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Dynamic Task Optimization in Remote Diabetes Monitoring Systems

机译:远程糖尿病监控系统中的动态任务优化

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Diabetes is the seventh leading cause of death in the United States, but careful symptom monitoring can prevent adverse events. A real-time patient monitoring and feedback system is one of the solutions to help patients with diabetes and their healthcare professionals monitor health-related measurements and provide dynamic feedback. However, data-driven methods to dynamically prioritize and generate tasks are not well investigated in the domain of remote health monitoring. This paper presents a wireless health project (WANDA) that leverages sensor technology and wireless communication to monitor the health status of patients with diabetes. The WANDA dynamic task management function applies data analytics in real-time to discretize continuous features, applying data clustering and association rule mining techniques to manage a sliding window size dynamically and to prioritize required user tasks. The developed algorithm minimizes the number of daily action items required by patients with diabetes using association rules that satisfy a minimum support, confidence and conditional probability thresholds. Each of these tasks maximizes information gain, thereby improving the overall level of patient adherence and satisfaction. Experimental results from applying EM-based clustering and Apriori algorithms show that the developed algorithm can predict further events with higher confidence levels and reduce the number of user tasks by up to 76.19 %.
机译:糖尿病是美国死亡的第七个主要原因,但仔细的症状监测可以防止不良事件。实时患者监测和反馈系统是帮助患有糖尿病患者及其医疗保健专业人员监测与健康相关的测量并提供动态反馈的解决方案之一。但是,在远程健康监控域中的域中没有很好地研究了动态优先顺序和生成任务的数据驱动方法。本文介绍了一种无线健康项目(万达),利用传感器技术和无线通信来监测糖尿病患者的健康状况。 Wanda动态任务管理功能实时应用数据分析,以便对连续功能进行离散功能,应用数据群集和关联规则挖掘技术以动态管理滑动窗口大小,并优先考虑所需的用户任务。开发算法使用满足最小支撑,置信度和条件概率阈值的关联规则最小化糖尿病患者所需的日常行动项目的数量。这些任务中的每一个最大化信息增益,从而提高患者遵守和满足的整体水平。应用基于EM的聚类和APRiori算法的实验结果表明,发达的算法可以预测具有更高置信水平的进一步事件,并将用户任务的数量减少高达76.19%。

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