Predicting blood lead in Uruguayan children: Individual- vs neighborhood-level ensemble learners
Seth Frndak,
Elena I. Queirolo,
Nelly Mañay
et al.
Abstract:Predicting childhood blood lead levels (BLLs) has had mixed success, and it is unclear if individual- or neighborhood-level variables are most predictive. An ensemble machine learning (ML) approach to identify the most relevant predictors of BLL ≥2μg/dL in urban children was implemented. A cross-sectional sample of 603 children (~7 years of age) recruited between 2009–2019 from Montevideo, Uruguay participated in the study. 77 individual- and 32 neighborhood-level variables were used to predict BLLs ≥2μg/dL. T… Show more
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