基于无线BAN和HEMFCM聚类的心电异常检测

S. R. Janani, C. Hemalatha, V. Vaidehi
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引用次数: 1

摘要

近年来,世界各地独居老人的数量正在稳步增加。在这种情况下,需要开发一种卫生保健系统来监测老年人的健康参数,帮助他们过上健康独立的生活。本文介绍了一种利用无线传感器监测老年人健康参数而不干扰老年人正常活动的系统。该系统提供了一种可穿戴式医疗保健解决方案,使用无线Shimmer传感器设备在家庭PC中收集心电数据。采用基于规则的分类器检测心电数据异常。采用混合期望最大化和模糊C均值(HEMFCM)聚类方法获得聚类质心,生成分类规则。采用从不同受试者收集的真实数据和从MIT BIH数据库中读取的异常数据验证了所提出的方法。实验结果表明,该方法的分类准确率达到85%,优于EM和FCM聚类方法。
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ECG anomaly detection using wireless BAN and HEMFCM clustering
In recent days, elderly people living alone at home are steadily increasing throughout the world. This situation drives to develop a health care system for monitoring the health parameters of elderly people and help them to lead ahealthy independent life. This paper presents a system that uses wireless sensors for monitoring the health parameters without disturbing the normal activities of elderly people. The proposed system provides a wearable health care solution using the wireless Shimmer sensor device for collecting ECG data in home PC. ECG data anomaly is detected using rule based classifier. Classification rules are generated based on cluster centroids obtained using a novel scheme named Hybrid Expectation Maximization and Fuzzy C Means (HEMFCM) Clustering. The proposed method is validated using real data collected from different subjects and abnormal data readings from the MIT BIH database. Experimental results show that proposed method achieves 85% classification accuracy which is better than EM and FCM clustering methods.
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