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Carbohydrate nutrition and risk of adiposity-related cancers: results from the Framingham Offspring cohort (1991–2013)

Published online by Cambridge University Press:  29 June 2017

Nour Makarem
Affiliation:
Department of Medicine, Columbia University Medical Center, 51 Audubon Avenue, Suite 501, New York, NY 10032, USA
Elisa V. Bandera
Affiliation:
Rutgers School of Public Health, Rutgers The State University of New Jersey, 683 Hoes Lane West, Piscataway, NJ 08854, USA Rutgers Cancer Institute of New Jersey, 195 Little Albany Street, New Brunswick, NJ 08903-2681, USA
Yong Lin
Affiliation:
Rutgers School of Public Health, Rutgers The State University of New Jersey, 683 Hoes Lane West, Piscataway, NJ 08854, USA Rutgers Cancer Institute of New Jersey, 195 Little Albany Street, New Brunswick, NJ 08903-2681, USA
Paul F. Jacques
Affiliation:
Friedman School of Nutrition Science and Policy, Jean Mayer USDA Human Nutrition Research Center on Aging, Tufts University, 711 Washington Street, Boston, MA 02111, USA
Richard B. Hayes
Affiliation:
Department of Population Health, NYU Langone School of Medicine, 227 East 30th Street, 7th Floor, New York, NY 10016, USA
Niyati Parekh*
Affiliation:
Department of Population Health, NYU Langone School of Medicine, 227 East 30th Street, 7th Floor, New York, NY 10016, USA College of Global Public Health, New York University, 715-719 Broadway, Room 1220, New York, NY 10003, USA
*
*Corresponding author: N. Parekh, fax +1 212 998 4194, email [email protected]
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Abstract

Higher carbohydrate intake, glycaemic index (GI), and glycaemic load (GL) are hypothesised to increase cancer risk through metabolic dysregulation of the glucose-insulin axis and adiposity-related mechanisms, but epidemiological evidence is inconsistent. This prospective cohort study investigates carbohydrate quantity and quality in relation to risk of adiposity-related cancers, which represent the most commonly diagnosed preventable cancers in the USA. In exploratory analyses, associations with three site-specific cancers: breast, prostate and colorectal cancers were also examined. The study sample consisted of 3184 adults from the Framingham Offspring cohort. Dietary data were collected in 1991–1995 using a FFQ along with lifestyle and medical information. From 1991 to 2013, 565 incident adiposity-related cancers, including 124 breast, 157 prostate and sixty-eight colorectal cancers, were identified. Cox proportional hazards models were used to evaluate the role of carbohydrate nutrition in cancer risk. GI and GL were not associated with risk of adiposity-related cancers or any of the site-specific cancers. Total carbohydrate intake was not associated with risk of adiposity-related cancers combined or prostate and colorectal cancers. However, carbohydrate consumption in the highest v. lowest quintile was associated with 41 % lower breast cancer risk (hazard ratio (HR) 0·59; 95 % CI 0·36, 0·97). High-, medium- and low-GI foods were not associated with risk of adiposity-related cancers or prostate and colorectal cancers. In exploratory analyses, low-GI foods, were associated with 49 % lower breast cancer risk (HR 0·51; 95 % CI 0·32, 0·83). In this cohort of Caucasian American adults, associations between carbohydrate nutrition and cancer varied by cancer site. Healthier low-GI carbohydrate foods may prevent adiposity-related cancers among women, but these findings require confirmation in a larger sample.

Type
Full Papers
Copyright
Copyright © The Authors 2017 

Cancer is a major cause of morbidity and mortality in the USA( Reference Siegel, Miller and Jemal 1 ). The high incidence rates of this disease continue to be stable for women and have declined only slightly for men over the past 5 years( Reference Siegel, Miller and Jemal 1 ). A number of cancer types are now linked to overweight and obesity and are therefore termed ‘adiposity-related’( 2 , 3 ). Adiposity-related cancers include the most commonly diagnosed cancers in the USA such as female, gastrointestinal, genitourinary, haematologic and other cancers( 2 , 3 ) and account for more than 1·2 million of the projected 1·7 million incident cancers in 2017( Reference Siegel, Miller and Jemal 1 ). Due to the high economic costs associated with the management of these cancers( Reference Yabroff, Lund and Kepka 4 ), primary prevention by altering modifiable risk factors will probably be the most effective way of reducing the cancer burden at present.

Hyperglycaemia, hyperinsulinaemia and insulin resistance play a role in the aetiology of adiposity-related cancers( Reference Parekh, Lin and Vadiveloo 5 ). Moreover, obesity, diabetes and the metabolic syndrome, all of which are characterised by glucose and insulin dysregulation, are established risk factors for cancer( Reference Roberts, Dive and Renehan 6 Reference Shikata, Ninomiya and Kiyohara 8 ). Dietary carbohydrates are the main dietary component impacting blood glucose and insulin levels and have also been linked to obesity risk and various measures of body adiposity( Reference Te Morenga, Mallard and Mann 9 , Reference Santos, Esteves and da Costa Pereira 10 ). However, their influence on chronic disease risk, particularly cancer, may vary by both quantity and type of carbohydrates consumed.

Dietary glycaemic index (GI) is an index for ranking carbohydrate-containing foods based on their effect on blood glucose concentrations that serves as a measure of carbohydrate quality( Reference Jenkins, Wolever and Taylor 11 , Reference Jenkins, Jenkins and Wolever 12 ). It provides a numerical evidence-based index of postprandial glycaemia by comparing available carbohydrates gram-for-gram in foods to a standard source, either glucose or white bread. Dietary glycaemic load (GL), on the other hand, is a ranking system for the carbohydrate content of food that takes into account the portion size in addition to the GI, and therefore serves as a measure of both average quantity and quality of carbohydrates( Reference Atkinson, Foster-Powell and Brand-Miller 13 ). The rise in blood glucose after a meal, influenced by dietary GI and GL, is linked to a rise in insulin( Reference Jenkins, Jenkins and Wolever 12 ). Higher circulating concentrations of insulin result in the activation of the insulin-signalling pathway that dictates the activity of a network of proteins that increase the risk of cancer( Reference Parekh, Lin and Vadiveloo 5 ). According to the World Cancer Research Fund & American Institute for Cancer Research (WCRF/AICR)( 14 ), GI and GL have predicted risks of type 2 diabetes and CHD and related biomarkers, which are risk factors for cancer. These findings suggest that GI and GL may be useful markers in the context of cancer prevention.

Epidemiological evidence on whether total carbohydrate intake and dietary GI and GL play a role in cancer risk is contradictory( Reference Dong and Qin 15 Reference Aune, Chan and Vieira 20 ). Although a null association has been observed for some cancer sites( Reference Mulholland, Murray and Cardwell 17 , Reference Aune, Chan and Lau 19 , Reference Aune, Chan and Vieira 20 ), other studies are indicative of a role of GI but not GL in cancer risk( Reference Dong and Qin 15 ) and vice versa( Reference Nagle, Olsen and Ibiebele 18 ). The WCRF/AICR indicate that epidemiological evidence thus far is too inconsistent to draw any conclusions or make dietary recommendations based on the intertwined concepts of GI and GL( 14 ). To clarify these associations, we present results from a prospective cohort study, using the Framingham Offspring (FOS) cohort, that evaluated the associations between total carbohydrate intake, GI and GL in relation to risk of adiposity-related cancers combined and three of the most common site-specific cancers in the USA: breast, prostate and colorectal cancers. We restricted our analyses to adiposity-related cancers, because these cancers are hypothesised to be lifestyle related and are hence most likely to benefit from dietary modification( 14 ). In exploratory analyses, this study has also assessed the impact of the main carbohydrate food sources in the US diet and of high-, moderate- and low-GI foods on the risk of these cancers.

Methods

Study population and analysis data set

Existing data from the Framingham Heart Study (FHS), a prospective study in Framingham, Massachusetts designed to study CVD epidemiology( Reference Dawber, Meadors and Moore 21 ), were used for these analyses. The analytic sample consisted of 3184 men and women from the FOS cohort, which includes the offspring of the original cohort of the FHS and their spouses. Between 1971 and 1975, 5124 participants were enrolled into the FOS, clinical and medical exams have been conducted, on average, every 4 years to collect medical, lifestyle and anthropometric data( Reference Feinleib, Kannel and Garrison 22 ). During the fifth examination cycle, which occurred between 1991 and 1995, the collection of dietary data were initiated and was available for 3418 participants.

Only dietary data from examination 5 were used, because a previous analysis on trends in carbohydrate consumption in the FOS did not reveal any clinically significant changes over time( Reference Makarem, Scott and Quatromoni 23 ). Participants were excluded if reported energy intakes were outside the ranges of 2510–16 736 and 2510–17 573 kJ/d for women and men, respectively (n 67), in consistency with the criteria for ‘plausible intakes’ as previously published in the FHS( Reference McKeown, Meigs and Liu 24 ). In addition, participants who left ≥13 food items blank on the FFQ were excluded (n 31). Participants with a history of adiposity-related cancer at or before examination 5 (n 134) and pregnant women at examination 5 (n 2) were also excluded. Therefore, the final analytic data set included 3184 participants (Fig. 1). All procedures involving human subjects were approved by the Institutional Review Board for Research with Human Subjects at New York University (no. 10-7319). The FHS was conducted according to the Declaration of Helsinki guidelines, and written informed consent was obtained from all subjects enrolled in the FHS by FHS investigators.

Fig. 1 Creation of the final analytical data set from the Framingham Offspring cohort. There were 5124 participants at examination 5 of whom 3418 had diet data collected. After excluding participants with invalid energy intakes (n 67)( Reference McKeown, Meigs and Liu 24 ) and those who left ≥13 food items blank on the FFQ (n 31)( Reference McKeown, Meigs and Liu 24 ), there were 3320 participants with valid dietary data. Participants with a history of adiposity-related cancer at or before examination 5 (n 134) and pregnant women at examination 5 (n 2) were also excluded resulting in the final analytic data set of 3184 participants.

Assessment of dietary intake

Usual dietary intake for the previous year was assessed at the fifth examination cycle (1991–1995) using the validated 126-item Harvard semi-quantitative FFQ( Reference Rimm, Giovannucci and Stampfer 25 ). This FFQ queried the frequency consumption of food items with standard serving sizes ranging from never or <1 serving/month to >6 servings/d( Reference Rimm, Giovannucci and Stampfer 25 ). It also included separate questions to assess the use of vitamin and mineral supplements. FFQ were mailed to participants before the examination, and participants were asked to bring the FFQ with them for revision by trained personnel at the study visit to ensure accuracy. Nutrient intakes were calculated by multiplying the reported frequency of consumption of foods by the nutrient content of the specified portion using the US Department of Agriculture nutrient database( Reference Rimm, Giovannucci and Stampfer 25 ).

The main dietary exposures of interest for these analyses were total carbohydrate intake (% energy) in addition to dietary GL and GI, which were energy-adjusted by using the multivariable method. The validity of this FFQ has been examined in several population groups for nutrients and foods( Reference Rimm, Giovannucci and Stampfer 25 , Reference Willett, Sampson and Stampfer 26 ). There appears to be a moderate correlation of 0·69 and 0·45 when comparing total carbohydrate intake from the FFQ to intake from multiple diet records in men and women, respectively( Reference Rimm, Giovannucci and Stampfer 25 , Reference Willett, Sampson and Stampfer 26 ). In addition, dietary GI and GL, estimated from this FFQ have been associated with plasma TAG concentrations, a biomarker known to respond to carbohydrate intake, as an indirect measure of validity( Reference Liu, Manson and Stampfer 27 ).

Ascertainment of exposure variables

Glycaemic index

GI represents the incremental area under the 2-h blood glucose response curve (AUC) induced by 50 g of carbohydrate from a specific food and is calculated as the percentage of the area produced by the same amount of carbohydrates from a standard source, either glucose or white bread( Reference Jenkins, Wolever and Taylor 11 ). In the FHS, the GI of individual foods from the FFQ was acquired from published estimates (approximately 53 %)( Reference Atkinson, Foster-Powell and Brand-Miller 13 ) or imputed when necessary by matching similar foods based on energy content, carbohydrate, sucrose, fat and dietary fibre content (approximately 28 %). The remaining food items on the FFQ (19 %) contain little or no carbohydrate and were thus excluded from the analyses. As previously published( Reference McKeown, Meigs and Liu 28 ), the average dietary GI was pre-calculated in the FHS as follows: {Σ[(Frequency of food per day)×(carbohydrate content of the food)×(GI)]}/total carbohydrate in the diet.

Glycaemic load

The GL, a related concept, is a measure of both carbohydrate quantity and quality( Reference Atkinson, Foster-Powell and Brand-Miller 13 ). GL was computed for each food item on the FFQ by FHS investigators by multiplying the amount of available carbohydrate in the food by its GI and then dividing by 100( Reference McKeown, Meigs and Liu 28 ). The average dietary GL for each participant was then obtained by multiplying the carbohydrate content of each food by its GI and then multiplying this value by the frequency of consumption and summing up for all food items( Reference McKeown, Meigs and Liu 28 ). Potatoes, cold cereal, white bread, pizza, pasta, dark bread, orange juice, bananas, English muffins/bagels and white rice were the major foods contributing to the overall dietary GL within the FOS cohort, as previously published( Reference McKeown, Meigs and Liu 28 ).

Assessment of low-, medium- and high-glycaemic index foods

We classified carbohydrate-containing foods as high-, moderate- and low-GI foods if their GI was ≥70, 56–69 and ≤55, respectively( 29 ). Foods that are considered to be the main contributors of dietary carbohydrate intake in the US based on the National Health and Nutrition Examination Survey( Reference Block 30 ) were selected a priori for the analyses.

Cancer case ascertainment

The primary outcome for this study is adiposity-related cancers. These include cancers of the gastrointestinal tract, reticuloendothelial system (blood, bone and spleen), female reproductive tracts, genitourinary organs and the thyroid gland( 2 , 3 ). Cancers were considered adiposity-related if identified by the American Cancer Society or the National Cancer Institute as clearly or possibly linked to overweight and obesity( 2 , 3 ).

The FHS cancer cases include confirmed primary cancers from pathology reports with information on cancer type and date of diagnosis obtained from the patient’s medical record. Cancer cases were ascertained using pathology reports with some diagnoses (<5 %) based solely on death certificates or clinical reports without pathology reports. Self-reported or suspected diagnoses not confirmed by pathology reports were excluded. A total of 699 adiposity-related cancers occurred in the FOS. After deleting participants with a history of adiposity-related cancer at or before examination 5 (n 134), a total of 565 primary adiposity-related cancer cases (255 among women and 310 among men) including 124 breast, 157 prostate and sixty-eight colorectal cancers were identified.

Measurement of other variables

Demographic and lifestyle information

During in-person interviewing at clinical examination 5, age was self-reported; years of education were reported at examination 2. Smoking status, physical activity levels and alcohol use were also self-reported during in-person interviewing at the clinical examinations. Lifestyle information from examination 5 was used for these analyses. Participants were categorised as: current, former and non-smokers based on their smoking history. To assess their habitual physical activity levels, participants were asked to report the number of hours per week they spent engaging in sleep, sedentary, light, moderate or heavy physical activity on an average day( Reference Kannel and Sorlie 31 ). The time spent engaging in these activities was then multiplied by their metabolic cost and summed to compute a physical activity index (PAI)( Reference Kannel and Sorlie 31 ). Alcohol intake (ounces/week) was computed from self-reported frequency of consumption of a standard serving of beer, wine and cocktails.

Anthropometric measures

Anthropometric measures including height, weight and waist circumference (WC) were measured with the subject standing by trained personnel at examination 5. BMI in kg/m2 was calculated as follows: (BMI=weight (kg)/height (m2)). Participants were considered ‘normal’, ‘overweight’ and ‘obese’ if their BMI was <25, 25–29·9 and ≥30 kg/m2, respectively( 32 ). For WC measurements, men and women with WC >40 and >35 inches, respectively, were considered ‘at risk’( 33 ).

Medical history

Participants were considered to have a history of chronic disease based on the presence or absence of diabetes and CVD at or before examination 5. Participants were considered to have diabetes if their fasting blood glucose was ≥7 mmol/l or if they were receiving diabetes treatment. Participants were considered to have CVD, as previously defined by FHS( Reference Hubert, Feinleib and McNamara 34 ). Among women, menopausal status, age at menopause and number of live births were determined using a standardised medical history questionnaire. Hormone therapy (HT) use was ascertained by the examining physician at this clinical examination.

Statistical analysis

Descriptive statistics were generated to examine clinical, demographic and lifestyle characteristics at examination 5 for the sample as a whole. These characteristics were also examined across the quintiles of total carbohydrate intake, expressed as percentage of energy intake, using general linear models procedure (PROC GLM). Cox proportional hazards models were used to calculate the hazard ratios (HR) and 95 % CI for total carbohydrate intake (% energy), GI and GL (g/d) in relation to adiposity-related cancers with individuals in the lowest quintile category of the various dietary carbohydrate exposures as the referent category. Similarly, for low-, medium- and high-GI foods, quintile categories were compared. The test for linear contrast was used to compute P trend for the detection of a linear trend across the quintiles of the carbohydrate exposure variables.

We also evaluated associations in relation to site-specific cancers (breast, prostate and colorectal cancers). Tertiles were created for the carbohydrate exposure variables in the site-specific analyses because of the limited number of site-specific cancers in this cohort. We report herein the results of these exploratory analyses with the caveat of limited power. In all analyses, participants were considered censored if they died, were lost to follow-up or at the last examination in which they participated if the event had not yet occurred.

HR were adjusted for clinically important variables including age, sex, alcohol, smoking and energy intake( 14 ), which were selected a priori. We further adjusted for menopausal status, age at menopause, HT use and number of live births for breast cancer and for red and processed meat and fibre intake for colorectal cancer. For all analyses, we then tested other potential confounders including history of CVD or diabetes, physical activity, education, height and nutritional covariates such as fruit and vegetable and fat intake and use of antioxidant supplements( 14 ). These covariates were added singly to the model and were retained in the final models if they had an impact of >10 % on HR.

To determine whether BMI and WC are confounders or modify the impact of carbohydrate nutrition on risk of adiposity-related cancers, models were fitted with and without BMI and WC and analyses were also re-ran by BMI (‘normal’ v. ‘overweight and obese’) and WC strata (‘normal’ v. ‘at risk’). We also tested for interactions with sex, physical activity and smoking because of their potential influence on the cancer process through various biological mechanisms, which may cause the risk estimates to vary( 14 ). A multiplicative term was introduced for these potential interactions in each model. P interaction<0·1 were considered significant, and if present, results were reported separately in subgroups. Statistical analyses were conducted using SAS statistical software (version 9.3; SAS Institute).

Results

Characteristics of the study population

Table 1 represents the population characteristics evaluated at examination 5, which corresponds to the first period of dietary data collection. The FHS population is predominantly Caucasian (99 %), and 53·1 % are females. On average, participants reported 14 years of education; mean age was 54·4 years and the mean BMI was 27·4 kg/m2, indicating that the study sample, was middle aged to older and overweight. WC was within the normal range in both men and women( 33 ). The average PAI was 34·8, which represents a relatively high level of physical activity( Reference Kannel and Sorlie 31 ). Approximately 43 and 19 % identified as former or current smokers, respectively. More than a third of the study population reported use of antioxidant supplements (36·2 %). Among women, approximately 64 % were postmenopausal and 19·5 % reported use of HT. The mean energy intake was 7816 kJ, with carbohydrates accounting for approximately half of total energy intake (51 %). The average GI was 54·7, representing a low dietary GI, and the average GL was 128·8 g/d. On average, participants consumed 3·7 servings of fruits and vegetables/d, 2·4 servings/week of legumes and 5·3 servings/week of red and processed meat. The average intake of refined grains (4·1 oz eq/d) was more than double that of whole grains (1·2 oz eq/d). On average, participants consumed 2·5 ounces of alcohol per week.

Table 1 Baseline characteristics of Framingham Offspring cohort at examination 5 (n 3184) (Percentages and numbers; mean values and standard deviations)

HT, hormone therapy.

* Physical activity index was computed as follows: (1·0×hours of sleep)+(1·1× hours of sedentary time)+(1·5×hours of light physical activity)+(2·4×hours of moderate activity)+(5×hours of heavy physical activity).

Current smokers: reported smoking at least one or more cigarettes per day regularly during the year preceding examination 5; former smokers: denied having smoked regularly for the year preceding the examination, but reported regular smoking more than 1 year before the examination; never smokers: did not report smoking at this or any previous clinical examination.

Use of antioxidant supplements including vitamin A, vitamin C, vitamin E, Se, β-carotene was reported on the FFQ.

§ Red and processed meat intake includes intake of bacon, hotdogs, processed meat, hamburger, meat sandwich and meat casserole.

|| Alcohol intake in ounces per week was subsequently computed using the following equation: (0·57×number of cocktails)+(0·444×number of beers)+(0·4×number of glasses of wine).

Associations of total carbohydrate intake, glycaemic index and glycaemic load and overall adiposity-related cancer risk

After a median follow-up of 13·1 years, there was no significant association between GI and GL in relation to overall adiposity-related cancer risk (non-significant HR ranging from 0·93 to 0·95) in models adjusted for age, sex, smoking, alcohol and energy intake (Table 2). Additional adjustment for BMI, WC, history of CVD and diabetes, height, education, use of antioxidant supplements, physical activity, fruit and vegetable intake and fat intake did not significantly change these results. Total carbohydrate intake, expressed as percentage of energy intake, was associated with 30 % lower risk of adiposity-related cancers in age-adjusted models (HR 0·70; 95 % CI 0·53, 0·92)(P trend=0·04), but this association was not statistically significant in multivariable-adjusted models (HR 0·77; 95 % CI 0·58, 1·04) (P trend=0·24).

Table 2 Association between quintiles of dietary carbohydrates, glycaemic index and glycaemic load in relation to adiposity-related cancer risk (n 656) (Hazard ratios (HR) and 95 % confidence intervals)

* Models were adjusted for age, sex, smoking, alcohol, and energy (multivariable method for glycaemic index and glycaemic load).

Next, we tested for interactions for the relationships between dietary carbohydrates, GI and GL in relation to adiposity-related cancer risk, a priori considered significant at P<0·1. There were no statistically significant interactions by BMI status (P>0·36), smoking (P>0·12) and by physical activity levels (P>0·70) for any of the dietary variables. A significant multiplicative interaction was observed for sex and total carbohydrate intake (% energy) (P=0·08) and WC for all dietary variables (P≤0·02). Stratified analyses by sex (‘male’ and ‘female’) and by WC (‘normal’ and ‘at risk’) did not reveal any significant associations (data not shown).

Associations of total carbohydrate intake, glycaemic index and glycaemic load with site-specific cancer risk

Breast cancer

After adjustment for age, smoking, alcohol, energy intake, menopausal status, HT use, age at menopause and number of live births, carbohydrate intake, as percentage of total energy intake, was associated with 41 % lower risk of breast cancer (HR 0·59; 95 % CI 0·36, 0·97) (Table 3). Additional adjustment for height, pre-existing conditions (diabetes and CVD), antioxidant supplement use, education and physical activity did not change these findings. However, these associations were no longer significant in models additionally adjusted for BMI (HR 0·64; 95 % CI 0·39, 1·05) and WC (HR 0·63; 95 % CI 0·38, 1·04). A null association was observed for GI and GL in relation to breast cancer risk in age- and multivariable-adjusted models (non-significant HR ranging from 0·54 to 0·91).

Table 3 Association between tertiles (T) of dietary carbohydrates, glycaemic index (GI) and glycaemic load (GL) in relation to breast, prostate and colorectal cancers (Hazard ratios (HR) and 95 % confidence intervals)

* For breast cancer, models were adjusted for age, smoking, alcohol, energy (multivariable method for GI and GL), menopausal status, hormone therapy use, age at menopause and number of live births.

Additional adjustment for BMI, waist circumference, height, pre-existing conditions (diabetes and CVD), antioxidant supplement use, education, and physical activity did not change these findings. An exception was the model on carbohydrate intake (% energy) in relation to breast cancer risk, where associations were no longer significant after adjustment for BMI and waist circumference.

The tertile cut-offs for breast cancer were: carbohydrate intake (% energy): T1: <48·2 %, T2: 48·2–55·0 %, T3:>55·0 %; for GI: T1: <53·3, T2: 53·3–56·2, T3: >56·2; for GL (g/d): T1: <96·7 g/d, T2: 96·7–136·0 g/d, T3: >136·0 g/d.

§ For prostate cancer, models were adjusted for age, smoking, alcohol, energy (multivariable method for GI and GL).

|| The tertile cut-offs for prostate cancer were: carbohydrate intake (% energy): T1: <46·2 %, T2: 46·2–53·7 %, T3: >53·7 %; for GI: T1: <53·6, T2: 53·6–56·4, T3:>56·4; for GL (g/d): T1: <106·3 g/d, T2: 106·3–154·4 g/d, T3: >154·4 g/d.

For colorectal cancer, models were adjusted for age, sex, smoking, alcohol, energy (multivariable method for GI and GL) , red and processed meat intake and fibre intake.

** The tertile cut-offs for colorectal cancer were: carbohydrate intake (% energy): T1: <47·3 %, T2: 47·3–54·4 %, T3: >54·4 %; for GI: T1: <53·5, T2: 53·5–56·3, T3: >56·3; for GL: T1: <100·7 g/d, T2:100·7–143·7 g/d, T3: >143·7 g/d.

Prostate cancer

There was no significant association between carbohydrate intake, dietary GI and GL in relation to prostate cancer risk (Table 3) (non-significant HR ranging from 0·74 to 0·99) in models adjusted for age and for smoking, alcohol and energy intake. Additional adjustment for BMI, WC, height, pre-existing conditions (CVD and diabetes), antioxidant use, education and physical activity did not alter any of these findings.

Colorectal cancer

Similarly, to the findings for prostate cancer, a null association was observed for total carbohydrate intake (% energy), GI and GL in relation to colorectal cancer risk (Table 3) (non-significant HR ranging from 0·63 to 1·51) in models adjusted for age and for sex, smoking, alcohol, energy, red and processed meat and fibre intake. Additional adjustment for BMI, WC, height, pre-existing conditions (CVD and diabetes), antioxidant use, education and physical activity did not alter any of these findings.

Associations of low-, medium- and high-glycaemic index carbohydrate food sources with adiposity-related and site-specific cancer risk

In analyses evaluating low-, medium- and high-GI foods in relation to overall adiposity-related cancers and the examined site-specific cancers, there were no significant associations between high- and medium-GI foods and the risk of any cancer (Table 4). However, consumption of low-GI foods (including most fruits and non-starchy vegetables, legumes, milk and dairy products and whole grain products), collectively, in the highest v. lowest tertile of intake was associated with 49 % lower breast cancer risk (HR 0·51; 95 % CI 0·32, 0·83) in multivariable-adjusted models.

Table 4 Association between quintiles (Q)/tertiles (T) of low-, medium-, and high-glycaemic index (GI) foods (servings/week) in relation to overall adiposity-related cancers and site-specific cancers (Hazard ratios (HR) and 95 % confidence intervals)

* Models were adjusted for age, sex, smoking, alcohol and energy.

Additional adjustment for BMI, waist circumference, height, pre-existing conditions (diabetes and CVD), antioxidant supplement use, education and physical activity did not change these findings and mutual adjustment of low-, medium-, and high-GI for each other did not change these findings.

The quintile cut-offs for adiposity-related cancers were: low-GI foods (servings/week): Q1: <15·7, Q2: 15·7–22·8, Q3: 22·8–29·4, Q4: 29·4–39·5, Q5: >39·5; for medium-GI foods: Q1:<5·5, Q2: 5·5–8·7, Q3: 8·7–11·9, Q4: 11·9–16·8, Q5:>16·8; for high-GI foods: Q1: <33·7, Q2: 33·7–45·2, Q3: 45·2–57·6, Q4: 57·6–75·0, Q5: >75·0.

§ For breast cancer, models were adjusted for age, smoking, alcohol, energy (multivariable method), menopausal status, hormone therapy use, age at menopause and number of live births.

|| The tertile cut-offs for breast cancer were: low-GI foods (servings/week): T1: <21·9, T2: 21·9–33·8, T3: >33·8; for medium-GI foods (servings/week): T1:<7·8, T2: 7·8–13·4, T3: >13·4; high-GI foods: T1: <40·6, T2: 40·6–59·8, T3:>59·8.

For prostate cancer, models were adjusted for age, smoking, alcohol and energy (multivariable method).

** The tertile cut-offs for prostate cancer were: low-GI foods (servings/week): T1: <18·8, T2: 18·8–30·7, T3:>30·7; for medium-GI foods: T1: <7·4, T2: 7·4–13·3, T3:>13·3; for high-GI foods (servings/week): T1: <43·3, T2: 43·3–66·6, T3:>66·6.

†† For colorectal cancer, models were adjusted for age, sex, smoking, alcohol, energy (multivariable method), red and processed meat intake and fibre intake.

‡‡ The tertile cut-offs for colorectal cancer were: low-GI foods (servings/week): T1: <20·2, T2: 20·2–32·3, T3: >32·3; for medium-GI foods: T1: <7·5, T2: 7·5–13·4, T3: >13·4; for high-GI foods (servings/week): T1: <41·6, T2: 41·6–62·7, T3: >62·7.

§§ Low-GI foods included most fruits, non-starchy vegetables and carrots, legumes and certain whole grain and dairy products.

|||| Medium-GI foods included certain fruits (e.g. bananas and blueberries), whole grain products (e.g. popcorn and cereal), desserts and baked goods and sugary drinks (e.g. juice and soft drinks).

¶¶ High-GI foods included certain fruits (e.g. cantaloupe and watermelons), fast foods (French fries and doughnuts), potatoes, white bread, cold cereal and candy.

Although low-GI foods, collectively, were not significantly associated with adiposity-related cancer risk, among individual low-GI foods, consumption of legumes was also associated with 36 % lower risk of adiposity-related cancers combined (HR 0·64; 95 % CI 0·47, 0·88) (P=0·009). A statistically significant multiplicative interaction was observed for legumes with sex (P=0·005). In sex-stratified analyses, associations were only significant among women, as consumption of legumes in the highest v. lowest quintile was associated with 43 % lower risk of adiposity-related cancers (HR 0·57; 95 % CI 0·35, 0·91) (P trend=0·02).

Discussion

In this cohort of aging Caucasian adults, GI and GL were not associated with risk of adiposity-related cancers combined or any of the site-specific cancers. Higher carbohydrate consumption was associated with 41 % lower risk of breast cancer, but this association disappeared after adjustment for measures of body adiposity. Among low-, medium- and high-GI foods, low-GI foods were collectively associated with 49 % lower primary incidence of breast cancer. Although no significant associations were observed between individual low-GI foods and breast cancer risk, higher consumption of legumes was associated with 36 % lower risk of adiposity-related cancers combined. The protective impact of legumes was more pronounced among women, for whom legume consumption was associated with 43 % lower risk of adiposity-related cancers. There was no association between any of the carbohydrate food sources with prostate and colorectal cancer.

Null findings for dietary carbohydrates, GI and GL in relation to adiposity-related cancers are consistent with the literature, as most studies on this topic report null or weak associations( Reference Mulholland, Murray and Cardwell 17 Reference Aune, Chan and Vieira 20 , Reference Nagle, Kolahdooz and Ibiebele 35 , Reference Zhai, Cheng and Zhang 36 ). Evidence on carbohydrate food sources in relation to cancer risk is limited. Our finding that legumes significantly reduce cancer risk is biologically plausible by virtue of their fibre, folate and phytochemical content, which possess anti-carcinogenic properties( 14 , Reference Messina 37 ). This result is also consistent with previous literature showing a more pronounced benefit among women( Reference Messina 37 , Reference Farvid, Cho and Chen 38 ), as legumes are a concentrated source of phytoestrogens, namely isoflavones, which have weak oestrogenic properties and possess putative anti-oestrogenic effects that may reduce the risk of female adiposity-related cancers. However, this finding of a protective effect of low-GI foods, particularly legumes, on cancer risk may be because of the chance given the multiple comparisons conducted in these analyses.

For gastrointestinal cancers, a review of case–control evidence was suggestive of a detrimental impact of GI and GL intake in some studies( Reference Mulholland, Murray and Cardwell 17 ). However, pooled cohort study results showed no associations between total carbohydrate intake, GI and GL and the risk of these cancers( Reference Mulholland, Murray and Cardwell 17 , Reference Aune, Chan and Lau 19 , Reference Aune, Chan and Vieira 20 ), particularly colorectal cancer( Reference Mulholland, Murray and Cardwell 17 , Reference Aune, Chan and Lau 19 ). Although diets high in foods containing dietary fibre such as fruits, vegetables, legumes and whole grains have been convincingly linked to colorectal cancer( 14 ), we did not find any significant associations between carbohydrate-containing foods and colorectal cancer risk. However, this may be because of the limited number of colorectal cancer cases in this cohort, as the strength of associations between nutritional factors and cancer is moderate making it difficult to detect associations in studies with limited power.

For prostate cancer, our null findings for total carbohydrate intake, GI and GL are consistent with the limited epidemiologic evidence summarised in recent meta-analysis of case–control and prospective cohort studies, which was also indicative of a null association( Reference Zhai, Cheng and Zhang 36 ). Our finding of a null association between high-GI foods such as fast foods, and soft drinks and prostate cancer risk is inconsistent with case–control evidence suggestive of up to 64 % higher aggressive prostate cancer risk with higher consumption of high-GI foods( Reference Hardin, Cheng and Witte 39 ), but is consistent with results from a recent Swedish study, which reported a null association between soft drinks and prostate cancer( Reference Drake, Sonestedt and Gullberg 40 ).

For breast cancer, a recent systematic review and meta-analysis reported an overall null association between GI and GL and the risk of breast cancer( Reference Mullie, Koechlin and Boniol 41 ), which is consistent with the findings in these analyses. In contrast, for total carbohydrate intake and breast cancer, our results from models unadjusted for measures of body adiposity are inconsistent with most cohort studies, which report a null association( Reference Michels, Mohllajee and Roset‐Bahmanyar 42 ). Some studies have even documented a detrimental impact of >2-fold higher breast cancer risk with higher dietary carbohydrate intake( Reference Wen, Shu and Li 43 , Reference Romieu, Lazcano-Ponce and Sanchez-Zamorano 44 ). Nevertheless, an analysis within the Nurses Health Study( Reference Cho, Spiegelman and Hunter 45 ) showed that dietary carbohydrates were associated 38 % lower breast cancer risk among women with BMI <25 kg/m2, but we were unable to investigate the impact of dietary carbohydrates on breast cancer risk by BMI status in this study because of the limited number of breast cancer cases. Lastly, we also documented that low-GI foods are associated with decreased breast cancer risk. Studies on carbohydrate-containing foods and breast cancer are limited, primarily to evidence of a moderate but significant protective impact of fruits and vegetables( 14 , Reference Albuquerque, Baltar and Marchioni 46 ). However, this finding of a protective effect of low-GI foods on breast cancer risk may be because of the chance given the multiple comparisons conducted in these analyses and the limited number of breast cancer cases.

It is notable that the inverse association between dietary carbohydrate intake and breast cancer risk in this cohort was attenuated and was no longer statistically significant upon adjustment for BMI and WC, suggesting that these measures of body adiposity may explain the observed association. In fact, in this cohort, participants with higher carbohydrate intake had significantly lower BMI (P<0·0001) and WC (P≤0·0238) (online Supplementary Table S1) potentially resulting in a lower risk of cancer. These findings suggest that the influence of overweight and obesity on breast cancer risk is likely more pronounced than that of dietary carbohydrates and are comparable with previous evidence showing strong associations between body adiposity and cancers compared with the other examined site-specific cancers.

Beyond BMI and WC, the discrepancy between the inverse associations in our study and the null results in most existing studies on total carbohydrate intake and breast cancer may be ascribed to the lifestyle differences among participants in the highest v. lowest category of carbohydrate intake in this cohort (online Supplementary Table S1). We found that participants in the highest quintile of carbohydrate intake reported higher intakes of fruits and vegetables, legumes and whole grains, and higher antioxidant supplement use, which may collectively reduce the risk of excess adiposity and protect against cancer( 14 ). They also had a lower percentage of smokers and reported lower intakes of red and processed meat and alcohol, all of which are potential cancer risk factors( 14 ). In particular, up to 10 % higher breast cancer risk has been reported when comparing women in the highest v. the lowest category of red and processed meat intake( Reference Guo, Wei and Zhan 47 ). Similarly, women who are moderate and heavy drinkers exhibit 4 % and 40–50 % higher risk of developing breast cancer compared with non-drinkers( Reference Seitz, Pelucchi and Bagnardi 48 ). Therefore, the observed inverse associations may be a marker of healthier dietary and lifestyle habits among participants with higher carbohydrate intakes in this cohort. Finally, it is possible that the observed association between dietary carbohydrates and breast cancer was because of the chance, particularly given the limited number of breast cancer cases in this cohort.

Some study limitations deserve mention. The lack of an association between GI and GL in relation to cancer may be attributed, in part, to the FFQ used to assess dietary intakes. This FFQ was not specifically developed to measure GI and GL, and the food items listed in the FFQ may not capture the full detectable range of GI and GL. This may have resulted in random misclassification of the exposures and underestimated the associations with cancer risk. In addition, self-reported intakes measured by FFQ in observational studies are generally prone to underreporting, which may have biased associations towards the null( Reference Schatzkin, Kipnis and Carroll 49 ). Methodological limitations in the measurement of dietary GI and GL for individual foods may have also influenced the observed associations. Reference GI values from both Australian and American foods were used to estimate dietary GI and GL, but differences in processing, cooking methods and dietary intakes can have a significant impact on the GI of these foods( Reference Atkinson, Foster-Powell and Brand-Miller 13 ). There is also suggestion that GI and GL may not accurately capture the glycaemic or insulinaemic response to food when used in the context of a usual diet( Reference Holt, Miller and Petocz 50 , Reference Mayer-Davis, Dhawan and Liese 51 ), which may account, at least in part, for the observed null associations. Power was limited to evaluate associations for individual cancer sites, and particularly for subtypes within these cancers (e.g. hormone receptor status for breast cancer). Furthermore, the FHS cancer file did not include information on men with a history of prostatectomy for exclusion from the analytical data set.

Another limitation of this study is that the diet and lifestyle variables assessed at examination 5 were considered for these analyses, which may not capture changes over time or perhaps during the relevant critical window of exposure that affects cancer risk. Our previous report on trends in dietary carbohydrate consumption in this cohort indicated that there were no clinically significant changes intakes of carbohydrates and their food sources over the study time frame (1991–2008)( Reference Makarem, Scott and Quatromoni 23 ). Therefore, for dietary variables, it is unlikely that use of information from one time point significantly altered the results. Moreover, although we adjusted for many relevant confounders, it is possible that residual confounding occurred because of unrecognised factors or errors in assessing these covariates.

This study has a number of notable strengths. The prospective study design allows avoidance of the typical limitations inherent to case–control studies including recall and selection bias, inability to establish temporality and to estimate disease incidence. Another unique strength is the long duration of follow-up of more than two decades (approximately 22 years). Furthermore, the study used a validated tool for dietary assessment, reliable anthropometric measures obtained by trained personnel, and confirmation of cancer cases using medical records and pathology reports. In addition, a wide range of information on potential confounders and effect-modifiers was available and accounted for in these analyses.

In conclusion, carbohydrate quantity and quality were not associated with combined incidence of adiposity-related cancers, though carbohydrate quantity was associated with reduced breast cancer risk. An investigation of the role of carbohydrate foods sources suggested that women in particular might benefit from a dietary pattern that emphasises healthier, low-GI carbohydrate-containing foods, particularly legumes. Given the existing methodological issues in measuring GI and the inconsistent evidence from epidemiological studies, there is a lack of consensus on the role of GI and GL in chronic disease prevention. However, the American Diabetes Association recommends choosing low-GI foods as means to refine diabetes management that is complimentary to carbohydrate counting( 29 ). For adiposity-related cancers in particular, the WCRF/AICR deemed evidence on GI and cancer insufficient for incorporation of this concept into cancer prevention guidelines( 14 , 52 ). Additional research is needed to clarify the role of a low-GI and GL diet in the risk of various site-specific cancers within diverse ethnic groups, as an aetiologic agent and not just a marker of a healthy diet.

Acknowledgements

The authors thank the FHS and dbGaP for providing access to the FHS data sets.

The FHS is conducted and supported by the National Heart, Lung, and Blood Institute (NHLBI) in collaboration with Boston University (contract no. N01-HC-25 195). Funding support for the Framingham FFQ data sets was provided by USDA Agricultural Research Service contract no. 53-3k06-5-10, USDA Agricultural Research Service agreement nos 58-1950-9-001, 58-1950-4-401 and 58-1950-7-707. This manuscript was not prepared in collaboration with the core team of FHS investigators and does not necessarily reflect the opinions or views of the FHS, Boston University or NHLBI. The present study was supported by the American Cancer Society Research Scholar Grant (no. RSG-12-005-01-CNE) awarded to Dr N. P. The American Cancer Society had no role in the design and analysis of the study or in the writing of this article.

The authors’ contributions are as follows: N. M. and N. P. conceived this project and developed the overall research plan. N. M. took the lead in writing the manuscript and conducted the statistical analyses; Y. L. advised on the statistical analyses and reviewed the manuscript for the statistical accuracy and interpretation of results; E. V. B., P. F. J. and N. P. provided insights into the analytical plan and review and revision of the manuscript for important intellectual content; N. P. reviewed the manuscript for important intellectual content and had primary responsibility for the final content and for overseeing the entire study.

The authors declare that there are no conflicts of interest.

Supplementary material

For supplementary material/s referred to in this article, please visit https://doi.org/10.1017/S0007114517001489

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Figure 0

Fig. 1 Creation of the final analytical data set from the Framingham Offspring cohort. There were 5124 participants at examination 5 of whom 3418 had diet data collected. After excluding participants with invalid energy intakes (n 67)(24) and those who left ≥13 food items blank on the FFQ (n 31)(24), there were 3320 participants with valid dietary data. Participants with a history of adiposity-related cancer at or before examination 5 (n 134) and pregnant women at examination 5 (n 2) were also excluded resulting in the final analytic data set of 3184 participants.

Figure 1

Table 1 Baseline characteristics of Framingham Offspring cohort at examination 5 (n 3184) (Percentages and numbers; mean values and standard deviations)

Figure 2

Table 2 Association between quintiles of dietary carbohydrates, glycaemic index and glycaemic load in relation to adiposity-related cancer risk (n 656) (Hazard ratios (HR) and 95 % confidence intervals)

Figure 3

Table 3 Association between tertiles (T) of dietary carbohydrates, glycaemic index (GI) and glycaemic load (GL) in relation to breast, prostate and colorectal cancers (Hazard ratios (HR) and 95 % confidence intervals)

Figure 4

Table 4 Association between quintiles (Q)/tertiles (T) of low-, medium-, and high-glycaemic index (GI) foods (servings/week) in relation to overall adiposity-related cancers and site-specific cancers (Hazard ratios (HR) and 95 % confidence intervals)

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