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Advanced models for improved prediction of opioid-related overdose and suicide events among Veterans using administrative healthcare data

Veterans suffer disproportionate health impacts from the opioid epidemic, including overdose, suicide, and death. Prediction models based on electronic medical record data can be powerful tools for identifying patients at greatest risk of such outcomes. The Veterans Health Administration implemented...

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Autores principales: Ward, Ralph, Weeda, Erin, Taber, David J., Axon, Robert Neal, Gebregziabher, Mulugeta
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer US 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8561350/
https://www.ncbi.nlm.nih.gov/pubmed/34744496
http://dx.doi.org/10.1007/s10742-021-00263-7
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author Ward, Ralph
Weeda, Erin
Taber, David J.
Axon, Robert Neal
Gebregziabher, Mulugeta
author_facet Ward, Ralph
Weeda, Erin
Taber, David J.
Axon, Robert Neal
Gebregziabher, Mulugeta
author_sort Ward, Ralph
collection PubMed
description Veterans suffer disproportionate health impacts from the opioid epidemic, including overdose, suicide, and death. Prediction models based on electronic medical record data can be powerful tools for identifying patients at greatest risk of such outcomes. The Veterans Health Administration implemented the Stratification Tool for Opioid Risk Mitigation (STORM) in 2018. In this study we propose changes to the original STORM model and propose alternative models that improve risk prediction performance. The best of these proposed models uses a multivariate generalized linear mixed modeling (mGLMM) approach to produce separate predictions for overdose and suicide-related events (SRE) rather than a single prediction for combined outcomes. Further improvements include incorporation of additional data sources and new predictor variables in a longitudinal setting. Compared to a modified version of the STORM model with the same outcome, predictor and interaction terms, our proposed model has a significantly better prediction performance in terms of AUC (84% vs. 77%) and sensitivity (71% vs. 66%). The mGLMM performed particularly well in identifying patients at risk for SREs, where 72% of actual events were accurately predicted among patients with the 100,000 highest risk scores compared with 49.7% for the modified STORM model. The mGLMM’s strong performance in identifying true cases (sensitivity) among this highest risk group was the most important improvement given the model’s primary purpose for accurately identifying patients at most risk for adverse outcomes such that they are prioritized to receive risk mitigation interventions. Some predictors in the proposed model have markedly different associations with overdose and suicide risks, which will allow clinicians to better target interventions to the most relevant risks. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s10742-021-00263-7.
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spelling pubmed-85613502021-11-02 Advanced models for improved prediction of opioid-related overdose and suicide events among Veterans using administrative healthcare data Ward, Ralph Weeda, Erin Taber, David J. Axon, Robert Neal Gebregziabher, Mulugeta Health Serv Outcomes Res Methodol Article Veterans suffer disproportionate health impacts from the opioid epidemic, including overdose, suicide, and death. Prediction models based on electronic medical record data can be powerful tools for identifying patients at greatest risk of such outcomes. The Veterans Health Administration implemented the Stratification Tool for Opioid Risk Mitigation (STORM) in 2018. In this study we propose changes to the original STORM model and propose alternative models that improve risk prediction performance. The best of these proposed models uses a multivariate generalized linear mixed modeling (mGLMM) approach to produce separate predictions for overdose and suicide-related events (SRE) rather than a single prediction for combined outcomes. Further improvements include incorporation of additional data sources and new predictor variables in a longitudinal setting. Compared to a modified version of the STORM model with the same outcome, predictor and interaction terms, our proposed model has a significantly better prediction performance in terms of AUC (84% vs. 77%) and sensitivity (71% vs. 66%). The mGLMM performed particularly well in identifying patients at risk for SREs, where 72% of actual events were accurately predicted among patients with the 100,000 highest risk scores compared with 49.7% for the modified STORM model. The mGLMM’s strong performance in identifying true cases (sensitivity) among this highest risk group was the most important improvement given the model’s primary purpose for accurately identifying patients at most risk for adverse outcomes such that they are prioritized to receive risk mitigation interventions. Some predictors in the proposed model have markedly different associations with overdose and suicide risks, which will allow clinicians to better target interventions to the most relevant risks. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s10742-021-00263-7. Springer US 2021-11-02 2022 /pmc/articles/PMC8561350/ /pubmed/34744496 http://dx.doi.org/10.1007/s10742-021-00263-7 Text en © This is a U.S. government work and not under copyright protection in the U.S.; foreign copyright protection may apply 2021 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Article
Ward, Ralph
Weeda, Erin
Taber, David J.
Axon, Robert Neal
Gebregziabher, Mulugeta
Advanced models for improved prediction of opioid-related overdose and suicide events among Veterans using administrative healthcare data
title Advanced models for improved prediction of opioid-related overdose and suicide events among Veterans using administrative healthcare data
title_full Advanced models for improved prediction of opioid-related overdose and suicide events among Veterans using administrative healthcare data
title_fullStr Advanced models for improved prediction of opioid-related overdose and suicide events among Veterans using administrative healthcare data
title_full_unstemmed Advanced models for improved prediction of opioid-related overdose and suicide events among Veterans using administrative healthcare data
title_short Advanced models for improved prediction of opioid-related overdose and suicide events among Veterans using administrative healthcare data
title_sort advanced models for improved prediction of opioid-related overdose and suicide events among veterans using administrative healthcare data
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8561350/
https://www.ncbi.nlm.nih.gov/pubmed/34744496
http://dx.doi.org/10.1007/s10742-021-00263-7
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