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Identifying factors associated with opioid cessation in a biracial sample using machine learning

AIM: Racial disparities in opioid use disorder (OUD) management exist, however, and there is limited research on factors that influence opioid cessation in different population groups. METHODS: We employed multiple machine learning prediction algorithms least absolute shrinkage and selection operato...

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Autores principales: Cox, Jiayi W., Sherva, Richard M., Lunetta, Kathryn L., Saitz, Richard, Kon, Mark, Kranzler, Henry R., Gelernter, Joel, Farrer, Lindsay A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7861053/
https://www.ncbi.nlm.nih.gov/pubmed/33554217
http://dx.doi.org/10.37349/emed.2020.00003
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author Cox, Jiayi W.
Sherva, Richard M.
Lunetta, Kathryn L.
Saitz, Richard
Kon, Mark
Kranzler, Henry R.
Gelernter, Joel
Farrer, Lindsay A.
author_facet Cox, Jiayi W.
Sherva, Richard M.
Lunetta, Kathryn L.
Saitz, Richard
Kon, Mark
Kranzler, Henry R.
Gelernter, Joel
Farrer, Lindsay A.
author_sort Cox, Jiayi W.
collection PubMed
description AIM: Racial disparities in opioid use disorder (OUD) management exist, however, and there is limited research on factors that influence opioid cessation in different population groups. METHODS: We employed multiple machine learning prediction algorithms least absolute shrinkage and selection operator, random forest, deep neural network, and support vector machine to assess factors associated with ceasing opioid use in a sample of 1,192 African Americans (AAs) and 2,557 individuals of European ancestry (EAs) who met Diagnostic and Statistical Manual of Mental Disorders, 5th Edition criteria for OUD. Values for nearly 4,000 variables reflecting demographics, alcohol and other drug use, general health, non-drug use behaviors, and diagnoses for other psychiatric disorders, were obtained for each participant from the Semi-Structured Assessment for Drug Dependence and Alcoholism, a detailed semi-structured interview. RESULTS: Support vector machine models performed marginally better on average than other machine learning methods with maximum prediction accuracies of 75.4% in AAs and 79.4% in EAs. Subsequent stepwise regression considered the 83 most highly ranked variables across all methods and models and identified less recent cocaine use (AAs: odds ratio (OR) = 1.82, P = 9.19 × 10(−5); EAs: OR = 1.91, P = 3.30 × 10(−15)), shorter duration of opioid use (AAs: OR = 0.55, P = 5.78 × 10(−6); EAs: OR = 0.69, P = 3.01 × 10(−7)), and older age (AAs: OR = 2.44, P = 1.41 × 10(−12); EAs: OR = 2.00, P = 5.74 × 10(−9)) as the strongest independent predictors of opioid cessation in both AAs and EAs. Attending self-help groups for OUD was also an independent predictor (P < 0.05) in both population groups, while less gambling severity (OR = 0.80, P = 3.32 × 10(−2)) was specific to AAs and post-traumatic stress disorder recovery (OR = 1.93, P = 7.88 × 10(−5)), recent antisocial behaviors (OR = 0.64, P = 2.69 × 10(−3)), and atheism (OR = 1.45, P = 1.34 × 10(−2)) were specific to EAs. Factors related to drug use comprised about half of the significant independent predictors in both AAs and EAs, with other predictors related to non-drug use behaviors, psychiatric disorders, overall health, and demographics. CONCLUSIONS: These proof-of-concept findings provide avenues for hypothesis-driven analysis, and will lead to further research on strategies to improve OUD management in EAs and AAs.
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spelling pubmed-78610532021-02-04 Identifying factors associated with opioid cessation in a biracial sample using machine learning Cox, Jiayi W. Sherva, Richard M. Lunetta, Kathryn L. Saitz, Richard Kon, Mark Kranzler, Henry R. Gelernter, Joel Farrer, Lindsay A. Explor Med Article AIM: Racial disparities in opioid use disorder (OUD) management exist, however, and there is limited research on factors that influence opioid cessation in different population groups. METHODS: We employed multiple machine learning prediction algorithms least absolute shrinkage and selection operator, random forest, deep neural network, and support vector machine to assess factors associated with ceasing opioid use in a sample of 1,192 African Americans (AAs) and 2,557 individuals of European ancestry (EAs) who met Diagnostic and Statistical Manual of Mental Disorders, 5th Edition criteria for OUD. Values for nearly 4,000 variables reflecting demographics, alcohol and other drug use, general health, non-drug use behaviors, and diagnoses for other psychiatric disorders, were obtained for each participant from the Semi-Structured Assessment for Drug Dependence and Alcoholism, a detailed semi-structured interview. RESULTS: Support vector machine models performed marginally better on average than other machine learning methods with maximum prediction accuracies of 75.4% in AAs and 79.4% in EAs. Subsequent stepwise regression considered the 83 most highly ranked variables across all methods and models and identified less recent cocaine use (AAs: odds ratio (OR) = 1.82, P = 9.19 × 10(−5); EAs: OR = 1.91, P = 3.30 × 10(−15)), shorter duration of opioid use (AAs: OR = 0.55, P = 5.78 × 10(−6); EAs: OR = 0.69, P = 3.01 × 10(−7)), and older age (AAs: OR = 2.44, P = 1.41 × 10(−12); EAs: OR = 2.00, P = 5.74 × 10(−9)) as the strongest independent predictors of opioid cessation in both AAs and EAs. Attending self-help groups for OUD was also an independent predictor (P < 0.05) in both population groups, while less gambling severity (OR = 0.80, P = 3.32 × 10(−2)) was specific to AAs and post-traumatic stress disorder recovery (OR = 1.93, P = 7.88 × 10(−5)), recent antisocial behaviors (OR = 0.64, P = 2.69 × 10(−3)), and atheism (OR = 1.45, P = 1.34 × 10(−2)) were specific to EAs. Factors related to drug use comprised about half of the significant independent predictors in both AAs and EAs, with other predictors related to non-drug use behaviors, psychiatric disorders, overall health, and demographics. CONCLUSIONS: These proof-of-concept findings provide avenues for hypothesis-driven analysis, and will lead to further research on strategies to improve OUD management in EAs and AAs. 2020-02-29 2020 /pmc/articles/PMC7861053/ /pubmed/33554217 http://dx.doi.org/10.37349/emed.2020.00003 Text en This is an Open Access article licensed under a Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, sharing, adaptation, distribution and reproduction in any medium or format, for any purpose, even commercially, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made.
spellingShingle Article
Cox, Jiayi W.
Sherva, Richard M.
Lunetta, Kathryn L.
Saitz, Richard
Kon, Mark
Kranzler, Henry R.
Gelernter, Joel
Farrer, Lindsay A.
Identifying factors associated with opioid cessation in a biracial sample using machine learning
title Identifying factors associated with opioid cessation in a biracial sample using machine learning
title_full Identifying factors associated with opioid cessation in a biracial sample using machine learning
title_fullStr Identifying factors associated with opioid cessation in a biracial sample using machine learning
title_full_unstemmed Identifying factors associated with opioid cessation in a biracial sample using machine learning
title_short Identifying factors associated with opioid cessation in a biracial sample using machine learning
title_sort identifying factors associated with opioid cessation in a biracial sample using machine learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7861053/
https://www.ncbi.nlm.nih.gov/pubmed/33554217
http://dx.doi.org/10.37349/emed.2020.00003
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