An algorithm using administrative data to measure adverse childhood experiences (ADM‐ACE)

Objective To develop an algorithm using administrative data to measure adverse childhood experiences (ADM‐ACE) within routinely collected health insurance claims and enrollment data. Data Sources We used claims and enrollment data from Tennessee's Medicaid program (TennCare) in 2018. Study Desi...

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Bibliographic Details
Published inHealth services research Vol. 57; no. 4; pp. 963 - 972
Main Authors Henkhaus, Laura E., Gonzales, Gilbert, Buntin, Melinda B.
Format Journal Article
LanguageEnglish
Published Oxford, UK Blackwell Publishing Ltd 01.08.2022
Health Research and Educational Trust
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ISSN0017-9124
1475-6773
1475-6773
DOI10.1111/1475-6773.13972

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Summary:Objective To develop an algorithm using administrative data to measure adverse childhood experiences (ADM‐ACE) within routinely collected health insurance claims and enrollment data. Data Sources We used claims and enrollment data from Tennessee's Medicaid program (TennCare) in 2018. Study Design We studied five types of ACEs: maltreatment and peer violence, foster care and family disruption, maternal mental illness, maternal substance use disorder, and abuse of the mother. We used diagnosis and procedure codes, prescription drug fills, and enrollment files to develop the ADM‐ACE, which we applied to measure the prevalence of ACEs and to examine prevalence by demographic characteristics among our sample of children in TennCare. We compared ADM‐ACE prevalence to child welfare records and survey results from Tennessee. Data Collection/Extraction Methods Our study sample included children aged 0–17 years who were linked to their mothers if also enrolled in TennCare in 2018 (N = 763,836 children). Principal Findings Approximately 19.2% of children in TennCare had indicators for ADM‐ACEs. The prevalence of ACEs was higher among children who were younger (p < 0.001), non‐Hispanic white or black (compared to Hispanic) (p < 0.001), and children residing in rural versus urban counties (p < 0.001). The prevalence of maltreatment identified through the ADM‐ACE (1.6%) falls between the percent of children in Tennessee who were reported to child welfare authorities and the percent for whom reports of maltreatment were substantiated. Comparison with survey reports from Tennessee parents suggests an advantage in measuring maternal mental illness with the ADM‐ACE using health insurance claims data. Conclusions The ADM‐ACE can be applied to health encounter data to study and monitor the prevalence of certain ACEs, their association with health conditions, and the effects of policies on reducing exposure to ACEs or improving health outcomes for children with ACEs.
Bibliography:Funding information
Robert Wood Johnson Foundation, Grant/Award Number: #75821
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Funding information Robert Wood Johnson Foundation, Grant/Award Number: #75821
ISSN:0017-9124
1475-6773
1475-6773
DOI:10.1111/1475-6773.13972