Predictive Modelling of Service Pathways to Admission in Psychiatric Residential Treatment Facilities

Author:

Vsevolozhskaya Olga A.,Turner Brian W.,Shimshock Stephen M.,Harp Kathi L.H.,Tong Xiaoran,Lyons John S.

Abstract

AbstractObjectiveTo develop and test predictive models of admissions to a psychiatric residential treatment facility (PRTF) in transitional age youth using routinely collected health insurance claims and enrollment data.Data SourcesWe used outpatient service and pharmaceutical claims from Medicaid beneficiaries aged 6-to 21-years old in Kentucky for the years 2010-2017.Study DesignWe assessed over 1,250 predictors (derived from Medicaid claims data) prior to the first PRTF admission. An ensemble machine learning (ML) algorithm based on logistic regression models fitted to a random subsample of the original data was used to predict pathways to the first PRTF admission. Discrimination performance of the ML ensemble was evaluated by comparing predictions to actual outcomes and calculating area under the curve (AUC), accuracy, sensitivity, and specificity. Additionally, a multivariate logistic regression model was fit to investigate the contribution of the continuity of mental health care after the initial PRTF admission on the risk of readmission.Data Collection/Extraction MethodsWe identified N = 519,011 unique children and youth with at least one outpatient service or pharmaceutical claim during our study period (January 1, 2010 through December 31, 2017).Principal FindingsFewer than 0.5% of children and youth in Kentucky had an episode of PRTF admission. Despite a very low prevalence of PRTF admission, classification accuracy of the ML ensemble for identifying PRTF youth achieved over 90% accuracy (AUC = 0.96). Factors associated with the initial PRTF admission were having been prescribed anti-psychotic and anti-manic medications, and receiving outpatient psychiatric care. Within six months after the initial PRTF discharge, there was a surprising drop in service utilization with a large proportion of youth not appearing to receive any follow-up care.ConclusionsDespite the fact that admission into a PRTF was a relatively rare event, our findings suggest that it is a predictable event among youth with identified mental health conditions who are receiving care in the community.What is known on this topicAfter psychiatric hospitalization, PRTF treatment is the most expensive and restrictive intervention available to serve children and youth.Previous research examining predictors of PRTF entry using Medicaid reimbursement data showed that clinical factors were strong predictors of hospitalization.What this study addsWe provide a comprehensive analysis of the factors beyond clinical diagnoses that lead to PRTF entry.We also seek to identify whether any specific patterns of service and/or pharmacy claims utilization are associated with reducing the likelihood of readmission.

Publisher

Cold Spring Harbor Laboratory

Reference14 articles.

1. Centers for Medicare and Medicaid Services. Psychiatric Residential Treatment Facilities General Requirements and Conditions of Participation. 2015.

2. State variation in out-of-home Medicaid mental health services for children and youth: An examination of residential treatment and inpatient hospital services;Administration Policy in Mental Health and Mental Health Services Research,2010

3. Characteristics and behavioral outcomes for youth in group care and family-based care: A propensity score matching approach using national data;Journal of Emotional Behavioral Disorders,2012

4. A comparison of outcomes for children and youth in foster and residential group care across agencies;Children and Youth Services Review,2018

5. Health Care Financing Administration (HCFA). Medicaid Program; Use of Restraint and Seclusion in Psychiatric Residential Treatment Facilities Providing Psychiatric Services to Individuals Under Age 21. In: Department of Health and Human Services, ed. Vol 66. Federal Register 2001.

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