Automatic Detection of Opioid Intake Using Wearable Biosensor.

Md Shaad Mahmud, Hua Fang, Honggang Wang, Stephanie Carreiro, Edward Boyer
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引用次数: 34

Abstract

A plethora of research shows that recreational drug overdoses result in major social and economic consequences. However, current illicit drug use detection in forensic toxicology is delayed and potentially compromised due to lengthy sample preparation and its subjective nature. With this in mind, scientists have been searching for ways to create a fast and easy method to detect recreational drug use. Therefore, we have developed a method for automatic detection of opioid intake using electrodermal activity (EDA), skin temperature and tri-axis acceleration data generated from a wrist worn biosensor. The proposed system can be used for home and hospital use. We performed supervised learning and extracted 23 features using time and frequency domain analysis to recognize pre- and post- opioid health conditions in patients. Feature selection procedures are used to reduce the number of features and processing time. For supervised learning, we compared three classifiers and selected the one with highest accuracy and sensitivity: decision tree, k-nearest neighbors (KNN) and eXtreme Gradient Boosting utilizing modified features. The results show that the proposed method can detect opioid use in real-time with 99% accuracy. Moreover, this method can be applied to identify other use of additional substances other than opioids. The numerical analysis is completed on data collected from 30 participants over a span of 4 months.

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基于可穿戴生物传感器的阿片类药物摄入自动检测。
大量的研究表明,娱乐性药物过量会导致严重的社会和经济后果。然而,目前法医毒理学中对非法药物使用的检测由于样品制备时间长及其主观性质而被延迟并可能受到损害。考虑到这一点,科学家们一直在寻找一种快速简便的方法来检测娱乐性药物的使用。因此,我们开发了一种自动检测阿片类药物摄入的方法,该方法使用了由佩戴在手腕上的生物传感器产生的皮肤电活动(EDA)、皮肤温度和三轴加速度数据。该系统可用于家庭和医院使用。我们进行了监督学习,并使用时域和频域分析提取了23个特征,以识别患者服用阿片类药物之前和之后的健康状况。特征选择程序用于减少特征的数量和处理时间。对于监督学习,我们比较了三种分类器,并选择了精度和灵敏度最高的分类器:决策树,k近邻(KNN)和利用修改特征的极端梯度增强。结果表明,该方法可以实时检测阿片类药物的使用情况,准确率达到99%。此外,该方法还可用于查明阿片类药物以外其他物质的其他用途。数值分析是在4个月的时间里从30名参与者那里收集的数据完成的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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