Didier Nathan A, Gunn Rachel L, King Andrea C, Polley Eric C, Merrill Jennifer E, Barnett Nancy P, Fridberg Daniel J
Center for Alcohol and Addiction Studies, Brown University School of Public Health, 121 South Main Street, Providence, RI, 02903, USA.
Department of Psychiatry and Behavioral Neuroscience, The University of Chicago, 5841 S Maryland Ave, Chicago, IL, 60637, USA.
Sci Rep. 2025 Aug 25;15(1):31154. doi: 10.1038/s41598-025-16640-y.
Wrist-worn alcohol biosensors can continuously track alcohol consumption, but their measurements are disrupted when the device is removed. Left unaddressed, non-wear data compromises observations of alcohol use and subsequent predictions of intoxication. To advance beyond commonly used temperature cutoffs and enable more precise detection of non-wear, we trained a random forest algorithm using laboratory ground truth data. Participants in Study One (N = 36) wore a wrist-worn alcohol biosensor (BACtrack Skyn) across 61 five-hour laboratory sessions, generating ground truth non-wear by removing and re-applying the device at specified times. Algorithm features included temperature, motion, and their time-series quadratic coefficients. According to device-based cross-validation, the algorithm performed with excellent sensitivity to detect non-wear (0.96) and specificity to confirm wear (0.99), out-performing all univariable temperature cutoffs from 25 to 30 °C. The algorithm was then used to evaluate biosensor adherence in Study Two, a four-week field study where participants (N = 114) wore the Skyn and self-reported non-wear intervals each day. The algorithm detected 1.6 h of daily non-wear per participant and had more agreement with self-report compared with the temperature cutoff method. This non-wear algorithm can assess biosensor adherence in field studies and may also facilitate precise data imputation, resulting in more objective models of alcohol-related outcomes.
腕戴式酒精生物传感器可以持续追踪酒精摄入量,但当设备被摘下时,其测量结果就会受到干扰。如果不解决非佩戴数据的问题,就会影响对酒精使用情况的观察以及随后对醉酒情况的预测。为了超越常用的温度阈值并实现更精确的非佩戴检测,我们使用实验室的真实数据训练了一种随机森林算法。研究一(N = 36)的参与者在61次为期5小时的实验室实验中佩戴腕戴式酒精生物传感器(BACtrack Skyn),通过在指定时间摘下并重新佩戴该设备来生成真实的非佩戴数据。算法特征包括温度、运动及其时间序列二次系数。根据基于设备的交叉验证,该算法在检测非佩戴方面具有出色的灵敏度(0.96),在确认佩戴方面具有出色的特异性(0.99),优于25至30摄氏度的所有单变量温度阈值。然后,该算法被用于评估研究二(一项为期四周的实地研究)中的生物传感器依从性,在该研究中,参与者(N = 114)佩戴Skyn并每天自我报告非佩戴间隔时间。该算法检测到每位参与者每天有1.6小时的非佩戴时间,与温度阈值方法相比,与自我报告的一致性更高。这种非佩戴算法可以在实地研究中评估生物传感器的依从性,还可能有助于进行精确的数据插补,从而得出更客观的酒精相关结果模型。