Ecological associations between obesity prevalence and neighborhood determinants using spatial machine learning in Chicago, Illinois, USA

A Lotfata, S Georganos, S Kalogirou, Marco Helbich

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

Some studies have established relationships between neighborhood conditions and health. However, they neither evaluate the relative importance of neighborhood components in increasing obesity nor, more crucially, how these neighborhood factors vary geographically. We use the geographical random forest to analyze each factor’s spatial variation and contribution to explaining tract-level obesity prevalence in Chicago, Illinois, United States. According to our findings, the geographical random forest outperforms the typically used nonspatial random forest model in terms of the out-of-bag prediction accuracy. In the Chicago tracts, poverty is the most important factor, whereas biking is the least important. Crime is the most critical factor in explaining obesity prevalence in Chicago’s south suburbs while poverty appears to be the most important predictor in the city’s south. For policy planning and evidence-based decision-making, our results suggest that social and ecological patterns of neighborhood characteristics are associated with obesity prevalence. Consequently, interventions should be devised and implemented based on local circumstances rather than generic notions of prevention strategies and healthcare barriers that apply to Chicago.

Original languageEnglish
Article number550
Number of pages14
JournalISPRS International Journal of Geo-Information
Volume11
Issue number11
DOIs
Publication statusPublished - Nov 2022

Keywords

  • Geographical random forest
  • Neighborhoods
  • Obesity
  • Spatial analytics
  • Spatial machine learning
  • Spatial variation

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