Cargando…

Predicting overdose among individuals prescribed opioids using routinely collected healthcare utilization data

INTRODUCTION: With increasing rates of opioid overdoses in the US, a surveillance tool to identify high-risk patients may help facilitate early intervention. OBJECTIVE: To develop an algorithm to predict overdose using routinely-collected healthcare databases. METHODS: Within a US commercial claims...

Descripción completa

Detalles Bibliográficos
Autores principales: Sun, Jenny W., Franklin, Jessica M., Rough, Kathryn, Desai, Rishi J., Hernández-Díaz, Sonia, Huybrechts, Krista F., Bateman, Brian T.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7575098/
https://www.ncbi.nlm.nih.gov/pubmed/33079968
http://dx.doi.org/10.1371/journal.pone.0241083
_version_ 1783597749624635392
author Sun, Jenny W.
Franklin, Jessica M.
Rough, Kathryn
Desai, Rishi J.
Hernández-Díaz, Sonia
Huybrechts, Krista F.
Bateman, Brian T.
author_facet Sun, Jenny W.
Franklin, Jessica M.
Rough, Kathryn
Desai, Rishi J.
Hernández-Díaz, Sonia
Huybrechts, Krista F.
Bateman, Brian T.
author_sort Sun, Jenny W.
collection PubMed
description INTRODUCTION: With increasing rates of opioid overdoses in the US, a surveillance tool to identify high-risk patients may help facilitate early intervention. OBJECTIVE: To develop an algorithm to predict overdose using routinely-collected healthcare databases. METHODS: Within a US commercial claims database (2011–2015), patients with ≥1 opioid prescription were identified. Patients were randomly allocated into the training (50%), validation (25%), or test set (25%). For each month of follow-up, pooled logistic regression was used to predict the odds of incident overdose in the next month based on patient history from the preceding 3–6 months (time-updated), using elastic net for variable selection. As secondary analyses, we explored whether using simpler models (few predictors, baseline only) or different analytic methods (random forest, traditional regression) influenced performance. RESULTS: We identified 5,293,880 individuals prescribed opioids; 2,682 patients (0.05%) had an overdose during follow-up (mean: 17.1 months). On average, patients who overdosed were younger and had more diagnoses and prescriptions. The elastic net model achieved good performance (c-statistic 0.887, 95% CI 0.872–0.902; sensitivity 80.2, specificity 80.1, PPV 0.21, NPV 99.9 at optimal cutpoint). It outperformed simpler models based on few predictors (c-statistic 0.825, 95% CI 0.808–0.843) and baseline predictors only (c-statistic 0.806, 95% CI 0.787–0.26). Different analytic techniques did not substantially influence performance. In the final algorithm based on elastic net, the strongest predictors were age 18–25 years (OR: 2.21), prior suicide attempt (OR: 3.68), opioid dependence (OR: 3.14). CONCLUSIONS: We demonstrate that sophisticated algorithms using healthcare databases can be predictive of overdose, creating opportunities for active monitoring and early intervention.
format Online
Article
Text
id pubmed-7575098
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-75750982020-10-26 Predicting overdose among individuals prescribed opioids using routinely collected healthcare utilization data Sun, Jenny W. Franklin, Jessica M. Rough, Kathryn Desai, Rishi J. Hernández-Díaz, Sonia Huybrechts, Krista F. Bateman, Brian T. PLoS One Research Article INTRODUCTION: With increasing rates of opioid overdoses in the US, a surveillance tool to identify high-risk patients may help facilitate early intervention. OBJECTIVE: To develop an algorithm to predict overdose using routinely-collected healthcare databases. METHODS: Within a US commercial claims database (2011–2015), patients with ≥1 opioid prescription were identified. Patients were randomly allocated into the training (50%), validation (25%), or test set (25%). For each month of follow-up, pooled logistic regression was used to predict the odds of incident overdose in the next month based on patient history from the preceding 3–6 months (time-updated), using elastic net for variable selection. As secondary analyses, we explored whether using simpler models (few predictors, baseline only) or different analytic methods (random forest, traditional regression) influenced performance. RESULTS: We identified 5,293,880 individuals prescribed opioids; 2,682 patients (0.05%) had an overdose during follow-up (mean: 17.1 months). On average, patients who overdosed were younger and had more diagnoses and prescriptions. The elastic net model achieved good performance (c-statistic 0.887, 95% CI 0.872–0.902; sensitivity 80.2, specificity 80.1, PPV 0.21, NPV 99.9 at optimal cutpoint). It outperformed simpler models based on few predictors (c-statistic 0.825, 95% CI 0.808–0.843) and baseline predictors only (c-statistic 0.806, 95% CI 0.787–0.26). Different analytic techniques did not substantially influence performance. In the final algorithm based on elastic net, the strongest predictors were age 18–25 years (OR: 2.21), prior suicide attempt (OR: 3.68), opioid dependence (OR: 3.14). CONCLUSIONS: We demonstrate that sophisticated algorithms using healthcare databases can be predictive of overdose, creating opportunities for active monitoring and early intervention. Public Library of Science 2020-10-20 /pmc/articles/PMC7575098/ /pubmed/33079968 http://dx.doi.org/10.1371/journal.pone.0241083 Text en © 2020 Sun et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Sun, Jenny W.
Franklin, Jessica M.
Rough, Kathryn
Desai, Rishi J.
Hernández-Díaz, Sonia
Huybrechts, Krista F.
Bateman, Brian T.
Predicting overdose among individuals prescribed opioids using routinely collected healthcare utilization data
title Predicting overdose among individuals prescribed opioids using routinely collected healthcare utilization data
title_full Predicting overdose among individuals prescribed opioids using routinely collected healthcare utilization data
title_fullStr Predicting overdose among individuals prescribed opioids using routinely collected healthcare utilization data
title_full_unstemmed Predicting overdose among individuals prescribed opioids using routinely collected healthcare utilization data
title_short Predicting overdose among individuals prescribed opioids using routinely collected healthcare utilization data
title_sort predicting overdose among individuals prescribed opioids using routinely collected healthcare utilization data
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7575098/
https://www.ncbi.nlm.nih.gov/pubmed/33079968
http://dx.doi.org/10.1371/journal.pone.0241083
work_keys_str_mv AT sunjennyw predictingoverdoseamongindividualsprescribedopioidsusingroutinelycollectedhealthcareutilizationdata
AT franklinjessicam predictingoverdoseamongindividualsprescribedopioidsusingroutinelycollectedhealthcareutilizationdata
AT roughkathryn predictingoverdoseamongindividualsprescribedopioidsusingroutinelycollectedhealthcareutilizationdata
AT desairishij predictingoverdoseamongindividualsprescribedopioidsusingroutinelycollectedhealthcareutilizationdata
AT hernandezdiazsonia predictingoverdoseamongindividualsprescribedopioidsusingroutinelycollectedhealthcareutilizationdata
AT huybrechtskristaf predictingoverdoseamongindividualsprescribedopioidsusingroutinelycollectedhealthcareutilizationdata
AT batemanbriant predictingoverdoseamongindividualsprescribedopioidsusingroutinelycollectedhealthcareutilizationdata