Mousavi Mohammad, Sticinski Ethel Virginia, Hill E Carly, Brousseau Natalie M, Hulsey Jessica, Morrison Lynn M, Kelly John F, Fox Annie B, Earnshaw Valerie A
Department of Human Development and Family Sciences, University of Delaware, 111 Alison Hall West, Newark, DE 19716, USA.
Institute for Collaboration on Health, Intervention, and Policy, University of Connecticut, 2006 Hillside Road, Unit 1248, Storrs, CT 06269-1248, USA.
J Subst Use. 2025 Jul 7. doi: 10.1080/14659891.2025.2529806.
Individuals who are in recovery from opioid use disorder experience enacted stigma, which can undermine treatment retention and recovery. Stronger understanding of who is at risk of experiencing enacted stigma can inform intervention efforts to reduce experiences of enacted stigma, enhance wellbeing, and promote treatment outcomes among people in recovery from OUD. The current study applies a machine learning framework to examine predictors of enacted stigma among people in recovery from OUD.
This study employed a longitudinal approach, with n=112 participants responding to surveys before a possible disclosure and again after three months. We tested three different machine learning models and used a variety of performance metrics to evaluate model performance.
The random forest model performed the best with an R-squared of 0.85, indicating that our predictors explained 85% of the variance in enacted stigma. Important predictors of enacted stigma were recovery duration, age, disclosure, current issues with drugs, and sobriety commitment.
Individuals who are in recovery for a shorter time, did not disclose, have greater issues with drugs, and are younger were at higher risk of experiencing enacted stigma. Interventions may be needed to address stigma among people with these characteristics in treatment for OUD.
从阿片类药物使用障碍中康复的个体经历了实际的污名化,这可能会破坏治疗的持续性和康复。更深入地了解谁有经历实际污名化的风险,可以为减少实际污名化经历、增进幸福感以及促进阿片类药物使用障碍康复者的治疗效果的干预措施提供信息。当前的研究应用机器学习框架来检验阿片类药物使用障碍康复者中实际污名化的预测因素。
本研究采用纵向研究方法,112名参与者在可能的披露之前和三个月后再次回应调查。我们测试了三种不同的机器学习模型,并使用各种性能指标来评估模型性能。
随机森林模型表现最佳,决定系数为0.85,这表明我们的预测因素解释了实际污名化中85%的方差。实际污名化的重要预测因素是康复时长、年龄、披露情况、当前的药物问题和戒酒承诺。
康复时间较短、未进行披露、药物问题较多且年龄较小的个体经历实际污名化的风险较高。在阿片类药物使用障碍的治疗中,可能需要采取干预措施来解决具有这些特征的人群中的污名化问题。