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Higher breakfast glycaemic load is associated with increased metabolic syndrome risk, including lower HDL-cholesterol concentrations and increased TAG concentrations, in adolescent girls

Published online by Cambridge University Press:  20 October 2014

Analise Nicholl
Affiliation:
School of Exercise and Health Science, Edith Cowan University, 270 Joondalup Drive, Joondalup, WA, Australia
Mary du Heaume
Affiliation:
School of Exercise and Health Science, Edith Cowan University, 270 Joondalup Drive, Joondalup, WA, Australia
Trevor A. Mori
Affiliation:
School of Medicine and Pharmacology, University of Western Australia, Perth, WA, Australia
Lawrence J. Beilin
Affiliation:
School of Medicine and Pharmacology, University of Western Australia, Perth, WA, Australia
Wendy H. Oddy
Affiliation:
Telethon Kids Institute, University of Western Australia, West Perth, WA, Australia
Alexandra P. Bremner
Affiliation:
School of Population Health, University of Western Australia, Perth, WA, Australia
Therese A. O'Sullivan*
Affiliation:
School of Exercise and Health Science, Edith Cowan University, 270 Joondalup Drive, Joondalup, WA, Australia
*
*Corresponding author: T. O'Sullivan, fax +61 8 6304 5384, email t.osullivan@ecu.edu.au
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Abstract

Almost all previous studies examining the associations between glycaemic load (GL) and metabolic syndrome risk have used a daily GL value. The daily value does not distinguish between peaks of GL intake over the day, which may be more closely associated with the risk of the metabolic syndrome. The aim of the present study was to investigate the cross-sectional associations between daily and mealtime measures of GL and metabolic syndrome risk, including metabolic syndrome components, in adolescents. Adolescents participating in the 14-year follow-up of the Western Australian Pregnancy Cohort (Raine) Study completed 3 d food records and metabolic assessments. Breakfast GL, lunch GL, dinner GL and a score representing meal GL peaks over the day were determined in 516 adolescents. Logistic regression models were used to investigate whether GL variables were independent predictors of the metabolic syndrome in this population-based cohort (3·5 % prevalence of the metabolic syndrome). Breakfast GL was found to be predictive of the metabolic syndrome in girls (OR 1·15, 95 % CI 1·04, 1·27; P <0·01), but not in boys. Other meal GL values and daily GL were found to be not significant predictors of the metabolic syndrome. When breakfast GL was examined in relation to each of the components of the metabolic syndrome in girls, it was found to be negatively associated with fasting HDL-cholesterol concentrations (P= 0·037; β = − 0·004; 95 % CI − 0·008, − 0·002) and positively associated with fasting TAG concentrations (P= 0·008; exp(β) = 1·002; 95 % CI 1·001, 1·004). The results of the present study suggest that there may be an association between breakfast composition and metabolic syndrome components in adolescent girls. These findings support further investigation into including lower-GL foods as part of a healthy breakfast in adolescence, particularly for girls.

Type
Full Papers
Copyright
Copyright © The Authors 2014 

The metabolic syndrome is a cluster of metabolic disturbances that increases the risk of developing type 2 diabetes and CVD( Reference Cook, Weitzman and Auinger 1 , Reference Lin, Lee and Ho 2 ). In Australia, the prevalence of the metabolic syndrome in adolescents has previously been reported to be 3·6 % using the paediatric diagnostic criteria of the International Diabetes Federation (IDF)( Reference O'Sullivan, Lyons-Wall and Bremner 3 ), increasing to 22·1 % in adulthood (adult IDF criteria)( Reference Cameron, Magliano and Zimmet 4 ). Diet is one of the factors that may have the ability to influence this progression from adolescence to adulthood.

The glycaemic index (GI) was proposed over 30 years ago with the aim of improving postprandial glycaemia in the diabetic population( Reference Jenkins, Wolever and Taylor 5 ). The GI ranks foods or beverages based on their ability to raise blood glucose concentrations compared with the ingestion of the same quantity of carbohydrate, expressed as a percentage. A high-GI food consumed in a small amount can have a minimal impact on blood glucose concentrations and conversely a low-GI food consumed in a large amount can have a major impact on blood glucose concentrations. The glycaemic load (GL) is a product of the quantity of carbohydrate present in the food and the GI; by taking the carbohydrate into consideration, it represents the total impact of the food on blood glucose concentrations( Reference Esfahani, Wong and Mirrahimi 6 ). Hence, the GL is better able to distinguish the impact on postprandial glycaemia compared with the GI.

Habitual intake of a high-GL diet may lead to hyperinsulinaemia and disturbed lipid metabolism( Reference Ludwig 7 ), with an increased risk of developing the metabolic syndrome( Reference Brand-Miller, McMillan-Price and Steinbeck 8 , Reference Du, van der and van Bakel 9 ). Lower-GI/GL diets have been reported to be associated with improved health outcomes for various metabolic risk factors and chronic diseases in studies and meta-analyses( Reference Livesey, Taylor and Hulshof 10 Reference McKeown, Meigs and Liu 12 ). Some studies have found no significant association between low-GI/GL diets and reduced risk of diabetes( Reference Mayer-Davis, Dhawan and Liese 13 , Reference Sahyoun, Anderson and Tylavsky 14 ), perhaps in part because the use of daily values has some limitations in representing metabolic processes resulting from habitual dietary carbohydrate intake over the course of the day( Reference Mayer-Davis, Dhawan and Liese 13 ). Studies investigating associations with dietary GI and GL often use FFQ, which can estimate daily GI/GL, but not individual meal values. We identified two studies that were able to assess meal values using either a food record (Hong Kong children aged 6–7 years( Reference Hui and Nelson 15 )) or diet history (older Australian women( Reference O'Sullivan, Bremner and O'Neill 16 )). The latter considered a new measure of high glycaemic carbohydrate impact, the GL peak score, based on the summation of individual mealtime GL values that scored a peak above the daily GL mean( Reference O'Sullivan, Bremner and O'Neill 16 ). To date, no published adolescent studies appear to have examined the mealtime patterns of glycaemic impact, including investigation of periods when GL intake may peak substantially.

The determination of carbohydrate intake patterns may provide insights into potential glycaemic impacts for adolescents, who are also exposed to growth stresses and metabolic and hormonal changes. The aim of the present explorative study was to investigate the mealtime measures of GL intake in relation to metabolic syndrome risk, as well as components of the metabolic syndrome, during the 14-year follow-up of the Western Australian Pregnancy Cohort (Raine) Study in Perth, Western Australia. We hypothesised that individual meal GL values and a score representing peaks in meal GL would be better predictors of metabolic syndrome risk than a daily GL value.

Research design and methods

Study population

The present study is a cross-sectional analysis of adolescents who participated in the 14-year follow-up of the Raine Study. As has been described previously( Reference Newnham, Evans and Michael 17 ), 2900 pregnant women were enrolled in a controlled trial from public and private antenatal clinics at or near King Edward Memorial Hospital in Perth, Western Australia, between May 1989 and November 1991. The resulting 2868 children were recruited for cohort follow-up. The 14-year follow-up (mean age 14·0 (sd 0·2) years; age range 13·0–15·0 years) occurred from 2003 to 2005 and was the first to collect comprehensive dietary intake data allowing nutrient analysis of individual meals in a habitual diet. Adolescents with type 1 or type 2 diabetes mellitus or implausible energy intakes (<3000 or >20 000 kJ/ d, as has been used previously in studies involving adolescents( Reference Rockett, Breitenbach and Frazier 18 , Reference Ambrosini, de Klerk and O'Sullivan 19 )) were excluded from the study. Written informed consent for performing the 14-year follow-up procedures was provided by study participants and a parent/guardian, and approval was obtained from the ethics committees of King Edward Memorial Hospital and Princess Margaret Hospital for Children.

Dietary glycaemic intake assessment

The adolescents completed 3 d food records, with parental support if requested. Intakes were recorded in household measures. The subjects were provided with written and verbal instructions, as well as metric measuring cups and spoons. Consumption away from home was recorded in relation to serving size (e.g. two slices of a large pizza or one Whopper hamburger) or estimated in household measures. A checklist was used to ascertain whether each of the 3 d records was typical of the subject's usual intake, and only those records completed and classified as representative were used. A dietitian checked each food record as it was returned and sought clarification via follow-up telephone calls( Reference Candilo, Oddy and Miller 20 ). Food record data were entered into FoodWorks dietary analysis software (Professional version 4.00; Xyris Software). Food composition data that were not available through FoodWorks were obtained from an Australian nutrition website with a customised GI database( 21 ). Where GI values for a specific product were not available, the GI value was imputed from a product or subgroup of products that was assessed by the researchers to be sufficiently similar in terms of type of starch, molecular monosaccharide components, ingredients, including amounts of protein and fat and amount of dietary fibre present, and degree of cooking or processing. If a product was too specialised to be a good match (e.g. a specific type of body-building powder), no GI value was assigned. GI values for mixed foods and recipes were estimated from component foods; for example, the GI for trifle was based on a weighted GI calculation of the carbohydrate-containing ingredients (sponge, jelly and custard). The formula used to calculate the composite GI of meals based on relative weighting of carbohydrate content does not take into account the effect of the whole dish, and there is likely to be a variable loss of discrimination of individual GI values in composite foods.

To ensure that food records were representative, only food records with 80 % or more of the total daily dietary carbohydrate assigned a GI value were included in this study. GL values for individual meals comprised the sum of GL values for all foods and beverages in that meal. Meal GL values were obtained by averaging the values for each particular meal over the 3 d record period to obtain daily breakfast, morning tea, lunch, afternoon tea, dinner and supper GL values for each subject. Limited availability of GI values may affect the results of studies examining associations between GI/GL and chronic diseases, particularly when local/traditional foods are involved. For the present cohort, it was possible to assign GI values to 92 % of all carbohydrate foods and beverages( Reference O'Sullivan, Lyons-Wall and Bremner 3 ). This meant that for some subjects carbohydrate foods or beverages in a meal could not be assigned a GI value. Non-assignment of a GI value meant that the contribution of these foods or beverages to the meal GL could not be calculated (despite having a likely effect on blood glucose concentrations). To ensure that the meal GL values that were being used were as representative as possible of the food being consumed, it was decided that 80 % or more of the dietary carbohydrate per meal should be assigned a GI value in order for the meal GL to be used in the study (consistent with the daily criterion). This was based on methods used in previous research and professional opinion of clinical relevance, whereby a value lower than 80 % was thought to potentially compromise the validity of the data( Reference O'Sullivan, Lyons-Wall and Bremner 3 ). Subjects were excluded if this meant that two or more meals of the same type (e.g. breakfast) over the 3 d record period did not have usable GL values.

Mean breakfast GL, morning tea GL, lunch GL, afternoon tea GL, dinner GL and supper GL were calculated for each subject where possible. Together with the mean meal GL (the mean of the above six meal GL values), these were used to obtain the peak GL score. Meal peak GL values were calculated for each subject by subtracting the mean meal GL value from the GL value of each meal and represented graphically as a set of positive and negative peaks with the mean set to zero. The peak GL score was calculated by adding all the positive meal peak values( Reference O'Sullivan, Bremner and O'Neill 16 ) (Fig. 1). For the purposes of the present study, five GL variables were investigated: breakfast GL; lunch GL; dinner GL; peak score GL; daily GL.

Fig. 1 Glycaemic load (GL) variables and food intake for a sample subject in the Raine Study (chosen for illustrative purposes only). The mean meal GL was set to zero, producing both positive and negative peaks. For this subject, positive peaks were observed at breakfast (18), lunch (3) and dinner (17). These were summed to obtain the peak GL score, which was 38 (sum of positive peaks).

Metabolic syndrome definition

The prevalence of the metabolic syndrome in the present adolescent cohort at the 14-year follow-up has previously been reported to be 3·6 or 4·0 %( Reference O'Sullivan, Lyons-Wall and Bremner 3 ), using age-specific adolescent definitions of the IDF and the National Cholesterol Education Program Adult Treatment Panel III, respectively( Reference Jolliffe and Janssen 22 ). Although no consistent adolescent definition for the metabolic syndrome exists, the American Heart Association recommends using the IDF paediatric definition for adolescents( Reference Steinberger, Daniels and Eckel 23 ), and this was used in the present study. The IDF metabolic syndrome definition requires the presence of a high waist circumference in addition to two or more of the following: high systolic or diastolic blood pressure; high fasting serum TAG concentrations; low fasting serum HDL-cholesterol (HDL-C) concentrations; high fasting plasma glucose concentrations. Cut points for the categorisation of these high and low subgroups vary by sex and age, as has been published previously( Reference Jolliffe and Janssen 22 ). A research nurse took waist measurements at the level of the umbilicus in adolescents standing in the anatomical position to the nearest 0·1 cm until two readings were within a cm of each other. Phlebotomists visited adolescents at their homes to obtain fasting blood samples. Serum glucose concentrations were measured using an automated Technicon Axon analyser (Bayer Diagnostics); TAG concentrations were measured using the Cobas MIRA Analyser (Roche Diagnostics); and HDL-C concentrations were measured on a heparin–Mn supernatant. Biochemical assays were conducted by PathWest Laboratories at Royal Perth Hospital. At rest over a 10 min period, six measurements of seated blood pressure readings were taken using a Dinamap ProCare 100 automatic oscillometric recorder (GE Healthcare Technologies). The first measurement was disregarded, and the mean of the next five measurements was calculated to obtain diastolic and systolic blood pressure values.

Potential confounding variables

Information regarding potential confounding variables was collected from adolescents themselves and their parents/guardians( Reference O'Sullivan, Lyons-Wall and Bremner 3 ). Physical and sedentary activity levels were assessed by time spent outside school hours participating in physical activity that caused breathlessness or sweating (categorised as less than once a week = low exercise, one to three times a week = moderate exercise, or four or more times a week = high exercise) and time spent watching television/videos and using computers for school, work and recreation (categorised as <2 h/d = low screen use, 2–4 h/d = moderate screen use, or >4 h/d = high screen use). These variables were combined into a five-category summary variable, which ranged from low screen use with more exercise to high screen use with less exercise. Details regarding family characteristics including family structure, family income, maternal age, maternal education and family history of diabetes and CVD were obtained from parental reports. The Tanner stages of pubic hair development were used to assess pubertal status in the cohort( Reference Tanner 24 , Reference Duke, Litt and Gross 25 ). Adolescents were asked to select their corresponding developmental stage from a set of standard drawings depicting Tanner stages 2 (sparse) to 5 (adult) in a privately completed questionnaire. Stage 1 was omitted as an option as it corresponds to a pre-pubescent period (<10 years of age). Dietary variables considered as potential confounding factors in the models included average daily intakes of total energy, total fat, saturated fat and protein. BMI, calculated as weight in kg divided by height in m2, was also considered. Trained researchers measured weight to the nearest 100 g using the Wedderburn Digital Chair Scale and height to the nearest 0·1 cm using a Holtain stadiometer. Due to the narrow age range in the 14-year follow-up, age was not considered as a confounding factor.

Statistical analyses

Nutrient intakes, including GL measures, were adjusted for total energy using the residual method to control for confounding and reduce extraneous variation( Reference Willett, Howe and Kushi 26 ). Continuous measures are expressed as means and standard deviations. Student's independent-sample t tests, Mann–Whitney U tests and χ2 tests were used to compare the characteristics of the included and excluded adolescent subjects. Logistic regression models were used to analyse the association between mealtime GL measures and the metabolic syndrome, adjusted for potential confounding variables and split by sex (due to significant interactions between sex and GL measures). Potential confounding variables were tested in the models. Nagelkerke R 2 values were compared between the models, with increasing values indicating a better fit( Reference Nagelkerke 27 ). Variables were retained as confounders in the model if they were significant or improved the fit of the model. Models were fitted with and without BMI to allow comparisons, because BMI is associated with the metabolic syndrome – the definition of the metabolic syndrome includes waist circumference. OR and 95 % CI were obtained for all variables. Where GL measures were found to be significant predictors of the metabolic syndrome, regression models were used to examine associations with continuous measures of metabolic syndrome components (waist circumference, blood pressure, and fasting serum TAG, fasting HDL-C and fasting plasma glucose concentrations). Components were logged as required to normalise data. BMI was included in each of these analyses, with the exception of waist circumference. No mathematical correction was made for multiple comparisons. Statistical analyses were performed using the Statistical Package for Social Sciences (SPSS Statistics for Windows, version 19.0; IBM Corporation), and significance level in the tests was set at 0·05.

Results

Study population

From the original cohort of 2868 at birth, 1286 adolescents who participated in the 14-year follow-up agreed to complete the 3 d food records. Adolescents who completed the 3 d food records were found to more likely have older mothers, a higher family income and a lower BMI compared with other adolescents in the follow-up who did not complete the 3 d food records( Reference O'Sullivan, Ambrosini and Beilin 28 ). Completed records were returned by 962 subjects( Reference O'Sullivan, Lyons-Wall and Bremner 3 ). Of these, 822 records were considered to be complete and representative of usual diet. A total of five subjects were excluded as they had diagnosed diabetes, and none of the subjects was excluded for implausible energy intakes. A total of 516 non-diabetic adolescents provided food records where all the six meals had at least two GL values to average, and this ‘two-meal valid’ group was used in the statistical models. A comparison of the subject characteristics of the included (n 516) and excluded (n 306) groups from among the 822 adolescents with food records that were considered to be complete and representative of usual diet is given in Table 1. Daily dietary carbohydrate intake was found to be significantly higher in the excluded subject group (P= 0·028).

Table 1 Comparison of the subject characteristics of the groups included in the study (minimum of two meals with a valid glycaemic load (GL)) and excluded from the study (due to >20 % dietary carbohydrate not assigned a glycaemic index, insufficient valid meal GL values, or diabetes) out of the adolescents who returned complete and representative food records (n 822) (Mean values, standard deviations, number of participants and percentages)

TV, television; pa, per annum.

* All comparisons of means for normally distributed scale variables were made using Student's independent-sample t tests; Mann–Whitney U tests were used where scale variables were not normally distributed. The χ2 test of contingencies was used to compare categorical variables of the two groups. P <0·05 (two-tailed) in all cases.

Standard adolescent criteria were used to classify participants into BMI categories of underweight, normal weight, overweight and obese( Reference Cole, Flegal and Nicholls 53 , Reference Cole, Bellizzi and Flegal 54 ).

Mealtime glycaemic carbohydrate intake

Meal GL values are given in Table 2. Dinner was the meal with the highest GL value (44·9 (sd 20·1)), followed by lunch (31·6 (sd 16·5)), breakfast (30·9 (sd 14·9)), afternoon tea (23·9 (sd 18·6)), morning tea (15·5 (sd 13·2)) and supper (10·7 (sd 11·5)). A breakdown of dietary intake and the prevalence of the metabolic syndrome by mean meal GL tertiles for boys and girls is also given in Table 2. Boys and girls with higher mean meal GL values were found to more likely have higher energy-adjusted carbohydrate intakes and lower protein and fat intakes when compared with boys and girls with lower mean meal GL values (P <0·05). Among the 516 adolescents comprising the included group, 480 had data available to assess the metabolic syndrome, which was identified in seventeen (3·5 %) of the 480 subjects. Increasing risk of the metabolic syndrome with increasing mean meal GL tertiles was observed in boys but in not girls (Table 2).

Table 2 Glycaemic load (GL) variables and prevalence of the metabolic syndrome in Raine Study adolescents arranged according to tertiles of mean meal GL (Mean values, standard deviations, number of participants and percentages)

GI, glycaemic index.

* Comparison between the highest and lowest tertiles; all comparisons of means for normally distributed scale variables were made using Student's independent-sample t tests; Mann–Whitney U tests were used where scale variables were not normally distributed. The χ2 test of contingencies was used to compare categorical variables of the two populations. P <0·05 (two-tailed) in all cases.

Arranged into tertiles of mean meal GL, where mean meal GL = Σ(breakfast GL+morning tea GL+lunch GL+afternoon tea GL+dinner GL+supper GL)/6.

Daily intakes adjusted for energy.

§ The International Diabetes Foundation definition of the metabolic syndrome, i.e. the presence of a high waist circumference in addition to two or more of the following: high systolic or diastolic blood pressure; high fasting serum TAG concentrations; low serum HDL-cholesterol concentrations; high plasma glucose concentrations; cut points for the categorisation of these high and low subgroups vary by sex and age, as has been published previously( Reference Jolliffe and Janssen 22 ).

Associations with the metabolic syndrome

The final logistic regression models included BMI, single-parent family, physical activity and daily protein intake as confounding variables. The other factors investigated did not contribute significantly to the fit of the models and so were not included as confounders. The results of the logistic regression analyses are given in Table 3; there was little difference in OR and significance when BMI was included or excluded as a confounder in these models. Daily GL was not a significant predictor of the metabolic syndrome. Breakfast GL was associated with an increased risk of the metabolic syndrome (OR 1·15, 95 % CI 1·04, 1·27; P <0·01) in girls. That is, for each unit increase in breakfast GL, the odds of developing the metabolic syndrome increased by a factor of 1·15 (or equivalently by 15 %). With BMI being excluded from the model, breakfast GL was still a significant predictor (OR 1·06, 95 % CI 1·00, 1·12; P= 0·04). Breakfast GL was not a significant predictor of the metabolic syndrome in boys (P= 0·15). No other GL values were significant predictors of the metabolic syndrome. When breakfast GL was examined in relation to each of the components of the metabolic syndrome in girls, it was found to be negatively associated with fasting HDL-C concentrations (P= 0·037; β = − 0·004, 95 % CI − 0·008, − 0·002) and positively associated with fasting TAG concentrations (P= 0·008; β = 0·002 for logged TAG values; exp(β) = 1·002, 95 % CI 1·001, 1·004). That is, for each unit increase in breakfast GL, there was a mean decrease in HDL-C concentrations of 0·004 mmol/l and a 0·2 % increase in the geometric mean fasting TAG concentrations.

Table 3 Meal, peak score and daily glycaemic load (GL)* variables and risk of the metabolic syndrome in Raine Study adolescents (n 516) in unadjusted and adjusted logistic regression models (with and without BMI) (Odds ratios and 95 % confidence intervals)

* All GL variables were adjusted for energy.

The age-specific International Diabetes Foundation definition of the metabolic syndrome was used( Reference Jolliffe and Janssen 22 ).

Logistic regression models were adjusted for single-parent family, physical activity and energy-adjusted daily protein intake, with BMI excluded or included as an additional confounder.

Discussion

The present study aimed to investigate the associations between mealtime measures of GL intake and metabolic syndrome risk as well as metabolic syndrome components in 14-year-old adolescents. It was hypothesised that meal-based GL values would be better predictors of metabolic syndrome risk than a daily GL value. In the 516 adolescents comprising the included group, no significant association was found between daily GL values and metabolic syndrome risk. However, breakfast GL was found to be a significant independent predictor of the metabolic syndrome in the same group. As GL values were being compared on a meal basis, adolescents were excluded where it was not possible to accurately and consistently assign meal GL values. In a previously published study of the larger Raine Study cohort, a significant association was found between daily GL and the metabolic syndrome( Reference O'Sullivan, Lyons-Wall and Bremner 3 ). It is likely that a reduced sample size meant that we could no longer detect a significant association with daily GL. We expect a low prevalence in a paediatric population cohort rather than in a clinical group, and caution must be exercised when interpreting the results due to low statistical power to find associations with dietary components( Reference Eisenmann 29 ). However, our findings suggest that breakfast GL may be a more sensitive predictor than a daily GL value in the study group.

Breakfast GL was found to be significantly associated with the odds of developing the metabolic syndrome in girls, but not in boys. This association was seen independently and dependently of BMI and so BMI does not appear to mediate the observed association. To put this association into perspective, the results of the present study suggest that if an additional slice of white bread (GL = 12) were added on top of the girls’ existing breakfast, the theoretical associated odds of developing the metabolic syndrome would be 5·35 times greater, with an associated 95 % CI of 1·60–17·6 times. It must be noted that the CI obtained in the present study was large, due in part to the low prevalence of the metabolic syndrome in the study group (seventeen adolescents; nine girls). Breakfast GL was also found to be significantly associated with two components of the metabolic syndrome: decreased fasting HDL-C concentrations and increased fasting TAG concentrations.

Almost all previous studies using daily GI/GL values have not been able to distinguish between different mealtime effects on glucose and insulin responses, and this may have contributed to conflicting results on whether dietary glycaemic carbohydrate intake is a useful predictor of chronic disease risk( Reference Du, van der and van Bakel 9 , Reference Barclay, Petocz and McMillan-Price 11 Reference Sahyoun, Anderson and Tylavsky 14 , Reference Finley, Barlow and Halton 30 Reference Vrolix and Mensink 34 ). Our findings suggest that breakfast GL may be particularly important. Blood glucose and insulin responses have been shown to be proportional to breakfast GL in clinical trials( Reference Bao, Atkinson and Petocz 31 , Reference Galgani, Aguirre and Díaz 32 ). Bao et al. ( Reference Bao, Atkinson and Petocz 31 ) suggest that breakfast metabolic responses may not necessarily reflect responses to other meals. Clinical trials carried out in adolescents have shown the benefits of consuming low-GI carbohydrate at breakfast( Reference Warren, Henry and Simonite 35 ), with increased satiety and reduced consumption at an ad libitum lunch, while breakfasts with sufficiently low-GI, multi-grain cereals may produce second meal effects that can last through to lunch or beyond( Reference Nilsson, Östman and Granfeldt 36 ). It is possible that a low-GL breakfast may have the benefit of decreasing the amount eaten at lunch (and potentially the lunch GL), thus reducing metabolic syndrome risk associated with both meals. Effects may differ by age – O'Sullivan et al. ( Reference O'Sullivan, Bremner and O'Neill 16 ) showed that increasing lunch GL is significantly associated with an increased risk of insulin resistance, along with the peak GL score, in older women.

In the present study, two components of the metabolic syndrome, decreased fasting HDL-C concentrations and increased fasting TAG concentrations, were found to be significantly associated with increasing breakfast GL. Other studies carried out in both youth and adults have also found similar associations with GL. In a randomised controlled trial involving thirty-two healthy 11–25-year-olds, higher-GL diets were found to be associated with lower HDL-C concentrations( Reference Slyper, Jurva and Pleuss 37 ). A systematic review and meta-analysis( Reference Livesey, Taylor and Hulshof 10 ) has concluded that lower-GL diets are associated with lower fasting plasma TAG concentrations in adults. In an adult male population, fasting TAG concentrations were found to increase with increasing dietary GI, but not with GL, and HDL-C concentrations were found to decrease with increasing GL( Reference Mosdøl, Witte and Frost 38 ). The risk of developing the metabolic syndrome was found to be associated with daily GI and GL in Korean women (but not in men), with high TAG concentrations and low HDL-C concentrations, components that are associated with high intakes. Although more research is needed to expand on our findings, there are potential mechanisms to explain the results of the present study. Habitual intake of high-GL meals can result in hyperglycaemia, hyperinsulinaemia and disturbed lipid metabolism( Reference Ludwig 7 ), which have been reported to be associated with the development of chronic diseases such as the metabolic syndrome and consequent type 2 diabetes and heart disease( Reference Bao, Atkinson and Petocz 31 , Reference McMillan-Price, Petocz and Atkinson 39 Reference Berkey, Rockett and Gillman 41 ). Following a high peak in glucose concentrations and subsequently insulin concentrations, postprandial hypoglycaemia is common 4–6 h after the consumption of a high-GL meal. This can stimulate the secretions of counter-regulatory hormones that raise glucose and NEFA concentrations( Reference Ludwig 7 ). This is associated with increased concentrations of inflammatory mediators and TAG and decreased concentrations of HDL-C( Reference Levitan, Cook and Stampfer 42 ).

In the present study, significant associations were found in girls, but not in boys. Higher-GL diets have previously been reported to be associated with a greater risk of the metabolic syndrome in women, but not in men( Reference Kim, Yun and Choi 43 ). Females may be more innately insulin-resistant than males due to specific sex-linked gene expression, leading to changes in receptor and signalling pathways( Reference Mittendorfer 44 ). In puberty, there is a natural tendency for girls to exhibit more fat gain relative to boys( Reference Mittendorfer 44 , Reference Casazza and Thomas 45 ). Hormones in girls such as oestradiol favour fat deposition, while those in boys favour muscle tissue accumulation( Reference Casazza and Thomas 45 ). Increased oestradiol concentrations are associated with increased subcutaneous fat deposition and insulin responses and decreased fatty acid oxidation( Reference Power and Schulkin 46 ). Higher fat stores and insulin concentrations in turn increase the secretion of leptin; increased leptin concentrations lead to increased oestradiol concentrations and subsequently insulin-like growth factor 1 concentrations, further increasing insulin secretion and fat storage( Reference Casazza and Thomas 45 ). Although highly speculative, the effect of hormonal surges at a key stage in puberty is a possible reason for an increased sensitivity to GL in relation to metabolic syndrome risk during this time period.

Daily dietary protein intake was found to be an important confounding factor in the association of breakfast GL with metabolic syndrome risk in girls. In the present study, the adolescents were found to consume breakfasts with a relatively high GL, but low protein content, when compared with lunch and dinner. Increasing protein consumption at meals lowers the glycaemic response by delaying gastric emptying( Reference Ludwig and Ebbeling 47 ). A high-protein, low-GI diet was found to produce a combined beneficial effect attributed to reduced insulin responses, increased satiety and decreased energy intake in children (5–18 years) in the Diet, Obesity and Genes (DiOGenes) dietary study( Reference Papadaki, Linardakis and Larsen 48 ), while higher v. lower protein intake was found to be associated with lower waist circumference and lower LDL-cholesterol concentrations in another paediatric subset of this study( Reference Damsgaard, Papadaki and Jensen 49 ). Higher-protein breakfasts may have the ability to attenuate high-GL responses sufficiently to reduce metabolic syndrome risk. Consumption of quality protein at breakfast may lower the meal GL by promoting satiety and by displacing carbohydrate. Further research is required to test this concept.

Strengths and limitations

The strengths of the present study include the use of 3 d food records, which enabled investigation of GL at a mealtime level. It also allowed for carrying out sex-specific analysis of the study group. The limitations include the inability to generalise the results to other Western adolescent populations, with the adolescents completing food records in the present study being found to more likely have a lower BMI and older mothers and come from households with a higher annual income. Among the 480 adolescents with complete meal GL data, seventeen were found to have diagnosed metabolic syndrome, of whom nine were females. Subjects who were excluded had significantly higher intakes of carbohydrate (Table 1), and this may have meant that some associations with higher intakes went undetected. The bulk of published GI values come from Australia and the USA( Reference Aston, Jackson and Monsheimer 50 ), and despite the high representation of Australian foods, there is a need for a larger GI database of carbohydrate foods commonly consumed by younger populations, such as fast foods and snack bars. Consumption of foods that did not have GI values often occurred at the same mealtime on two consecutive days, which effectively led to the exclusion of a subject from the study each time (via the previously determined exclusion criterion requiring at least two GL values to average for any one meal). Although many adolescents were excluded due to the strict criteria implemented in the present study, this method helped to maintain accuracy of the data by ensuring that the meal GL values represented a true reflection of the foods reported. Although attempts were made to minimise under- and over-reporting through the use of cut-offs previously used in studies carried out in adolescents, this method is imprecise and it is possible that adolescents who were misreporting their intake were included in the study. It has been suggested that adolescents with a higher BMI (and therefore at a higher risk of the metabolic syndrome) are more likely to misreport dietary intake( Reference Rockett, Breitenbach and Frazier 18 ), and this could affect the associations observed. In addition, the present study is a cross-sectional snapshot of the prospective cohort, and as such causality cannot be established.

Implications

In the present study, we hypothesised that meal-based GL values would be better predictors of metabolic syndrome risk than a daily GL value; breakfast GL did appear to have a more sensitive association. Adolescence is an important time period for establishing dietary patterns into adulthood, and insights into their impact on disease processes may provide meaningful data to formulate dietary advice. Although causality cannot be determined from the present study, it is possible that the inclusion of low-GL foods to breakfast may be beneficial for girls. Our findings support previous recommendations made in this regard around consumption of a low-GL breakfast( Reference Kamada, Truman and Bold 51 , Reference Agostoni and Brighenti 52 ).

Acknowledgements

The core management funding for the Raine Study was provided by the University of Western Australia (UWA), the Raine Medical Research Foundation at the UWA, the Faculty of Medicine, Dentistry and Health Sciences at the UWA, the Telethon Institute for Child Health Research, the Women and Infants Research Foundation, the Telethon Institute for Child Health Research and Curtin University. The 14-year follow-up study received funding from the NH&MRC (Sly et al., ID 211912), a NH&MRC Program Grant (Stanley et al., ID 003209), Healthway WA (Beilin et al.), the National Heart Foundation, Beyond Blue and the Raine Foundation.

The authors thank the Raine Study participants and their families who took part in the study and all the members of the Raine Study team for their expertise in cohort co-ordination and data collection. They also thank Timothy du Heaume and Kester Nicholl of Curtin University for technical support with data entry.

The authors’ contributions are as follows: W. H. O., L. J. B. and T. A. M. were involved in data collection, T. A. O. conceptualised and supervised the research, A. N., M. d. H., A. P. B. and T. A. O. were involved in data analysis and manuscript drafting. All authors were involved in the review of the manuscript.

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Figure 0

Fig. 1 Glycaemic load (GL) variables and food intake for a sample subject in the Raine Study (chosen for illustrative purposes only). The mean meal GL was set to zero, producing both positive and negative peaks. For this subject, positive peaks were observed at breakfast (18), lunch (3) and dinner (17). These were summed to obtain the peak GL score, which was 38 (sum of positive peaks).

Figure 1

Table 1 Comparison of the subject characteristics of the groups included in the study (minimum of two meals with a valid glycaemic load (GL)) and excluded from the study (due to >20 % dietary carbohydrate not assigned a glycaemic index, insufficient valid meal GL values, or diabetes) out of the adolescents who returned complete and representative food records (n 822) (Mean values, standard deviations, number of participants and percentages)

Figure 2

Table 2 Glycaemic load (GL) variables and prevalence of the metabolic syndrome in Raine Study adolescents arranged according to tertiles of mean meal GL (Mean values, standard deviations, number of participants and percentages)

Figure 3

Table 3 Meal, peak score and daily glycaemic load (GL)* variables and risk of the metabolic syndrome† in Raine Study adolescents (n 516) in unadjusted and adjusted logistic regression models (with and without BMI)‡ (Odds ratios and 95 % confidence intervals)