| Literature DB >> 35277005 |
Deborah Salvo1, Pablo Lemoine2, Kathryn M Janda3, Nalini Ranjit3, Aida Nielsen3, Alexandra van den Berg3.
Abstract
Modifying the food environment of cities is a promising strategy for improving dietary behaviors, but using traditional empirical methods to test the effectiveness of these strategies remains challenging. We developed an agent-based model to simulate the food environment of Austin, Texas, USA, and to test the impact of different food access policies on vegetable consumption among low-income, predominantly Latino residents. The model was developed and calibrated using empirical data from the FRESH-Austin Study, a natural experiment. We simulated five policy scenarios: (1) business as usual; (2)-(4) expanding geographic and/or economic healthy food access via the Fresh for Less program (i.e., through farm stands, mobile markets, and healthy corner stores); and (5) expanding economic access to vegetables in supermarkets and small grocers. The model predicted that increasing geographic and/or economic access to healthy corner stores will not meaningfully improve vegetable intake, whilst implementing high discounts (>85%) on the cost of vegetables, or jointly increasing geographic and economic access to mobile markets or farm stands, will increase vegetable intake among low-income groups. Implementing discounts at supermarkets and small grocers is also predicted to be an effective policy for increasing vegetable consumption. This work highlights the utility of agent-based modeling for informing food access policies.Entities:
Keywords: dietary behaviors; food environment; food policy; low-income groups; systems science
Mesh:
Year: 2022 PMID: 35277005 PMCID: PMC8839639 DOI: 10.3390/nu14030646
Source DB: PubMed Journal: Nutrients ISSN: 2072-6643 Impact factor: 5.717
Sociodemographic and food-related behavioral characteristics of the FRESH-Austin Study cohort sample, at baseline (2018) [32].
| Variable | Strata/Category | %( |
|---|---|---|
| Total | 400 | |
| Gender | Female | 70.50 (282) |
| Male | 29.25 (117) | |
| Age | 43.89 [13.66] | |
| Race/Ethnicity | Hispanic/Latino | 54.41 (216) |
| Black | 10.08 (40) | |
| White/Other | 35.52 (141) | |
| Yearly household Income | Under USD 25,000 | 23.04 (88) |
| USD 25,001–USD 45,000 | 29.58 (113) | |
| USD 45,001–USD 65,000 | 18.32 (70) | |
| > USD 65,000 | 29.06 (111) | |
| Educational attainment | <High school | 12.12 (48) |
| High school or GED | 21.72 (86) | |
| Some college | 21.21 (84) | |
| Full college or more | 44.95 (178) | |
| Food assistance | Food bank user | 12.00 (48) |
| Free or reduced lunch user | 26.50 (106) | |
| SNAP user | 17.50 (70) | |
| WIC user | 9.25 (37) | |
| Food insecurity | Sometimes or often | 39.60 (158) |
| Never | 60.40 (241) | |
| Food purchasing frequency | Less than once per week | 14.79 (59) |
| Once per week | 42.36 (169) | |
| More than once per week | 42.86 (171) | |
| Shopping locations (non-mutually exclusive) | Supermarkets | 99.25 (397) |
| Small grocer | 64.75 (259) | |
| Convenience store | 22.25 (89) | |
| Farmer’s market | 12.25 (49) | |
| Mobile market | 15.25 (61) | |
| Farm stand | 13.00 (52) | |
| Most important factor when deciding where to shop for food | Quality of food | 52.63 (210) |
| Cost | 25.96 (101) | |
| Variety of food | 12.34 (48) | |
| Quality of store | 4.88 (19) | |
| Cultural variety | 2.83 (11) | |
| Vegetable purchasing (pounds/capita/week) | 4.65 [3.93] | |
| Vegetable intake (cups/day) | 2.01 [0.96] |
Figure 1Three cycles of agents’ decision-making process for food purchasing and consumption.
Figure 2Agent-based model calibration based on frequency of visits to supermarkets.
Figure 3Agent-based model simulated response to discounts in the cost of vegetables by income level.
Figure 4Agent-based model simulation results for Fresh for Less policy expansion scenarios.
Figure 5Agent-based model simulation results for expanded economic access to vegetables via small grocers and supermarkets scenario.