Rumbut Joshua, Fang Hua, Wang Honggang, Carreiro Stephanie, Smelson David, Chapman Brittany, Boyer Edward
Population and Quantitative Health Sciences, University of Massachusetts Medical School, Worcester, MA, USA.
Computer and Information Science, University of Massachusetts Dartmouth North, Dartmouth, MA, USA.
Int Conf Comput Netw Commun. 2020 Feb;2020:445-449. doi: 10.1109/icnc47757.2020.9049684. Epub 2020 Mar 30.
Wearable biosensors, as a key component of wireless body area network (WBAN) systems, have extended the ability of health care providers to achieve continuous health monitoring. Prior research has shown the ability of externally placed, non-invasive sensors combined with machine learning algorithms to detect intoxication from a variety of substances. Such approaches have also shown limitations. The difficulties in developing a model capable of detecting intoxication generally include differences among human beings, sensors, drugs, and environments. This paper examines how approaching wireless communication advances and new paradigms in constructing distributed systems may facilitate polysubstance use detection. We perform supervised learning after harmonizing two types of offline data streams containing wearable biosensor readings from users who had taken different substances, accurately classifying 90% of samples. We examine time domain and frequency domain features and find that skin temperature and mean acceleration are the most important predictors.
可穿戴生物传感器作为无线体域网(WBAN)系统的关键组件,扩展了医疗保健提供者实现持续健康监测的能力。先前的研究表明,外置的非侵入式传感器与机器学习算法相结合,能够检测多种物质导致的中毒情况。不过,这些方法也存在局限性。开发能够检测中毒的模型面临的困难通常包括个体差异、传感器差异、药物差异和环境差异。本文探讨了无线通信技术的进步以及构建分布式系统的新范式如何促进多物质使用检测。我们在对包含服用不同物质的用户的可穿戴生物传感器读数的两种离线数据流进行协调后进行监督学习,准确分类了90%的样本。我们研究了时域和频域特征,发现皮肤温度和平均加速度是最重要的预测指标。