Literature DB >> 29751622

Dietary Differences in Male Workers among Smaller Occupational Groups within Large Occupational Categories: Findings from the Japan Environment and Children's Study (JECS).

Rie Tanaka1, Mayumi Tsuji2, Ayako Senju3,4, Koichi Kusuhara5,6, Toshihiro Kawamoto7.   

Abstract

Studies examining workers' diet according to smaller occupational groups within "large occupational categories" are sparse. The aim of this study was to examine the potential differences in workers' diets based on the classification of workers into smaller occupational groups that comprise "large occupational categories". The subjects of this study were working fathers who had participated in the Japan Environment and Children's Study (N = 38,656). Energy and nutrient intake were calculated based on data collected from the Food Frequency Questionnaire. Occupations were classified according to the Japanese Standard Occupational Classification. Logistic regression analyses were performed to examine the adherence to current dietary recommendations within smaller occupational groups. In particular, significant differences were observed among the categorical groups of "professional and engineering workers", "service workers", and "agricultural, forestry, and fishery workers". In "professional and engineering workers", teachers showed higher odds of adherence to calcium intake recommendations compared with nurses (OR, 2.54; 95% CI, 2.02⁻3.14; p < 0.001). In "agricultural, forestry, and fishery workers", agriculture workers showed higher odds of adherence to calcium (OR, 2.15; 95% CI, 1.46⁻3.15; p < 0.001) and vitamin C (OR 1.90, 95% CI 1.31⁻2.74, p = 0.001) intake recommendations compared with forestry and fishery workers. These findings may be beneficial from a research perspective as well as in the development of more effective techniques to improve workers' diet and health.

Entities:  

Keywords:  dietary intake; nutrient intake; occupational classification

Mesh:

Year:  2018        PMID: 29751622      PMCID: PMC5982000          DOI: 10.3390/ijerph15050961

Source DB:  PubMed          Journal:  Int J Environ Res Public Health        ISSN: 1660-4601            Impact factor:   3.390


1. Introduction

Dietary considerations to prevent various health problems, such as cardiovascular diseases [1,2,3,4,5], diabetes, and obesity [5], have been widely discussed. To prevent or improve such lifestyle-related problems, occupational health staff have been involved in giving advice about food and nutrition intake to workers. There are various interventions that have been implemented in the workplace, including individual nutrition education and behavior change approaches related to food choice [6]. The promotion of a healthy diet in workplaces could be particularly important for men, as they are reported to have less nutritional knowledge than women [7]. In Japan, the labor force participation rate for 15–64 year-olds was 76.9% in 2016 [8]. Moreover, men are more likely to work longer hours than women [9]. Therefore, the workplace is a suitable and appropriate environment to promote the benefits of a healthy diet, especially among men. Dietary behavior and intake have been found to vary across different occupations [10,11,12,13,14,15]. Most studies have classified the occupational status of participants using “broad occupational categories” such as “professionals” [16], “managerial staff” [10], “service worker” [12], and “manual worker” [10,13]. For example, a previous study in Japan reported that male workers engaged in “service work”, “transport”, and “labor” were more likely to have poor dietary habits, including no regular meals, no balanced meals, no bland (less salty) meals, and overeating compared with those in “professional work” [14]. Another study in France reported that male “manual workers” consume more cream desserts than “managerial staff” [15]. Similarly, a study in Norway suggested that “professionals, administrators, and officials” were less likely to consume what was termed as a “Western” food pattern, such as French fried potatoes, hot dogs, hamburgers, and so on, and were more likely to consume a “prudent” pattern, such as fruit, vegetables, dishes with fish, and so on, than “manual workers” [13]. However, in such broad occupational categories, there may still be some differences in dietary intake among workers when categorized into smaller and more specific occupational groups. One good example is the category of “professionals”, which includes various kinds of occupations, such as nurses, doctors, and teachers. “Professional workers” generally appear to show healthier dietary characteristics, although health professionals, such as doctors and nurses (which fall under the “professional workers” category), tended to show more risky health behaviors compared with “office workers” [17]. Considering these findings, it is questionable whether all of the professional workers show the same trend in dietary intake. More research is needed to classify workers not only according to broad, large occupational categories, but also according to smaller occupational groups. As of now, the dietary characteristics of the smaller occupational groups remain unknown. The aim of this study was to investigate the dietary differences among smaller occupational groups within larger occupational categories as typically defined in previous research. This is the first study examining male workers’ diets in a large population according to smaller, more specific occupational group categories, as assessed with the Japan Standard Occupational Classification (Rev. 5, December 2009) [18,19]. Data were derived from the Japan Environment and Children’s Study (JECS).

2. Materials and Methods

2.1. Study Design

This cross-sectional study used baseline data from the JECS, a prospective observational cohort study designed to examine the effects of environmental factors on children’s health. More than 100,000 pregnant women were recruited from January 2011 to March 2014, with the choice of optional participation for their partner. The detailed study protocol have been described previously [20]. The current study is based on the dataset of jecs-ag-ai-20160424, which was released in June 2016 [21,22].

2.2. Ethical Statement

The JECS was approved by the Institutional Review Board of the Japan National Institute for Environmental Studies (Approval number: 2017-002), and the ethics committees of all participating institutions. The study was conducted according to the principles of the Declaration of Helsinki and other national regulations. Each participant gave written informed consent [20].

2.3. Study Sample

All of the data, except for household income and educational level, were obtained using self-administered questionnaires completed by fathers (partners) during the first trimester and second/third trimester of their partner’s pregnancy. Information about household income and educational level were obtained from self-administered questionnaires completed by women during the second or third trimester. Exclusion criteria were as follows: under 20 years, students, househusbands, unemployed, or workers not otherwise classifiable. Fathers with missing questionnaire data were also excluded from analyses. In addition, fathers who reported consumption of fewer than 1150 kcal per day or equal to or more than 4575 kcal per day (less than half the energy requirement for the lowest physical activity category or equal to or more than 1.5 times the energy requirement for the highest physical activity category among men aged 18–49 years, respectively, in accordance with the Dietary Reference Intakes for Japanese, 2015 [23,24]) were also excluded. A total of 38,656 males were included in the analysis. The selection of the final study population is described in Figure 1.
Figure 1

Participant inclusion flowchart.

2.4. Dietary Intake

Participants completed the Food Frequency Questionnaire, which was also used in the Japan Public Health Center-Based Prospective Study for the Next Generation [25]. Fathers were asked how often they had consumed certain types of food and drink, on average, in the previous year, with nine possible responses ranging from “never or less than once per month” to “at least seven times per day”. Energy and nutrient intake were calculated based on the food consumption data. Nutrient intake was evaluated using estimated average requirements (EAR) and tentative dietary goals for preventing lifestyle-related diseases (DG) from the Dietary Reference Intakes for Japanese (2015) [24]. The DG were used as recommendations for protein, fatty acid, carbohydrate, dietary fiber, saturated fatty acid, salt, and potassium. The lowest value for EAR in men aged 18–69 years was used as recommendation for vitamin A, vitamin B1, vitamin B2, niacin, vitamin B6, vitamin B12, folic acid, vitamin C, calcium, magnesium, iron, zinc, copper, iodine, selenium, and molybdenum. The estimated energy requirement (EER) was fixed at 2650 kcal (specifically, EER for men aged 18–49 years with moderate physical activity levels). Energy intake from protein, fatty acid, and carbohydrates was calculated as follows: protein (% energy) = protein (g) × 4 (kcal/g)/total energy (kcal) × 100; fatty acid (% energy) = fatty acid (g) × 9 (kcal/g)/total energy (kcal) × 100; carbohydrates (% energy) = (g) × 4 (kcal/g)/total energy (kcal) × 100. Other nutrient intakes were evaluated using energy-adjusted nutrient intake values: energy-adjusted nutrient intake (amount/day) = (reported nutrient intake (amount/day) × estimated energy requirement (EER) (kcal/day)/observed energy intake (kcal/day)).

2.5. Socioeconomic Factors

Educational level was categorized into seven groups: junior high school, high school, higher professional school, professional school, junior college, university, and graduate school. Annual income was categorized into nine groups (in yen): <2 million, 2.0–3.9 million, 4.0–5.9 million, 6.0–7.9 million, 8.0–9.9 million, 10.0–11.9 million, 12.0–14.9 million, 15.0–19.9 million, and ≥20 million. Occupation was classified using the Japanese Occupational Classification (Rev. 5, December 2009) [18], which contains 12 Major Groups of workers: administrative and managerial; professional and engineering; clerical; sales; service; security; agricultural, forestry, and fishery; manufacturing; transport and machine operation; construction and mining; carrying, cleaning, packaging, and related work; and workers not classifiable by occupation (who were not included in the present analysis). Importantly, occupation was classified into smaller and more specific groups using the more detailed classification based on the Minor Groups and Unit Groups of the Japanese Standard Occupational Classification (Rev. 5, December 2009) [18,19]. Very small groups—namely, those composed of less than 1.0% of all participants—were integrated into other groups, or unified within each Major Group. For example, within the group of “administrative and managerial workers”, smaller groups consisting of less than 1.0% of all participants were integrated into a category for other administrative and managerial workers. Within “professional and engineering workers”, smaller groups consisting of less than 1.0% of all participants were integrated into a category for other specialist professionals. Within “transport and machine operation workers”, smaller groups consisting of less than 1.0% of all participants, including stationary and construction machinery operators, were integrated into a category for other transport workers. Forestry and fishery workers were unified. Carrying, cleaning, and packaging workers were also unified. On completion, all of the participants had been classified into a total of 39 occupational groups.

2.6. Statistical Analysis

Data regarding energy and some of the nutrient intake (calcium and vitamins A and C) were transformed using natural logarithms because the distribution of continuous variables was skewed. Analysis of variance (ANOVA) and t-tests were carried out to examine the differences among the occupations that had been classified into the same Major Groups. Logistic regression analysis was performed to examine the association between adherence to dietary recommendations and smaller occupational group assignment within each Major Group, using the occupation that showed the lowest intake as the reference category, which was then adjusted for age, body mass index, household income, and educational level. Energy and nutrient intakes, age, and body mass index were analyzed as continuous variables, while occupation, household income, and educational level were analyzed as categorical variables. Levels of significance were represented by p values. Data were analyzed using Stata/IC 14.0 (StataCorp., College Station, TX, USA).

3. Results

Table 1 and Table 2 show the characteristics of the study participants. The mean age was 33.0 (±5.7) years (data not shown). The most common occupations were “professional and engineering workers” (n = 12,307; 31.8%). Approximately one-third of the participants had graduated from a university. More than half reported having an annual household income as equal to, or more, than four million yen. Approximately three-fifths of the participants met the recommendation for energy intake from carbohydrate, while only 6% participants met the recommendations for dietary fiber intake. Regarding some micronutrients (i.e., vitamin B2, niacin, vitamin B6, vitamin B12, folic acid, magnesium, iron, zinc, copper, iodine, selenium, and molybdenum), the median values among all of the smaller occupational groups met the recommendations; however, this study did not include a detailed analysis.
Table 1

Characteristics of the participants: occupational classifications (N = 38,656).

OccupationN%
 Administrative and managerial workers
  Management government officials6031.56
  Officers of companies and organizations3871.00
  Other administrative and managerial workers6871.78
 Professional and engineering workers
  Researchers a4891.27
  Manufacturing engineers23326.03
  Architects, civil engineers, and surveyors16084.16
  Data processing and communication engineers8972.32
  Other engineers11152.88
  Doctors b3891.01
  Nurses4881.26
  Medical technicians c7181.86
  Social welfare specialist professionals5431.40
  Teachers d12383.20
  Other specialist professionals24906.44
 Clerical workers
  General clerical workers19234.97
  Sales clerks6601.71
  Other clerical workers12333.19
 Sales workers
  Merchandise sales workers13793.57
  Sales workers26546.87
  Other sales workers2740.71
 Service workers
  Care service workers9432.44
  Food and drink preparatory workers9732.52
  Customer service workers9932.57
  Other service workers13103.39
 Security workers
  Self-defense officials4611.19
  Judicial police staff, such as police officers6161.59
  Other public security workers, such as firefighters6481.68
 Agricultural, forestry, and fishery workers
  Agriculture workers4011.04
  Forestry workers and fishery workers2550.66
 Manufacturing process workers
  Product manufacturing and processing workers28977.49
  Machine maintenance and repair workers7221.87
  Other manufacturing process workers15914.12
 Transport and machine operation workers
  Motor vehicle drivers10902.82
  Other transport workers5361.39
 Construction and mining workers
  Construction workers7541.95
  Electric construction workers5851.51
  Civil engineering workers5391.39
  Other construction and mining workers7001.81
 Carrying, cleaning packaging, and related workers
  Carrying workers, cleaning workers, and packaging workers5351.38

a Researchers: natural science researchers, humanities, social science, and other researchers; b Doctors: doctors except for dental surgeons, veterinary surgeons, and pharmacists; c Medical technicians: diagnostic radiographers, clinical engineers, clinical laboratory technicians, physiotherapists, occupational therapists, certified orthoptists, speech therapists, dental hygienists, and dental technicians; d Teachers: kindergarten teachers, elementary school teachers, junior high school teachers, senior high school teachers, secondary educational school teachers, special needs education school teachers, vocational school teachers, university professors, and other teachers.

Table 2

Characteristics of the participants: socioeconomic factors and compliance with dietary recommendations (N = 38,656).

N%
Educational level
 Junior high school18654.8
 High school13,63235.0
 Higher professional school8052.0
 Professional school753920.0
 Junior college8372.0
 University11,93531.0
 Graduate school20435.3
Household income
 <2 million yen15414.0
 2.0–3.9 million yen12,90833.4
 4.0–5.9 million yen13,28034.4
 6.0–7.9 million yen652216.9
 8.0–9.9 million yen27357.1
 10–11.9 million yen9882.6
 12–14.9 million yen3661.0
 15–19.9 million yen2150.6
 ≥20 million yen1010.3
Adherence to recommendations
 Protein 13–20% energy/day a14,70538.0
 Fatty acid 20–30% energy/day a21,13055.0
 Carbohydrate 50–65% energy/day a23,76461.0
 Saturated fatty acid ≤7 g/day a15,45140.0
 Dietary fiber ≥20 g/day a23496.1
 Salt <8 g/day a838921.7
 Potassium ≥3000 mg/day a13,63935.3
 Calcium ≥550 mg/day b16,71143.2
 Vitamin A ≥600 mg/day b14,74438.1
 Vitamin C ≥85 mg/day b16,90544.0
 Vitamin B1 ≥1.1 mg/day b16,11041.7

a Tentative dietary goals for preventing lifestyle-related diseases (DG); b Lowest value among estimated average requirements (EAR) for men aged 18–69.

Table 3 shows the results of ANOVAs and t-tests examining the differences in energy and nutrient intake between occupations within the same Major Groups. Significant differences (p < 0.001) for all of the items were observed among “professional and engineering workers”. Similarly, significant differences in eight items were observed among “service workers”, and significant differences in six items were observed among “agricultural, forestry, and fishery workers”, respectively. Across these Major Groups, there were significant differences among participants’ intake of dietary fiber and micronutrients such as potassium, calcium, and vitamins A, B1, and C. For calcium and vitamin C intake, significantly higher odds of adherence to recommendations were found. Figure 2 and Figure 3 present box and whisker plots demonstrating the associations between occupations and calcium and vitamin C intake, respectively. The figures also show the findings from logistic regression analysis for adherence to dietary recommendations, using the lowest intake group within each Major Group as the reference category. The main findings, which showed an odds ratio of around two, were as follows. Teachers showed a significantly higher adherence to calcium intake recommendations than nurses (OR, 2.54; 95% CI, 2.02–3.14; p < 0.001); agriculture workers showed significantly a higher adherence to calcium intake recommendations compared with forestry and fishery workers (OR, 2.15; 95% CI, 1.46–3.15; p < 0.001); agriculture workers also showed a significantly higher adherence to recommendations for vitamin C intake compared with forestry and fishery workers (OR 1.90; 95% CI 1.31–2.74; p = 0.001).
Table 3

Differences in dietary intakes according to occupational groups: the results from analysis of variance (ANOVA) or t-test.

Energy and NutrientsEnergyProteinFatty AcidCarbohydrateSaturated Fatty AcidDietary FiberSaltPotassiumCalciumVitamin AVitamin CVitamin B1
Administrative and managerial workers a*NSNS*NS*NS*NSNS***
Professional and engineering workers a************************
Clerical workers aNSNSNSNSNS*NS***NS**NS
Sales workers a**NS**NS*NS********NS
Service workers aNS*NS**NS**************
Security workers a**NS*NSNSNSNSNSNS*NS
Agricultural, forestry, and fishery workers bNSNSNSNSNS*************
Manufacturing process workers a******NS**NS*NS*
Transport and machine operation workers bNS***NSNSNS**NSNS**
Construction and mining workers aNS***NS***NSNS*NS*NS
Carrying, cleaning packaging, and related workers------------

* p < 0.05; ** p < 0.001; NS, not significant; a ANOVA was performed; b t-test was performed.

Figure 2

Daily calcium intake according to occupational groups. OR: Odds ratio of daily calcium intake equal to or more than 550 mg/day.

Figure 3

Daily vitamin C intake according to occupational groups. OR: Odds ratio of daily vitamin C intake equal to or more than 85 mg/day.

Significantly higher odds of intakes of other nutrients are also shown in Figure 4, Figure 5, Figure 6, Figure 7, Figure 8 and Figure 9. Teachers showed significantly higher odds of adherence to the recommended intake of potassium (OR 1.71; 95% CI 1.36–2.16; p < 0.001) and vitamin A (OR 1.71; 95% CI 1.36–2.15; p < 0.001) compared with nurses, and significantly higher odds of higher saturated fatty acid intake than recommended (lower adherence to recommendation) compared with architects, civil engineers, and surveyors (OR 1.68; 95% CI 1.41–1.99; p < 0.001). Architects, civil engineers, and surveyors in turn showed higher odds of higher salt intake than recommended (lower adherence to recommendation) compared with nurses (OR 1.66; 95% CI 1.29–2.13; p < 0.001).
Figure 4

Daily saturated fatty acid intake according to occupational groups. OR: Odds ratio of daily energy intake from saturated fatty acid equal to or more than 7% energy.

Figure 5

Daily dietary fiber intake according to occupational groups. OR: Odds ratio of daily dietary fiber intake equal to or more than 20 g.

Figure 6

Daily salt intake according to occupational groups. OR: Odds ratio of daily salt intake equal to or more than 8 g.

Figure 7

Daily potassium intake according to occupational groups. OR: Odds ratio of daily potassium intake equal to or more than 3000 mg.

Figure 8

Daily vitamin A intake according to occupational groups. OR: Odds ratio of daily vitamin A intake equal to or more than 600 mg.

Figure 9

Daily vitamin B1 intake according to occupational groups. OR: Odds ratio of daily vitamin B1 intake equal to or more than 1.1 mg.

4. Discussion

The present study found significant differences in dietary intake between smaller occupational groups (i.e., Minor or Unit Groups) within the larger occupational categories (i.e., Major Groups). Significant differences among all of the nutrients that were evaluated in this study were observed among “professional and engineering workers”. Similarly, significant differences were observed in all of the micronutrients that were evaluated among “service workers” and “agricultural, forestry, and fishery workers”, as well as “professional and engineering workers”. Regarding intake of calcium and vitamins A, B1, and C, the median values among some occupational groups were under the recommended levels, whereas among others, the median values were above recommended levels. For nutrient intake, higher odds ratios of adherence to recommendations, particularly for calcium and vitamin C, were observed among “professional and engineering workers” and “agricultural, forestry, fishery workers”. Notably, within the “professional and engineering workers” category, teachers had significantly higher odds compared with nurses. Similarly, in “agricultural, forestry, fishery workers”, agriculture workers had significantly higher odds compared with forestry and fishery workers. In interpreting these findings, it is necessary to focus on what factors contribute to workers’ diets among each small occupational group. Educational level is known to be associated with dietary intake [15,16]; however, after adjustment for potential confounding factors including educational level, some associations between occupation and dietary intakes were still significant, suggesting that the dietary differences between occupational groups cannot be explained by only educational level. For example, nurses tended to show a lower adherence to recommendations on several nutrients than teachers after adjusting for potential confounding factors, including education. For reference, most nurses in this study graduated from a professional school, while teachers graduated from a university (data not shown); on the other hand, nurses are health professionals who should have higher than average knowledge of health behaviors. To interpret poor dietary intake among nurses, it may thus be necessary to focus on organizational factors that may impact diet regardless of their knowledge level. Such organizational factors could include the nature of the work itself and/or the workplace environment. First, work-related factors may affect dietary behaviors and dietary intakes. For example, work hours [26], shift work [27,28,29], and work control [13] have all been reported to be associated with diet across various occupations. Among nurses, recent research has shown an association between shift schedules and eating behaviors [28,30]. In their review, Nicholls et al. also identified that organizational factors, including long working hours and shift work, seem to be barriers to a healthy diet for nurses [31]. Lower nutrient intake among nurses in the current study may be also explained by such work-related factors. Higher salt intakes among architects, civil engineers, and surveyors may also be explained by the work itself and/or the workplace environment. Among “professional and engineering workers”, architects, civil engineers, and surveyors may be relatively close to workers who are engaged in physically demanding jobs, such as construction workers; in fact, construction workers also showed higher salt intakes. Surveyors in particular could often be engaged in outdoor work while on the job, and architectural and civil engineers are often in contact with individuals working in construction; although they have different roles and responsibilities, they could often work in the same workplace. Another explanation might be food availability and accessibility within these and other occupations. Some previous studies have found associations between food facilities in the workplace such as cafeterias [32,33,34] and vending machines [33] with diet food. Roos et al. suggest that staff canteens could contribute to healthy eating [34]. In contrast, Kjollesdal et al. found that frequent eating in staff canteens is associated with unhealthy eating patterns [35]. Accordingly, food environments and facilities in the workplace, such as cafeterias, shops, and vending machines, could contribute to workers’ healthy diet, but only if healthier food options are available. In Japan, the provision of school lunch with menus designed by nutritionists has been researched. Asakura et al. reported the important contribution of school lunch to developing children’s dietary habits [36]. The provision of school lunches may be a contributing factor to the higher nutrient intake among teachers as found in the current study as well. Similarly, higher nutrient intake among agricultural workers could also be explained by their food environment. Umezawa et al. suggest that growing one’s own vegetables contributes to a higher vegetable intake [37]. Additionally, such a food environment seems to be important in developing nutritional education. Sato argues that agricultural experience contributes to food choices [38]. It is worth noting that nutritional education can be conducted not only through textbook learning but also through experiential learning. Even if people are not engaged in agricultural work, they can still learn about the importance of healthy eating through workplace food facilities that provide healthy foods, and develop an awareness surrounding their food choices. Considering the variations in factors related to work and workplace across occupations, it may be appropriate in future research to classify occupation using more specific techniques, such as Minor or Unit Groups, as reported here. In previous studies that have investigated occupational status as one of the socioeconomic factors, occupations have usually used only large and general categories, such as “professional” [11], “manual” [13], or “service workers” [14]. However, from an occupational health perspective, we should pay more attention to the occupational context, such as the type of occupation, work-related factors, and environmental factors in the workplace. Importantly, the results of the present study reveal that there are differences among occupations within the large occupational categories as they are typically used, especially within “professional and engineering workers” and “agricultural, forestry, and fishery workers”. Given the variations in occupational characteristics within the broad occupational categories, it is unlikely that all of the workers in each category should be considered in the same way. Therefore, detailed occupational classification may be useful in conducting dietary research, especially for “professional and engineering workers” and “agricultural, forestry, and fishery workers”. In summary, the present study found clear dietary differences among large occupational groups when classified into smaller, more specific groups. Considering the background and contextual factors related to different occupations and dietary choices, it may be helpful to consider these in the development of guidance for health and diet, as appropriate for each group. Further studies are required to clarify which factors are most important in influencing workers’ diet according to their occupation.

5. Limitations

Several limitations of the current study should be acknowledged. First, this study did not consider dietary differences by gender, because only men were recruited as participants. Given the increasing number of working women, this research should be replicated for women as well. Furthermore, it may be difficult to apply the results of the present study to all working men, because the study subjects were limited to men whose partner was a pregnant woman. Second, the analyses were conducted based only on data from self-reported questionnaires. It is possible that over-reporting or under-reporting could occur, particularly for the Food Frequency Questionnaire, partly because social desirability bias may affect the participants’ responses. Third, due to issues associated with self-selection bias, it is possible that the participants of this study may have greater interest in health and diet compared with the general population; additionally, they may have been able to answer questions from a more informed perspective. Fourth, it is not possible to clarify the causal pathways between occupations and dietary intakes because of the cross-sectional design.

6. Conclusions

The current study identified that when using detailed occupational classification, significant differences in dietary intake can be detected among working men compared with using only large occupational categories. This more precise classification of occupational status allows for the detection of differences in dietary intake and may be helpful for future research, as well as informing the development of support promoting a healthy diet for workers.
  31 in total

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