Hostname: page-component-586b7cd67f-rcrh6 Total loading time: 0 Render date: 2024-11-24T15:06:38.112Z Has data issue: false hasContentIssue false

Do 20-minute neighbourhoods moderate associations between work and commute hours with food consumption?

Published online by Cambridge University Press:  29 March 2023

Laura Helena Oostenbach*
Affiliation:
Institute for Physical Activity and Nutrition, School of Exercise and Nutrition Sciences, Deakin University, 1 Gheringhap Street, Geelong 3220, Australia
Karen Elaine Lamb
Affiliation:
Melbourne School of Population and Global Health, University of Melbourne, Carlton, Melbourne, Australia
David Crawford
Affiliation:
Institute for Physical Activity and Nutrition, School of Exercise and Nutrition Sciences, Deakin University, 1 Gheringhap Street, Geelong 3220, Australia
Anna Timperio
Affiliation:
Institute for Physical Activity and Nutrition, School of Exercise and Nutrition Sciences, Deakin University, 1 Gheringhap Street, Geelong 3220, Australia
Lukar Ezra Thornton
Affiliation:
Institute for Physical Activity and Nutrition, School of Exercise and Nutrition Sciences, Deakin University, 1 Gheringhap Street, Geelong 3220, Australia Department of Marketing, Faculty of Business and Economics, University of Antwerp, Antwerp, Belgium
*
*Corresponding author: Email [email protected]
Rights & Permissions [Opens in a new window]

Abstract

Objective:

To examine associations between work and commute hours with food consumption and test whether neighbourhood type (20-minute neighbourhood (20MN)/non-20MN) moderate associations.

Design:

Cross-sectional analysis of the Places and Locations for Activity and Nutrition study (ProjectPLAN). Exposures were work hours (not working (0 h), working up to full-time (1–38 h/week), working overtime (> 38 h/week)), and among those employed, combined weekly work and commute hours (continuous). Outcomes were usual consumption of fruit, vegetables, takeaway food, snacks and soft drinks, and number of discretionary food types (takeaway, snacks and soft drinks) consumed weekly. Generalised linear models were fitted to examine associations between each exposure and outcome. The moderating role of neighbourhood type was examined through interaction terms between each exposure and neighbourhood type (20MN/non-20MN).

Setting:

Melbourne and Adelaide, Australia, 2018–2019.

Participants:

Adults ≥ 18 years old (n 769).

Results:

Although all confidence intervals contained the null, overall, patterns suggested non-workers and overtime workers have less healthy food behaviours than up-to-full-time workers. Among those employed, analysis of continuous work and commute hours data suggested longer work and commute hours were positively associated with takeaway consumption (OR = 1·014, 95 % CI 0·999, 1·030, P-value = 0·066). Patterns of better behaviours were observed across most outcomes for those in 20MN than non-20MN. However, differences in associations between work and commute hours with food consumption across neighbourhood type were negligible.

Conclusions:

Longer work and commute hours may induce poorer food behaviours. There was weak evidence to suggest 20MN moderate associations between work and commute hours with food consumption, although behaviours appeared healthier for those in 20MN.

Type
Research Paper
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2023. Published by Cambridge University Press on behalf of The Nutrition Society

In Australia, the labour force participation rate was 67 % for women and 78 % for men aged 20–74 years old in 2017–18(1). Work-related time demands, including work hours and commuting to and from work, can place demands on working individuals’ time, posing a risk of time scarcity(Reference Strazdins, Griffin and Broom2). Almost half of Australians who work full-time always or often feel rushed or pressed for time, compared to 40 % of those employed part time, 30 % of those unemployed and 17 % of those not in the labour force(3), and balancing work with family responsibilities is the most common main reason for feeling rushed or pressured for time(4). Time scarcity (i.e. lacking enough time to undertake everyday activities) can limit engagement in health-related activities(Reference Strazdins, Griffin and Broom2) and healthy food practices(Reference Jabs and Devine5), including selecting, purchasing, preparing and eating healthy foods(Reference Olstad and Kirkpatrick6). Previous cross-sectional studies have also linked time scarcity to unhealthy food consumption, including higher consumption of convenience food such as ultra-processed dinners, snacks, soft drinks and fast food(Reference Djupegot, Nenseth and Bere7) and lower consumption of fruits and vegetables(Reference Welch, McNaughton and Hunter8). Research has shown that work hours are associated with time-related barriers to healthful eating among adults(Reference Escoto, Laska and Larson9) and their children(Reference Alsharairi and Somerset10). However, overall, findings on the specific role of employment-related time demands in food practices are mixed(Reference Escoto, Laska and Larson9,Reference Christian11Reference Oostenbach, Lamb and Crawford15) and mostly based on studies conducted in the United States (US)(Reference Escoto, Laska and Larson9,Reference Christian11Reference Mazumder and Seeskin13) .

Workers with limited available time (owing to their work hours and commute times) may interact with their residential neighbourhood differently to those who have more time available. It is plausible that those who are time scarce favour quick and convenient options such as drive-through takeaway outlets or purchasing fast foods instead of buying fresh foods, which requires time invested into visiting the retailer and selecting and preparing the food. However, studies have so far not incorporated the potential role of neighbourhood design when considering links between work hours and commute time with food consumption.

To adapt to urban growth and ensure neighbourhood liveability, cities worldwide have developed plans to promote compact city designs, encouraging localised lifestyles such as accessing healthy foods locally, potentially benefiting population health(16,17) . For example, in Australia, the cities of Melbourne and Adelaide have included the creation of compact and walkable neighbourhoods in urban development plans(18,19) . While both cities focus on localised and healthy living, Melbourne has adopted a concept called ‘20-minute neighbourhoods’ (20MN)(16,19) . This concept aims to support everyday non-work-related needs within a short distance from home via access to co-located amenities and services(16). While health benefits such as healthier diets(Reference Emery and Thrift20) have been projected, it remains unknown whether 20MN benefit working individuals with long work hours and commute times who may have limited time to interact with their local neighbourhood.

This study examines the role of work hours and commute time in food consumption, and whether these associations are moderated by 20MN. We expect those working overtime to have less healthy food behaviours than those working shorter hours. We also expect less healthful food behaviours among those working as their combined work and commute hours increase. However, we hypothesise that detrimental associations are attenuated for those living in a 20MN, as these neighbourhoods may facilitate easier access to healthy foods(16). This study will contribute to our understanding of food practices in the working population, informing policies linked to workers’ health and employment arrangements, such as flexible work hours and telecommuting. It will also provide evidence as to whether 20MN alleviate negative impacts of employment-related time demands on food practices, informing urban planning decisions around neighbourhood design.

Methods

Sample

Participants (n 769 adults ≥ 18 years old) from the 2018–2019 cross-sectional Places and Locations for Activity and Nutrition study (ProjectPLAN) who completed the ‘food survey’ were examined. ProjectPLAN aimed to assess relationships between having a 20MN with physical activity and food practices. Participants were randomly selected through stratified random sampling by city (Melbourne/Adelaide), neighbourhood type (20MN/non-20MN) and neighbourhood socio-economic status (SES) (high/low). The 2016 Australian Bureau of Statistics (ABS) Greater Capital City Statistical Areas were used to determine the spatial extent of each city(21). The detailed operationalisation of a 20MN is described elsewhere(Reference Thornton, Schroers and Lamb22). Briefly, five domains were identified, drawing on Plan Melbourne’s definition of a 20MN(19): (1) healthy food; (2) community facilities; (3) recreation facilities; (4) public open space and (5) public transport. These five domains were determined from eleven individual attributes. For example, the healthy food domain required access to a large supermarket OR a small supermarket and greengrocer within a 1·5 km pedestrian network distance. 20MN were defined as areas with access to each of the five domains, that is, with high levels of service and amenity provision(Reference Thornton, Schroers and Lamb22). Non-20MN were areas with low levels of services and amenities (≤ 5 individual attributes, i.e., low levels of service and amenity provision). Neighbourhood SES was based on the 2016 ABS Socio-Economic Indexes for Areas (SEIFA) Index of Relative Socio-economic Advantage and Disadvantage (IRSAD)(23). The IRSAD summarises information on economic and social conditions of individuals and households within an area, including relative advantage and disadvantage measures, using income and occupation data from the Australian census(24). Low SES areas were based on the Statistical Areas level 1 (SA1) SEIFA IRSAD decile 1, 2 or 3 that had to be within larger statistical areas (SA2) of decile 1, 2 or 3. SA1 within SA2 boundaries were extracted to represent small areas of low SES within larger areas that also had low SES. High SES was classified as SA1 with a SEIFA IRSAD decile of 8, 9 or 10 within an SA2 of decile 8, 9 or 10(24). Address points within residential Mesh Blocks (i.e. the smallest geographic areas defined by the ABS) were intersected with the neighbourhood type layer and neighbourhood SES layer, and a random sample of address points (sourced from routinely available government data sources(25,26) ) was selected from each combination of city (Melbourne/Adelaide), neighbourhood type (20MN/non-20MN) and neighbourhood SES (high/low).

A mass mail-out of >10 000 letters was undertaken for the food survey. Households at selected address points received a mailed invitation to participate in either a physical activity or food survey which contained a URL and unique code to access the Plain Language Statement, consent form and survey. Additional mail outs to eligible addresses were conducted to maximise recruitment in strata with lower responses (e.g. low SES neighbourhoods). Eligible food survey participants were ≥ 18 years old, still living at the same address to which the invitation mailed and mainly or jointly responsible for the household food shopping.

Outcomes

Outcomes included usual (1) fruit consumption (serves/day), (2) vegetables consumption (serves/day), (3) hot takeaway food consumption (e.g. fish and chips, burgers, pizza, sausage rolls, meat pies, fried chicken) (< once/week, once/week, > once/week), (4) snack consumption (e.g. chocolate, lollies/sweets/candy, cake, chips, ice cream, donuts, sweet biscuits) (< once/week, 1–2 times/week, 3–4 times/week, ≥ 5 times/week) and (5) soft drink consumption (sugar-sweetened beverages) (< once/week, 1–2 times/week, ≥ 3 times/week). Items were constructed using previously published and validated surveys(Reference Ball, Cleland and Salmon27,Reference Hebden, Kostan and O’Leary28) . Additionally, cumulative unhealthy food practices were explored through the number of discretionary food types (hot takeaway, snacks and soft drinks) consumed at least weekly. Daily serves of fruit and vegetables were treated as count data ranging from 0 to 8. Similarly, the number of discretionary food types consumed weekly was treated as count data ranging from 0 to 3. Takeaway, snack and soft drink consumption were treated as ordered categorical variables. Survey questions and operationalisation are detailed in Additional file 1.

Exposures

Participants reported whether they were employed (including self-employed) in a paid job or unemployed in a usual week. Unemployed included those looking for work, homemakers, students or retirees. Those who reported being employed were asked their number of work hours in all their paid jobs in a normal week. Employed participants who reported usually travelling to the same work location or to many different work locations were further asked about their usual commute time. The first exposure in this study was usual work hours (not working: 0 h; working up to full-time: 1–38 h/week; working overtime: > 38 h/week). Cut-off points were guided by Fair Work Australia’s definition of full-time and overtime hours(29). Similar cut-off points have been used in previous research looking at links between work hours and health(Reference Reynolds, Bucks and Paterson30). The second exposure was combined usual weekly work and commute hours (continuous) only among those in the workforce (see Additional file 1 for survey questions and full operationalisation).

Confounders

Potential confounders were age (years), gender (male, female, transgender), presence of children in the household (no children, any child ≤ 4 years, only children aged 5–17 years), relationship/living status (single, in a relationship: not living with partner, in a relationship: living with partner), neighbourhood SES (low, high) and city (Melbourne, Adelaide) (Additional file 1).

Moderator

Neighbourhood type (20MN or non-20MN) was considered as a moderator.

Statistical analysis

Generalised linear models were fitted to examine associations between each exposure and outcome, with Poisson regression used for each count outcome (daily serves of fruits and vegetables, number of discretionary food types) and ordinal regression for ordinal outcomes (frequency of hot takeaway, snack and soft drink consumption). The proportional odds assumption was assessed using likelihood ratio tests. Combined work and commute hours exposure was examined only among those employed. All models were adjusted for potential confounders by including them as model covariates. The moderating role of 20MN was examined by considering interactions between each exposure and neighbourhood type. Evidence of association between two variables is not a prerequisite to testing for moderation by a third variable. Association between exposure and outcome may sometimes only be elucidated when considered in the context of a third moderating variable(Reference Aguinis31).

A complete case analysis was performed assuming data were missing completely at random. Sample characteristics for the full sample, complete case and omitted participants are detailed in Additional file 2. Characteristics for the complete case sample appeared to be representative of the full sample.

All analyses were conducted using Stata 16.0.

Results

Descriptive characteristics

Of the 769 participants who completed the food survey, 699 (91 %) were included in the complete case analysis. Sixty-one percentage (n 427) of the sample were female. The median age of the sample was 57 years old, which also translated to fewer participants with children in their household. Only 14 % (n 97) of participants had a child ≤ 4 years living in their household and an additional 13 % (n 88) had children aged 5–17 years. Descriptive statistics of all variables included in the analysis are presented in Table 1.

Table 1 Descriptive characteristics of participants

IQR, inter-quartile range; SES, socio-economic status.

Associations between work hours and food consumption

Figure 1 shows the estimated incidence rate ratios (IRR), odds ratios (OR) and confidence intervals (CI) from the adjusted models. While all CI contained the null, patterns were observed across behaviours. Except for vegetable consumption, patterns in the estimated effects suggested both those not working and those working overtime have less healthy dietary behaviours than those working up to full-time, with lower IRR for fruit intake, higher IRR for the variety of discretionary food types consumed weekly and higher odds of takeaway, snacks and soft drink consumption (Fig. 1). Estimates and CI from the adjusted Poisson and ordinal models are also presented in Additional file 3.

Fig. 1 IRR and OR of food consumption per work hours categories (n 699). Adjusted Poisson models of daily fruit and vegetables consumption and the variety of discretionary food types consumed weekly (based on the count of discretionary food types (takeaway, snacks and soft drinks) consumed at least weekly) per work hours categories. Adjusted ordinal models of the frequency of takeaway, snack and soft drink consumption per work hours categories. All models adjusted for age, gender, children in household, relationship status, neighbourhood SES, neighbourhood type and city. IRR and OR are displayed on log scale. (Reference category: up to full-time) (not working: 0 h, up to full-time: 1–38 h/week, overtime: >38 h/week). IRR, incidence rate ratio; SES, socio-economic status.

Associations between combined work and commute hours with food consumption

Among those working, although all CI contained the null value, the highest estimated effect of combined work and commute hours was for takeaway consumption, with greater hours associated with higher odds of frequently consuming takeaway foods (OR = 1·014, 95 % CI 0·999, 1·030, P = 0·066) (Table 2). Estimates were small, representing the increase in odds for each 1-h increase in work and commute hours, but odds accumulate as time spent working and commuting increases. For example, individuals who work and commute 40 h each week were estimated to have an increased OR of 1·056 for takeaway consumption, that is, a 5·6 % increase in odds.

Table 2 IRR and OR of food consumption for combined work and commute hours among employed (n 378)

IRR, incidence rate ratio; SES, socio-economic status. Models adjusted for age, gender, children in household, relationship status, neighbourhood SES, neighbourhood type and city. The estimate represents the increase (or decrease) in IRR or OR per each 1-h increase in combined work and commute hours.

Moderation by neighbourhood type

The results generally showed no difference in the associations between work hours and food consumption between residents of 20MN and non-20MN (Fig. 2). However, those with a non-20MN consistently had higher odds of frequently consuming takeaway, snacks and soft drinks, and higher IRR for the number of consumed discretionary food types compared to those with a 20MN (Fig. 2). Compared to up-to-full-time workers, overtime workers had higher odds of frequently consuming takeaway if they resided in a non-20MN (OR = 1·919, 95 % CI 1·025, 3·594, P = 0·042) but that was not the case if they lived in a 20MN (OR = 1·060, 95 % CI 0·580, 1·937, P = 0·850). Non-workers had higher odds of frequently consuming snacks and soft drinks than up-to-full-time workers if they had a non-20MN (snacks OR = 1·912, 95 % CI 1·200, 3·046, P = 0·006, soft drinks OR = 1·660, 95 % CI 0·940, 2·931, P = 0·081) but not if they had a 20MN (snacks OR = 0·855, 95 % CI 0·530, 1·379, P = 0·521, soft drinks OR = 1·070, 95 % CI 0·582, 1·966, P = 0·828). Similar trends were observed when looking at combined work and commute hours among those employed (Fig. 3), except for soft drinks where the odds of frequent consumption were lower in non-20MN compared to 20MN (Fig. 3(f)). Estimates and CI from the adjusted Poisson and ordinal models are presented in Additional file 4 and 5.

Fig. 2 IRR and OR of food consumption by neighbourhood type and work hours categories (n 699). Adjusted Poisson models of daily fruit and vegetables consumption and the variety of discretionary food types consumed weekly (based on the count of discretionary food types (takeaway, snacks, and soft drinks) consumed at least weekly) fitted with interaction terms. Adjusted ordinal models of the frequency of takeaway, snack and soft drink consumption fitted with interaction terms. All models adjusted for age, gender, children in household, relationship status, neighbourhood SES and city. IRR and OR are displayed on log scale. (Reference category: up to full-time). (Not working: 0 h, up to full time: 1–38 h/week, overtime: > 38 h/week). 20MN, 20-minute neighbourhood; IRR, incidence rate ratio; SES, socio-economic status.

Fig. 3 IRR and OR of food consumption by neighbourhood type for combined work and commute hours among those employed (n 378). Adjusted Poisson models of daily fruit and vegetables consumption and the variety of discretionary food types consumed weekly (based on the count of discretionary food types (takeaway, snacks, and soft drinks) consumed at least weekly) fitted with interaction terms. Adjusted ordinal models of the frequency of takeaway, snack and soft drink consumption fitted with interaction terms. All models adjusted for age, gender, children in household, relationship status, neighbourhood SES and city. IRR and OR are displayed on log scale. 20MN, 20-minute neighbourhood; IRR, incidence rate ratio; SES, socio-economic status.

Discussion

This study examined associations between work and commute hours with food consumption and explored whether these associations were moderated by neighbourhood type. Overall, patterns suggested food behaviours tend to be less healthy for those not working and those working overtime (> 38 h/week) compared to those working up to full-time. Similarly, when considering combined work and commute hours only among those employed, results suggested those spending longer hours working and commuting were more likely to frequently eat takeaway food. When looking at the potential moderating role of neighbourhood type, the relationships between work and commute hours with food consumption appeared similar for residents of 20MN and non-20MN. However, a pattern was observed across most food behaviours, with behaviours being generally better for those in 20MN.

Findings are consistent with previous US research indicating associations between long work hours among employed parents and higher frequency of takeaway consumption(Reference Devine, Farrell and Blake32), more time spent purchasing prepared food and less time spent cooking and grocery shopping(Reference Cawley and Liu33). Limiting time and effort dedicated to food and meal preparation has been identified as a reason for purchasing takeaway meals(Reference Devine, Jastran and Jabs34). Time scarcity owing to long work and commute hours may encourage takeaway consumption as a means to cope with limited time to purchase and prepare food(Reference Jabs and Devine5).

Unhealthier food behaviours among those not working compared to those working up to full-time may be linked to lower income, reducing the ability to afford healthy foods(Reference Turrell and Kavanagh35). Although research has suggested healthy diets (as per dietary guidelines) may in fact be less expensive than current (unhealthy) diets in Australia(Reference Lee, Kane and Ramsey36), low-income households still need to dedicate a bigger proportion of their household budget towards a healthy diet than high-income households(Reference Lee, Kane and Ramsey36,Reference Ward, Verity and Carter37) and have greater concerns around food affordability than those in high-income households(Reference Turrell and Kavanagh35). These concerns combined with the perception of healthy foods as more expensive may render it more difficult to adopt a healthy diet within a limited budget(Reference Turrell and Kavanagh35). Alternatively, a healthy-worker effect may be at play, whereby workers are generally healthier than the general population(Reference Shah38), having, for example, the energy to prepare and cook healthy foods(Reference Erlich, Yngve and Wahlqvist39). However, additional analyses adjusting for self-rated health showed no major differences in magnitude and direction of effects (results not shown). We did not adjust for self-rated health in main analysis due to potential collider bias (where self-rated health is a common effect of exposure and outcome, distorting associations)(Reference Cole, Platt and Schisterman40).

No previous research has explored the potential moderating role of 20MN in the associations between work-related time demands and food consumption. Findings of the current study suggest 20MN might have a protective role in terms of food behaviours. Higher levels of service provision and amenities may promote healthier living, aligning with projected benefits of the 20MN concept(Reference Emery and Thrift20). Increased service provision might help reduce the negative consequences of employment-related time scarcity on food consumption by providing accessible options for those with limited time to engage with their neighbourhood. However, residential neighbourhoods may only partially represent environments with which individuals frequently interact(Reference Thornton, Crawford and Lamb41). Time scarcity and neighbourhood features may confine individuals to defined times (e.g. opening hours) and places (e.g. types of food stores), preventing them from accessing certain places and inciting them to opt for more convenient options (e.g. drive-through takeaway outlets instead of supermarkets) or rendering it easier to access those near work during work hours or in other neighbourhoods on the way to/from work(Reference Strazdins, Griffin and Broom2). Food retailers near the workplace may therefore also play a role in food choice.

In addition to improving healthy food supply in residential neighbourhoods and the environments surrounding workplaces, it is also important to consider how work arrangements could be modified to deter detrimental impacts of work-related time demands on food consumption. It is possible that enabling access to flexible work hours and telecommuting, in addition to limiting long hours(Reference Friel, Hattersley and Ford42), could be helpful. Previous US research has shown that those working from home spend more time preparing and consuming food at home compared to those working away from home(Reference Restrepo and Zeballos43), with potential benefits for diet such as lower intake of calories, fat, sugar, fast-food meals and ready-to-eat meals(Reference Wolfson and Bleich44). However, overall, the impact of telecommuting on food practices remains largely under-investigated, warranting more research.

The important role of government in influencing what is considered full-time work has previously been recognised(45). In Australia, although > 38 h per week is considered overtime(29), statutory limits around additional work hours are non-existent or indicative at best(45,46) . Australian legislation recognises a right for workers to refuse to work ‘unreasonable’ additional hours but does not to define ‘reasonable’ additional hours, merely providing a list of factors to account for, such as the usual patterns of work in the industry and the nature of the worker’s role(46). Other high-income countries such as New Zealand and the UK also lack clear regulations around overtime and maximum hours(45). Regulation of limits on work hours may not directly improve food consumption but may be a step in the right direction to reduce workers’ time pressures. Additional strategies focused on healthy eating may be implemented at the organisational level such as improved availability of healthy food options at the workplace(Reference Schliemann and Woodside47), after all many working adults spend more than half their waking hours at work.

This is the first study to assess associations between work-related time demands and food consumption in the context of a topical urban planning policy, providing evidence on potential benefits of 20MN among those with greater work-related time demands. Categorising work hours allowed for comparisons across groups that were likely different in terms of work-related time scarcity. In addition, we examined continuous combined work and commute hours among those working, capturing a potential linear relationship with food consumption. Given commuting is generally an intrinsic part of participation in labour, combining work and commute hours enabled a more accurate assessment of work-related time demands.

Since food behaviours were self-reported, under- or over-reporting (depending on perceived social desirability) of food consumption cannot be excluded. For example, snack consumption may be underreported if snacks (e.g. chocolate, lollies, cake, chips, ice cream, donuts, sweet biscuits) are perceived as socially undesirable(Reference Hebert, Clemow and Pbert48). While we examined hot takeaway food such as burgers and pizza, reflecting potentially less healthy takeaway food, other takeaway food (e.g. salads) was not captured in this study. Future research should capture a wider range of takeaway options and investigate the type and healthfulness of takeaway options consumed by those with long work and commute hours. It is possible that while searching for convenience workers still frequently seek healthy takeaway alternatives. The sample size reduced power to detect smaller differences, as reflected by large CI. This also meant interpretation was based on examining patterns across work hours and neighbourhood types. While we acknowledge the response rate was under 10 %, it should have little bearing on the results. Low response rates are common for this type of recruitment approach (i.e. mass mail out to residential addresses with non-personalised invite and no individualised compensation)(Reference Larson49). The higher number of women compared to men in the sample (61 % female) reflects the persistent gendered norm whereby women are mainly responsible for household food purchasing. The sample reflects the characteristics of main household food purchasers. No inferences are made to the wider population. While we were able to adjust for potential confounders, no information was collected on work schedules. Those with non-standard work schedules (e.g. working at night and working on weekends) may likely have different work and commute hours and poorer food behaviours(Reference Souza, Sarmento and de Almeida50).

Conclusion

This study suggested long work and commute hours may induce poorer food behaviours, particularly greater consumption of takeaway food. Proposed mechanisms include higher work-related time demands limiting engagement in food preparation which in turn encourages convenient options such as takeaway food. Overall, no difference in associations between work and commute hours with food consumption was found between residents of 20MN and non-20MN. However, patterns suggested 20MN may, through improved service and amenities provision, benefit some aspects of workers’ food consumption and potentially attenuate negative impacts of their work-related time demands. Opportunities exist to further explore the potential moderating role of 20MN in links between work-related time demands and food practices, examining the location of workers’ food practices, for example, whether food purchasing occurs close to home or close to work.

Acknowledgements

Acknowledgements: None. Financial support: This work was supported by a Deakin University Postgraduate Research Scholarship to LHO (grant number: not applicable). Deakin University had no role in the design, analysis or writing of this article. This work was supported by an Australian Research Council Discovery Project Grant [DP 170100751] to LET and KEL. The Australian Research Council had no role in the design, analysis or writing of this article. Authorship: L.H.O. and L.E.T. conceptualised the study with input from all authors. L.H.O. led the analysis with input from K.E.L. and L.E.T. L.H.O. led the write up of the manuscript. All authors provided critical feedback on drafts of the manuscript. All authors read and approved the final manuscript. Ethics of human subject participation: This study was conducted according to the guidelines laid down in the Declaration of Helsinki and all procedures involving research study participants were approved by the Deakin University Human Research Ethics Committee (HEAG-H 168_2017). Written informed consent was obtained from all subjects/patients.

Conflict of interest:

There are no conflicts of interest.

Supplementary material

For supplementary material accompanying this paper visit https://doi.org/10.1017/S1368980023000587

Footnotes

Article updated 29 January 2024.

References

Australian Bureau of Statistics (2018) 4125.0 - Gender Indicators, Australia. Canberra: Australian Bureau of Statistics; available at https://www.abs.gov.au/ausstats/[email protected]/Lookup/by%20Subject/4125.0∼Sep%202018∼Main%20Features∼Economic%20Security∼4 (accessed November 2022).Google Scholar
Strazdins, L, Griffin, AL, Broom, DH et al. (2011) Time scarcity: another health inequality? Environ Planning A: Economy and Space 43, 545559.Google Scholar
Australian Bureau of Statistics (2022) How Australians Use Their Time. Canberra: Australian Bureau of Statistics; available at https://www.abs.gov.au/statistics/people/people-and-communities/how-australians-use-their-time/latest-release (accessed December 2022).Google Scholar
Australian Bureau of Statistics (2013) 4125.0 – Gender Indicators, Australia. Canberra: Australian Bureau of Statistics; available at https://www.abs.gov.au/ausstats/[email protected]/Lookup/by%20Subject/4125.0∼Jan%202013∼Main%20Features∼Stressed%20for%20time∼4310 (accessed December 2022).Google Scholar
Jabs, J & Devine, CM (2006) Time scarcity and food choices: an overview. Appetite 47, 196204.Google Scholar
Olstad, DL & Kirkpatrick, SI (2021) Planting seeds of change: reconceptualizing what people eat as eating practices and patterns. Int J Behav Nutr Phys Act 18, 17.Google Scholar
Djupegot, IL, Nenseth, CB, Bere, E et al. (2017) The association between time scarcity, sociodemographic correlates and consumption of ultra-processed foods among parents in Norway: a cross-sectional study. BMC Public Health 17, 18.Google Scholar
Welch, N, McNaughton, SA, Hunter, W et al. (2008) Is the perception of time pressure a barrier to healthy eating and physical activity among women? Public Health Nutr 12, 888895.Google Scholar
Escoto, KH, Laska, MN, Larson, N et al. (2012) Work hours and perceived time barriers to healthful eating among young adults. Am J Health Behav 36, 786796.Google Scholar
Alsharairi, NA & Somerset, S (2018) Parental work status and children’s dietary consumption: Australian evidence. Int J Consum Stud 42, 522532.Google Scholar
Christian, TJ (2009) Opportunity Costs Surrounding Exercise and Dietary Behaviors: Quantifying Trade-Offs between Commuting Time and Health-Related Activities. Working Paper. Providence, RI: Brown University.Google Scholar
Strickland, JR, Pizzorno, G, Kinghorn, AM et al. (2015) Worksite Influences on Obesogenic Behaviors in Low-Wage Workers in St Louis, Missouri, 2013–2014. Prev Chronic Dis 12, E66.Google Scholar
Mazumder, B & Seeskin, Z (2015) Breakfast skipping, extreme commutes, and the sex composition at birth. Biodemography Soc Biol 61, 187208.Google Scholar
Sam, L, Craig, T, Horgan, GW et al. (2019) Association between hours worked in paid employment and diet quality, frequency of eating out and consuming takeaways in the UK. Public Health Nutr 22, 33683376.Google Scholar
Oostenbach, LH, Lamb, KE, Crawford, D et al. (2022) Influence of work hours and commute time on food practices: a longitudinal analysis of the Household, Income and Labour Dynamics in Australia Survey. BMJ Open 12, e056212.Google Scholar
Victoria State Government (2019) 20-Minute Neighbourhoods: Creating a More Liveable Melbourne. Melbourne: The State of Victoria Department of Environment, Land, Water and Planning.Google Scholar
Portland Plan (2012) 20-Minute Neighborhoods Analysis: Background Report and Analysis Area Summaries. Portland: City of Portland Bureau of Planning and Sustainability.Google Scholar
Government of South Australia, Department of Planning (2017) Transport and Infrastructure. The 30-Year Plan for Greater Adelaide 2017 Update. Adelaide: Government of South Australia, Department of Planning, Transport and Infrastructure.Google Scholar
State of Victoria (2015) Plan Melbourne Refresh: Discussion Paper. Melbourne: Victorian Government.Google Scholar
Emery, T & Thrift, J (2021) 20-Minute Neighbourhoods – Creating Healthier, Active, Prosperous Communities: An Introduction for Council Planners in England. London: Town and Country Planning Association.Google Scholar
Australian Bureau of Statistics (2016) Greater Capital City Statistical Area (GCCSA) Canberra: Australian Bureau of Statistics; available at https://www.abs.gov.au/ausstats/[email protected]/Lookup/by%20Subject/1270.0.55.001∼July%202016∼Main%20Features∼Greater%20Capital%20City%20Statistical%20Areas%20(GCCSA)∼10003 (accessed November 2021).Google Scholar
Thornton, LE, Schroers, R-D, Lamb, KE et al. (2022) Operationalising the 20-minute neighbourhood. Int J Behav Nutr Physical Activity 19, 118.Google Scholar
Australian Bureau of Statistics (2018) Socio-Economic Indexes for Areas. Canberra: Australian Bureau of Statistics; available at https://www.abs.gov.au/websitedbs/censushome.nsf/home/seifa (accessed July 2021).Google Scholar
Australian Bureau of Statistics (2018) 2033.0.55.001 - Census of Population and Housing: Socio-Economic Indexes for Areas (SEIFA), Australia. Canberra: Australian Bureau of Statistics; available at https://www.abs.gov.au/ausstats/[email protected]/Lookup/by%20Subject/2033.0.55.001∼2016∼Main%20Features∼IRSAD∼20 (accessed October 2021).Google Scholar
Department of Environment, Land, Water & Planning (2021) Vicmap Address. Melbourne: Department of Environment, Land, Water & Planning; available at https://www.land.vic.gov.au/maps-and-spatial/spatial-data/vicmap-catalogue/vicmap-address (accessed December 2021).Google Scholar
Government of South Australia, Department for Infrastructure and Transport (2021) Roads: Government of South Australia. https://data.sa.gov.au/data/dataset/roads (accessed December 2021).Google Scholar
Ball, K, Cleland, V, Salmon, J et al. (2013) Cohort profile: the Resilience for Eating and Activity Despite Inequality (READI) study. Int J Epidemiol 42, 16291639.Google Scholar
Hebden, L, Kostan, E, O’Leary, F, et al. (2013) Validity and reproducibility of a food frequency questionnaire as a measure of recent dietary intake in young adults. PLoS One 8, e75156.Google Scholar
Fair Work (2021) Maximum Weekly Hours Canberra: Fair Work. https://www.fairwork.gov.au/tools-and-resources/fact-sheets/minimum-workplace-entitlements/maximum-weekly-hours (accessed November 2021).Google Scholar
Reynolds, AC, Bucks, RS, Paterson, JL et al. (2018) Working (longer than) 9 to 5: are there cardiometabolic health risks for young Australian workers who report longer than 38-h working weeks? Int Arch Occup Environ Health 91, 403412.Google Scholar
Aguinis, H (2004) Regression Analysis for Categorical Moderators. New York: Guilford Press.Google Scholar
Devine, CM, Farrell, TJ, Blake, CE et al. (2009) Work conditions and the food choice coping strategies of employed parents. J Nutr Educ Behav 41, 365370.Google Scholar
Cawley, J & Liu, F (2012) Maternal employment and childhood obesity: a search for mechanisms in time use data. Econ Hum Biol 10, 352364.Google Scholar
Devine, CM, Jastran, M, Jabs, J et al. (2006) ‘A lot of sacrifices:’ Work–family spillover and the food choice coping strategies of low-wage employed parents. Soc Sci Med 63, 25912603.Google Scholar
Turrell, G & Kavanagh, AM (2006) Socio-economic pathways to diet: modelling the association between socio-economic position and food purchasing behaviour. Public Health Nutr 9, 375383.Google Scholar
Lee, AJ, Kane, S, Ramsey, R et al. (2016) Testing the price and affordability of healthy and current (unhealthy) diets and the potential impacts of policy change in Australia. BMC Public Health 16, 122.Google Scholar
Ward, PR, Verity, F, Carter, P et al. (2013) Food stress in Adelaide: the relationship between low income and the affordability of healthy food. J Environ Public Health 2013, 110.Google Scholar
Shah, D (2009) Healthy worker effect phenomenon. Indian J Occup Environ Med 13, 77.Google Scholar
Erlich, R, Yngve, A & Wahlqvist, ML (2012) Cooking as a healthy behaviour. Public Health Nutr 15, 11391140.Google Scholar
Cole, SR, Platt, RW, Schisterman, EF et al. (2010) Illustrating bias due to conditioning on a collider. Int J Epidemiol 39, 417420.Google Scholar
Thornton, LE, Crawford, DA, Lamb, KE et al. (2017) Where do people purchase food? A novel approach to investigating food purchasing locations. Int J Health Geographic 16, 113.Google Scholar
Friel, S, Hattersley, L, Ford, L et al. (2015) Addressing inequities in healthy eating. Health Promotion Int 30, ii77ii88.Google Scholar
Restrepo, BJ & Zeballos, E (2020) The effect of working from home on major time allocations with a focus on food-related activities. Rev Econ Household 18, 11651187.Google Scholar
Wolfson, JA & Bleich, SN (2015) Is cooking at home associated with better diet quality or weight-loss intention? Public Health Nutr 18, 13971406.Google Scholar
OECD (2021) Working time and its regulation in OECD countries: how much do we work and how? In OECD Employment Outlook: Navigating the COVID-19 Crisis and Recovery, pp. 274371 [Organisation for Economic Cooperation and Development, editor]. Paris: OECD Publishing.Google Scholar
Fair Work Act (2009) Sect. 62 Maximum Weekly Hours. https://www.legislation.gov.au/Details/C2018C00512 (accessed November 2021).Google Scholar
Schliemann, D & Woodside, JV (2019) The effectiveness of dietary workplace interventions: a systematic review of systematic reviews. Public Health Nutr 22, 942955.Google Scholar
Hebert, JR, Clemow, L, Pbert, L et al. (1995) Social desirability bias in dietary self-report may compromise the validity of dietary intake measures. Int J Epidemiol 24, 389398.Google Scholar
Larson, PD (2005) A note on mail surveys and response rates in logistics research. J Bus Logist 26, 211222.Google Scholar
Souza, RV, Sarmento, RA, de Almeida, JC et al. (2019) The effect of shift work on eating habits: a systematic review. Scand J Work Environ Health 45, 721.Google Scholar
Figure 0

Table 1 Descriptive characteristics of participants

Figure 1

Fig. 1 IRR and OR of food consumption per work hours categories (n 699). Adjusted Poisson models of daily fruit and vegetables consumption and the variety of discretionary food types consumed weekly (based on the count of discretionary food types (takeaway, snacks and soft drinks) consumed at least weekly) per work hours categories. Adjusted ordinal models of the frequency of takeaway, snack and soft drink consumption per work hours categories. All models adjusted for age, gender, children in household, relationship status, neighbourhood SES, neighbourhood type and city. IRR and OR are displayed on log scale. (Reference category: up to full-time) (not working: 0 h, up to full-time: 1–38 h/week, overtime: >38 h/week). IRR, incidence rate ratio; SES, socio-economic status.

Figure 2

Table 2 IRR and OR of food consumption for combined work and commute hours among employed (n 378)

Figure 3

Fig. 2 IRR and OR of food consumption by neighbourhood type and work hours categories (n 699). Adjusted Poisson models of daily fruit and vegetables consumption and the variety of discretionary food types consumed weekly (based on the count of discretionary food types (takeaway, snacks, and soft drinks) consumed at least weekly) fitted with interaction terms. Adjusted ordinal models of the frequency of takeaway, snack and soft drink consumption fitted with interaction terms. All models adjusted for age, gender, children in household, relationship status, neighbourhood SES and city. IRR and OR are displayed on log scale. (Reference category: up to full-time). (Not working: 0 h, up to full time: 1–38 h/week, overtime: > 38 h/week). 20MN, 20-minute neighbourhood; IRR, incidence rate ratio; SES, socio-economic status.

Figure 4

Fig. 3 IRR and OR of food consumption by neighbourhood type for combined work and commute hours among those employed (n 378). Adjusted Poisson models of daily fruit and vegetables consumption and the variety of discretionary food types consumed weekly (based on the count of discretionary food types (takeaway, snacks, and soft drinks) consumed at least weekly) fitted with interaction terms. Adjusted ordinal models of the frequency of takeaway, snack and soft drink consumption fitted with interaction terms. All models adjusted for age, gender, children in household, relationship status, neighbourhood SES and city. IRR and OR are displayed on log scale. 20MN, 20-minute neighbourhood; IRR, incidence rate ratio; SES, socio-economic status.

Supplementary material: PDF

Oostenbach et al. supplementary material

Oostenbach et al. supplementary material

Download Oostenbach et al. supplementary material(PDF)
PDF 231.1 KB