Serhani Mohamed Adel, Benharref Abdelghani, Nujum Al Ramzana
Annu Int Conf IEEE Eng Med Biol Soc. 2014;2014:2674-7. doi: 10.1109/EMBC.2014.6944173.
The shift from common diagnosis practices to continuous monitoring based on body sensors has transformed healthcare from hospital-centric to patient-centric. Continuous monitoring generates huge and continuous amount of data revealing changing insights. Existing approaches to analyze streams of data in order to produce validated decisions relied mostly on static learning and analytics techniques. In this paper, we propose an incremental learning and adaptive analytics scheme relying on evident data and rule-based Decision Support System (DSS). The later continuously enriches its knowledge base with incremental learning information impacting the decision and proposing up-to-date recommendations. Some intelligent features augmented the monitoring scheme with data pre-processing and cleansing support, which helped empowering data analytics efficiency. Generated assistances are viewable to users on their mobile devices and to physician via a portal. We evaluate our incremental learning and analytics scheme using seven well-known learning techniques. The set of experimental scenarios of continuous heart rate and ECG monitoring demonstrated that the incremental learning combined with rule-based DSS afforded high classification accuracy, evidenced decision, and validated assistance.
从常规诊断方法向基于身体传感器的持续监测的转变,已将医疗保健从以医院为中心转变为以患者为中心。持续监测会生成大量且连续的数据,揭示不断变化的见解。现有的分析数据流以做出有效决策的方法主要依赖于静态学习和分析技术。在本文中,我们提出了一种基于明显数据和基于规则的决策支持系统(DSS)的增量学习和自适应分析方案。后者通过影响决策并提出最新建议的增量学习信息不断丰富其知识库。一些智能功能通过数据预处理和清理支持增强了监测方案,这有助于提高数据分析效率。生成的辅助信息可供用户在其移动设备上查看,并通过门户供医生查看。我们使用七种著名的学习技术评估我们的增量学习和分析方案。连续心率和心电图监测的一组实验场景表明,增量学习与基于规则的DSS相结合可提供高分类准确率、有依据的决策和经过验证的辅助。