Liu Po-Shen, Kuo Teng-Yao, Chen I-Chun, Lee Shu-Wua, Chang Ting-Gang, Chen Hou-Liang, Chen Jun-Peng
Department of Psychiatry, Taichung Veterans General Hospital, Taichung, Taiwan.
Fundamental General Education Center, National Chinyi University of Technology, Taiping, Taiwan.
Front Psychiatry. 2024 Jan 8;14:1258029. doi: 10.3389/fpsyt.2023.1258029. eCollection 2023.
Opioid use disorder is a cause for concern globally. This study aimed to optimize methadone dose adjustments using mixed modeling and machine learning.
This retrospective study was conducted at Taichung Veterans General Hospital between January 1, 2019, and December 31, 2020. Overall, 40,530 daily dosing records and 1,508 urine opiate test results were collected from 96 patients with opioid use disorder. A two-stage approach was used to create a model of the optimized methadone dose. In Stage 1, mixed modeling was performed to analyze the association between methadone dose, age, sex, treatment duration, HIV positivity, referral source, urine opiate level, last methadone dose taken, treatment adherence, and likelihood of treatment discontinuation. In Stage 2, machine learning was performed to build a model for optimized methadone dose.
Likelihood of discontinuation was associated with reduced methadone doses ( = 0.002, 95% CI = 0.000-0.081). Correlation analysis between the methadone dose determined by physicians and the optimized methadone dose showed a mean correlation coefficient of 0.995 ± 0.003, indicating that the difference between the methadone dose determined by physicians and that determined by the model was within the allowable range ( < 0.001).
We developed a model for methadone dose adjustment in patients with opioid use disorders. By integrating urine opiate levels, treatment adherence, and likelihood of treatment discontinuation, the model could suggest automatic adjustment of the methadone dose, particularly when face-to-face encounters are impractical.
阿片类药物使用障碍是全球关注的一个问题。本研究旨在使用混合建模和机器学习来优化美沙酮剂量调整。
本回顾性研究于2019年1月1日至2020年12月31日在台中荣民总医院进行。总共从96名阿片类药物使用障碍患者中收集了40,530条每日给药记录和1,508份尿液阿片类药物检测结果。采用两阶段方法建立优化美沙酮剂量模型。在第一阶段,进行混合建模以分析美沙酮剂量、年龄、性别、治疗持续时间、HIV阳性、转诊来源、尿液阿片类药物水平、上次服用美沙酮剂量、治疗依从性和治疗中断可能性之间的关联。在第二阶段,进行机器学习以建立优化美沙酮剂量模型。
治疗中断可能性与美沙酮剂量降低有关(=0.002,95%CI=0.000-0.081)。医生确定的美沙酮剂量与优化后的美沙酮剂量之间的相关性分析显示平均相关系数为0.995±0.003,表明医生确定的美沙酮剂量与模型确定的剂量之间的差异在允许范围内(<0.001)。
我们开发了一种用于阿片类药物使用障碍患者美沙酮剂量调整的模型。通过整合尿液阿片类药物水平、治疗依从性和治疗中断可能性,该模型可以建议自动调整美沙酮剂量,特别是在面对面接触不切实际的情况下。