Bae Sang Won, Chung Tammy, Zhang Tongze, Dey Anind K, Islam Rahul
Human-Computer Interaction and Human-Centered AI Systems Lab, AI for Healthcare Lab, Charles V. Schaefer, Jr. School of Engineering and Science, Stevens Institute of Technology, Hoboken, NJ, United States.
Institute for Health, Healthcare Policy and Aging Research, Rutgers University, Newark, NJ, United States.
JMIR AI. 2025 Jan 2;4:e52270. doi: 10.2196/52270.
Acute marijuana intoxication can impair motor skills and cognitive functions such as attention and information processing. However, traditional tests, like blood, urine, and saliva, fail to accurately detect acute marijuana intoxication in real time.
This study aims to explore whether integrating smartphone-based sensors with readily accessible wearable activity trackers, like Fitbit, can enhance the detection of acute marijuana intoxication in naturalistic settings. No previous research has investigated the effectiveness of passive sensing technologies for enhancing algorithm accuracy or enhancing the interpretability of digital phenotyping through explainable artificial intelligence in real-life scenarios. This approach aims to provide insights into how individuals interact with digital devices during algorithmic decision-making, particularly for detecting moderate to intensive marijuana intoxication in real-world contexts.
Sensor data from smartphones and Fitbits, along with self-reported marijuana use, were collected from 33 young adults over a 30-day period using the experience sampling method. Participants rated their level of intoxication on a scale from 1 to 10 within 15 minutes of consuming marijuana and during 3 daily semirandom prompts. The ratings were categorized as not intoxicated (0), low (1-3), and moderate to intense intoxication (4-10). The study analyzed the performance of models using mobile phone data only, Fitbit data only, and a combination of both (MobiFit) in detecting acute marijuana intoxication.
The eXtreme Gradient Boosting Machine classifier showed that the MobiFit model, which combines mobile phone and wearable device data, achieved 99% accuracy (area under the curve=0.99; F-score=0.85) in detecting acute marijuana intoxication in natural environments. The F-score indicated significant improvements in sensitivity and specificity for the combined MobiFit model compared to using mobile or Fitbit data alone. Explainable artificial intelligence revealed that moderate to intense self-reported marijuana intoxication was associated with specific smartphone and Fitbit metrics, including elevated minimum heart rate, reduced macromovement, and increased noise energy around participants.
This study demonstrates the potential of using smartphone sensors and wearable devices for interpretable, transparent, and unobtrusive monitoring of acute marijuana intoxication in daily life. Advanced algorithmic decision-making provides valuable insight into behavioral, physiological, and environmental factors that could support timely interventions to reduce marijuana-related harm. Future real-world applications of these algorithms should be evaluated in collaboration with clinical experts to enhance their practicality and effectiveness.
急性大麻中毒会损害运动技能和认知功能,如注意力和信息处理能力。然而,传统检测方法,如血液、尿液和唾液检测,无法实时准确检测急性大麻中毒情况。
本研究旨在探讨将基于智能手机的传感器与易于获取的可穿戴活动追踪器(如Fitbit)相结合,是否能够在自然环境中增强对急性大麻中毒的检测能力。此前尚无研究调查被动传感技术在现实生活场景中提高算法准确性或通过可解释人工智能增强数字表型解释性方面的有效性。这种方法旨在深入了解个体在算法决策过程中与数字设备的交互方式,特别是在现实世界背景下检测中度至重度大麻中毒的情况。
采用经验抽样法,在30天内从33名年轻成年人那里收集智能手机和Fitbit的传感器数据以及自我报告的大麻使用情况。参与者在吸食大麻后15分钟内以及每天3次半随机提示期间,对自己的中毒程度进行1至10分的评分。评分分为未中毒(0分)、轻度中毒(1 - 3分)和中度至重度中毒(4 - 10分)。该研究分析了仅使用手机数据、仅使用Fitbit数据以及两者结合(MobiFit)的模型在检测急性大麻中毒方面的性能。
极端梯度提升机分类器显示,结合手机和可穿戴设备数据的MobiFit模型在自然环境中检测急性大麻中毒时,准确率达到99%(曲线下面积 = 0.99;F值 = 0.85)。F值表明,与单独使用手机或Fitbit数据相比,组合的MobiFit模型在敏感性和特异性方面有显著提高。可解释人工智能显示,自我报告的中度至重度大麻中毒与特定的智能手机和Fitbit指标相关,包括最低心率升高、大幅度运动减少以及参与者周围的噪声能量增加。
本研究证明了使用智能手机传感器和可穿戴设备对日常生活中的急性大麻中毒进行可解释、透明且不引人注意的监测的潜力。先进的算法决策为行为、生理和环境因素提供了有价值的见解,这些因素可支持及时干预以减少与大麻相关的危害。这些算法未来在现实世界中的应用应与临床专家合作进行评估,以提高其实用性和有效性。