by its frequency of consumption and portion size. An individual’s daily GI value was determined by dividing the daily GL by the total amount of non-fibre carbohydrate consumed. Top food sources that contribute to carbohydrates, sugars or GL in this sample are provided in online Supplementary Table S1.

Statistical analysis

Distributions of demographic and major risk factors for ovarian cancer, such as parity and tubal ligation, were compared between cases and controls using χ 2 tests. Student’s t tests were used to compare the mean nutrient intakes by cases and controls.

Dietary variables under investigation – total carbohydrate, total sugars, added sugars, starch, fibre and GL, except GI – were adjusted for energy intake using the multivariate nutrient density approach( Reference Willett, Howe and Kushi 37 ). Dietary variables were then categorised into quartiles based on the distributions among controls. Unconditional logistic regression models were used to calculate OR and 95 % CI for ovarian cancer risk by levels of energy-adjusted dietary intake. Linear trends were tested by modelling the median value of each quartile as a continuous variable. Dietary variables were also evaluated as a continuous increment based on the difference between the 75th and 25th percentile of the controls’ distribution, rounded to one significant digit.

The first model adjusted for age, geographic region (south- and mid-Atlantic, south central, Midwest), education (high school or less, some post-high school training, college or graduate degree) and total energy intake( Reference Willett 38 ). Additional covariates selected for model 2 included risk factors for ovarian cancer that changed the effect estimate of each corresponding dietary variable by >10 %: parity (0, 1–2, >2), oral contraceptive use (never, <60, ≥60 months), menopause status (pre-, postmenopause), tubal ligation (no, yes) and first-degree family history of breast/ovarian cancer (no, yes). The second model additionally adjusted for vegetable consumption (servings, continuous) or alcohol consumption (drink-equivalent, continuous) when evaluating added sugars or fibre, respectively. As vegetable intake is an important source of fibre and affects GL and GI values, we did not adjust for vegetable consumption when evaluating their associations with ovarian cancer to avoid over-adjustment. Other potential confounders considered were age at menarche (<12, 12–13, >13 years), hormone therapy use (never, ever) and smoking (never, ever), but were not included in the final model as they did not change the effect estimate by 10 %.

Further analyses were conducted adjusting for BMI and diabetes, both of which may be either confounders or mediators in the causal pathway between carbohydrate intake and ovarian cancer. We also considered possible confounding effects by total sugars and added sugars when evaluating fibre intake and SFA and total fat intake as potential covariates for any of the associations under study.

We examined whether the associations were modified by menopausal status, obesity and diabetes by testing statistical interactions using product terms with the continuous variable of dietary intake. We also examined whether the associations were different by histological subtypes of ovarian cancer. As smoking may be related to mucinous tumours( 39 ), we further adjusted for smoking when examining the associations by histological subtypes. A P value<0·1 was defined as statistically significant for interaction, whereas P<0·05 was used for main effects. All the statistical analyses mentioned above were performed using STATA (version 11.2; StataCorp LP). We had excellent power for main analyses evaluating carbohydrate intake, GL, GI and ovarian cancer risk. As assessed by Epi Info (version 7.1.5), we could detect an OR of 1·49 using quartile exposures based on a power of 80 % and two-sided 95 % CI.

Results

Compared with controls, cases were slightly older (cases mean 57·5 years v. controls 54·5 years; P value 0·01), less likely to reside in the Midwest, to have children, to have used oral contraceptives or have had a tubal ligation (Table 1). Cases were more likely to have a family history of breast/ovarian cancer. Cases were similar to controls in total energy intake and energy-adjusted total and SFA intake. They had statistically significant higher intakes of carbohydrate, total sugars, fructose and added sugars, higher GL and lower protein intake and alcohol consumption, although the magnitude of difference was very small for carbohydrate or protein intakes comparing cases and controls (Table 2).

Table 1 Descriptive characteristics of African-American women with and without ovarian cancer, African American Cancer Epidemiology Study 2010–2014 (Number and percentages)

* χ 2 tests.

South- and mid-Atlantic includes Georgia, North Carolina, New Jersey, South Carolina; South central includes Alabama, Louisiana, Tennessee, Texas; and Midwest includes Illinois, Michigan, Ohio.

1 year before diagnosis (cases)/interview (controls).

Table 2 Energy-adjusted dietary factors of African-American women with and without ovarian cancer, African American Cancer Epidemiology Study 2010–2014Footnote * (Mean values and standard deviations)

Tsp, teaspoon.

* Glycaemic index and alcohol intake is not further energy adjusted.

Student’s t test.

One drink equivalent is defined as 12 fl oz of beer, 5 fl oz of wine or 1·5 fl oz of distilled spirits.

As shown in Table 3, total carbohydrate intake was strongly positively associated with ovarian cancer risk. The multivariable-adjusted OR comparing the highest v. the lowest quartile of total carbohydrate intake was 1·57 (95 % CI 1·08, 2·28; P trend=0·03). In continuous analyses, we estimated a 32 % increase in OR (95 % CI 1·09, 1·61) per 30 g/4184 kJ (1000 kcal) of carbohydrate consumption. The positive association between carbohydrate intake and ovarian cancer risk seemed to be attributable to total sugar intake, with an OR of 1·61 (95 % CI 1·12, 2·30; P trend<0·01) for those in the highest quartile compared with the lowest. Each additional 20 g/4184 kJ (1000 kcal) per d of sugar intake was associated with a 22 % increased OR (95 % CI 1·08, 1·37). For a 8368 kJ (2000 kcal) diet, such an increment represents approximately a can of soda or one cup of ice-cream. When further evaluating types of sugars, we observed that fructose intake was positively associated with the risk of ovarian cancer (OR 1·23 for each 10 g/4184 kJ (1000 kcal); 95 % CI 1·05, 1·43). Added sugar intake was positively associated with ovarian cancer risk but was not statistically significant. We did not find an association between starch intake and ovarian cancer risk. There was a suggestion of decreased risk for higher total fibre intake but the risk estimate was only significant for the third quartile compared with the lowest. A post hoc analysis that evaluated fibre from various sources (from vegetable and fruit, from beans, from grains) as either quartiles or continuous variables did not find any association, except a marginally significant 12 % decrease in the OR (95 % CI 0·74, 0·99) per 3 g/4184 kJ (1000 kcal) of fibre from vegetable and fruit sources (data not shown).

Table 3 Association between daily dietary carbohydrate intake and ovarian cancer risk in African American Cancer Epidemiology Study 2010–2014 (Numbers and percentages; odds ratios and 95 % confidence intervals)

Q, quartile; Ref., referent values; tsp, teaspoon.

* Model 1 adjusted for age, education, region and total energy intake.

Model 2 adjusted for age, education, region, total energy intake, parity, oral contraceptive use, menopause status, tubal ligation and family history of breast/ovarian cancer (first-degree relative). For added sugars, model additionally adjusted for vegetable intake. For fibre, model additionally adjusted for alcohol consumption.

Increment used in continuous analyses based on the difference between 75th and 25th percentile of the control distribution, rounded to one significant digit.

We found a positive linear association between GL and ovarian cancer risk (OR 1·18 for each 10 units/4184 kJ (1000 kcal); 95 % CI 1·04, 1·33). However, we only observed a significant association when comparing the third quartile v. the lowest (OR 1·57; 95 % CI 1·09, 2·28) but not for the highest quartile of GL. There was no evidence of an association between GI and ovarian cancer, with OR near the null and not statistically significant.

Our results were not materially altered with further adjustment for BMI or diabetes. Results for fibre were not altered after adjusting for total or added sugar intake. Estimates for total carbohydrates, total sugars and GL were strengthened after adjusting for total fat or SFA intake (online Supplementary Table S2), although the interpretation should be cautious as this isoenergetic model estimates the effect of substituting carbohydrates for the same amount of non-fat sources of energy. Results for added sugars, fibre or GI remained unchanged.

Results for carbohydrate intake, GL and GI as continuous variables were stratified by diabetes status in addition to interaction tests as the number of women with diabetes was small (online Supplementary Table S3). Although interaction tests were not statistically significant, the positive association between carbohydrate intake, total sugars, added sugars and GL with ovarian cancer risk appeared to be stronger among participants with diabetes. We also evaluated effect modification by menopausal status and BMI. No significant interaction was found. Associations were also evaluated by histological subtype. Given the small number of non-serous subtypes, they were combined for analysis. The findings did not seem to be different for serous v. non-serous subtypes of ovarian cancer (data not shown). Further adjusting for smoking did not alter this result.

Discussion

In this first population-based study of carbohydrate intake and ovarian cancer risk in African-American women, we observed that high carbohydrate and sugar intakes were associated with a greater risk of ovarian cancer, independent of several relevant non-dietary and dietary factors. There was also a suggestion of a positive association between GL and ovarian cancer risk. The association between carbohydrate intake, sugar (total and added) intakes or GL and ovarian cancer appeared to be stronger for women with diabetes, although the interaction tests were not statistically significant.

Total carbohydrate intake is a combination of sugars, starch and fibre consumption. Our results suggested that the positive association between carbohydrate intake and ovarian cancer risk was primarily driven by sugar intake. In support of our findings, a previous study found that higher consumption of bread, pasta and rice and more total sugar intakes were associated with an increased risk of ovarian cancer( Reference Bosetti and Negri 16 ). However, other studies reported an inverse association( Reference Tasevska, Jiao and Cross 19 ) or no association between sugar intake and ovarian cancer risk( Reference Nagle, Kolahdooz and Ibiebele 13 , Reference Silvera, Jain and Howe 15 , Reference Bidoli, La Vecchia and Montella 17 , Reference King, Olson and Paddock 18 ).

The inconsistencies in findings between our study and most of the previous studies, which were mainly conducted in European or European-American women, may be due to differences in consumption of sugar types or glucose metabolism of African-Americans. Although the range of carbohydrate and total sugar intake in our study is comparable with those reported in other studies( Reference Tasevska, Jiao and Cross 19 ), the differences in the intake of sugar subtypes have been noticed comparing African-Americans and European-Americans. According to the National Health and Nutrition Examination Survey III, African-Americans have a higher consumption of fructose compared with non-Hispanic whites( Reference Vos, Kimmons and Gillespie 40 ). Evidence is accumulating that compared with other sugars, fructose is more involved in the development of insulin resistance( Reference Johnson, Perez-Pozo and Sautin 41 ), a hypothesised mechanism for ovarian cancer( Reference Arcidiacono, Iiritano and Nocera 42 ). Consistently, we found a positive association between fructose consumption and ovarian cancer risk. Furthermore, African-Americans are more hyperinsulinaemic and insulin resistant compared with European-Americans( Reference Haffner, Ralph and Saad 30 ), suggesting that they may have a higher ovarian cancer risk for a given amount of sugar intake. Another reason to explain the inconsistent findings may be due to the different energy-adjustment methods. It was suggested that the nutrient density method as used in our study, or residual method, may be more powerful than the standard energy-adjustment model employed in most of the previous studies( Reference Nagle, Kolahdooz and Ibiebele 13 , Reference Silvera, Jain and Howe 15 , Reference King, Olson and Paddock 18 ) to detect the relative odds when the nutrient variables were categorised( Reference Brown, Kipnis and Freedman 43 ).

The evidence regarding the association between fibre intake and ovarian cancer risk has been inconsistent. Although some studies found no association between fibre intake and the risk of ovarian cancer( Reference Shu, Gao and Yuan 10 , Reference Kushi, Mink and Folsom 14 , Reference Silvera, Jain and Howe 21 , Reference Salazar-Martinez, Lazcano-Ponce and Gonzalez Lira-Lira 44 ), others found an inverse association( Reference Tzonou, Hsieh and Polychronopoulou 9 , Reference Risch, Jain and Marrett 11 Reference Nagle, Kolahdooz and Ibiebele 13 , Reference Pelucchi, La Vecchia and Chatenoud 20 ). Two of these studies further examined types of fibre intake and showed that the inverse association was observed only for vegetable fibre but not for fruit or cereal fibre( Reference Risch, Jain and Marrett 11 , Reference Pelucchi, La Vecchia and Chatenoud 20 ). Our data, which observed an inverse association with dietary fibre from vegetable and fruit but not with fibre from grains, support the fact that the effects of dietary fibre on ovarian cancer may vary depending on the food sources.

Among the few previous studies examining the associations of GL and GI with ovarian cancer risk( Reference Nagle, Kolahdooz and Ibiebele 13 , Reference Silvera, Jain and Howe 15 , Reference King, Olson and Paddock 18 , Reference George, Mayne and Leitzmann 24 , Reference Augustin and Polesel 25 ), our results are consistent with those of a prospective cohort study and a population-based case–control study that showed positive associations with GL but not with GI( Reference Nagle, Kolahdooz and Ibiebele 13 , Reference Silvera, Jain and Howe 15 ). The null findings with GI suggested that it may not be as good as GL to reflect the overall glycaemic effect of the diet, as GL also takes the amount of carbohydrate intake into consideration in addition to carbohydrate quality as for GI( Reference George, Mayne and Leitzmann 24 ).

Potential mechanisms linking carbohydrate-rich foods to ovarian tumour development have been proposed. Long-term consumption of carbohydrate-rich foods can result in chronic hyperinsulinaemia, which can indirectly promote the production of insulin-like growth factor-1 (IGF-1)( Reference Cohen and LeRoith 7 ). IGF-1 is recognised to play a critical role in promoting cell proliferation and inhibiting apoptosis( Reference Yu and Rohan 45 ). Higher circulating concentrations of IGF-1 were found in several cancer types such as prostate cancer and breast cancer( Reference Renehan, Zwahlen and Minder 46 ), but the evidence for ovarian cancer is inconsistent( Reference Ose, Fortner and Schock 47 Reference Peeters, Lukanova and Allen 49 ). Insulin and IGF-1 may also promote tumourigenesis through stimulating the production of sex hormones, especially androgens( Reference Cara 50 ), which has been implicated in the pathogenesis of ovarian cancer( Reference Risch 51 ). In addition, the acute glucose fluctuations were found to evoke oxidative stress( Reference Monnier, Mas and Ginet 52 ), with subsequent oxidative DNA damage( Reference Kidane, Chae and Czochor 53 ), which was suggested to be involved in cancer development( Reference Kidane, Chae and Czochor 53 ).

Our results of a stronger association between sugars, GL and ovarian cancer among diabetic participants are biologically plausible, although we had limited power to detect a significant statistical interaction. Type II diabetic patients may suffer from long-term higher compensatory rise in insulin( Reference Kaaks and Lukanova 8 ), which in turn may increase cancer risk or growth via elevated IGF( Reference Cohen and LeRoith 7 ). In addition, the cross-talk between the advanced glycation end products (AGE) and receptor for AGE system and oxidative stress are suggested to further increase the risk for cancers in diabetic patients( Reference Abe and Yamagishi 54 ). Although our results can be chance findings and need to be replicated, given the high prevalence of diabetes among African-Americans and that ovarian cancer patients with diabetes exhibit poorer survival( Reference Bakhru, Buckanovich and Griggs 55 ), primary dietary interventions may be especially important for this vulnerable population.

A number of limitations of the current study should be considered. First, residual confounding is possible, even with adjusting for a wide array of covariates. Second, there is a concern that undetected ovarian cancer may influence dietary choices in the year before diagnosis, leading to an issue of reverse causation. However, this is unlikely for ovarian cancer, considering that the median pre-diagnostic symptom duration for invasive cases is 4 months( Reference Vine, Ness and Calingaert 56 ). In addition, we found no difference in any dietary variables under study between cases at early stages v. advanced stages, which argues against undetected disease influencing dietary choices. Third, recall bias is always possible in case–control studies, but the largely unknown relationship between sugary foods and ovarian cancer and, as a result, lack of awareness of this link in this population should minimise this problem. Fourth, self-reported carbohydrate intake may be subject to under-reporting( Reference Poppitt, Swann and Black 57 ), and may limit our confidence to estimate the absolute amount of intake. However, FFQ have been shown to be a useful tool to rank individuals reliably based on their nutrient intakes, as in the present study( Reference Willett 38 ). FFQ-measured dietary GI and GL have also been shown to be valid and reliable tools to investigate their relationships with disease risks( Reference Du, van der A and van Bakel 58 , Reference Murakami, Sasaki and Takahashi 59 ). Furthermore, participation rates in population-based epidemiological studies are declining; however, although this is of concern, we found that the distribution of main risk factors among AACES ovarian cancer cases and controls were similar to other studies among African-Americans( Reference Moorman, Palmieri and Akushevich 60 ). Reduced response rates do not necessarily compromise the internal validity of the study, as representative samples could still be achieved with proper study designs( Reference Nelson, Powell-Griner and Town 61 ).

Major strengths of this study include the largest sample for this under-studied population and carefully collected information, which provides an unprecedented opportunity for studying the modifiable risk factors in this minority population.

In conclusion, the present study supports a detrimental role of a carbohydrate-rich diet in ovarian cancer. Considering the poorer survival among African-American ovarian cancer patients and no effective screening tool for ovarian cancer, prevention is especially important, particularly through dietary modification, which is relatively low cost and low risk compared with medical treatments. In addition, our findings suggest even greater risk from high carbohydrate intake among diabetics, although no significant statistical interaction was identified. As diabetes is more common among African-American women( 62 ), this finding may have important implications for ovarian cancer prevention in this population.

Acknowledgements

The authors acknowledge the AACES interviewers, Christine Bard, LaTonda Briggs, Whitney Franz (North Carolina) and Robin Gold (Detroit). The authors also acknowledge the individuals responsible for facilitating case ascertainment across the ten sites, including Jennifer Burczyk-Brown (Alabama); Rana Bayakly and Vicki Bennett (Georgia); the Louisiana Tumor Registry; Lisa Paddock and Manisha Narang (New Jersey); Diana Slone, Yingli Wolinsky, Steven Waggoner, Anne Heugel, Nancy Fusco, Kelly Ferguson, Peter Rose, Deb Strater, Taryn Ferber, Donna White, Lynn Borzi, Eric Jenison, Nairmeen Haller, Debbie Thomas, Vivian von Gruenigen, Michele McCarroll, Joyce Neading, John Geisler, Stephanie Smiddy, David Cohn, Michele Vaughan, Luis Vaccarello, Elayna Freese, James Pavelka, Pam Plummer, William Nahhas, Ellen Cato, John Moroney, Mark Wysong, Tonia Combs, Marci Bowling, Brandon Fletcher, Yingli Wolinsky (Ohio); Susan Bolick, Donna Acosta, Catherine Flanagan (South Carolina); Martin Whiteside (Tennessee) and Georgina Armstrong and the Texas Registry, Cancer Epidemiology and Surveillance Branch, Department of State Health Services.

The AACES study was funded by NCI (R01CA142081). Additional support was provided by Metropolitan Detroit Cancer Surveillance System with federal funds from the National Cancer Institute, National Institute of Health, Department of Health and Human Services, under contract no. HHSN261201000028C and the Epidemiology Research Core, supported in part by NCI Center grant (P30CA22453) to the Karmanos Cancer Institute, Wayne State University School of Medicine and NCI Center grant (P30CA072720) to the Rutgers Cancer Institute of New Jersey. The funders had no role in the design, analysis or writing of this article.

B. Q. and E. V. B.: study design and formulating the research question; P. G. M., A. J. A., J. S. B.-S., M. B., M. L. C., E. F., E. S. P., A. G. S., P. T., J. M. S. and E. V. B.: data acquisition; B. Q.: data analysis; B. Q. and E. V. B.: drafting the paper; B. Q.: primary responsibility for the final content; and all authors critically revised the paper and approved the final version of the manuscript.

The authors declare that there are no conflicts of interest.

Supplementary material

For supplementary material/s referred to in this article, please visit http://dx.doi.org/doi:10.1017/S0007114515004882

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Figure 0

Table 1 Descriptive characteristics of African-American women with and without ovarian cancer, African American Cancer Epidemiology Study 2010–2014 (Number and percentages)

Figure 1

Table 2 Energy-adjusted dietary factors of African-American women with and without ovarian cancer, African American Cancer Epidemiology Study 2010–2014* (Mean values and standard deviations)

Figure 2

Table 3 Association between daily dietary carbohydrate intake and ovarian cancer risk in African American Cancer Epidemiology Study 2010–2014 (Numbers and percentages; odds ratios and 95 % confidence intervals)

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