Biswas Jit, Maniyeri Jayachandran, Gopalakrishnan Kavitha, Shue Louis, Phua Jiliang Eugene, Palit Henry Novianus, Foo Yong Siang, Lau Lik Seng, Li Xiaorong
Institute for Infocomm Research - Agency for Science, Technology and Research, Singapore.
Annu Int Conf IEEE Eng Med Biol Soc. 2010;2010:3860-3. doi: 10.1109/IEMBS.2010.5627906.
As part of a sleep monitoring project, we used actigraphy based on body-worn accelerometer sensors to remotely monitor and study the sleep-wake cycle of elderly staying at nursing homes. We have conducted a fifteen patient trial of a sleep activity pattern monitoring (SAPM) system at a local nursing home. The data was collected and stored in our server and the processing of the data was done offline after sleep diaries used for validation and ground truth were updated into the system. The processing algorithm matches and annotates the sensor data with manual sleep diary information and is processed asynchronously on the grid/cloud back end. In this paper we outline the mapping of the system for grid / cloud processing, and initial results that show expected near-linear performance for scaling the number of users.
作为一项睡眠监测项目的一部分,我们使用基于穿戴式加速度计传感器的活动记录仪,对养老院老年人的睡眠-清醒周期进行远程监测和研究。我们在当地一家养老院对一个睡眠活动模式监测(SAPM)系统进行了15名患者的试验。数据被收集并存储在我们的服务器中,在用于验证和地面真值的睡眠日记更新到系统后,数据处理在离线状态下进行。处理算法将传感器数据与手动睡眠日记信息进行匹配和注释,并在网格/云后端进行异步处理。在本文中,我们概述了用于网格/云处理的系统映射,以及显示出在扩展用户数量时预期接近线性性能的初步结果。