Development of a mobile e-Health care system for rapid detection of emergent situations

NISS), 2011 5th International Conference New Trends in(2011)

引用 2|浏览1
暂无评分
摘要
In recent years, one of the common issues is an e-Health care system which makes available health management and medical services at any time and in any place. This study describes the development of an e-Health care system that can promptly detect and cope with emergent situations happening to chronic disease patients in their everyday life. If a patient's emergent situation is detected by a personal mobile host composed of acceleration and vibration sensors, GPS, and a code division multiple access communication module, a text message on the patient's current location is transmitted to the hospital and the guardian's mobile terminal, so that they can cope with the situation immediately. Particularly through a back-propagation network, the system analyzes data from sensors and determines emergent situations, such as fainting and seizures, promptly. The automatic diagnostic performance is measured by precision and recall from the data of a back-propagation neural network. The number of experiments for a normal walking state, seizure, and fainting situation is 200 each, respectively. Out of these experiments, fainting can be best diagnosed, with 90% precision. In that case, recall is 97%. The experiments show that this system is very effective in finding emergencies promptly for chronic disease patients who cannot take care of themselves, and it is expected to save many lives. The exact location of patients can also be found on the electronic map by using GPS information.
更多
查看译文
关键词
Global Positioning System,backpropagation,health care,medical diagnostic computing,mobile computing,neural nets,CDMA,GPS information,acceleration,automatic diagnostic performance,backpropagation neural network,chronic disease patients,code division multiple access communication module,electronic map,emergent situations,fainting situation,guardian mobile terminal,health management,medical services,mobile e-health care system,normal walking state,patient location,personal mobile host,seizure situation,text message,vibration sensors,
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要