Wisdom of the CROUD:  Development and validation of a patient-level prediction model for opioid use disorder using population-level claims data.

OBJECTIVE:Some patients who are given opioids for pain could develop opioid use disorder. If it was possible to identify patients who are at a higher risk of opioid use disorder, then clinicians could spend more time educating these patients about the risks. We develop and validate a model to predic...

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Main Authors: Jenna Marie Reps, M Soledad Cepeda, Patrick B Ryan
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0228632
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spelling doaj-75fa6db0cf5a4f848b32ea545b25df3d2021-03-03T21:30:20ZengPublic Library of Science (PLoS)PLoS ONE1932-62032020-01-01152e022863210.1371/journal.pone.0228632Wisdom of the CROUD:  Development and validation of a patient-level prediction model for opioid use disorder using population-level claims data.Jenna Marie RepsM Soledad CepedaPatrick B RyanOBJECTIVE:Some patients who are given opioids for pain could develop opioid use disorder. If it was possible to identify patients who are at a higher risk of opioid use disorder, then clinicians could spend more time educating these patients about the risks. We develop and validate a model to predict a person's future risk of opioid use disorder at the point before being dispensed their first opioid. METHODS:A cohort study patient-level prediction using four US claims databases with target populations ranging between 343,552 and 384,424 patients. The outcome was recorded diagnosis of opioid abuse, dependency or unspecified drug abuse as a proxy for opioid use disorder from 1 day until 365 days after the first opioid is dispensed. We trained a regularized logistic regression using candidate predictors consisting of demographics and any conditions, drugs, procedures or visits prior to the first opioid. We then selected the top predictors and created a simple 8 variable score model. RESULTS:We estimated the percentage of new users of opioids with reported opioid use disorder within a year to range between 0.04%-0.26% across US claims data. We developed an 8 variable Calculator of Risk for Opioid Use Disorder (CROUD) score, derived from the prediction models to stratify patients into higher and lower risk groups. The 8 baseline variables were age 15-29, medical history of substance abuse, mood disorder, anxiety disorder, low back pain, renal impairment, painful neuropathy and recent ER visit. 1.8% of people were in the high risk group for opioid use disorder and had a score > = 23 with the model obtaining a sensitivity of 13%, specificity of 98% and PPV of 1.14% for predicting opioid use disorder. CONCLUSIONS:CROUD could be used by clinicians to obtain personalized risk scores. CROUD could be used to further educate those at higher risk and to personalize new opioid dispensing guidelines such as urine testing. Due to the high false positive rate, it should not be used for contraindication or to restrict utilization.https://doi.org/10.1371/journal.pone.0228632
collection DOAJ
language English
format Article
sources DOAJ
author Jenna Marie Reps
M Soledad Cepeda
Patrick B Ryan
spellingShingle Jenna Marie Reps
M Soledad Cepeda
Patrick B Ryan
Wisdom of the CROUD:  Development and validation of a patient-level prediction model for opioid use disorder using population-level claims data.
PLoS ONE
author_facet Jenna Marie Reps
M Soledad Cepeda
Patrick B Ryan
author_sort Jenna Marie Reps
title Wisdom of the CROUD:  Development and validation of a patient-level prediction model for opioid use disorder using population-level claims data.
title_short Wisdom of the CROUD:  Development and validation of a patient-level prediction model for opioid use disorder using population-level claims data.
title_full Wisdom of the CROUD:  Development and validation of a patient-level prediction model for opioid use disorder using population-level claims data.
title_fullStr Wisdom of the CROUD:  Development and validation of a patient-level prediction model for opioid use disorder using population-level claims data.
title_full_unstemmed Wisdom of the CROUD:  Development and validation of a patient-level prediction model for opioid use disorder using population-level claims data.
title_sort wisdom of the croud:  development and validation of a patient-level prediction model for opioid use disorder using population-level claims data.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2020-01-01
description OBJECTIVE:Some patients who are given opioids for pain could develop opioid use disorder. If it was possible to identify patients who are at a higher risk of opioid use disorder, then clinicians could spend more time educating these patients about the risks. We develop and validate a model to predict a person's future risk of opioid use disorder at the point before being dispensed their first opioid. METHODS:A cohort study patient-level prediction using four US claims databases with target populations ranging between 343,552 and 384,424 patients. The outcome was recorded diagnosis of opioid abuse, dependency or unspecified drug abuse as a proxy for opioid use disorder from 1 day until 365 days after the first opioid is dispensed. We trained a regularized logistic regression using candidate predictors consisting of demographics and any conditions, drugs, procedures or visits prior to the first opioid. We then selected the top predictors and created a simple 8 variable score model. RESULTS:We estimated the percentage of new users of opioids with reported opioid use disorder within a year to range between 0.04%-0.26% across US claims data. We developed an 8 variable Calculator of Risk for Opioid Use Disorder (CROUD) score, derived from the prediction models to stratify patients into higher and lower risk groups. The 8 baseline variables were age 15-29, medical history of substance abuse, mood disorder, anxiety disorder, low back pain, renal impairment, painful neuropathy and recent ER visit. 1.8% of people were in the high risk group for opioid use disorder and had a score > = 23 with the model obtaining a sensitivity of 13%, specificity of 98% and PPV of 1.14% for predicting opioid use disorder. CONCLUSIONS:CROUD could be used by clinicians to obtain personalized risk scores. CROUD could be used to further educate those at higher risk and to personalize new opioid dispensing guidelines such as urine testing. Due to the high false positive rate, it should not be used for contraindication or to restrict utilization.
url https://doi.org/10.1371/journal.pone.0228632
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