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Robust cardiac event change detection method for long-term healthcare monitoring applications

机译:用于长期医疗监护应用的可靠的心脏事件变化检测方法

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摘要

A long-term continuous cardiac health monitoring system highly demands more battery power for real-time transmission of electrocardiogram (ECG) signals and increases bandwidth, treatment costs and traffic load of the diagnostic server. In this Letter, the authors present an automated low-complexity robust cardiac event change detection (CECD) method that can continuously detect specific changes in PQRST morphological patterns and heart rhythms and then enable transmission/storing of the recorded ECG signals. The proposed CECD method consists of four stages: ECG signal quality assessment, R-peak detection and beat waveform extraction, temporal and RR interval feature extraction and cardiac event change decision. The proposed method is tested and validated using both normal and abnormal ECG signals including different types of arrhythmia beats, heart rates and signal quality. Results show that the method achieves an average sensitivity of 99.76%, positive predictivity of 94.58% and overall accuracy of 94.32% in determining the changes in heartbeat waveforms of the ECG signals.
机译:长期连续的心脏健康监测系统非常需要更多的电池电量才能实时传输心电图(ECG)信号,并增加了带宽,治疗成本和诊断服务器的流量负荷。在这封信中,作者提出了一种自动化的低复杂度鲁棒性心脏事件变化检测(CECD)方法,该方法可以连续检测PQRST形态学模式和心律的特定变化,然后实现记录的ECG信号的传输/存储。提出的CECD方法包括四个阶段:ECG信号质量评估,R峰检测和心跳波形提取,时间和RR间隔特征提取以及心脏事件变化决策。使用正常和异常ECG信号(包括不同类型的心律不齐,心律和信号质量)对所提出的方法进行测试和验证。结果表明,该方法在确定ECG信号心跳波形的变化时,平均灵敏度为99.76%,阳性预测率为94.58%,总体准确度为94.32%。

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