Food Desert Assessment: An Analytical Framework for Comparing Utility of Metrics and Indices; Case Study of Key Factors, Concurrences, and Divergences

19 Pages Posted: 12 Apr 2021 Last revised: 27 Apr 2021

See all articles by Mohsen Salari

Mohsen Salari

Emory University School of Medicine

Mathew Reyna

Department of Biomedical Informatics, Emory University School of Medicine

Michael D. Kramer

Department of Epidemiology, Emory University

Herman A. Taylor

Cardiovascular Research Institute, Morehouse School of Medicine

Gari D. Clifford

Department of Biomedical Informatics, Emory University School of Medicine

Date Written: April 10, 2021

Abstract

Background: Low accessibility to healthy and nutritious food has been hypothesized to increase health disparities. Low-accessibility areas, called food deserts, are particularly commonplace in lower-income neighborhoods. However, indices for modeling food desert intensity are subjectively defined, and there is little agreement in the literature on their validity or relative strength.

Methods: We first propose an assessment framework for objectively defining and comparing the utility of food desert indices using machine learning models. We introduce the concept of food desert index utility score, based on which we can compare the strength of indices for describing the food environment. We then explore the effect of the geographic spatial resolution of models and the impact of neighborhood-level income on the utility of food desert indices.

Results: We observe the following: 1) Including healthy food suppliers only within a half-a-mile distance (as opposed to 1, 10, or 20 miles) from residents and discarding other food source variables leads to models of food environment with the highest utility scores. 2) The widely-accepted distinction between rural and urban areas in modeling food deserts adds little value to the utility score of the resulting models in our study region (Metro Atlanta). 3) The highest utility food desert index identified in our study region used a combination of access to food suppliers and the share of residents with low income and low access to vehicles. This approach achieved a utility score of 93% for identifying food deserts.

Keywords: Food Deserts, Geographic Information Systems, Health Equity, Population Health

JEL Classification: 114

Suggested Citation

Salari, Mohsen and Reyna, Matthew and Kramer, Michael D. and Taylor, Herman A. and Clifford, Gari D., Food Desert Assessment: An Analytical Framework for Comparing Utility of Metrics and Indices; Case Study of Key Factors, Concurrences, and Divergences (April 10, 2021). Available at SSRN: https://ssrn.com/abstract=3823677 or http://dx.doi.org/10.2139/ssrn.3823677

Mohsen Salari (Contact Author)

Emory University School of Medicine ( email )

1364 Clifton Rd. NE
Atlanta, GA 30322
United States

Matthew Reyna

Department of Biomedical Informatics, Emory University School of Medicine ( email )

1364 Clifton Rd. NE
Atlanta, GA 30322
United States

Michael D. Kramer

Department of Epidemiology, Emory University ( email )

201 Dowman Drive
Atlanta, GA 30322
United States

Herman A. Taylor

Cardiovascular Research Institute, Morehouse School of Medicine ( email )

720 Westview Drive
Atlanta, GA 30310-1495
United States

Gari D. Clifford

Department of Biomedical Informatics, Emory University School of Medicine ( email )

1364 Clifton Rd. NE
Atlanta, GA 30322
United States

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