By introducing networking technologies and services into healthcare infrastructures (e.g., multimodal sensors and smart devices) that are deployed to supervise a person's health condition, the traditional healthcare system is being revolutionized toward knowledge-centric connected healthcare (KCCH), where persons will take their own responsibility for their healthcare in a knowledge-centric way. Due to the volume, velocity, and variety of healthcare supervision data generated by these healthcare infrastructures, an urgent and strategic issue is how to efficiently process a person's healthcare supervision data with the right knowledge of the right guardians (e.g., relatives, nurses, and doctors) at the right time. To solve this issue, the naming and routing criterion of medical knowledge is studied. With this offloaded medical knowledge, we propose an edge learning as a service (EdgeLaaS) framework for KCCH to locally process health supervision data. In this framework, edge learning nodes can help the patient choose better advice from the right guardians in real time when some emergencies occur. Two application cases: 1) fast self-help and 2) mobile help pre-calling are studied. Performance evaluations demonstrate the superiority of KCCH and EdgeLaaS, respectively.
翻译:通过将联网技术和服务引入为监督个人健康状况而部署的保健基础设施(例如多式联运传感器和智能装置),传统保健体系正在向以知识为中心的连通保健(KCCH)革命,人们将用以知识为中心的方式承担自己的保健责任;由于这些保健基础设施产生的保健监督数据的数量、速度和种类繁多,一个紧迫的战略问题是如何在适当的时间以适当的监护人(例如亲属、护士和医生)的适当知识有效地处理一个人的保健监督数据;为解决这一问题,正在研究医疗知识的命名和路由标准;随着这一医疗知识的脱载,我们提议将边际学习作为一种服务(EdgeLaa)框架,供KCCH用于当地处理保健监督数据;在这个框架内,边际学习节点可以帮助病人在一些紧急情况发生时从正确的监护人那里选择更好的建议。有两个应用案例:1)快速自助和2)移动式帮助拨打前。业绩评估分别显示了KCCH和EdGLaa的优越性。