Mobile Phone Sensor-Based Detection of Subjective Cannabis “High” in Young Adults: A Feasibility Study in Real-World Settings

Sangwon Bae, T. Chung, B. Suffoletto, M. Islam, Jiameng Du, Serim Jang, Yuuki Nishiyama, Raghu Mulukutla, A. Dey
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Abstract

Aim: Acute cannabis intoxication can impair motor skills and cognitive functions. Given possible impairment related to acute cannabis intoxication, we explored whether mobile phone-based sensors (e.g., GPS, text/phone logs) can detect episodes of acute cannabis intoxication (subjective “high” state) as self-reported in natural environments by young adults. Methods: Young adults (ages 18-25), who reported cannabis use at least twice per week, were recruited by research registry and Craigslist to participate in a mobile phone data collection study (up to 30 days) in Pittsburgh, PA (2017-2019). Participants responded to fixed time phone surveys (3 times/day) and self-initiated reports of cannabis use (start/stop time, rating of subjective high: 0-10, 10=very high). Our mobile AWARE app continuously collected phone sensor data, which was segmented into 5-minute windows for analysis. We built and tested multiple machine learning classifiers (e.g., Support Vector Machine, Light Gradient Boosting Machine (LGBM)) on training (60%), validation (20%), and test (20%) datasets to determine which classifier performed best in distinguishing subjective cannabis “high” (rating=1-10) vs “not high” (rating=0). To minimize the influence of imbalanced data on model performance in the training dataset, we used both over-sampling with Synthetic Minority Over-sampling Technique (SMOTE) and random under-sampling of the majority class, so that both classes (“high”, “not-high”) had the same number of training samples. We also tested the importance of time features (i.e., day of week, time of day: morning, afternoon, evening) relative to smartphone sensor data only on model performance, since time features alone might predict “routines” in cannabis use. Results: Young adults (N=57; 58% female; mean age=19.82 [SD=1.76]; 71.92% White, 15.78% Black, 12.28% Asian and other ethnicity) reported 451 episodes of cannabis use, mean subjective high rating=3.77 (SD=2.64). The sensor dataset included 1,648 datapoints representing reports of subjective ""high"" and 60,580 data points representing ""not high"" reports. For the two time-based features only model, the LGBM classifier had 91% accuracy in detecting subjective cannabis intoxication (vs “not-high”) in the test dataset (Area Under the Curve [AUC]=0.75). Combining smartphone sensor data with the two time-based features (day of week, time of day) improved model performance, with 95% accuracy (AUC=0.93), indicating that smartphone features contribute unique information, and that time features further improve model performance in detecting rating of subjective cannabis ""high"". Among the 102 phone sensor features entered into the analyses (smartphone sensors + time model), some of the most important features (the top 2 were the time features) included travel (GPS: smaller travel radius within a day when feeling ""high”), movement (e.g., smaller number of activity changes when feeling ""high”), and communication/sociability (e.g., increased phone usage interactions, greater voice and noise level around individuals). Conclusion: Results from this proof-of-concept study indicate the feasibility of using phone sensors to detect effects of cannabis intoxication in the natural environment in a population-based model among young adults. Mobile phone sensors show promise for automated and continuous detection of cannabis use in daily life in a sample of young adults, with potential implications for triggering the delivery of just-in-time interventions to minimize marijuana-related harm.
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基于手机传感器的检测主观大麻“高”在年轻人:在现实世界设置的可行性研究
目的:急性大麻中毒可损害运动技能和认知功能。考虑到急性大麻中毒可能造成的损伤,我们探索了基于手机的传感器(如GPS、短信/电话日志)是否能检测到年轻人在自然环境中自我报告的急性大麻中毒(主观“高”状态)。方法:通过研究登记处和Craigslist招募每周至少使用两次大麻的年轻人(18-25岁)参加宾夕法尼亚州匹兹堡(2017-2019)的手机数据收集研究(长达30天)。参与者回答了固定时间的电话调查(每天3次)和自我发起的大麻使用报告(开始/停止时间,主观高评级:0-10,10=非常高)。我们的移动AWARE应用程序持续收集手机传感器数据,并将其分割为5分钟的窗口进行分析。我们在训练(60%)、验证(20%)和测试(20%)数据集上构建并测试了多个机器学习分类器(例如,支持向量机、光梯度增强机(LGBM)),以确定哪个分类器在区分主观大麻“高”(评级=1-10)和“不高”(评级=0)方面表现最好。为了最大限度地减少不平衡数据对训练数据集中模型性能的影响,我们使用了合成少数过度采样技术(SMOTE)的过度采样和大多数类的随机欠采样,以便两个类(“高”和“不高”)具有相同数量的训练样本。我们还测试了时间特征(即一周中的哪一天,一天中的时间:早上、下午、晚上)相对于智能手机传感器数据在模型性能上的重要性,因为时间特征本身可能会预测大麻使用的“惯例”。结果:青壮年(N=57;58%的女性;平均年龄=19.82 [SD=1.76];71.92%的白人,15.78%的黑人,12.28%的亚裔和其他种族报告了451次大麻使用,平均主观高评分=3.77 (SD=2.64)。传感器数据集包括1,648个数据点,代表主观的“高”报告和60,580个数据点,代表“不高”报告。对于仅基于两个时间的特征模型,LGBM分类器在测试数据集中检测主观大麻中毒(相对于“不高”)的准确率为91%(曲线下面积[AUC]=0.75)。将智能手机传感器数据与两种基于时间的特征(星期几、一天中的时间)结合,提高了模型的性能,准确率达到95% (AUC=0.93),说明智能手机特征提供了独特的信息,时间特征进一步提高了模型对主观大麻“高”等级的检测性能。在进入分析的102个手机传感器特征(智能手机传感器+时间模型)中,一些最重要的特征(前2个是时间特征)包括旅行(GPS:当感觉“兴奋”时,一天内的旅行半径较小),运动(例如,当感觉“兴奋”时,活动变化较少),以及沟通/社交(例如,增加电话使用互动,个人周围的声音和噪音水平更高)。结论:这项概念验证研究的结果表明,在以人口为基础的年轻人模型中,使用手机传感器检测自然环境中大麻中毒的影响是可行的。手机传感器有望在年轻人样本中自动和持续地检测日常生活中的大麻使用情况,这可能会引发及时干预措施,以尽量减少与大麻有关的危害。
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