2023
DOI: 10.1007/s10109-023-00415-y
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Spatial machine learning for predicting physical inactivity prevalence from socioecological determinants in Chicago, Illinois, USA

Abstract: The increase in physical inactivity prevalence in the USA has been associated with neighborhood characteristics. While several studies have found an association between neighborhood and health, the relative importance of each component related to physical inactivity or how this value varies geographically (i.e., across different neighborhoods) remains unexplored. This study ranks the contribution of seven socioecological neighborhood factors to physical inactivity prevalence in Chicago, Illinois, using machine… Show more

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