Predicting Successful Placements for Youth in Child Welfare with Machine Learning

Out-of-home placement decisions have extremely high stakes for the present and future well-being of children in care because some placement types, and multiple placements, are associated with poor outcomes. We propose that a clinical decision support system (CDSS) using existing data about children...

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Published inChildren and youth services review Vol. 153; p. 107117
Main Authors Trudeau, Kimberlee J, Yang, Jichen, Di, Jiaming, Lu, Yi, Kraus, David R
Format Journal Article
LanguageEnglish
Published England 01.10.2023
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Summary:Out-of-home placement decisions have extremely high stakes for the present and future well-being of children in care because some placement types, and multiple placements, are associated with poor outcomes. We propose that a clinical decision support system (CDSS) using existing data about children and their previous placement success could inform future placement decision-making for their peers. The objective of this study was to test the feasibility of developing machine learning models to predict the best level of care placement (i.e., the placement with the highest likelihood of doing well in treatment) based on each youth's behavioral health needs and characteristics. We developed machine learning models to predict the probability of each youth's treatment success in psychiatric residential care (i.e., Psychiatric Residential Treatment Facility [PRTF]) versus any other placement (AUROCs > 0.70) using data collected in standard care at a behavioral health organization. Placement recommendations based on these machine learning models distinguished between youth who did well in residential care versus non-residential care (e.g., 80% of those who received care in the recommended setting with the highest predicted likelihood of success had above average risk-adjusted outcomes). Then we developed and validated machine learning models to predict the probability of each youth's treatment success across specific placement types in a state-wide system, achieving an average AUROC score of greater than 0.75. Machine learning models based on risk-adjusted behavioral health and functional data show promise in predicting positive placement outcomes and informing future placement decisions for youth in care. Related ethical considerations are discussed.
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Authors’ contribution statements: Kimberlee J. Trudeau: Conceptualization; Funding acquisition; Methodology; Writing - original draft preparation; Writing - review and editing Jichen Yang: Conceptualization; Methodology; Formal analysis and investigation; Writing - review and editing Jiaming Di: Methodology; Formal analysis and investigation; Writing - review and editing Yi Lu: Formal analysis and investigation; Writing - review and editing David R. Kraus: Conceptualization; Methodology; Supervision; Writing - review and editing
AUTHOR STATEMENT
ISSN:0190-7409
1873-7765
DOI:10.1016/j.childyouth.2023.107117