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Article

Socioeconomic Indicators Are Independently Associated with Nutrient Intake in French Adults: A DEDIPAC Study

1
U1153 National Institute of Health and Medical Research, U1125 National Institute for Agricultural Research, National Conservatory of Arts and Crafts, Nutritional Epidemiology Research Team (EREN), Sorbonne Paris Cité, Paris 13 University, Paris 7 and 5, Bobigny 93017 Cedex, France
2
Department of Chronic Diseases and Injuries, French Institute for Health Surveillance, Nutritional Epidemiology and Surveillance Unit, Sorbonne Paris Cité, Paris 13 University, Bobigny 93017 Cedex, France
3
School of Public Health, Université Libre de Bruxelles (ULB), Bruxelles B-1070, Belgium
4
National Institute for Agricultural Research, UR 1303 ALISS, Ivry sur Seine 94200, France
5
Lille 3 University—EA CeRies, Villeneuve-d’Ascq 59650, France
6
University of Strasburg, UMR LIVE 7362, Strasbourg 67000, France
7
Department of Public Health, Academic Medical Centre, University of Amsterdam, Amsterdam 1100DD, The Netherlands
8
Department of Nutrition, Faculty of Medicine, University of Oslo, Oslo 0316, Norway
9
Department of Nursing and Health Promotion, Faculty of Health Sciences, Oslo and Akershus University of Applied Sciences, Oslo 0130, Norway
10
Public Health section, School of Health and Related Research (ScHARR), The University of Sheffield, Sheffield, Sheffield S1 4DA, UK
11
Department of Public Health, Academic Medical Center, University of Amsterdam, Amsterdam 1100 DD, The Netherlands
12
Department of Public Health, Avicenne Hospital, Bobigny 93300, France
*
Author to whom correspondence should be addressed.
Submission received: 11 December 2015 / Revised: 5 February 2016 / Accepted: 18 February 2016 / Published: 10 March 2016

Abstract

:
Studies have suggested differential associations of specific indicators of socioeconomic position (SEP) with nutrient intake and a cumulative effect of these indicators on diet. We investigated the independent association of SEP indicators (education, income, occupation) with nutrient intake and their effect modification. This cross-sectional analysis included 91,900 French adults from the NutriNet-Santé cohort. Nutrient intake was estimated using three 24-h records. We investigated associations between the three SEP factors and nutrient intake using sex-stratified analysis of covariance, adjusted for age and energy intake, and associations between income and nutrient intake stratified by education and occupation. Low educated participants had higher protein and cholesterol intakes and lower fibre, vitamin C and beta-carotene intakes. Low income individuals had higher complex carbohydrate intakes, and lower magnesium, potassium, folate and vitamin C intakes. Intakes of vitamin D and alcohol were lower in low occupation individuals. Higher income was associated with higher intakes of fibre, protein, magnesium, potassium, beta-carotene, and folate among low educated persons only, highlighting effect modification. Lower SEP, particularly low education, was associated with lower intakes of nutrients required for a healthy diet. Each SEP indicator was associated with specific differences in nutrient intake suggesting that they underpin different social processes.

1. Introduction

Socioeconomic health inequalities have been widely described in the literature, in terms of morbidity and mortality [1,2,3,4]. Diet appears to substantially contribute to these socioeconomic differences in mortality (up to 66%) [5,6,7]. An important body of literature has concluded that a high socioeconomic position (SEP) is consistently associated with healthy dietary patterns including a greater consumption of fruits, vegetables, and whole-grain foods, whereas individuals of low SEP are more likely to consume more refined cereals, fatty meat and added fats [8,9,10]. Compared with studies on food groups, literature on the relationship between SEP and nutrient intake is scarcer and, to our knowledge, very few studies have used recent data on this particular topic. Previous studies have highlighted that low SEP groups have lower intakes of fibre, minerals such as calcium and vitamins, e.g., vitamin C and folate [8,11]. According to a review published in 2008, results about the association of energy and macronutrient intake with SEP are equivocal. In particular, a socioeconomic gradient in total fat intake has not been consistently observed [8].
Although some studies regarding socioeconomic disparities in nutrient intake have been conducted, very few have used all three major SEP indicators (education, occupation and income) to explore the relationship between SEP and nutrient intake or have investigated the interaction between all of these SEP indicators [12,13,14,15]. Although education, income and occupation are correlated, they are not interchangeable and can even have additive or synergistic effects on food intake [13,14,16]. The fact that the correlations between the SEP indicators are generally modest suggests some shared association but also their unique role [16]. In fact, education is linked to diet through knowledge and attitudes while income reflects financial means and occupation can represent one’s social network [17]. Hence using only one indicator of SEP can lead to misinterpretations of the differences in intake between socioeconomic groups [13,15]. As they might affect diet differently, to study the independent role of each SEP indicator and their interaction is useful for a better understanding of the socioeconomic inequalities in the nutrient quality of the diet.
Within the Determinants of Diet and Physical Activity (DEDIPAC) joint action of the European Joint Programming Initiative “A Healthy Diet for a Healthy Life”, providing frameworks of determinants of dietary behaviors and social inequalities is a key objective [18]. The aim of this study was to investigate the independent association of three SEP indicators (education, occupation and income) with nutrient intake in French adults participating in the NutriNet-Santé study. In addition, as income is determined by education and occupation, the effect modification of these SEP indicators on the relationship between income and nutrient intake was assessed.

2. Materials and Methods

Subjects were participants in the NutriNet-Santé study, a large web-based prospective observational cohort launched in France in May 2009. It was implemented in the French general population targeting internet-using adult volunteers aged ≥18 years. The study was designed to investigate the relationships between nutrition and health, as well as the determinants of dietary behaviours and nutritional status. The design, methods and rationale have been described previously [19]. Briefly, participants were included in the cohort once they completed a baseline set of questionnaires assessing dietary intake, physical activity, and socioeconomic and health status. At follow-up, participants completed the same set of questionnaires every year. Additionally, each month they were invited to fill out complementary questionnaires related to determinants of food behaviours, nutritional and health status.
This study was conducted according to guidelines laid down in the Declaration of Helsinki and all procedures were approved by the Institutional Review Board of the French Institute for Health and Medical Research (IRB Inserm No. 0000388FWA00005831) and the French Data Protection Authority (Commission Nationale Informatique et Libertés No. 908450 and No. 909216). Electronic informed consents were obtained from all participants.

Data Collection

Dietary Intake

At baseline, participants were invited to complete 3 non-consecutive validated web-based 24-h dietary records, randomly assigned over a 2-week period (2 weekdays and 1 weekend day) [19,20,21]. The dietary record was completed via an interactive interface and was designed for self-administration on the Internet [22]. The web-based dietary assessment method relies on a meal-based approach, recording all foods and beverages (type and quantity) consumed at breakfast, lunch, dinner and all other eating occasions. Participants estimated portion sizes for each reported food and beverage according to standard measurements (e.g., home containers, grams indicated on the package) or using validated photographs [23]. The values for energy, macronutrients and micronutrients were estimated using published nutrient databases [24] and completed for recent market foods and recipes. For each participant, daily mean quantities of nutrients were calculated from 24-h records, weighted according to the day (weekdays or weekend). As exclusion criterion in our sample, energy-under-reporting participants were identified using the method proposed by Black, which allows comparing energy intake to the basal metabolic rate (BMR) taking into account the physical activity level (a physical activity level of 1.55 was used to identify underreporting participants, while a value of 0.88 was used for extreme underreporting participants) [25]. BMR was estimated using Schofield equations according to sex, age, weight and height collected at enrolment in the study [26]. In addition, participants had the option to indicate whether the reported consumption was representative of their usual diet or considerably differed (due to illness, dieting, a social event, etc.) and that information was taken into account to identify specific conditions that could objectively explain low energy intake. In this case, subject was not excluded from the study population.

Socioeconomic Position (SEP)

Socioeconomic and demographic data were collected at baseline using a web-based self-completed questionnaire previously validated [27]. The highest attained diploma was collected to assess educational level using referential of INSEE (French National Institute of Statistics) [28]. The four following categories were used: primary education, secondary education, undergraduate (corresponding to up to 3 years after high school diploma), and postgraduate (>3 years after high school diploma). Occupation was assessed using the definition of INSEE [29] and was recoded into 6 classes: never employed (homemakers, students, and disabled), manual workers, employees, intermediate professions (e.g., technicians, skilled employees, teachers, nurses), self-employed (craftsman, shopkeeper, company manager and farmer) and managerial staff. Unemployed and retired individuals were asked to indicate their last occupation status. In this particular case, the previous status was used to assess the occupation in the analyses. Participants were asked about monthly household income including total salary, social benefits, family allowance and rental income. Subjects could also choose not to indicate their household income. The monthly household income was calculated according to household composition, reported by the participant. Thus, reported monthly household income was divided by the number of household units (HU), i.e., 1 HU for the first adult in the household, 0.5 HU for other persons aged ≥14 years and 0.3 HU for children <14 years [30]. The following five categories of monthly income were used: <1200 €, 1200–1800 €, 1800–2700 € and >2700 € per HU and a category grouping individuals who refused to answer.

Statistical Analysis

The present analysis focused on participants included in the NutriNet-Santé cohort study between May 2009 and October 2013, living in the mainland France, who completed at least three 24-h dietary records at baseline, who did not under-report energy, and who had provided data on education level, occupation and income.
All analyses were performed separately for men and women since sex interactions were significant. Associations between nutrient intake and the three SEP indicators (education, income and occupation) were assessed by using analysis of covariance. The three indicators were included simultaneously in the models in order to assess their independent effect. All models assessing associations between nutrient intake and SEP indicators were adjusted for age and total energy intake. Collinearity between the three SEP indicators was investigated by examining the variance inflation factors. Relative difference in intake between individuals belonging to the highest SEP category and those of the lowest SEP category was computed as: ((mean intake of the highest SEP category − mean intake of the lowest SEP category)/(mean intake of the highest SEP category)) × 100. A positive relative difference shows higher intake of nutrient in the highest SEP category and a negative relative difference shows lower intakes in the highest SEP category. Interactions between income and education or occupation and between education and occupation were also tested. When interactions were significant (p-value < 0.05), we performed analyses of associations between nutrient intake and income, stratified by education or occupation strata and adjusted for age and total energy intake. Because the large sample size increases the likelihood of significant statistical tests, results were interpreted as significant only with a specific P-value and when relative difference was >5%. We considered that this difference represents a difference in daily intake that could have long-term consequences on health. A p-value < 0.05 was first considered statistically significant. Then, to take into account multiple comparisons, we calculated the Bonferroni correction for each model, leading to a p-value < 0.002 in non-stratified models, a p-value < 0.01 in stratified models by education and a p-value < 0.0083 in stratified models by occupation. Regarding to occupational categories, comparisons between intakes of self-employed and never-employed subjects and those of the other occupational categories were not interpreted, since these two groups are very heterogeneous in terms of social status and networks, although they were included in the multivariate analysis. In addition, individuals who refused to declare their income had very diversified sociodemographic profiles, so we did not interpret comparisons between their intake and those of the other income classes. Data pre-treatment and statistical analyses were performed using SAS (version 9.3; SAS Institute, Inc., Cary, NC, USA).

3. Results

3.1. Description of the Study Population

Among 123,269 participants included between May 2009 and October 2013, we excluded 17,344 individuals (14.1%) who had not provided three 24-h records, 13,306 underreporting subjects (10.8%) and 719 participants with missing data for at least one of the three socioeconomic factors (0.6%), thus leaving to 91,900 individuals for analysis (72,154 women and 19,746 men). Percentages of young subjects (18–30 years), individuals with undergraduate educational level, employees and never employed persons, those belonging to the lowest income class were higher in women than in men while percentages of elderly (>65 years), subjects with post-graduate education, managerial staff, manual workers and self-employed, and individuals belonging to the highest income class were lower (Table 1).

3.2. Analysis of the Collinearity of the SEP Indicators

Overall, variance inflation factor of each SEP indicator was between 1.04 and 1.63, showing that SEP indicators were not collinear. Only those results for which the difference in mean intake between participants belonging to the highest SEP category and those of the lowest category was >5% are described.

3.3. Associations between Nutrient Intakes and SEP Indicators

In both sexes, no significant association was found between SEP and intake of iron, sodium, calcium, vitamin A, vitamin E, total carbohydrates, lipids, polyunsaturated fatty acids, monounsaturated fatty acids and saturated fatty acids, regardless of the SEP indicator (Table 2 and Table 3).

3.3.1. Education

In both sexes, individuals with postgraduate education reported lower protein intake (−5%) and lower cholesterol intake (difference: −9% in men and −7% in women) and higher intakes of fibre (around +7%), beta-carotene (+6% to +9%) and vitamin C (+7% to +9%) than those in the lowest education category (Table 2 and Table 3). Women with postgraduate education reported higher total energy intake than those with primary education (difference: +5.8%). Men with postgraduate education consumed more sugars (+6%) than men with primary education (Table 3).

3.3.2. Income

In men and women, individuals with the highest income reported lower intake of complex carbohydrates (−6%) and higher intake of folate (+5%), vitamin C (+12% to +14%) and magnesium (+6%) than those in the lowest category of income (Table 2 and Table 3). Regarding potassium, men with the highest income had higher intake than individuals with the lowest income (+5%) (Table 3).

3.3.3. Occupation

Managerial staff participants had higher intake of alcohol (+ 15.6% in women and +8.6% in men) (Table 2 and Table 3). Female managerial staff had higher magnesium (+6.5%), vitamin D (+11.5%) and beta-carotene (+7%) intakes than female manual workers (Table 2).

3.4. Associations between Income and Nutrient Intake Stratified by Education or Occupation Levels

3.4.1. Stratified Analyses by Education

In both sexes, interaction between income and education was significant for beta-carotene (p = 0.0001 in women and p = 0.03 in men), folate (p < 0.0001 in women and p = 0.008 in men) and magnesium (<0.0001 in both sexes). In both sexes, in primary and/or secondary education levels, individuals with highest income had higher intakes in beta carotene, folate and magnesium than those with the lowest income (differences: +6% to +13%) (Table 4 and Table 5) while no difference according to income was found in the highest category of education. In men, significant interactions between education and income were found regarding proteins (p = 0.01) and fibre (p = 0.0003) and potassium (p = 0.002). In men, difference > 5% was found only in individuals with primary education. In this group, individuals belonging to the highest income category had higher protein intake than those in the other income classes (Table 5). Only in secondary education level, men with the highest income had higher fibre intake than those with the lowest income (difference: +6.3%) (Table 5). Only in individuals with primary and secondary education, men with the highest income had higher potassium intake than subjects belonging to the two lowest income classes (differences: +5% to +6.5%) (Table 5).

3.4.2. Stratified Analyses by Occupation

In both sexes, interaction between income and occupation was significant for magnesium (p = 0.04 in women and p = 0.0499 in men). Employees with highest income consumed more magnesium than those of other income categories (differences: +5% to +8%) (Table 6). In addition, only male managerial staff belonging to the highest income class had higher magnesium intake than men with lower income (+7.2%) (Table 6). In women, significant interaction between income and occupation for intake of complex carbohydrates was found (p = 0.0004). Stratified analyses showed that, only in the intermediate professions, individuals belonging to the highest income class consumed less complex carbohydrates than subjects in the lowest income class (difference: −6%) (Table 6). In men, interaction between income and occupation was significant for potassium (p = 0.03) and alcohol (p = 0.01). In manual workers and employees, men with highest income had higher potassium intake than individuals of the other income categories (differences: +9% to +11% in manual workers and +5 to +6% in employees) (Table 6). In managerial staff, men belonging to the highest income class consumed more alcohol than individuals in the two lowest income classes (differences: +6% to +10%) (Table 6).

4. Discussion

The present study addressed differences in nutrient intake between low and high socioeconomic groups in French adults using education, income and occupation as indicators of the SEP. Each SEP indicator was associated with specific differences in nutrient intakes suggesting that they underpin different social processes. Particularly, our findings showed that low educated individuals tend to have lower intakes of nutrients required for a healthy diet. Indeed, low educated participants had higher intakes of protein and cholesterol and lower intakes of fibre, vitamin C and beta-carotene. Low income individuals had higher intakes of complex carbohydrates and lower intakes of magnesium, potassium, folate and vitamin C while intakes of vitamin D and alcohol were lower in low occupation individuals. No difference in the intake of lipids and fatty acids was found. In addition, education modulated the relationships between income and intakes of fibre, protein, magnesium, potassium, beta-carotene and folate. In low education levels only, higher income was associated with higher intake of these nutrients.
Our finding showing that lipids and fatty acids were not influenced by SEP was concordant with a previous literature review [8]. This lack of difference may be explained by very high intakes, above recommendations, whatever the SEP groups, suggesting that fat intake is influenced by other factors, such as high exposure to fatty foods in the food supply, that equally reach all SEP categories. Consistent with previous studies, our findings showed no relationship between overall carbohydrate intake and the three SEP indicators [8,13]. Unlike previous studies, our finding did not show any association between intake of calcium and iron and SEP [11,13,31,32]. A study conducted in French adults aged 45–60 years also showed no difference in intake according to SEP [33]. This result could be due to high intakes of calcium, whatever the SEP groups. A previous work has shown that calcium intake was satisfactory in a representative sample of French adults [34]. Consumption in all SEP groups of high amount of dairy products, the main contributor of calcium intake in France, could explain this high calcium intake. Among dairy products, milk was more consumed by manual workers than managerial staff and cheese consumption increased with education [8,33]. Further analyses on the socioeconomic differences in the consumption of dairy products in our sample could help us to understand why no statistical difference was found in calcium intake.

4.1. Education in Relation to Nutrient Intake

Regarding protein and cholesterol intakes, our finding showing an inverse educational association with higher intakes in low educated persons was concordant with previous studies [35,36,37,38]. In France, meat, poultry and processed meats represent 34% of total protein intake, followed by dairy products (17%), ready-to-eat foods (8%) and fish (6%) [39]. The contribution of animal proteins to total intake of highly educated individuals may be lower than in low educated groups because they are more likely to perceive the negative implications of animal products for health, therefore reducing their total intake of animal-based products. The fact that high educated participants consumed less cholesterol reinforces this hypothesis as cholesterol is mostly present in animal based products. The symbolic role of meat, such as its contribution to physical strength and energy, and social norms in low educated persons could also influence the decision to eat meat and maintain its important status in meals in low educated persons [40]. In other French studies [41,42], a low education was associated with a “meat products and alcohol” dietary pattern. In concordance with previous works, positive educational gradients in fibre, vitamin C and beta-carotene intakes were observed in our study [8,11,31,36,43]. Compared to low educated participants, high educated individuals may have an increased knowledge of diet-related health problems and may perceive the long term consequences of diet on health. High levels of education can be associated with better nutrition knowledge [44,45,46,47] and it has been shown that nutrition knowledge is associated with healthier food purchasing or healthy eating habits leading to consumption of food groups rich in nutrients such as vitamins and fibre [45,47]. It can also modify the association between SEP and diet [44,48]. Attitudes towards health benefits of diet and awareness of key messages may lead high educated persons to comply better with dietary recommendations [49] by consuming less animal products and more wholegrain foods and fruit and vegetables, the main sources of fibre in France and contributors to vitamin C and beta carotene intakes [8,10,44,49,50,51,52].

4.2. Income and Occupation in Relation to Nutrient Intake

Low income participants had lower intakes of magnesium, potassium, folate and vitamin C Income has an effect on available material resources and reflects financial accessibility to healthy foods [15,17]. Then, these lower intakes, particularly those of vitamins, in individuals with low income may be explained by a limited financial access to fruits and vegetables among this category, as they are the main source of folate and vitamin C in the French population [53,54,55]. An inverse relationship between the intake of complex carbohydrates and income was found. This could be due to the fact that low SEP groups consumed more bread and starchy foods, the main contributors of complex carbohydrates, than high SEP groups, probably because they are affordable [8,56,57]. Mean vitamin D intake was below recommendations in all SEP subgroups and mean intake of low occupation participants was weaker. Some of the strongest differences between occupation and income categories were observed regarding vitamin D or alcohol. The main source of vitamin D intake in the French population is fish (38% of the intake) [58]. This positive association between vitamin D intake and occupation could be explained by a higher proportion of fish consumers among high occupational subjects, which has been observed previously [32]. However, vitamin D status is determined weakly by dietary intake [59,60]. Our finding that alcohol intake was positively associated with occupation and income was concordant with previous studies [36,61]. Occupation is related to social standing and environmental conditions [17]. Social networks and professional relationships in particular influence the consumption of alcoholic beverages. Indeed, in social representations, consumption of alcoholic beverages might lead to more conviviality in the professional environment.

4.3. Effect Modification of Education and Occupation

Associations of intakes of fibre, folate, beta-carotene, magnesium, and potassium with income were significant only in low educational or occupational categories, suggesting that the barrier of the cost of foods containing high level of these nutrients, such as whole grain foods, fruits and vegetables, can be overcome by education or occupation. In individuals with primary or secondary education, income appears to be a key element of dietary intakes as increased income seems to improve the capacity to buy and then to consume more nutrient-dense foods, known as costly [57]. In subjects with high education or high occupation, no difference in nutrient intake was observed between income classes, suggesting that knowledge and beliefs of individuals with high education and occupation levels may lead them to act positively on their diet, thus consuming more healthy recommended foods regardless of income. Education may lead individuals to develop strategies helping them to cope with the financial barrier of nutrient-dense foods such as fresh fruits or vegetables [13].

4.4. Strengths and Limitations

Several limitations of our study should be taken into account. Since the NutriNet-Santé Study is a voluntary cohort, the sampling is not random and more subjects were women, belonged to high education and occupation groups and had a healthier lifestyle than the general population, with higher intake of fibre and calcium [34,62]. In particular, the overrepresentation of women in our sample could be explained by the fact that women are more likely to participate in voluntary-based health and epidemiological studies, whatever the field concerned [63]. They may also have increased interest in nutrition, compared to men. Although men represented only 21.5% of our sample, the distribution of men in the different SEP categories seems sufficient to interpret differences in intake between these categories. In addition, the web-based design might not increase, but possibly even mitigate recruitment biases [64]. Indeed, a previous work regarding participants in our cohort showed that the exclusive use of the Internet for data collection and follow-up may help to increase the proportion of population groups which are often underrepresented in volunteer cohorts such as men and older subjects [65]. In addition, previous work showed a great geographic and socio-demographic diversity in participants at baseline in the NutriNet-Santé study, which showed resemblance in terms of age and income distribution with the French general population [62]. However, caution is therefore needed when interpreting and generalizing results. Differences in nutrient intake between SEP categories are probably larger in the general population. Web-based design may affect internal validity by inducing misreporting. Regarding estimations of dietary intakes, studies investigating the validity of our web-based, self-reported dietary record tool against biomarkers showed the tool used in the NutriNet-Santé study performs well in estimating protein and potassium intakes and fairly well in estimating sodium intake but also provides reasonable estimates of true intake of fruits, vegetables, fish, beta carotene, vitamin C, and n-3 fatty acids [20,21]. A strength of our study was its reliance on at least three non-consecutive-day dietary records, which are recommended methods in large epidemiological studies [66], enabling a reliable estimation of usual diet [67]. The issue of accuracy of web-based self-reported data also arises for repeated 24-h dietary records compared to interviews by trained dietitians but previous work showed high agreement between the two methods in the case of our study [22]. Moreover, some inherent biases to studies based on interviews may be less pronounced in a web-based environment. In particular, bias associated with social desirability is probably lower in web-based studies due to higher perceived anonymity [22]. Regarding socioeconomic data, a previous study showed that the quality of information provided by the web-based socio-demographic questionnaires used in the study was equal to, or better than, that of the paper [27]. The large size of our sample may also have been a constraint, since significant results were found even when the difference in intake according to socioeconomic categories was small. We therefore interpreted as significant only those results for which the difference in nutrient intake between individuals with high and low SEP was >5%. In addition, the large size and the diversity of socio-demographic profiles through web-based questionnaires provided high statistical power to investigate stratified associations between income and nutrient intake by education and occupation categories. However, despite of this statistical power, some interactions remain unexplained. A limitation in our analysis is that the estimation of nutrient intakes did not include nutrients from supplements although supplement use is influenced by SEP [68]. This might have led to an underestimation of the observed associations between SEP and nutrient intake. Another limitation was that relative differences in intake between managerial and some categories of occupation were not interpreted since these groups are very heterogeneous in terms of social status and networks. These categories were those composed of individuals outside the paid workforce and also self-employed occupation class. Personal income is also a sensitive question and participants may overstate it or be reluctant to provide such information. Therefore, socioeconomic differentials may be misestimated [17]. In addition, as information regarding ethnicity or household relationships between participants was not available in our study, our models were not adjusted on these individual characteristics, which may be potential confounding factors.

5. Conclusions

Low socioeconomic groups had lower intakes than high socioeconomic groups for several nutrients, such as vitamins, minerals or fibre while no difference was found regarding nutrients that have recommended maximum cut offs, except from cholesterol. The use of education, income and occupation simultaneously and the study of interactions between these indicators allowed specific relationships to be highlighted according to the different socioeconomic indicators and consequently provide useful information to a better understanding of the mechanisms leading to social inequalities in health. Our study emphasizes that differences in nutrient intakes are likely to be the combined result of complex effects of the three different socioeconomic indicators in relation to diet. Among these effects, we discussed the affordability of nutrient-dense foods, the ability to understand health messages and to perform healthy dietary habits or the membership of a social network. Among them, education level appears to be an important driver of nutrient intake in low SEP groups. However, deeper investigations of the relationships between general level of education, nutrition knowledge, health literacy and dietary choices are needed. As nutritional interventions in at risk populations is a key element of public health policies, their implementation could be improved by a better knowledge of the socioeconomic indicators at stake for differences in nutrient intakes between individuals. Further studies assessing the dynamic nature of socioeconomic indicators, using repeated measures during the life course would be useful to provide a better understanding of their cumulative effects on nutrient intake and consequently, of the long-term health impact.

Acknowledgments

The authors thank the scientists, dietitians, technicians and assistants who helped carry out the NutriNet-Santé Study, and all dedicated and conscientious volunteers. We thank Voluntis (a healthcare software company) and MXS (a software company specializing in dietary assessment tools) for developing the NutriNet-Santé web-based interface according to our guidelines Wendy Si Hassen was funded by a PhD grant from the Université Paris 13. The NutriNet-Santé study was supported by the following public institutions: Ministère de la Santé, Institut de Veille Sanitaire (InVS), Institut National de la Prévention et de l’Education pour la Santé (INPES), Fondation pour la Recherche Médicale (FRM), Institut National de la Santé et de la Recherche Médicale (INSERM), Institut National de la Recherche Agronomique (INRA), Conservatoire National des Arts et Métiers (CNAM) and Université Paris 13. The preparation of this paper was supported by the DEterminants of DIet and Physical ACtivity (DEDIPAC) knowledge hub. This work is supported by the Joint Programming Initiative “Healthy Diet for a Healthy Life”. The funding agencies supporting this work are (on alphabetical order of participating Member State): Austria: Austrian Federal Ministry of Science and Research; Belgium: Research Foundation – Flanders; Finland: Finnish Funding Agency for Technology and Innovation (Tekes); France: Institut National de la Recherche Agronomique (INRA); Germany: Federal Ministry of Education and Research; Italy: Ministry of Education, University and Research/ Ministry of Agriculture Food and Forestry Policies; Ireland: The Health Research Board (HRB); The Netherlands: The Netherlands Organisation for Health Research and Development (ZonMw); Norway: The Research Council of Norway, Division for Society and Health; Poland: The National Centre for Research and Development; Spain: Carlos III Institute of Health (ISCIII); The United Kingdom: The Medical Research Council (MRC). This research has benefited from the joint assistance of the French National Health Insurance Fund for Employees (CNAMTS), the French Directorate General of Health (DGS), the Arc Foundation for Cancer Research, the French National Cancer Institute (INCA), the French National Institute for Prevention and Education in Health (INPES), the French National Institute of Health and Medical Research (INSERM), the French Inter-Departmental Agency for the Fight against Drugs and Addictive Behaviors (Mildeca) and the French Social Security Scheme for Liberal Professionals (RSI) as part of the “Primary Prevention” call for proposals issued by IReSP and INCA in 2013. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.

Author Contributions

W.S.H. designed the study, performed the statistical analysis, interpreted data and wrote the manuscript. K.C. was involved in the conception and design of the study and interpretation of the data, and helped to draft the manuscript. P.C., C.E., M.N., N.L., L.T., M.H., K.S., S.H. were involved in the interpretation of the data, and helped to draft the manuscript. S.H. designed and coordinated the cohort study and supervised the study. C.M. was involved in the conception and design of the study, in the supervision of statistical analysis and interpretation of the data, and helped to draft the manuscript.

Conflicts of Interest

The authors declare no conflict of interest.

Abbreviations

The following abbreviations are used in this manuscript:
SEP
SocioEconomic Position
DEDIPAC
Determinants of Diet and Physical Activity
BMR
Basal Metabolic Rate

References

  1. Saurel-Cubizolles, M.J.; Chastang, J.F.; Menvielle, G.; Leclerc, A.; Luce, D. Social inequalities in mortality by cause among men and women in France. J. Epidemiol. Community Health 2009, 63, 197–202. [Google Scholar] [CrossRef] [PubMed]
  2. Kunst, A.E.; Groenhof, F.; Mackenbach, J.P.; Health, E.W. Occupational class and cause specific mortality in middle aged men in 11 European countries: Comparison of population based studies. EU Working Group on Socioeconomic Inequalities in Health. BMJ 1998, 316, 1636–1642. [Google Scholar] [CrossRef] [PubMed]
  3. Kunst, A.E.; del, R.M.; Groenhof, F.; Mackenbach, J.P. Socioeconomic inequalities in stroke mortality among middle-aged men: An international overview. European Union Working Group on Socioeconomic Inequalities in Health. Stroke 1998, 29, 2285–2291. [Google Scholar] [CrossRef] [PubMed]
  4. James, W.P.; Nelson, M.; Ralph, A.; Leather, S. Socioeconomic determinants of health. The contribution of nutrition to inequalities in health. BMJ 1997, 314, 1545–1549. [Google Scholar] [CrossRef] [PubMed]
  5. Mejean, C.; Droomers, M.; van der Schouw, Y.T.; Sluijs, I.; Czernichow, S.; Grobbee, D.E.; Bueno-de-Mesquita, H.B.; Beulens, J.W. The contribution of diet and lifestyle to socioeconomic inequalities in cardiovascular morbidity and mortality. Int. J. Cardiol. 2013, 168, 5190–5195. [Google Scholar] [CrossRef] [PubMed]
  6. Stringhini, S.; Sabia, S.; Shipley, M.; Brunner, E.; Nabi, H.; Kivimaki, M.; Singh-Manoux, A. Association of socioeconomic position with health behaviors and mortality. JAMA 2010, 303, 1159–1166. [Google Scholar] [CrossRef] [PubMed]
  7. Laaksonen, M.; Talala, K.; Martelin, T.; Rahkonen, O.; Roos, E.; Helakorpi, S.; Laatikainen, T.; Prattala, R. Health behaviours as explanations for educational level differences in cardiovascular and all-cause mortality: A follow-up of 60,000 men and women over 23 years. Eur. J. Public Health 2008, 18, 38–43. [Google Scholar] [CrossRef] [PubMed]
  8. Darmon, N.; Drewnowski, A. Does social class predict diet quality? Am. J. Clin. Nutr. 2008, 87, 1107–1117. [Google Scholar] [PubMed]
  9. Giskes, K.; Avendano, M.; Brug, J.; Kunst, A.E. A systematic review of studies on socioeconomic inequalities in dietary intakes associated with weight gain and overweight/obesity conducted among European adults. Obes. Rev. 2010, 11, 413–429. [Google Scholar] [CrossRef] [PubMed]
  10. Irala-Estevez, J.D.; Groth, M.; Johansson, L.; Oltersdorf, U.; Prattala, R.; Martinez-Gonzalez, M.A. A systematic review of socio-economic differences in food habits in Europe: Consumption of fruit and vegetables. Eur. J. Clin. Nutr. 2000, 54, 706–714. [Google Scholar] [CrossRef] [PubMed]
  11. Kant, A.K.; Graubard, B.I. Secular, trends in the association of socio-economic position with self-reported dietary attributes and biomarkers in the US population: National Health and Nutrition Examination Survey (NHANES) 1971–1975 to NHANES 1999–2002. Public Health Nutr. 2007, 10, 158–167. [Google Scholar] [CrossRef] [PubMed]
  12. Evans, A.; Booth, H.; Cashel, K. Sociodemographic determinants of energy, fat and dietary fibre intake in Australian adults. Public Health Nutr. 2000, 3, 67–75. [Google Scholar] [CrossRef] [PubMed]
  13. Galobardes, B.; Morabia, A.; Bernstein, M.S. Diet and socioeconomic position: Does the use of different indicators matter? Int. J. Epidemiol. 2001, 30, 334–340. [Google Scholar] [CrossRef] [PubMed]
  14. Lallukka, T.; Laaksonen, M.; Rahkonen, O.; Roos, E.; Lahelma, E. Multiple socio-economic circumstances and healthy food habits. Eur. J. Clin. Nutr. 2007, 61, 701–710. [Google Scholar] [CrossRef] [PubMed]
  15. Turrell, G.; Hewitt, B.; Patterson, C.; Oldenburg, B. Measuring socio-economic position in dietary research: Is choice of socio-economic indicator important? Public Health Nutr. 2003, 6, 191–200. [Google Scholar] [CrossRef] [PubMed]
  16. Braveman, P.A.; Cubbin, C.; Egerter, S.; Chideya, S.; Marchi, K.S.; Metzler, M.; Posner, S. Socioeconomic status in health research: One size does not fit all. JAMA 2005, 294, 2879–2888. [Google Scholar] [CrossRef] [PubMed]
  17. Galobardes, B.; Shaw, M.; Lawlor, D.A.; Lynch, J.W.; Davey, S.G. Indicators of socioeconomic position (part 1). J. Epidemiol. Community Health 2006, 60, 7–12. [Google Scholar] [CrossRef] [PubMed]
  18. Lakerveld, J.; van der Ploeg, H.P.; Kroeze, W.; Ahrens, W.; Allais, O.; Andersen, L.F.; Cardon, G.; Capranica, L.; Chastin, S.; Donnelly, A.; et al. Towards the integration and development of a cross-European research network and infrastructure: The Determinants of Diet and Physical Activity (DEDIPAC) Knowledge Hub. Int. J. Behav. Nutr. Phys. Act. 2014, 11, 143. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  19. Hercberg, S.; Castetbon, K.; Czernichow, S.; Malon, A.; Mejean, C.; Kesse, E.; Touvier, M.; Galan, P. The Nutrinet-Sante Study: A web-based prospective study on the relationship between nutrition and health and determinants of dietary patterns and nutritional status. BMC Public Health 2010, 10, 242. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  20. Lassale, C.; Castetbon, K.; Laporte, F.; Camilleri, G.M.; Deschamps, V.; Vernay, M.; Faure, P.; Hercberg, S.; Galan, P.; Kesse-Guyot, E. Validation of a Web-based, self-administered, non-consecutive-day dietary record tool against urinary biomarkers. Br. J. Nutr. 2015, 113, 953–962. [Google Scholar] [CrossRef] [PubMed]
  21. Lassale, C.; Castetbon, K.; Laporte, F.; Deschamps, V.; Vernay, M.; Camilleri, G.M.; Faure, P.; Hercberg, S.; Galan, P.; Kesse-Guyot, E. Correlations between Fruit, Vegetables, Fish, Vitamins, and Fatty Acids Estimated by Web-Based Nonconsecutive Dietary Records and Respective Biomarkers of Nutritional Status. J. Acad. Nutr. Diet 2015. [Google Scholar] [CrossRef] [PubMed]
  22. Touvier, M.; Kesse-Guyot, E.; Mejean, C.; Pollet, C.; Malon, A.; Castetbon, K.; Hercberg, S. Comparison between an interactive web-based self-administered 24 h dietary record and an interview by a dietitian for large-scale epidemiological studies. Br. J. Nutr. 2011, 105, 1055–1064. [Google Scholar] [CrossRef] [PubMed]
  23. Le Moullec, N.; Deheeger, M.; Preziosi, P.; Montero, P.; Valeix, P.; Rolland-Cachera, M.F.; Potier de Courcy, G.; Christides, J.P.; Galan, P.; Hercberg, S. Validation du manuel photos utilisé pour l’enquête alimentaire de l’étude SU.VI.MAX. Cah. Nutr. Diet 1996, 31, 158–164. [Google Scholar]
  24. Arnault, N.; Caillot, L.; Castetbon, K.; Coronel, S.; Deschamps, V.; Fezeu, L.; Figuette, M.; Galan, P.; Guénard-Charpentier, F.; Hercberg, S.; et al. Table de Composition des aliments NutriNet-Santé; Économica: Paris, France, 2013. [Google Scholar]
  25. Black, A.E. Critical evaluation of energy intake using the Goldberg cut-off for energy intake: Basal metabolic rate. A practical guide to its calculation, use and limitations. Int. J. Obes. Relat. Metab. Disord. 2000, 24, 1119–1130. [Google Scholar] [CrossRef] [PubMed]
  26. Schofield, W.N. Predicting basal metabolic rate, new standards and review of previous work. Hum. Nutr. Clin. Nutr. 1985, 39, 5–41. [Google Scholar] [PubMed]
  27. Vergnaud, A.C.; Touvier, M.; Mejean, C.; Kesse-Guyot, E.; Pollet, C.; Malon, A.; Castetbon, K.; Hercberg, S. Agreement between web-based and paper versions of a socio-demographic questionnaire in the NutriNet-Sante study. Int. J. Public Health 2011, 56, 407–417. [Google Scholar] [CrossRef] [PubMed]
  28. INSEE (French National Institute of Statistics). Definition of Qualification Level. Available online: http://www.insee.fr/en/methodes/default.asp?page=definitions/niveau-diplome.htm (accessed on 25 February 2016).
  29. INSEE. Definition of Occupational Categories. Available online: http://www.insee.fr/fr/methodes/default.asp?page=nomenclatures/pcs2003/liste_n1.htm (accessed on 25 February 2016).
  30. INSEE (French National Institute of Statistics). Definition of Consumption Unit. Available online: http://www.insee.fr/en/methodes/default.asp?page=definitions/unite-consommation.htm (accessed on 25 February 2016).
  31. Bates, C.J.; Prentice, A.; Cole, T.J.; van der Pols, J.C.; Doyle, W.; Finch, S.; Smithers, G.; Clarke, P.C. Micronutrients: Highlights and research challenges from the 1994–1995 National Diet and Nutrition Survey of people aged 65 years and over. Br. J. Nutr. 1999, 82, 7–15. [Google Scholar] [CrossRef] [PubMed]
  32. Hulshof, K.F.; Brussaard, J.H.; Kruizinga, A.G.; Telman, J.; Lowik, M.R. Socio-economic status, dietary intake and 10 years trends: The Dutch National Food Consumption Survey. Eur. J. Clin. Nutr. 2003, 57, 128–137. [Google Scholar] [CrossRef] [PubMed]
  33. Touvier, M.; Mejean, C.; Kesse-Guyot, E.; Vergnaud, A.C.; Hercberg, S.; Castetbon, K. Sociodemographic and economic characteristics associated with dairy intake vary across genders. J. Hum. Nutr. Diet 2011, 24, 74–85. [Google Scholar] [CrossRef] [PubMed]
  34. Castetbon, K.; Vernay, M.; Malon, A.; Salanave, B.; Deschamps, V.; Roudier, C.; Oleko, A.; Szego, E.; Hercberg, S. Dietary intake, physical activity and nutritional status in adults: The French nutrition and health survey (ENNS, 2006–2007). Br. J. Nutr. 2009, 102, 733–743. [Google Scholar] [CrossRef] [PubMed]
  35. Bolton-Smith, C.; Smith, W.C.; Woodward, M.; Tunstall-Pedoe, H. Nutrient intakes of different social-class groups: Results from the Scottish Heart Health Study (SHHS). Br. J. Nutr. 1991, 65, 321–335. [Google Scholar] [CrossRef] [PubMed]
  36. Dubois, L.; Girard, M. Social position and nutrition: A gradient relationship in Canada and the USA. Eur. J. Clin. Nutr. 2001, 55, 366–373. [Google Scholar] [CrossRef] [PubMed]
  37. Friel, S.; Kelleher, C.C.; Nolan, G.; Harrington, J. Social diversity of Irish adults nutritional intake. Eur. J. Clin. Nutr. 2003, 57, 865–875. [Google Scholar] [CrossRef] [PubMed]
  38. Van Rossum, C.T.; van de Mheen, H.; Witteman, J.C.; Grobbee, E.; Mackenbach, J.P. Education and nutrient intake in Dutch elderly people. The Rotterdam Study. Eur. J. Clin. Nutr. 2000, 54, 159–165. [Google Scholar] [CrossRef] [PubMed]
  39. AFSSA—French Agency for Food, E.a.O.H.&.S. Apport en protéines: Consommation, qualité, besoins et recommandations. AFSSA—French Agency for Food, E.a.O.H.&.S.: Maisons-Alfort, France, 2007. [Google Scholar]
  40. Wiig, K.; Smith, C. The art of grocery shopping on a food stamp budget: Factors influencing the food choices of low-income women as they try to make ends meet. Public Health Nutr. 2009, 12, 1726–1734. [Google Scholar] [CrossRef] [PubMed]
  41. Kesse-Guyot, E.; Bertrais, S.; Peneau, S.; Estaquio, C.; Dauchet, L.; Vergnaud, A.C.; Czernichow, S.; Galan, P.; Hercberg, S.; Bellisle, F. Dietary patterns and their sociodemographic and behavioural correlates in French middle-aged adults from the SU.VI.MAX cohort. Eur. J. Clin. Nutr. 2009, 63, 521–528. [Google Scholar] [CrossRef] [PubMed]
  42. Samieri, C.; Jutand, M.A.; Feart, C.; Capuron, L.; Letenneur, L.; Barberger-Gateau, P. Dietary patterns derived by hybrid clustering method in older people: Association with cognition, mood, and self-rated health. J. Am. Diet. Assoc. 2008, 108, 1461–1471. [Google Scholar] [CrossRef] [PubMed]
  43. Novakovic, R.; Cavelaars, A.; Geelen, A.; Nikolic, M.; Altaba, I.I.; Vinas, B.R.; Ngo, J.; Golsorkhi, M.; Medina, M.W.; Brzozowska, A.; et al. Socio-economic determinants of micronutrient intake and status in Europe: A systematic review. Public Health Nutr. 2014, 17, 1031–1045. [Google Scholar] [CrossRef] [PubMed]
  44. Beydoun, M.A.; Wang, Y. Do nutrition knowledge and beliefs modify the association of socio-economic factors and diet quality among US adults? Prev. Med. 2008, 46, 145–153. [Google Scholar] [CrossRef] [PubMed]
  45. McKinnon, L.; Giskes, K.; Turrell, G. The contribution of three components of nutrition knowledge to socio-economic differences in food purchasing choices. Public Health Nutr. 2014, 17, 1814–1824. [Google Scholar] [CrossRef] [PubMed]
  46. Parmenter, K.; Waller, J.; Wardle, J. Demographic variation in nutrition knowledge in England. Health Educ. Res. 2000, 15, 163–174. [Google Scholar] [CrossRef] [PubMed]
  47. Wardle, J.; Parmenter, K.; Waller, J. Nutrition knowledge and food intake. Appetite 2000, 34, 269–275. [Google Scholar] [CrossRef] [PubMed]
  48. McLeod, E.R.; Campbell, K.J.; Hesketh, K.D. Nutrition knowledge: A mediator between socioeconomic position and diet quality in Australian first-time mothers. J. Am. Diet. Assoc. 2011, 111, 696–704. [Google Scholar] [CrossRef] [PubMed]
  49. Biltoft-Jensen, A.; Groth, M.V.; Matthiessen, J.; Wachmann, H.; Christensen, T.; Fagt, S. Diet quality: Associations with health messages included in the Danish Dietary Guidelines 2005, personal attitudes and social factors. Public Health Nutr. 2009, 12, 1165–1173. [Google Scholar] [CrossRef] [PubMed]
  50. Bihan, H.; Castetbon, K.; Mejean, C.; Peneau, S.; Pelabon, L.; Jellouli, F.; Le, C.H.; Hercberg, S. Sociodemographic factors and attitudes toward food affordability and health are associated with fruit and vegetable consumption in a low-income French population. J. Nutr. 2010, 140, 823–830. [Google Scholar] [CrossRef] [PubMed]
  51. Estaquio, C.; Druesne-Pecollo, N.; Latino-Martel, P.; Dauchet, L.; Hercberg, S.; Bertrais, S. Socioeconomic differences in fruit and vegetable consumption among middle-aged French adults: Adherence to the 5 A Day recommendation. J. Am. Diet. Assoc. 2008, 108, 2021–2030. [Google Scholar] [CrossRef] [PubMed]
  52. Inserm. Symposium of the Collective Scientific Expertise Inserm: Social Inequalties in Health and Nutrition; Centre d’expertise collective ITMO Santé Publique—Aviesan: Paris, France, 2013; pp. 1–43. [Google Scholar]
  53. ANSES—French Agency for Food, Environmental and Occupational Health & Safety Vitamin B9 or Folic Acid: Presentation, Food Sources and Nutritional Needs. Available online: https://www.anses.fr/en/content/vitamin-b9-or-folic-acid (accessed on 12 October 2015).
  54. ANSES—French Agency for Food, Environmental and Occupational Health & Safety Vitamin A & Provitamin Carotenoids. Available online: https://www.anses.fr/en/content/vitamin-provitamin-carotenoids (accessed on 12 October 2015).
  55. ANSES—French Agency for Food, Environmental and Occupational Health & Safety Vitamin C or Ascorbic Acid. Available online: https://www.anses.fr/en/content/vitamin-c-or-ascorbic-acid (accessed on 12 October 2015).
  56. ANSES—French Agency for Food, Environmental and Occupational Health & Safety Carbohydrates: Definition, Effects on Health and Recommendations. Available online: https://www.anses.fr/en/content/carbohydrates (accessed on 9 October 2015).
  57. Darmon, N.; Drewnowski, A. Contribution of food prices and diet cost to socioeconomic disparities in diet quality and health: A systematic review and analysis. Nutr. Rev. 2015, 73, 643–660. [Google Scholar] [CrossRef] [PubMed]
  58. ANSES—French Agency for Food, Environmental and Occupational Health & Safety Vitamin D: Presentation, Food Sources and Nutritional Needs. Available online: https://www.anses.fr/en/content/vitamin-d (accessed on 9 October 2015).
  59. Lehmann, U.; Gjessing, H.R.; Hirche, F.; Mueller-Belecke, A.; Gudbrandsen, O.A.; Ueland, P.M.; Mellgren, G.; Lauritzen, L.; Lindqvist, H.; Hansen, A.L.; et al. Efficacy of fish intake on vitamin D status: A meta-analysis of randomized controlled trials. Am. J. Clin. Nutr. 2015, 102, 837–847. [Google Scholar] [CrossRef] [PubMed]
  60. Touvier, M.; Deschasaux, M.; Montourcy, M.; Sutton, A.; Charnaux, N.; Kesse-Guyot, E.; Assmann, K.E.; Fezeu, L.; Latino-Martel, P.; Druesne-Pecollo, N.; et al. Determinants of vitamin D status in Caucasian adults: influence of sun exposure, dietary intake, sociodemographic, lifestyle, anthropometric, and genetic factors. J. Investig. Dermatol. 2015, 135, 378–388. [Google Scholar] [CrossRef] [PubMed]
  61. Smith, A.M.; Baghurst, K.I. Public health implications of dietary differences between social status and occupational category groups. J. Epidemiol. Community Health 1992, 46, 409–416. [Google Scholar] [CrossRef] [PubMed]
  62. Andreeva, V.A.; Salanave, B.; Castetbon, K.; Deschamps, V.; Vernay, M.; Kesse-Guyot, E.; Hercberg, S. Comparison of the sociodemographic characteristics of the large NutriNet-Sante e-cohort with French Census data: the issue of volunteer bias revisited. J. Epidemiol. Community Health 2015, 69, 893–898. [Google Scholar] [CrossRef] [PubMed]
  63. Galea, S.; Tracy, M. Participation rates in epidemiologic studies. Annu. Epidemiol. 2007, 17, 643–653. [Google Scholar] [CrossRef] [PubMed]
  64. Ekman, A.; Litton, J.E. New times, new needs; e-epidemiology. Eur. J. Epidemiol. 2007, 22, 285–292. [Google Scholar] [CrossRef] [PubMed]
  65. Mejean, C.; Szabo de, E.F.; Touvier, M.; Kesse-Guyot, E.; Julia, C.; Andreeva, V.A.; Hercberg, S. Motives for participating in a web-based nutrition cohort according to sociodemographic, lifestyle, and health characteristics: The NutriNet-Sante cohort study. J. Med. Int. Res. 2014, 16, e189. [Google Scholar] [CrossRef] [PubMed]
  66. Willett, W.C. Nutritional Epidemiology; Oxford University Press: New York, NY, USA, 1998. [Google Scholar]
  67. Brussaard, J.H.; Lowik, M.R.; Steingrimsdottir, L.; Moller, A.; Kearney, J.; de Henauw, S.; Becker, W. A European food consumption survey method—Conclusions and recommendations. Eur. J. Clin. Nutr. 2002, 56, S89–S94. [Google Scholar] [CrossRef] [PubMed]
  68. Sullivan, K.M.; Ford, E.S.; Azrak, M.F.; Mokdad, A.H. Multivitamin use in pregnant and nonpregnant women: Results from the Behavioral Risk Factor Surveillance System. Public Health Rep. 2009, 124, 384–390. [Google Scholar] [PubMed]
Table 1. Socioeconomic and socioeconomic characteristics of the sample (N = 91,900).
Table 1. Socioeconomic and socioeconomic characteristics of the sample (N = 91,900).
VariablesWomenMenp *
N = 72,154N = 19,746
Age class <0.0001
18–3025.614.8
30–5042.036.4
50–6527.735.0
>654.713.8
Educational level <0.0001
Primary2.63.5
Secondary33.633.9
Undergraduate32.524.4
Postgraduate31.338.2
Occupational category <0.0001
Never employed6.13.2
Manual worker2.05.2
Employee34.013.8
Intermediate profession27.023.4
Self-employed2.84.8
Managerial staff28.149.6
Household income per consumption unit <0.0001
<1200 euros18.412.5
1200–1800 euros25.123.0
1800–2700 euros22.625.7
>2700 euros21.031.9
Not answered12.96.9
* p-value for chi square analysis.
Table 2. Differences in nutrient intake between the highest and the lowest socioeconomic position (SEP) categories of occupation, household income and education in women (N = 72,154) 1.
Table 2. Differences in nutrient intake between the highest and the lowest socioeconomic position (SEP) categories of occupation, household income and education in women (N = 72,154) 1.
NutrientsMean (SD) in Total SampleOccupational CategoryHousehold Income per Unit and per MonthEducation Level
Difference between Managerial Staff and Manual Workers 2Relative Difference 3p-ValueDifference between >2700 € and <1200 € 2Relative Difference 3p-ValueDifference between Postgraduate and Primary Level 2Relative Difference 3p-Value
Total energy (kcal/day)1800.0 (435)−40.0−2.3%0.000519.11.1%0.0004105.25.8%<0.0001
Proteins (g/day)75.9 (20)0.50.7%<0.00011.72.2%0.003−4.4−5.9%<0.0001
Total carbohydrates (g/day)187.8 (54.1)−3.5−1.9%<0.0001−3.8−2.1%0.0016.03.1%<0.0001
Complex carbohydrates (g/day)96.8 (33.9)−3.5−3.8%<0.0001−5.2−5.6%<0.00012.42.5%<0.0001
Sugars (g/day)90.4 (32.8)−0.07−0.1%<0.00011.41.5%0.0033.64.0%<0.0001
Fibre (g/day)18.8 (6.9)0.84.2%<0.00010.52.8%0.00071.67.7%<0.0001
Lipids (g/day)77.6 (25.4)0.030.0%<0.0001−0.5−0.6%0.3−0.8−1.1%0.005
Polyunsaturated fatty acids (g/day)11.0 (5.1)−0.07–0.6%0.40.0−0.3%0.4−0.3−2.6%0.0003
Monounsaturated fatty acids (g/day)29.0 (10.5)0.62.0%<0.00010.10.2%0.6−0.3−0.9%0.5
Saturated fatty acids (g/day)31.8 (12.2)−0.5−1.7%<0.0001−0.6−2.0%0.05−0.2−0.7%0.3
Cholesterol (mg/day)306.1 (136.1)−0.9−0.3%<0.00012.50.8%0.4−22.4−7.6%<0.0001
Calcium (mg/day)907.4 (301.4)29.53.2%<0.000118.12.0%0.00044.70.5%<0.0001
Iron (mg/day)12.9 (4.6)0.43.0%<0.00010.21.4%0.30.43.2%<0.0001
Magnesium (mg/day)321.7 (105.3)21.56.5%<0.000120.26.0%<0.00019.02.7%<0.0001
Potassium (mg/day)2882.6 (785.4)72.42.4%<0.0001122.54.1%<0.000120.00.7%<0.0001
Sodium (g/day)2484.8 (807.5)48.82.0%0.000930.21.2%0.6−70.3−2.9%0.002
Vitamin A (µg/day)1040.5 (824.3)24.42.2%<0.000144.54.0%0.218.81.7%0.2
Beta carotene (µg/day)3409.2 (2653)253.97.1%<0.001256.47.1%0.02340.39.2%<0.0001
Folate (µg/day)321.7 (115.7)13.54.1%<0.000117.95.3%<0.000112.83.8%<0.0001
Vitamin C (mg/day)117.2 (84.9)4.03.4%<0.000114.811.8%<0.000111.29.0%<0.0001
Vitamin D (µg/day)2.6 (2.2)0.311.5%<0.00010.39.9%0.004−0.1−3.4%0.03
Vitamin E (mg/day)11.3 (4.8)0.22.1%0.60.10.5%0.3−0.21.8%0.3
Alcohol (g/day) 410.5 (10.9)1.815.6%<0.00010.43.3%0.01−0.4−3.6%0.0004
1 All models for food nutrients intake were adjusted for age, total energy intake and the three SEP indicators; 2 Subtraction of the mean intake between individuals belonging to the highest SEP category and those of the lowest category; 3 Relative difference in mean intake between individuals belonging to the highest SEP category and those of the lowest category was computed as ((mean intake of the highest SEP category − mean intake of the lowest SEP category)/(mean intake of the highest SEP category)) × 100). A positive relative difference indicates a higher intake in high SEP participants. A negative relative difference indicates a lower intake in high SEP participants; 4 Mean in consumers only.
Table 3. Differences in nutrient intake between the highest and the lowest SEP categories of occupation, household income and education in men (N = 19,746) 1.
Table 3. Differences in nutrient intake between the highest and the lowest SEP categories of occupation, household income and education in men (N = 19,746) 1.
NutrientsMean (SD) in Total SampleOccupational CategoryHousehold Income per Unit and per MonthEducation Level
Difference between Managerial Staff and Manual Worker 2Relative Difference 3p-ValueDifference between >2700 € and <1200 € 2Relative Difference 3p-ValueDifference between Postgraduate and Primary Level 2Relative Difference 3p-Value
Total energy (kcal/day)2274.8 (542)−79.7−3.6%0.000724.41.1%0.0819.70.9%0.4
Proteins (g/day)94.6 (25.3)−1.9−2.0%0.32.62.7%0.10−4.8−5.1%<0.0001
Total carbohydrates (g/day)234.3 (68.1)−7.5−3.2%<0.0001−4.3−1.8%0.19.23.8%<0.0001
Complex carbohydrates (g/day)129.2 (44.7)−4.3−3.4%0.002−7.9−6.3%0.00032.11.6%0.4
Sugars (g/day)104.4 (40.2)−3.2−3.1%<0.00013.53.3%0.057.06.6%<0.0001
Fibre (g/day)22.2 (8.5)−0.4−1.9%0.090.20.7%0.11.66.9%<0.0001
Lipids (g/day)94.2 (30.2)1.81.9%0.07−0.9−0.9%0.9−0.9−0.9%0.5
Polyunsaturated fatty acids (g/day)13.6 (6.5)0.0−0.2%0.5−0.6−4.2%0.20.0−0.1%0.2
Monounsaturated fatty acids (g/day)35.2 (12.4)0.61.6%0.02−0.1−0.3%0.9−0.4−1.1%0.2
Saturated fatty acids (g/day)38.4 (14.5)1.12.8%0.1−0.2−0.5%0.7−0.2−0.6%0.6
Cholesterol (mg/day)375.4 (167.3)7.31.9%0.010.60.2%0.8−33.5−9.2%<0.0001
Calcium (mg/day)1036.4 (360)3.60.4%0.00228.42.7%0.110.41.0%0.002
Iron (mg/day)15.9 (5.9)−0.4−2.4%0.00030.31.7%0.70.32.0%<0.0001
Magnesium (mg/day)388.0 (128.4)1.30.3%0.0326.06.6%<0.00018.52.2%<0.0001
Potassium (mg/day)3406.4 (914)−39.7−1.2%0.88.65.3%<0.000121.90.6%<0.0001
Sodium (g/day)3191.7 (1050)17.30.5%0.3−47.3−1.5%0.7−130.1−4.2%0.0004
Vitamin A (µg/day)1198.8 (989)32.22.6%0.28.60.7%0.8−23.7−1.9%0.3
Beta carotene (µg/day)3600.2 (2932)90.72.6%0.4217.05.9%0.1228.66.0%<0.0001
Folate (µg/day)365.2 (132.6)−7.2−2.0%0.419.45.2%0.00211.43.0%<0.0001
Vitamin C (mg/day)126.6 (83.7)3.32.6%0.0717.913.6%0.00038.96.8%0.0007
Vitamin D (µg/day)3.2 (2.7)0.16.7%0.030.39.0%0.10.13.1%0.2
Vitamin E (mg/day)13.0 (5.7)−0.2−1.9%0.20.0−0.3%0.090.32.0%0.07
Alcohol (g/day) 4 20.2 (18.7)1.88.6%<0.00012.09.4%0.002−1.5−8.2%0.04
1 All models for nutrients intake were adjusted for age, total energy intake and the three SEP indicators; 2 Subtraction of the mean intake between individuals belonging to the highest SEP category and those of the lowest category; 3 Relative difference in mean intake between individuals belonging to the highest SEP category and those of the lowest category was computed as ((mean intake of the highest SEP category − mean intake of the lowest SEP category)/(mean intake of the highest SEP category)) × 100). A positive relative difference indicates a higher intake in high SEP participants. A negative relative difference indicates a lower intake in high SEP participants; 4 Mean in consumers only.
Table 4. Associations between dietary intake of magnesium, folate and beta-carotene and income stratified by educational level in women (N = 72,154) 1,4.
Table 4. Associations between dietary intake of magnesium, folate and beta-carotene and income stratified by educational level in women (N = 72,154) 1,4.
NutrientsIncomes (€) per Person per MonthPrimarySecondaryUndergraduatePostgraduate
MeanSE 5Difference with >2.700 € 2Relative Difference (%) 3pMeanSE 5Difference with >2.700 € 2Relative Difference (%) 3pMeanSE 5Difference with >2.700 € 2Relative Difference (%) 3pMeanSE 5Difference with >2.700 € 2Relative Difference (%) 3p
Magnesium<1200 292.24.932.19.9%0.001303.81.419.96.2%<0.0001321.32.013.94.1%<0.0001336.42.79.42.7%<0.0001
1200–1800 308.95.015.44.7% 310.31.413.44.1% 323.01.912.13.6% 334.12.611.73.4%
1800–2700 303.46.320.86.4% 321.01.62.70.8% 329.51.95.61.7% 340.02.55.81.7%
>2700324.38.40.00.0% 323.71.90.00.0% 335.12.00.00.0% 345.82.40.00.0%
Folate<1200 292.95.713.94.5%0.09307.61.621.56.5%<0.0001321.92.315.04.5%<0.0001336.63.111.23.2%<0.0001
1200–1800 309.45.9−2.6-0.8% 318.71.610.33.1% 325.12.111.93.5% 333.53.014.34.1%
1800–2700 302.97.43.91.3% 324.81.84.31.3% 332.52.24.41.3% 339.32.98.52.5%
>2700306.89.90.00.0% 329.12.20.00.0% 336.92.30.00.0% 347.82.80.00.0%
Beta-carotene<12003041.1135.5105.53.4%0.063209.339.3219.46.4%<0.00013419.456.9164.84.6%0.083725.281.2−24.0−0.7%0.03
1200–1800 3372.4139.0−225.7−7.2% 3289.139.0139.74.1% 3391.053.5193.25.4% 3560.276.1141.13.8%
1800–2700 3097.9175.648.71.6% 3446.044.4−17.3−0.5% 3432.454.9151.94.2% 3722.375.1−21.1−0.6%
>27003146.7233.80.00.0% 3428.854.10.00.0% 3584.258.60.00.0% 3701.272.70.00.0%
1 All models for nutrients intake were adjusted for age, total energy intake and occupation; 2 Subtraction of the mean intake between individuals belonging to the highest income category and those of the lowest income category; 3 Relative difference in mean intake between individuals belonging to the highest SEP category and those of the lowest category was computed as ((mean intake of the highest SEP category − mean intake of the lowest SEP category)/(mean intake of the highest SEP category)) × 100). A positive relative difference indicates a higher intake in high SEP participants. A negative relative difference indicates a lower intake in high SEP participants; 4 The category of income corresponding to individuals who refused to answer was not presented in table as it was not interpreted, although it was included in the models; 5 Standard error.
Table 5. Associations between dietary intake of magnesium, potassium, folate, beta-carotene, proteins, fibre and income stratified by educational level in men (N = 19,746) 1,4.
Table 5. Associations between dietary intake of magnesium, potassium, folate, beta-carotene, proteins, fibre and income stratified by educational level in men (N = 19,746) 1,4.
NutrientsIncomes (€) per Person per MonthPrimarySecondaryUndergraduatePostgraduate
MeanSE 5Difference with >2700 € 2Relative Difference (%) 3pMeanSE 5Difference with >2700 € 2Relative Difference (%) 3pMeanSE 5Difference with >2700 € 2Relative Difference (%) 3pMeanSE 5Difference with >2700 € 2Relative Difference (%) 3p
Magnesium<1200350.713.151.612.8%0.0003357.73.329.87.7%<0.0001382.64.610.82.8%0.0038388.05.816.74.1%<0.0001
1200–1800366.711.535.68.9% 368.12.819.45.0% 379.53.914.03.6% 391.15.113.63.4%
1800–2700363.312.738.99.7% 383.83.03.70.9% 389.44.14.11.0% 390.74.814.03.5%
>2700402.314.40.00.0% 387.53.60.00.0% 393.54.30.00.0% 404.74.60.00.0%
Potassium<12003147.487.3217.26.5%0.0093239.822.0175.55.1%<0.00013370.931.161.91.8%0.0013358.219.7113.03.3%0.0005
1200–18003173.976.4190.75.7% 3330.518.384.92.5% 3346.426.486.42.5% 3396.018.475.22.2%
1800–27003198.684.6166.04.9% 3381.820.133.51.0% 3442.027.5−9.2−0.3% 3421.918.249.21.4%
>27003364.696.10.00.0% 3415.324.10.00.0% 3432.828.90.00.0% 3471.217.60.00.0%
Folate<1200339.614.311.93.4%0.04341.13.229.47.9%<0.0001362.74.912.73.4%0.009369.06.49.02.4%0.006
1200–1800333.512.518.05.1% 355.32.915.34.1% 363.54.212.03.2% 365.45.612.63.3%
1800–2700 €352.913.8−1.3−0.4% 358.73.211.83.2% 372.74.32.70.7% 366.85.311.23.0%
>2700351.515.70.00.0% 370.53.90.00.0% 375.44.60.00.0% 378.15.10.00.0%
Beta-carotene<12003207.5335.1261.57.5%0.23176.084.9462.412.7%0.0023676.4128.9−2.9−0.1%0.043621.7156.1128.73.4%0.07
1200–18003059.7293.2409.311.8% 3407.970.7230.56.3% 3495.7109.6177.94.8% 3584.6136.6165.84.4%
1800–27003371.1324.497.92.8% 3563.377.675.12.1% 3705.5114.0−32.0−0.9% 3648.8128.9101.62.7%
>27003469.0368.60.00.0% 3638.499.80.00.0% 3673.6119.90.00.0% 3750.4123.10.00.0%
Proteins<120095.52.32.12.1%0.00894.30.60.20.3%0.494.50.8−0.1−0.1%0.991.81.01.51.6%0.05
1200–180090.02.07.67.8% 95.50.5−1.0−1.0% 94.40.70.00.0% 92.20.81.11.2%
1800–270092.32.25.35.4% 94.90.5−0.4−0.4% 95.10.7−0.6−0.7% 92.30.80.91.0%
>270097.62.50.00.0% 94.60.60.00.0% 94.40.70.00.0% 93.30.80.00.0%
Fibre<120021.30.8−0.6−2.7%0.0320.90.21.46.3%0.000122.80.3−0.3−1.5%0.223.80.4−0.6−2.5%0.5
1200–180020.70.70.10.3% 21.50.20.83.7% 22.10.30.41.6% 23.20.40.10.3%
1800–270021.00.8−0.3−1.2% 22.10.20.20.8% 22.60.3−0.1−0.4% 23.20.30.00.0%
>270020.70.90.00.0% 22.30.30.00.0% 22.50.30.00.0% 23.20.30.00.0%
1 All models for nutrients intake were adjusted for age, total energy intake and occupation; 2 Subtraction of the mean intake between individuals belonging to the highest income category and those of the lowest income category;3 Relative difference in mean intake between individuals belonging to the highest SEP category and those of the lowest category was computed as ((mean intake of the highest SEP category − mean intake of the lowest SEP category)/(mean intake of the highest SEP category)) × 100). A positive relative difference indicates a higher intake in high SEP participants. A negative relative difference indicates a lower intake in high SEP participants; 4 The category of income corresponding to individuals who refused to answer was not presented in table as it was not interpreted, although it was included in the models; 5 Standard error.
Table 6. Associations between dietary intake of complex carbohydrates, magnesium, potassium and alcohol and income stratified by occupational level in women (N = 72,154) or men (N = 19,746) 1,4.
Table 6. Associations between dietary intake of complex carbohydrates, magnesium, potassium and alcohol and income stratified by occupational level in women (N = 72,154) or men (N = 19,746) 1,4.
NutrientsIncomes per Person per Month (€)Manual WorkersEmployeesIntermediate ProfessionManagerial Staff
MeanSE 5Difference with >2700 € 2Relative Difference (%) 3pMeanSE 5Difference with >2700 € 2Relative Difference (%) 3pMeanSE 5Difference with >2700 € 2Relative Difference (%) 3pMeanSE 5Difference with >2700 € 2Relative Difference (%) 3p
Women
Complex carbohydrates<120099.11.7−8.0−8.79%0.597.40.4−4.0−4.2%<0.000199.00.7−5.3−5.6%<0.000195.51.0−3.0−3.2%<0.0001
1200–180099.11.7−8.0−8.8% 96.10.4−2.6−2.8% 97.10.6−3.4−3.6% 95.90.8−3.4−3.7%
1800–270097.92.6−6.8−7.5% 94.40.5−1.0−1.0% 94.40.5−0.8−0.8% 93.20.7−0.7−0.8%
>270091.14.80.00.0% 93.50.60.00.0% 93.70.60.00.0% 92.50.70.00.0%
Magnesium<1200304.55.72.00.7%0.2310.21.521.56.5%<0.0001327.22.511.13.3%<0.0001326.53.612.83.8%<0.0001
1200–1800316.55.9−10.0−3.3% 314.51.317.25.2% 327.82.010.53.1% 327.22.812.13.6%
1800–2700318.59.0−11.9−3.9% 322.11.69.62.9% 333.12.05.21.5% 335.82.63.61.1%
>2700306.516.40.00.0% 331.72.20.00.0% 338.32.20.00.0% 339.32.50.00.0%
Men
Magnesium<1200372.78.437.89.2%0.02370.04.933.78.4%0.003369.75.115.34.0%0.004367.53.628.47.2%<0.0001
1200–1800384.08.126.56.5% 373.74.230.07.4% 370.73.614.43.7% 381.02.814.93.8%
1800–2700391.011.019.54.8% 379.24.824.56.1% 381.03.54.01.0% 387.62.68.42.1%
>2700410.519.20.00.0% 403.77.90.00.0% 385.04.60.00.0% 395.92.50.00.0%
Potassium<12003284.457.8423.011.4%0.00023311.534.4217.86.2%0.0033344.034.363.21.9%0.023286.738.9166.74.8%<0.0001
1200–18003379.155.8328.38.9% 3341.129.2188.25.3% 3333.124.174.12.2% 3387.823.265.61.9%
1800-27003331.475.8376.010.1% 3407.633.8121.73.5% 3410.323.6−3.2-0.1% 3427.019.726.40.8%
>27003707.4131.70.00.0% 3529.355.00.00.0% 3407.230.40.00.0% 3453.418.60.00.0%
Alcohol<120020.01.82.611.5%0.417.61.10.84.1%0.720.61.0−1.3−6.7%0.521.11.21.46.0%0.008
1200–180020.71.72.08.7% 19.20.9−0.8−4.3% 19.80.7−0.5−2.6% 20.20.72.310.1%
1800–270019.82.32.812.4% 17.91.00.42.3% 19.60.6−0.3−1.4% 21.60.60.83.7%
>270022.64.20.00.0% 18.41.50.00.0% 19.30.80.00.0% 22.50.50.00.0%
1 All models for nutrients intake were adjusted for age, total energy intake and education; 2 Subtraction of the mean intake (g/day) between individuals belonging to the highest income category and those of the lowest income category; 3 Relative difference in mean intake between individuals belonging to the highest income category and those of the lowest income category was computed as ((mean intake of the highest income category − mean intake of the lowest income category)/(mean intake of the highest income category)) × 100). A positive relative difference indicates a higher intake in high SEP participants. A negative relative difference indicates a lower intake in high SEP participants; 4 The category of income corresponding to individuals who refused to answer was not presented in table as it was not interpreted, although it was included in the models. 5 Never employed and self-employed categories were not presented in the table as they were not interpreted, although they were included in the models; 5 Standard error.

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Si Hassen, W.; Castetbon, K.; Cardon, P.; Enaux, C.; Nicolaou, M.; Lien, N.; Terragni, L.; Holdsworth, M.; Stronks, K.; Hercberg, S.; et al. Socioeconomic Indicators Are Independently Associated with Nutrient Intake in French Adults: A DEDIPAC Study. Nutrients 2016, 8, 158. https://doi.org/10.3390/nu8030158

AMA Style

Si Hassen W, Castetbon K, Cardon P, Enaux C, Nicolaou M, Lien N, Terragni L, Holdsworth M, Stronks K, Hercberg S, et al. Socioeconomic Indicators Are Independently Associated with Nutrient Intake in French Adults: A DEDIPAC Study. Nutrients. 2016; 8(3):158. https://doi.org/10.3390/nu8030158

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Si Hassen, Wendy, Katia Castetbon, Philippe Cardon, Christophe Enaux, Mary Nicolaou, Nanna Lien, Laura Terragni, Michelle Holdsworth, Karien Stronks, Serge Hercberg, and et al. 2016. "Socioeconomic Indicators Are Independently Associated with Nutrient Intake in French Adults: A DEDIPAC Study" Nutrients 8, no. 3: 158. https://doi.org/10.3390/nu8030158

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