Using Deep Learning to Examine the Association between the Built Environment and Neighborhood Adult Obesity Prevalence
Adyasha Maharana, Elaine O. Nsoesie

TL;DR
This study uses deep learning on satellite images to quantify how features of the built environment are strongly associated with adult obesity rates across multiple US cities, providing a new approach for health-related environmental analysis.
Contribution
It introduces a novel method combining deep learning and satellite imagery to accurately assess the built environment's impact on obesity prevalence.
Findings
Built environment features explain 72-90% of obesity variation.
Predictions of obesity prevalence have correlations over 80%.
Features extracted can inform structural health interventions.
Abstract
More than one-third of the adult population in the United States is obese. Obesity has been linked to factors such as, genetics, diet, physical activity and the environment. However, evidence indicating associations between the built environment and obesity has varied across studies and geographical contexts. Here, we used deep learning and approximately 150,000 high resolution satellite images to extract features of the built environment. We then developed linear regression models to consistently quantify the association between the extracted features and obesity prevalence at the census tract level for six cities in the United States. The extracted features of the built environment explained 72% to 90% of the variation in obesity prevalence across cities. Outof-sample predictions were considerably high with correlations greater than 80% between predicted and true obesity prevalence…
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