Ougni Chakraborty, Kacie L Dragan, Ingrid Gould Ellen, Sherry A Glied, Renata E Howland, Daniel B Neill, Scarlett Wang
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引用次数: 0
Abstract
Improving housing quality may improve residents' health, but identifying buildings in poor repair is challenging. We developed a method to improve health-related building inspection targeting. Linking New York City Medicaid claims data to Landlord Watchlist data, we used machine learning to identify housing-sensitive health conditions correlated with a building's presence on the Watchlist. We identified twenty-three specific housing-sensitive health conditions in five broad categories consistent with the existing literature on housing and health. We used these results to generate a housing health index from building-level claims data that can be used to rank buildings by the likelihood that their poor quality is affecting residents' health. We found that buildings in the highest decile of the housing health index (controlling for building size, community district, and subsidization status) scored worse across a variety of housing quality indicators, validating our approach. We discuss how the housing health index could be used by local governments to target building inspections with a focus on improving health.
期刊介绍:
Health Affairs is a prestigious journal that aims to thoroughly examine significant health policy matters both domestically and globally. Our publication is committed to addressing issues that are relevant to both the private and public sectors. We are enthusiastic about inviting private and public decision-makers to contribute their innovative ideas in a publishable format. Health Affairs seeks to incorporate various perspectives from industry, labor, government, and academia, ensuring that our readers benefit from the diverse viewpoints within the healthcare field.