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Fibre intake among the Belgian population by sex–age and sex–education groups and its association with BMI and waist circumference

Published online by Cambridge University Press:  29 March 2011

Yi Lin
Affiliation:
Unit Nutrition and Food Safety, Department of Public Health, Faculty of Medicine and Health Sciences, Ghent University, De Pintelaan 185, B-9000Ghent, Belgium
Inge Huybrechts*
Affiliation:
Unit Nutrition and Food Safety, Department of Public Health, Faculty of Medicine and Health Sciences, Ghent University, De Pintelaan 185, B-9000Ghent, Belgium
Stefanie Vandevijvere
Affiliation:
Unit of Epidemiology, Scientific Institute of Public Health, J. Wytsmanstraat 14, B-1050Brussels, Belgium
Selin Bolca
Affiliation:
Laboratory for Bioinformatics and Computational Genomics (BIOBIX), Faculty of Bioscience Engineering, Ghent University, Coupure Links 653, B-9000Ghent, Belgium
Willem De Keyzer
Affiliation:
Unit Nutrition and Food Safety, Department of Public Health, Faculty of Medicine and Health Sciences, Ghent University, De Pintelaan 185, B-9000Ghent, Belgium Department of Nutrition and Dietetics, Faculty of Health Care Vesalius, University College Ghent, Keramiekstraat 80, B-9000Ghent, Belgium
Stephanie De Vriese
Affiliation:
Alpro Foundation vzw, Vlamingstraat 28, 8560Wevelgem, Belgium
Anja Polet
Affiliation:
Unit Nutrition and Food Safety, Department of Public Health, Faculty of Medicine and Health Sciences, Ghent University, De Pintelaan 185, B-9000Ghent, Belgium
Melissa De Neve
Affiliation:
Unit Nutrition and Food Safety, Department of Public Health, Faculty of Medicine and Health Sciences, Ghent University, De Pintelaan 185, B-9000Ghent, Belgium
Herman Van Oyen
Affiliation:
Unit of Epidemiology, Scientific Institute of Public Health, J. Wytsmanstraat 14, B-1050Brussels, Belgium
John Van Camp
Affiliation:
Department of Food Safety and Food Quality, Ghent University, Coupure Links 653, B-9000Ghent, Belgium
Guy De Backer
Affiliation:
Unit Nutrition and Food Safety, Department of Public Health, Faculty of Medicine and Health Sciences, Ghent University, De Pintelaan 185, B-9000Ghent, Belgium
Stefaan De Henauw
Affiliation:
Unit Nutrition and Food Safety, Department of Public Health, Faculty of Medicine and Health Sciences, Ghent University, De Pintelaan 185, B-9000Ghent, Belgium Department of Nutrition and Dietetics, Faculty of Health Care Vesalius, University College Ghent, Keramiekstraat 80, B-9000Ghent, Belgium
*
*Corresponding author: I. Huybrechts, fax +32 9 332 4994, email [email protected]
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Abstract

The objectives of the present study were to assess total dietary fibre intake and the main contributors to fibre intake in the Belgian population by sex–age and sex–education groups and to investigate its relationship with BMI and waist circumference (WC). The participants of the Belgian food consumption survey (2004) were randomly selected. Information about food intake was collected using two repeated, non-consecutive 24 h recall interviews. A total of 3083 individuals ( ≥ 15 years; 1546 men and 1537 women) completed both interviews. The main contributors to total fibre intake (17·8 g/d) were cereals and cereal products (34 %; 5·9 g/d), potatoes and other tubers (18·6 %; 3·3 g/d), fruits (14·7 %; 2·8 g/d) and vegetables (14·4 %; 2·6 g/d). Legume fibre intake was extremely low (0·672 %; 0·139 g/d). In all sex–age and sex–education groups, total fibre intake was below the recommendations of the Belgian Superior Health Council. Men (21 g/d) consumed significantly more fibre than women (17·3 g/d) (P < 0·001). Lower educated men and higher educated women reported the highest fibre intake. A significant inverse association was found between total fibre intake and WC (β = − 0·118, P < 0·001). Fruit-derived fibre was positively associated with WC (β = 0·731, P = 0·001). In summary, total fibre intake was inversely associated with WC, whereas fruit-derived fibre intake was positively associated with WC in the Belgian population.

Type
Full Papers
Copyright
Copyright © The Authors 2011

Dietary fibre is one of the nutritional compounds of vegetable foods, defined by the Codex Committee on Nutrition and Foods for Special Dietary Uses as carbohydrate polymers with ten or more monomeric units, which are not hydrolysed by endogenous enzymes in the small intestine(Reference Cummings, Mann and Nishida1). Dietary fibre can be classified into water-soluble and water-insoluble fibre. Water-soluble fibres can delay small-bowel absorption, which may reduce cholesterol absorption, but also pancreatic enzyme activity and protein digestion(Reference Rees, Davies and Thompson2, Reference Tan and Seow-Choen3). Subsequently, the colonic fermentation of fibres results in the production of gases and SCFA(Reference Tarini and Wolever4), which causes a longer-lasting satiety and lowers the glycaemic index of foods, and, consequently, attenuates the insulin response(Reference Aleixandre and Miguel5, Reference Mathern, Raatz and Thomas6). Due to its anti-nutritive properties and non-digestibility, water-insoluble fibre can increase the bulkiness of stool and faecal mass, thereby shortening transit time(Reference Tan and Seow-Choen3).

A decreased dietary fibre intake in Western countries is found to be associated with a higher prevalence of chronic diseases(Reference Chandalia, Garg and Lutjohann7, Reference Fukuda, Saito and Nakaji8). Epidemiological data suggest an inverse association between the consumption of dietary fibre and chronic diseases(Reference Newby, Maras and Bakun9) and a positive association with an overall healthier profile (lower blood pressure, lower cholesterol levels and improved insulin sensitivity)(Reference Anderson, Baird and Davis10). In the past decades, the decline in dietary fibre has been hypothesised as a possible determinant for increased adiposity, metabolic disorders and CVD(Reference Ludwig11). Several recent studies have reported that dietary fibre intake may protect against adiposity and metabolic disorders(Reference Davis, Hodges and Gillham12Reference Krishnan, Rosenberg and Singer14). Moreover, recent cohort studies and randomised control trials have shown a significant inverse association between fibre consumption and the risk of developing obesity(Reference Ventura, Davis and Byrd-Williams15) and the metabolic syndrome(Reference McKeown, Meigs and Liu16). Therefore, the intake of dietary fibres is strongly recommended by the WHO (>25 g/d) and the Belgian Superior Health Council (BSHC) (40 g/d for male adolescents (14–18 years); 30 g/d for adults and female adolescents (14–18 years))(17, 18) due to the health benefits.

These fibre recommendations have been translated into food-based dietary guidelines(19) that have been developed to help the general population in choosing a healthy diet. Vandevijvere et al. (Reference Vandevijvere, De Vriese and Huybrechts20) compared the Belgian food-based dietary guidelines, which are based on our Belgian dietary recommendations, with the results derived from the Belgian food consumption survey. This comparison showed that Belgian dietary habits deviate importantly from the Belgian dietary guidelines. Mainly, the intake of plant products (fruits and vegetables), which are important for our fibre intake, was very low in Belgium(Reference Vandevijvere, De Vriese and Huybrechts20). Vandevijvere et al. reported that only 38 and 47 % of the Belgian population consumed vegetables and fruits, respectively, whereas 82 and 52 % of the Belgian population consumed bread and cereals, and potatoes and other tubers, respectively, on a daily basis. Men consumed more bread and cereal products, potatoes and grain products, and fruits than women did, though no differences were found in vegetable intake. The consumption of bread and cereals, and potatoes and grains decreased by increasing age category. The daily consumption of vegetables and fruits, however, was highest among the subpopulation aged 60–74 years old and lowest in the adolescents aged 15–18 years. Furthermore, Huybrechts & De Henauw(Reference Huybrechts and De Henauw21) showed that the majority of Flemish preschoolers aged 2·5–6·5 years old did not meet the recommended fibre intake of the BSHC. Matthys et al. (Reference Matthys, De Henauw and Devos22) reported that Flemish adolescents (13–18 years) also did not reach the fibre requirements of the BSHC.

When considering the above-mentioned gaps in the consumption of plant-rich foods in our Belgian diet and knowing that the prevalence of obesity increased in the past years(Reference Charafeddine, Van Oyen and Demarest23, Reference Stam-Moraga, Kolanowski and Dramaix24), it would be interesting to get more insight into the intake of dietary fibres among our Belgian population and its association with overweight and obesity.

Therefore, the main objectives of the present study were to evaluate dietary fibre intake among the Belgian population and to explore possible differences in intake among sex–age and sex–education groups. Furthermore, in view of the health effects of fibres related to obesity, the association between fibre intake and BMI and waist circumference (WC) was assessed.

Materials and methods

Sampling design and data collection

For the purpose of the present study, data from the Belgian national food consumption survey were used(Reference De Vriese, De Backer and De Henauw25). This survey was performed in 2004 and followed, to a large extent, the recommendations of the European Food Consumption Survey Method project, defining a method to monitor food consumption in nationally representative samples of all age–sex categories(Reference Brussaard, Johansson and Kearney26). The target population was defined as all persons of 15 years and older residing in Belgium and willing to participate. Institutionalised individuals, persons not able to speak one of the national languages or physically or mentally unable to be interviewed were excluded from the survey. A stratified multi-stage sampling design was used to select the participants from the whole country covering regions of Flanders, Brussels and Walloon. The population was stratified in four sex–age groups (15–18, 19–59, 60–74 and ≥ 75 years). Approximately 400 individuals were included in each sex–age stratum. Adolescents were defined as participants being 15–18 years of age.

The present study was conducted according to the guidelines laid down in the Declaration of Helsinki, and all procedures involving human subjects were approved by the medical ethical committee of the Scientific Institute of Public Health in Brussels. Written or verbal informed consent was obtained from all subjects. Verbal consent was witnessed and formally recorded.

Dietary intake assessment

Two repeated, non-consecutive 24 h dietary recall interviews were used to collect the food consumption data. During the first home visit, a 24 h dietary recall was performed through a computer-assisted face-to-face interview by a well-trained dietitian. The second 24 h dietary recall was repeated 2–8 weeks later (median 3 weeks). Interviews were randomly allocated to different days of the week and over a 12-month period in order to include day-to-day and seasonal variations. During the interviews, information (quantities, brand names and recipes used) was collected on all foods and beverages consumed during the preceding day.

The validated software package EPIC-SOFT (International Agency for Research on Cancer (IARC), Lyon, France), designed to obtain a very detailed description and quantification of all foods consumed, was used to obtain standardised 24 h dietary recall interviews(Reference Slimani and Valsta27). Additionally, a book with coloured photographs of foods in different portion sizes was used to support the quantification.

In the present study, 2288 different food items (from seventeen food groups and 107 food subgroups) were consumed by the respondents. Dietary fibre intake was estimated based on the American Association of Analytical Chemists method(Reference Butler and Patel28) used in the Belgian NUBEL(29), the Dutch NEVO(30) and the USDA food composition databases(31). Dietary fibre, as defined by the American Association of Analytical Chemists, includes NSP and indigestible carbohydrates resistant to digestive enzymes. Energy-adjusted dietary fibre intake was also calculated using the formula total fibre intake (g/d)/total energy intake (MJ/d).

Level of education

Participants were asked to report the highest degree that they had obtained during the first interview. Four categories of education level were created: (1) lower secondary; (2) vocational, technical or art; (3) general secondary; (4) higher education (bachelor, master or above).

Anthropometric measurements

Weight (kg) and height (m) were self-reported by the respondents, while WC was measured by the trained dietitians at home after 24 h recall interviews. Pregnant women reported their weight before pregnancy. BMI was calculated as weight (kg)/height (m2). Adult participants were classified into four BMI categories according to the WHO definition: underweight ( < 18·5 kg/m2); normal weight (18·5–24·9 kg/m2); overweight (25·0–29·9 kg/m2); obesity ( ≥ 30·0 kg/m2)(32). The BMI of adolescent participants was classified into the same four categories according to Cole et al. (Reference Cole, Bellizzi and Flegal33) (normal weight, overweight and obesity) and Flemish cut-off values (for underweight only)(34). The cut-off criteria for adults' WC were as follows: normal, < 80 cm (women) and < 94 cm (men); normal to borderline, 80–88 cm (women) and 94–102 cm (men); abdominal obesity, ≥ 88 cm (women) and ≥ 102 cm (men)(Reference Lean, Han and Morrison35). The cut-off criteria of WC for adolescents were based on Taylor et al. (Reference Taylor, Jones and Williams36).

Statistical analysis

Descriptive and statistical analyses by the sex–age and sex–education groups were performed using SPSS for Windows version 15 (SPSS, Inc., Chicago, IL, USA). Results were considered statistically significant at an α two-tailed level of 0·05. Tests for normality and equality of the variances were performed using the Kolmogorov–Smirnov and Levene's test, respectively. To obtain a normal distribution, the dietary total fibre intakes and total fibre intake from main sources were log-transformed. Descriptive statistics include mean intakes of total fibre and food group-specific fibre intakes, BMI and WC with their standard errors. Student's t test, ANOVA with Bonferroni correction was used to compare means between the groups.

Associations between BMI or WC (separate dependent variables) and total fibre intake or food group-specific fibre intake (independent variables) were investigated by stepwise multiple linear regression via three models: (1) unadjusted model; (2) model adjusted for age, sex, region and education level; (3) model further adjusted for total energy intake and the interactions based on model 2. The null hypothesis posited that there is no association between fibre intake and the BMI or WC (H 0: β = 0). The potential effect of confounding factors such as age, sex, region and education level was analysed by stratification to obtain the second coefficient estimate (β in model 2). Additionally, interactions between the independent variable and all effect factors and between the effect factors were examined, resulting in the third coefficient estimate (β from model 3). Total fibre and food group-specific fibre intakes were investigated in separate models because of collinearity. Outliers were removed according to the residual method.

Results

Study population

In total, 3083 individuals (1546 men and 1537 women) out of 7543 contacted individuals participated in the survey and completed both 24 h dietary recalls. Among all 3083 individuals, 2961 participants reported their education level, 3055 reported their weight and height, and for 2875 subjects, WC was measured.

BMI and WC of all participants differed according to sex, age and education level (Table 1). The prevalence of overweight or obese men was higher compared with women, with a mean BMI of 25 and 24 kg/m2, respectively. Of all the participants, 42 % of women and 29 % of men were abdominally obese. The prevalence of overweight or obese subjects, based on both BMI and WC, was the highest in the groups of 60–75 and ≥ 75 years and in the subjects with the lowest educational level.

Table 1 Characteristics of the participants of the Belgian national food consumption survey (2004–5)

(Mean values with their standard errors)

* BMI categories of adults: underweight, < 18·5 kg/m2; normal weight, 18·5–24·9 kg/m2; overweight, 25·0–29·9 kg/m2; obesity, ≥ 30·0 kg/m2 (32). For adolescents, the categories were assigned according to the cut-off values for children and adolescents developed by Cole et al. (Reference Cole, Bellizzi and Flegal33) and according to the Flanders growth charts(34).

Waist circumference categories for adults: normal, < 94 cm (men) and < 80 cm (women); borderline, 94–102 cm (men) and 80–88 cm (women); obesity, ≥ 102 cm (men) and ≥ 88 cm (women)(Reference Lean, Han and Morrison35). For adolescents, the categories were assigned according to the cut-off values given by Taylor et al. (Reference Taylor, Jones and Williams36).

Total fibre intake

The mean total fibre intake in Belgium was 17·8 (1·4–57) g/d. Men consumed significantly more fibre than women (P < 0·001), with the lowest and highest intakes reported by the 15–18 and the 60–74 years of sex–age groups, respectively (Table 2). With regard to the level of education, men in the lowest education group and women with a higher education level had the highest mean total fibre intakes (21 and 16·7 g/d, respectively). The energy-adjusted dietary fibre intakes, on the other hand, were significantly higher in women compared with men (P < 0·001), increased by ageing and was the highest in the lowest educated women in the sex–education groups.

Table 2 Reported and recommended daily total dietary fibre intakes and the percentage of the subjects in the agreement with the recommendations of the Belgian Superior Health Council(17), stratified in sex–age and sex–education groups

(Mean values with their standard errors)

a,b,c Mean values within a column with unlike superscript letters were significantly different (P < 0·05, ANOVA with Bonferroni correction after log transformation).

* Mean values were significantly different between men and women (P < 0·05; Student's t test after log transformation).

Percentage of participants meeting the recommended dietary fibre intake of the Belgian Health Superior Council.

The mean dietary fibre intake of the Belgian population was approximately half of the recommended intake by the BSHC (Table 2)(17), with the majority (63 % men and 89 % women) not meeting the recommendations. Fibre intakes of Belgian adults were too low according to several international guidelines for adults, such as the WHO (>25 g/d)(18), the USDA (men, 38 g/d; women, 25 g/d)(31), the Institute of Medicine of the National Academies (men aged 19–50 years, 38 g/d; men ≥ 50 years, 30 g/d; women aged 19–50 years, 25 g/d; women ≥ 50 years, 21 g/d)(Reference Trumbo, Schlicker and Yates37) and the British Nutrition Foundation (18·0 g/d NSP, approximately 24 g/d total dietary fibre)(38). Likewise, the adolescent population (men, 17·8 g/d; women, 15·0 g/d) reported intakes below the dietary reference intakes of the Institute of Medicine of the National Academies (men, 38 g/d; women, 26 g/d)(Reference Trumbo, Schlicker and Yates37) and Williams' Age plus 5 guideline (19·0–23 g/d)(Reference Williams, Bollella and Wynder39).

Main food groups contributing to fibre intake

Five food groups contributed to 82 % of the total fibre intake in Belgium (corresponding with a mean intake of 14·7 g/d). In all sex–age (Table 3) and sex–education (Table 4) groups, cereals and cereal products contributed most (34 %; 5·9 g/d), with bread, crispbread and rusks as the main sources within this category, followed by potatoes and other tubers (18·6 %, 3·3 g/d), fruits (14·7 %, 2·8 g/d) and vegetables (14·4 %, 2·6 g/d). Interestingly, the subgroup ‘bread, crispbread and rusks’ of cereals and cereal products contributed significantly less in the adolescent group compared with the older groups (P < 0·05), whereas ‘other cereal products’, in contrast, contributed most to adolescents' intake. The intake of legume-derived fibres was extremely low (0·672 %; 0·139 g/d) in all sex–age and sex–education groups. The contributions of fruits and vegetables were the largest in the elderly population (60–74 years in particular) and the lowest in adolescents. In general, potato-derived fibre intakes decreased with the level of education. The contribution of other cereal products was the lowest for lower secondary educated participants, whereas higher educated subjects consumed more fibres from vegetables and fruits.

Table 3 Contribution (g/d) of different food groups to the total fibre intake among the study population, stratified by the sex–age groups

(Mean values with their standard errors)

a,b,c,d Mean values within a row with unlike superscript letters were significantly different (P < 0·05, ANOVA with Bonferroni correction after log transformation).

* Mean values were significantly different between men and women (P < 0·05, Student's t test after log transformation).

Table 4 Contribution (g/d) of different food groups to the total fibre intake among the study population, stratified in sex–education groups

(Mean values with their standard errors)

a,b,c Mean values within a row with unlike superscript letters were significantly different (P < 0·05, ANOVA with Bonferroni correction after log transformation).

*  Mean values were significantly different between men and women (P < 0·05; Student's t test after log transformation).

Anthropometric indices and total and specific fibre intake

Associations between BMI or WC, on the one hand, and total or food group-specific fibre intake, on the other hand, were investigated by stepwise multiple linear regression (Table 5). In model 1, crude BMI was associated with fibre intake from potatoes and other tubers, vegetables, fruits, and cereals and cereal products. After adjustment for age, sex, region and education level (model 2), a significant association was observed between BMI and the intake of fibres from cereals and cereal products (β = − 0·045, P = 0·025), but no association was found after adjustment for energy intakes and interactions with and between the effect factors (model 3). According to model 3, WC, on the other hand, was inversely related to the total fibre intakes (β = − 0·118, P < 0·001) and positively related to fruit-derived fibre intakes (β = 0·731, P = 0·001).

Table 5 Stepwise multiple linear regression analysis of the potential associations between BMI and waist circumference (WC), and total and food group-specific fibre intakes among participants of the Belgian national food consumption survey (2004–5)

(Coefficients with their standard errors and 95 % confidence intervals)

* Model 1, unadjusted; model 2, adjusted for age, sex, region and level of education; model 3, model 2 further adjusted for total energy intake and interactions with and between the effect factors.

Legume-derived fibre intake was not retained in the models for both BMI and WC, whereas total fibre intakes and cereal-derived fibre intakes were not retained in the model for BMI and WC, respectively.

Women, lower secondary education and Walloon region are as reference in the models.

§ Model 2. Significantly positively associated variable: age; significantly negatively associated variables: sex, general secondary education, higher education, Flanders region and Brussels region. Model 3. Significantly positively associated variables: age, sex, higher education and Brussels region; significantly negatively associated variables: general secondary education and Flanders region. Significantly positively associated interactions: vocational, technical or art × sex, higher education × age and Brussels region × age; significantly negatively associated interactions: sex × age, vocational, technical or art × age, general secondary education × sex, general secondary education × age, higher education × sex, and cereal fibre × vocational, technical or art.

Model 2. Significantly positively associated variable: age; significantly negatively associated variables: sex, general secondary education and Brussels region. Model 3. Significantly positively associated variables: age and Brussels region; significantly negatively associated variables: sex and general secondary education. Significantly positively associated interactions: general secondary education × age and total fibre × higher education; significantly negatively associated interactions: sex × age, higher education × sex and Brussels region × age.

Model 2. Significantly positively associated variable: age; significantly negatively associated variables: sex, general secondary education and higher education. Model 3. Significantly positively associated variables: age and higher education; significantly negatively associated variables: sex and general secondary education. Significantly positively associated interaction: general secondary education × age; significantly negatively associated interactions: higher education × age, Brussels region × age, fruit fibre × sex, cereal fibre × vocational, technical or art, and cereal fibre × general secondary education.

Discussion

Total and food group-specific fibre intake

The total daily fibre intakes in this large population-based national nutrition survey were on average 17·8 g and below (men 63 %, women 89 %) the recommendations proposed by the BSHC(17).

Compared with the study reported by Matthys et al. (Reference Matthys, De Henauw and Devos22) involving Flemish adolescents (13–17 years) living in Ghent and using 7 d food records, the male adolescents participating in the present study consumed considerably less dietary fibre than Ghent adolescents (mean 21 g/d), whereas the female adolescents from Ghent had a slightly higher average dietary fibre intake (mean 15·9 g/d). After adjustment for energy intake, however, male adolescents from the Belgian food consumption survey had slightly lower intakes than reported in the study of Matthys et al. (1·8 g/MJ × d), while female adolescents had higher intakes than those in the study of Matthys et al. (1·9 g/10 MJ).

The dietary fibre intakes of the Belgian population were comparable to the European levels (male adolescents, 14·0–26 g/d; female adolescents, 14·0–22 g/d; male adults, 18·0–26 g/d; female adults, 16·0–26 g/d; elderly men, 15·0–31 g/d, and elderly women, 16·0–23 g/d)(Reference Elmadfa and Freisling40). Belgian men had similar dietary fibre intakes as Catalan men in Spain using the same method in 10- to 75-year-old subjects, while Belgian women in all age groups consumed substantially less dietary fibres than Spanish women (Spanish 17·0 g/d)(Reference Serra-Majem, Ribas-Barba and Salvador41). Additionally, Spanish male adolescents (mean 18·7 g/d) had slightly higher dietary fibre intakes than Belgian male adolescents (17·8 g/d), whereas Belgian adolescents had slightly higher dietary fibre intakes than Italian adolescents via 24 h dietary records (Belgium: men, 17·8 g/d; women, 15·0 g/d; Italy: men, 17·0 g/d; women, 14·0 g/d)(Reference Leclercq, Piccinelli and Arcella42).

According to two American national nutrition surveys using 24 h recalls (1988–91: all age categories; 1988–2004: adults), lower total fibre intakes were reported among the US population (14·0–16·7 and 16·0–19·0 g/d, respectively)(Reference Alaimo, McDowell and Briefel43, Reference Oza-Frank, Cheng and Narayan44). Furthermore, based on a Japanese dietary survey among the general population, Japanese and Belgian men had similar fibre intakes, whereas Japanese women (14·7–21 g/d) consumed comparatively more fibres than Belgian women in all age groups(Reference Fukuda, Saito and Nakaji8). However, Japanese men < 30 years (13·7 g/d) consumed a substantially lower amount of fibres compared with the same Belgian population group (18·1 g/d).

In the present study, the most important contributors to dietary fibre intake were cereals and cereal products (bread, crispbread and rusks in particular), followed by potatoes and other tubers, vegetables and fruits (mainly fresh fruits). Similar food groups were identified as the major contributors in Italian adolescents(Reference Leclercq, Piccinelli and Arcella42). Results of the Spanish and Japanese national surveys, on the other hand, indicate that potato-derived fibre intakes contributed much more to the Belgian (14·4 %, 3·3 g/d) than to Spanish and Japanese total fibre intakes (6·0 %, approximately 1·1 g/d and approximately 1·5 g/d, respectively)(Reference Fukuda, Saito and Nakaji8, Reference Serra-Majem, Ribas-Barba and Salvador41). While the contribution of cereal-derived fibres was higher for Belgians than for Spanish persons (34 %, 5·9 g/d v. 28 %, approximately 5·2 g/d), the contribution of fruit-derived fibres was considerably lower in Belgians compared with Spanish (14·7 %, 2·8 g/d v. 22 %, approximately 3·9 g/d). Additionally, the contribution of fruit-derived fibres in the Belgian was similar to that in the Japanese population (13·5 %, 2·5 g/d). The fibre intakes from the remaining food groups, including legumes, nuts and seeds, and vegetables, were lower in this Belgium sample than in the other surveys. In particular, the consumption and contribution of legume-derived fibres were extremely low compared with Spanish (12·1 %, approximately 2·2 g/d)(Reference Serra-Majem, Ribas-Barba and Salvador41) and Japanese (14·1 %, approximately 2·6 g/d)(Reference Fukuda, Saito and Nakaji8) reports.

To the best of our knowledge, no published Belgian data are available describing dietary fibre intakes stratified by level of education. There are indications that a higher socio-economic status such as education, family income and occupational level is associated with higher intakes of dietary fibres(Reference Bhargava45Reference Zhang, Hsu-Hage and Wahlqvist49). Nevertheless, in our Belgian study, lower secondary educated men and higher educated women reported the highest total fibre intakes. In all sex–education groups, cereals and cereal products contributed most to the total fibre intake. The contribution of cereal products other than bread, crispbread or rusks was the lowest for lower secondary educated men and women, whereas higher educated persons consumed more fibres from vegetables and fruits. In general, potato-derived fibre intakes decreased with the level of education. Moreover, some recent studies have observed that fibre intake through the consumption of vegetables, fruits and cereals increases with participants' socio-economic status and education level(Reference Bhargava45, Reference Lang and Jebb48).

Associations between dietary fibre intake and BMI and waist circumference

Although BMI is not an accurate indicator of body composition, it is a well-known predictor of obesity in the general population(Reference Mafra, Guebre-Egziabher and Fouque50). WC is a better and stronger predictor of abdominal obesity and obesity-related health risks(Reference Chan, Watts and Barrett51). Hence, in the present study, both BMI and WC were used in order to find more precise associations between dietary fibre intake and body composition.

There are indications that the consumption of dietary fibres may have beneficial effects, such as lowering body weight, BMI and WC(Reference Affenito, Thompson and Barton52Reference Ventura, Davis and Alexander62). In the present study, total dietary fibre intakes were significantly inversely associated with WC, but not with BMI. In line with the present findings, Ventura et al. (Reference Ventura, Davis and Alexander62) reported that higher total dietary fibre intakes correlated with lower WC. Moreover, Liese et al. (Reference Liese, Schulz and Fang56) found that total fibre intakes were inversely associated with both BMI (β = − 0·795, P = 0·013) and WC (β = − 1·9, P = 0·008) after adjustment for age, sex and socio-economic status. Du et al. (Reference Du, van der and Boshuizen63) observed that dietary fibre intakes were inversely associated with body-weight gain and WC increases among Europeans. Conversely, one cross-sectional study involving adults aged 60–80 years and one randomised controlled trial involving breast cancer patients aged 18–70 years reported no significant effects of dietary fibres on BMI or body weight(Reference McKeown, Yoshida and Shea57, Reference Thomson, Rock and Giuliano60). Additionally, in one recent cross-sectional study involving 5783 Chinese adults aged 20–59 years, higher total dietary fibre intakes correlated with increased BMI(Reference Stookey59).

Although cereal-derived fibre intake was the most important contributor in all sex–age and sex–education groups in the present study, it was not significantly associated with BMI nor WC. A European prospective cohort study(Reference Du, van der and Boshuizen63), however, suggested that fibres derived from cereals, more than those from vegetables or fruits, may have a role in the prevention of body-weight and WC gain. In addition, recent studies have found that cereal-derived fibre intakes were inversely associated with BMI and WC(Reference Newby, Maras and Bakun9, Reference McKeown, Meigs and Liu16, Reference McKeown, Yoshida and Shea57, Reference Good, Holschuh and Albertson64). A recent systematic review has suggested that the consumption of cereal fibre led to more health benefits in the prevention of type 2 diabetes mellitus by improving insulin sensitivity and increased bowel movements without adverse effects(Reference Park, Brinton and Subar65). Furthermore, one prospective cohort study and one cross-over study have stated that a high cereal fibre intake with a low glycaemic load was inversely associated with the risk of type 2 diabetes compared with lower cereal fibre intake and higher glycaemic load(Reference Fung, Hu and Pereira66, Reference Samra and Anderson67). Surprisingly, in the present study, the intake of fruit-derived fibres was positively associated with WC. Conversely, McKeown et al. (Reference McKeown, Yoshida and Shea57) found no significant associations between the intake of fibres from vegetables or fruits and body composition. Moreover, some recent studies have described an inverse relationship between fruit- and vegetable-derived fibre intakes and body weight and BMI(Reference Koh-Banerjee, Franz and Sampson68, Reference Sartorelli, Franco and Cardoso69). According to recent reviews, high fibre intakes through the consumption of vegetables and fruits would have no direct effect on body weight, but may exert indirectly health-promoting activities related to body composition(Reference Feldeisen and Tucker70, Reference Kaline, Bornstein and Bergmann71).

In the present study, we controlled for potential modifier effects and observed that age, sex, region, education, energy intake and certain interactions affected the linear association between dietary fibre intakes and BMI and WC. Similarly, region, age, sex and level of education have been described as potential confounding factors for the effect of fibre intake on measures of obesity(Reference Affenito, Thompson and Barton52). Byrd-Williams et al. (Reference Byrd-Williams, Strother and Kelly53) found that dietary fibre intakes were inversely associated with the BMI of men and women (18–24 years), and with the WC of men. Howarth et al. (Reference Howarth, Huang and Roberts55), on the other hand, reported that dietary fibre intakes were inversely associated with the BMI of women aged 20–59 years, but not of men in the same age range.

Strengths and limitations

This national nutrition survey can be seen as the largest survey covering all the provinces and language regions in Belgium so far. The present study is the first one evaluating dietary fibre intake stratified by sex–age and sex–education, as well as assessing the association with anthropometric indices including BMI and WC in the Belgian population.

Yet, some limitations of the present study are the low response rate (42 %) and the use of two 24 h recalls to assess dietary fibre intakes. Although, no doubt, willingness to participate leads to some selection bias as volunteers are generally more concerned with health and diet than others, the present study population represents a more general population of Belgium in comparison with other studies, which are mostly restricted to local areas. In addition, all seasons and days of the week were almost equally represented. Another limitation related to the sampling is the broad age range of the young adult group (19–59 years), which could lead to imprecise interpretations of the results obtained for that age group. Differences attributed to this age group may be applicable only to a smaller subset with more significant differences, and this may have implications for policy recommendations.

A limitation of 24 h dietary recalls is that it does not allow quantifying proportions of non-consumers for particular food items, a fortiori for infrequently consumed foods. Moreover, accuracy of collected data relies on the individual's ability to remember foods and beverages consumed in the past 24 h, and might, therefore, be biased towards misreporting. In this respect, the 24 h dietary recalls were performed through computer-assisted EPIC-SOFT and face-to-face interviews to guide the participants to report all their consumption, even the easily forgotten snacks.

Another limitation of this survey is the fact that weight and height were self-reported. However, the strength of this survey is that WC was measured by trained dietitians. When interpreting the results, it could be that this difference in recording method (self-reported v. measured) is partly responsible for the differences found between BMI and WC in the present study. Yet, the inclusion of both measures is an important strength of the present study, as these are not similar but complementary parameters for body composition due to their independent contribution to the prediction of total and abdominal obesity(Reference Janssen, Heymsfield and Allison72).

Additionally, a large number of missing values of WC might be a factor leading to a biased sample, as obese people might more often refuse to have a WC measurement. Then, the underestimated WC could bias the association between WC and dietary fibre intake in the present study. However, the authors performed some additional sensitivity analyses (results not shown), which showed no significant differences in BMI or fibre intake between the group with missing WC data and those included in the WC analyses.

At last, it is noteworthy that soluble and insoluble dietary fibre intake should be analysed separately for further knowledge, but due to the information in the food composition databases, this was not possible. Biomarkers as well need to be considered to investigate the association with dietary fibre intake and glycaemic index in future studies.

Recommendations

The present study findings indicate unfavourably low fibre intakes among our Belgian population. Enhancing the daily amount of vegetables, fruits, legumes, nuts and seeds could contribute importantly to higher fibre intakes. However, in the battle against obesity, one should keep in mind that the total energy intake should not be influenced by the enhancement of these food groups, which could necessitate a concomitant decrease in other (less fibre-rich and energy-dense) foods such as soft drinks, candies and refined bakery products. If public health policies for the increase in fibre intakes are to be effective, policy development and implementation need to target the main sources of dietary fibre in various populations. Also manufacturers could be stimulated to reformulate existing products to incorporate more whole grains.

Conclusion

This survey provides information on the consumption of total and food group-specific fibres in Belgium. The most important contributor was cereals and cereal products. Total fibre intakes were lower than the recommended intake in all sex–age and sex–education groups. The dietary fibre intakes increased with age. Lower educated men and higher educated women consumed most dietary fibre. Although these results show that Belgians did not consume enough fibre, a significant inverse relationship was observed between total fibre and cereal-derived fibre intakes and WC.

Acknowledgements

The present study was supported by the Alpro Foundation. The food consumption survey was funded by the Federal Ministry of Health, Food Chain Safety and Environment. Y. L. performed and interpreted the statistical analyses and drafted the manuscript. A. P. and M. D. N., the dietitians of our team, were responsible for the data linking with the food composition databases. S. D. V., H. V. O. and I. H. were responsible for the coordination of the fieldwork of the Belgian food consumption survey, and G. D. B. and S. D. H. were involved in the conceptualisation of the national food consumption survey. All other authors helped in the evaluation of the results and the writing of the manuscript. All authors have evaluated and approved the final version of the manuscript. The authors declare that there are no conflicts of interests.

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Figure 0

Table 1 Characteristics of the participants of the Belgian national food consumption survey (2004–5)(Mean values with their standard errors)

Figure 1

Table 2 Reported and recommended daily total dietary fibre intakes and the percentage of the subjects in the agreement with the recommendations of the Belgian Superior Health Council(17), stratified in sex–age and sex–education groups(Mean values with their standard errors)

Figure 2

Table 3 Contribution (g/d) of different food groups to the total fibre intake among the study population, stratified by the sex–age groups(Mean values with their standard errors)

Figure 3

Table 4 Contribution (g/d) of different food groups to the total fibre intake among the study population, stratified in sex–education groups(Mean values with their standard errors)

Figure 4

Table 5 Stepwise multiple linear regression analysis of the potential associations between BMI and waist circumference (WC), and total and food group-specific fibre intakes among participants of the Belgian national food consumption survey (2004–5)(Coefficients with their standard errors and 95 % confidence intervals)