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Using machine learning to study the effect of medication adherence in Opioid Use Disorder

BACKGROUND: Opioid Use Disorder (OUD) and opioid overdose (OD) impose huge social and economic burdens on society and health care systems. Research suggests that Medication for Opioid Use Disorder (MOUD) is effective in the treatment of OUD. We use machine learning to investigate the association bet...

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Autores principales: Warren, David, Marashi, Amir, Siddiqui, Arwa, Eijaz, Asim Adnan, Pradhan, Pooja, Lim, David, Call, Gary, Dras, Mark
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9754174/
https://www.ncbi.nlm.nih.gov/pubmed/36520864
http://dx.doi.org/10.1371/journal.pone.0278988
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author Warren, David
Marashi, Amir
Siddiqui, Arwa
Eijaz, Asim Adnan
Pradhan, Pooja
Lim, David
Call, Gary
Dras, Mark
author_facet Warren, David
Marashi, Amir
Siddiqui, Arwa
Eijaz, Asim Adnan
Pradhan, Pooja
Lim, David
Call, Gary
Dras, Mark
author_sort Warren, David
collection PubMed
description BACKGROUND: Opioid Use Disorder (OUD) and opioid overdose (OD) impose huge social and economic burdens on society and health care systems. Research suggests that Medication for Opioid Use Disorder (MOUD) is effective in the treatment of OUD. We use machine learning to investigate the association between patient’s adherence to prescribed MOUD along with other risk factors in patients diagnosed with OUD and potential OD following the treatment. METHODS: We used longitudinal Medicaid claims for two selected US states to subset a total of 26,685 patients with OUD diagnosis and appropriate Medicaid coverage between 2015 and 2018. We considered patient age, sex, region level socio-economic data, past comorbidities, MOUD prescription type and other selected prescribed medications along with the Proportion of Days Covered (PDC) as a proxy for adherence to MOUD as predictive variables for our model, and overdose events as the dependent variable. We applied four different machine learning classifiers and compared their performance, focusing on the importance and effect of PDC as a variable. We also calculated results based on risk stratification, where our models separate high risk individuals from low risk, to assess usefulness in clinical decision-making. RESULTS: Among the selected classifiers, the XGBoost classifier has the highest AUC (0.77) closely followed by the Logistic Regression (LR). The LR has the best stratification result: patients in the top 10% of risk scores account for 35.37% of overdose events over the next 12 month observation period. PDC score calculated over the treatment window is one of the most important features, with better PDC lowering risk of OD, as expected. In terms of risk stratification results, of the 35.37% of overdose events that the predictive model could detect within the top 10% of risk scores, 72.3% of these cases were non-adherent in terms of their medication (PDC <0.8). Targeting the top 10% outcome of the predictive model could decrease the total number of OD events by 10.4%. CONCLUSIONS: The best performing models allow identification of, and focus on, those at high risk of opioid overdose. With MOUD being included for the first time as a factor of interest, and being identified as a significant factor, outreach activities related to MOUD can be targeted at those at highest risk.
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spelling pubmed-97541742022-12-16 Using machine learning to study the effect of medication adherence in Opioid Use Disorder Warren, David Marashi, Amir Siddiqui, Arwa Eijaz, Asim Adnan Pradhan, Pooja Lim, David Call, Gary Dras, Mark PLoS One Research Article BACKGROUND: Opioid Use Disorder (OUD) and opioid overdose (OD) impose huge social and economic burdens on society and health care systems. Research suggests that Medication for Opioid Use Disorder (MOUD) is effective in the treatment of OUD. We use machine learning to investigate the association between patient’s adherence to prescribed MOUD along with other risk factors in patients diagnosed with OUD and potential OD following the treatment. METHODS: We used longitudinal Medicaid claims for two selected US states to subset a total of 26,685 patients with OUD diagnosis and appropriate Medicaid coverage between 2015 and 2018. We considered patient age, sex, region level socio-economic data, past comorbidities, MOUD prescription type and other selected prescribed medications along with the Proportion of Days Covered (PDC) as a proxy for adherence to MOUD as predictive variables for our model, and overdose events as the dependent variable. We applied four different machine learning classifiers and compared their performance, focusing on the importance and effect of PDC as a variable. We also calculated results based on risk stratification, where our models separate high risk individuals from low risk, to assess usefulness in clinical decision-making. RESULTS: Among the selected classifiers, the XGBoost classifier has the highest AUC (0.77) closely followed by the Logistic Regression (LR). The LR has the best stratification result: patients in the top 10% of risk scores account for 35.37% of overdose events over the next 12 month observation period. PDC score calculated over the treatment window is one of the most important features, with better PDC lowering risk of OD, as expected. In terms of risk stratification results, of the 35.37% of overdose events that the predictive model could detect within the top 10% of risk scores, 72.3% of these cases were non-adherent in terms of their medication (PDC <0.8). Targeting the top 10% outcome of the predictive model could decrease the total number of OD events by 10.4%. CONCLUSIONS: The best performing models allow identification of, and focus on, those at high risk of opioid overdose. With MOUD being included for the first time as a factor of interest, and being identified as a significant factor, outreach activities related to MOUD can be targeted at those at highest risk. Public Library of Science 2022-12-15 /pmc/articles/PMC9754174/ /pubmed/36520864 http://dx.doi.org/10.1371/journal.pone.0278988 Text en © 2022 Warren et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://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
Warren, David
Marashi, Amir
Siddiqui, Arwa
Eijaz, Asim Adnan
Pradhan, Pooja
Lim, David
Call, Gary
Dras, Mark
Using machine learning to study the effect of medication adherence in Opioid Use Disorder
title Using machine learning to study the effect of medication adherence in Opioid Use Disorder
title_full Using machine learning to study the effect of medication adherence in Opioid Use Disorder
title_fullStr Using machine learning to study the effect of medication adherence in Opioid Use Disorder
title_full_unstemmed Using machine learning to study the effect of medication adherence in Opioid Use Disorder
title_short Using machine learning to study the effect of medication adherence in Opioid Use Disorder
title_sort using machine learning to study the effect of medication adherence in opioid use disorder
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9754174/
https://www.ncbi.nlm.nih.gov/pubmed/36520864
http://dx.doi.org/10.1371/journal.pone.0278988
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