Robust cardiac event change detection method for long-term healthcare monitoring applications
[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.
[发布日期] [发布机构]
[效力级别] [学科分类] 肠胃与肝脏病学
[关键词] electrocardiography;patient monitoring;medical signal processing;feature extraction;waveform analysis;heartbeat waveforms;cardiac event change decision;RR interval feature extraction;temporal feature extraction;beat waveform extraction;R-peak detection;heart rhythms;PQRST morphological patterns;CECD method;automated low-complexity robust cardiac event change detection;ECG signals;electrocardiogram;battery power;continuous cardiac health monitoring system;long-term healthcare monitoring applications;robust cardiac event change detection method [时效性]