WVU Department of Behavioral Medicine and Psychiatry, West Virginia University School of Medicine, Rockefeller Neuroscience Institute, Morgantown, WV, 26506, USA; WVU Department of Neuroscience, West Virginia University School of Medicine, Rockefeller Neuroscience Institute, Morgantown, WV, 26506, USA.
WVU Department of Neuroscience, West Virginia University School of Medicine, Rockefeller Neuroscience Institute, Morgantown, WV, 26506, USA.
Drug Alcohol Depend. 2023 Aug 1;249:110817. doi: 10.1016/j.drugalcdep.2023.110817. Epub 2023 Jun 7.
Identifying predictors of drug use recurrence (DUR) is critical to combat the addiction epidemic. Wearable devices and phone-based applications for obtaining self-reported assessments in the patient's natural environment (e.g., ecological momentary assessment; EMA) have been used in various healthcare settings. However, the utility of combining these technologies to predict DUR in substance use disorder (SUD) has not yet been explored. This study investigates the combined use of wearable technologies and EMA as a potential mechanism for identifying physiological/behavioral biomarkers of DUR.
Participants, recruited from an SUD treatment program, were provided with a commercially available wearable device that continuously monitors biometric signals (e.g., heart rate/variability [HR/HRV], sleep characteristics). They were also prompted daily to complete an EMA via phone-based application (EMA-APP) that included questionnaires regarding mood, pain, and craving.
Seventy-seven participants are included in this pilot study (34 participants experienced a DUR during enrollment). Wearable technologies revealed that physiological markers were significantly elevated in the week prior to DUR relative to periods of sustained abstinence (p<0.001). Results from the EMA-APP revealed that those who experienced a DUR reported greater difficulty concentrating, exposure to triggers associated with substance use, and increased isolation the day prior to DUR (p<0.001). Compliance with study procedures during the DUR week was lower than any other period of measurement (p<0.001).
These results suggest that data acquired via wearable technologies and the EMA-APP may serve as a method of predicting near-term DUR, thereby potentially prompting intervention before drug use occurs.
识别药物使用复发(DUR)的预测因素对于对抗成瘾流行至关重要。可穿戴设备和基于电话的应用程序可用于在患者的自然环境中获得自我报告评估(例如,生态瞬时评估;EMA),已在各种医疗保健环境中使用。然而,尚未探索将这些技术结合使用以预测物质使用障碍(SUD)中的 DUR 的效用。本研究调查了可穿戴技术和 EMA 的联合使用,作为识别 DUR 的生理/行为生物标志物的潜在机制。
从 SUD 治疗计划中招募的参与者被提供了一种商用可穿戴设备,该设备可连续监测生物识别信号(例如心率/变异性[HR/HRV],睡眠特征)。他们还通过基于电话的应用程序(EMA-APP)每天被提示完成 EMA,其中包括有关情绪,疼痛和渴望的问卷。
本初步研究共纳入了 77 名参与者(34 名参与者在入组期间经历了 DUR)。可穿戴技术显示,与持续禁欲期相比,DUR 前一周的生理标志物显着升高(p<0.001)。EMA-APP 的结果显示,经历 DUR 的人报告说,在 DUR 前一天,注意力集中更加困难,接触到与物质使用相关的诱因,并且隔离感增加(p<0.001)。在 DUR 周期间遵守研究程序的情况低于任何其他测量期(p<0.001)。
这些结果表明,通过可穿戴技术和 EMA-APP 获得的数据可以作为预测近期 DUR 的一种方法,从而有可能在药物使用发生之前提示干预。