Pantelopoulos Alexandros, Bourbakis Nikolaos G
Department of Computer Science and Engineering, Assistive Technologies Research Center, Wright State University, Dayton, OH 45435 USA.
IEEE Trans Inf Technol Biomed. 2010 May;14(3):613-21. doi: 10.1109/TITB.2010.2040085. Epub 2010 Jan 29.
Wearable health-monitoring systems (WHMSs) represent the new generation of healthcare by providing real-time unobtrusive monitoring of patients' physiological parameters through the deployment of several on-body and even intrabody biosensors. Although several technological issues regarding WHMS still need to be resolved in order to become more applicable in real-life scenarios, it is expected that continuous ambulatory monitoring of vital signs will enable proactive personal health management and better treatment of patients suffering from chronic diseases, of the elderly population, and of emergency situations. In this paper, we present a physiological data fusion model for multisensor WHMS called Prognosis. The proposed methodology is based on a fuzzy regular language for the generation of the prognoses of the health conditions of the patient, whereby the current state of the corresponding fuzzy finite-state machine signifies the current estimated health state and context of the patient. The operation of the proposed scheme is explained via detailed examples in hypothetical scenarios. Finally, a stochastic Petri net model of the human-device interaction is presented, which illustrates how additional health status feedback can be obtained from the WHMS' user.
可穿戴健康监测系统(WHMSs)通过部署多种体表甚至体内生物传感器,对患者的生理参数进行实时、非侵入式监测,代表了新一代的医疗保健方式。尽管为了在现实生活场景中更具适用性,关于WHMS的若干技术问题仍有待解决,但预计对生命体征的持续动态监测将有助于实现主动的个人健康管理,并更好地治疗慢性病患者、老年人群以及应对紧急情况。在本文中,我们提出了一种用于多传感器WHMS的生理数据融合模型,称为预后模型(Prognosis)。所提出的方法基于一种模糊正则语言来生成患者健康状况的预后,其中相应模糊有限状态机的当前状态表示患者当前估计的健康状态和背景。通过假设场景中的详细示例对所提方案的操作进行了解释。最后,给出了人机交互的随机Petri网模型,该模型说明了如何从WHMS的用户那里获得额外的健康状况反馈。