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Sex differences in factors predicting post‐treatment opioid use

Background and aims Several reports have documented risk factors for opioid use following treatment discharge, yet few have assessed sex differences, and no study has assessed risk using contemporary machine learning approaches. The goal of the present paper was to inform treatments for opioid use d...

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Published in:Addiction (Abingdon, England) England), 2021-08, Vol.116 (8), p.2116-2126
Main Authors: Davis, Jordan P., Eddie, David, Prindle, John, Dworkin, Emily R., Christie, Nina C., Saba, Shaddy, DiGuiseppi, Graham T., Clapp, John D., Kelly, John F.
Format: Article
Language:English
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Summary:Background and aims Several reports have documented risk factors for opioid use following treatment discharge, yet few have assessed sex differences, and no study has assessed risk using contemporary machine learning approaches. The goal of the present paper was to inform treatments for opioid use disorder (OUD) by exploring individual factors for each sex that are most strongly associated with opioid use following treatment. Design Secondary analysis of Global Appraisal of Individual Needs (GAIN) database with follow‐ups at 3, 6 and 12 months post‐OUD treatment discharge, exploring demographic, psychological and behavioral variables that predict post‐treatment opioid use. Setting One hundred and thity‐seven treatment sites across the United States. Participants Adolescents (26.9%), young adults (40.8%) and adults (32.3%) in treatment for OUD. The sample (n = 1,126) was 54.9% male, 66.1% white, 20% Hispanic, 9.8% multi‐race/ethnicity, 2.8% African American and 1.3% other. Measurement Primary outcome was latency to opioid use over 1 year following treatment admission. Results For women, regularized Cox regression indicated that greater withdrawal symptoms [hazard ratio (HR) = 1.31], younger age (HR = 0.88), prior substance use disorder (SUD) treatment (HR = 1.11) and treatment resistance (HR = 1.11) presented the largest hazard for post‐treatment opioid use, while a random survival forest identified and ranked substance use problems [variable importance (VI) = 0.007], criminal justice involvement (VI = 0.006), younger age (VI = 0.005) and greater withdrawal symptoms (VI = 0.004) as the greatest risk factors. For men, Cox regression indicated greater conduct disorder symptoms (HR = 1.34), younger age (HR = 0.76) and multiple SUDs (HR = 1.27) were most strongly associated with post‐treatment opioid use, while a random survival forests ranked younger age (VI = 0.023), greater conduct disorder symptoms (VI = 0.010), having multiple substance use disorders (VI = 0.010) and criminal justice involvement (VI = 0.006) as the greatest risk factors. Conclusion Risk factors for relapse to opioid use following opioid use disorder treatment appear to be, for women, greater substance use problems and withdrawal symptoms and, for men, younger age and histories of conduct disorder and multiple substance use disorder.
ISSN:0965-2140
1360-0443
DOI:10.1111/add.15396