Chen Shih-Yeh, Lai Chin-Feng, Hwang Ren-Hung, Lai Ying-Hsun, Wang Ming-Shi
Department of Engineering Science, National Cheng Kung University, Tainan, 701, Taiwan, Republic of China.
School of Computer & Software, 210044, Nanjing, China.
J Med Syst. 2015 Dec;39(12):194. doi: 10.1007/s10916-015-0343-y. Epub 2015 Oct 21.
As cloud computing and wearable devices technologies mature, relevant services have grown more and more popular in recent years. The healthcare field is one of the popular services for this technology that adopts wearable devices to sense signals of negative physiological events, and to notify users. The development and implementation of long-term healthcare monitoring that can prevent or quickly respond to the occurrence of disease and accidents present an interesting challenge for computing power and energy limits. This study proposed an adaptive sensor data segments selection method for wearable health care services, and considered the sensing frequency of the various signals from human body, as well as the data transmission among the devices. The healthcare service regulates the sensing frequency of devices by considering the overall cloud computing environment and the sensing variations of wearable health care services. The experimental results show that the proposed service can effectively transmit the sensing data and prolong the overall lifetime of health care services.
随着云计算和可穿戴设备技术的成熟,相关服务近年来越来越受欢迎。医疗保健领域是这项技术的热门服务领域之一,该技术采用可穿戴设备来感知负面生理事件的信号,并通知用户。能够预防或快速应对疾病和事故发生的长期医疗保健监测的开发和实施,对计算能力和能量限制提出了一个有趣的挑战。本研究提出了一种用于可穿戴医疗保健服务的自适应传感器数据段选择方法,并考虑了来自人体的各种信号的传感频率以及设备之间的数据传输。医疗保健服务通过考虑整体云计算环境和可穿戴医疗保健服务的传感变化来调节设备的传感频率。实验结果表明,所提出的服务能够有效地传输传感数据,并延长医疗保健服务的整体寿命。