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On real-time arrhythmia detection in ECG monitors using antidictionary coding

机译:使用抗字典编码在心电图监护仪中进行实时心律失常检测

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This paper presents a real-time and memory-efficient arrhythmia detection system that uses antidictionary coding for the analysis and classification of electrocardiograms (ECGs). The measured ECG signals are encoded using a lossless antidictionary encoder, and the system subsequently uses the compression rate to distinguish between normal beats and arrhythmia. An automated training data procedure is used to construct the automatons, which are probabilistic models used to compress the ECG signals, and to determine the threshold value for detecting the arrhythmia. Real-time computer simulations with samples from the MIT-BIH arrhythmia database show that the averages of sensitivity and specificity of the proposed system are 96.6% and 94.4% for premature ventricular contraction detection, respectively. The automatons are shown to be quickly extracted from training data, and they require only 13 kilobytes. The low complexity and low memory requirements make the system particularly suitable for implementation in portable ECG monitors.
机译:本文介绍了一种实时且具有存储效率的心律失常检测系统,该系统使用抗字典编码进行心电图(ECG)的分析和分类。使用无损反字典编码器对测得的ECG信号进行编码,然后系统使用压缩率来区分正常搏动和心律不齐。使用自动训练数据过程来构造自动机,这些自动机是用于压缩ECG信号的概率模型,并确定用于检测心律不齐的阈值。使用MIT-BIH心律失常数据库中的样本进行的实时计算机模拟显示,对于过早的心室收缩检测,该系统的敏感性和特异性的平均值分别为96.6%和94.4%。已显示自动机可以从训练数据中快速提取,并且仅需13 KB。低复杂度和低内存要求使该系统特别适合在便携式ECG监视器中实施。

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