A New Mining Method to Detect Real Time Substance Use Events from Wearable Biosensor Data Stream.

Jin Wang, Hua Fang, Stephanie Carreiro, Honggang Wang, Edward Boyer
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Abstract

Detecting real time substance use is a critical step for optimizing behavioral interventions to prevent drug abuse. Traditional methods based on self-reporting or urine screening are inefficient or intrusive for drug use detection, and inappropriate for timely interventions. For example, self-report suffers from distortion or recall bias; while urine screening often detects drug use that occurred only within the previous 72 hours. Methods for real-time substance use detection are severely underdeveloped, partly due to the novelty of wearable biosensor technique and the lack of substantive clinical data for evaluation. We propose a new real-time drug use event detection method using data obtained from wearable biosensors. Specifically, this method is built upon the slide window technique to process the data stream, and a distance-based outlier detection method to identify substance use events. This novel method is designed to examine how to detect and set up the thresholds of parameters in real-time drug use event detection for wearable biosensor data streams. Our numerical analyses empirically identified the thresholds of parameters used to detect the cocaine use and showed that this proposed method could be adapted to detect other substance use events.

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从可穿戴生物传感器数据流中检测实时药物使用事件的新挖掘方法。
实时检测药物使用情况是优化预防药物滥用行为干预的关键一步。基于自我报告或尿液筛查的传统方法在检测吸毒方面效率低下或具有侵入性,不适合及时干预。例如,自我报告存在失真或回忆偏差;而尿液筛查往往只能检测到前 72 小时内发生的吸毒行为。实时检测药物使用情况的方法开发严重不足,部分原因是可穿戴生物传感器技术的新颖性以及缺乏实质性的临床评估数据。我们利用从可穿戴生物传感器获得的数据,提出了一种新的实时药物使用事件检测方法。具体来说,该方法基于处理数据流的滑动窗口技术和基于距离的离群点检测方法来识别药物使用事件。这种新方法旨在研究如何在可穿戴生物传感器数据流的实时药物使用事件检测中检测和设置参数阈值。我们的数值分析通过经验确定了用于检测可卡因使用情况的参数阈值,并表明所提出的方法可用于检测其他药物使用事件。
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BER and HPA Nonlinearities Compensation for Joint Polar Coded SCMA System over Rayleigh Fading Channels Harmonizing Wearable Biosensor Data Streams to Test Polysubstance Detection. eFCM: An Enhanced Fuzzy C-Means Algorithm for Longitudinal Intervention Data. Automatic Detection of Opioid Intake Using Wearable Biosensor. A New Mining Method to Detect Real Time Substance Use Events from Wearable Biosensor Data Stream.
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