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Real-Time Arrhythmia Classification Algorithm Using Time-Domain ECG Feature Based on FFNN and CNN

机译:基于FFNN和CNN的时域ECG功能的实时心律失常分类算法

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To solve the problem of real-time arrhythmia classification, this paper proposes a real-time arrhythmia classification algorithm using deep learning with low latency, high practicality, and high reliability, which can be easily applied to a real-time arrhythmia classification system. In the algorithm, a classifier detects the QRS complex position in real time for heartbeat segmentation. Then, the ECG_RRR feature is constructed according to the heartbeat segmentation result. Finally, another classifier classifies the arrhythmia in real time using the ECG_RRR feature. This article uses the MIT-BIH arrhythmia database and divides the 44 qualified records into two groups (DS1 and DS2) for training and evaluation, respectively. The result shows that the recall rate, precision rate, and overall accuracy of the algorithm’s interpatient QRS complex position prediction are 98.0%, 99.5%, and 97.6%, respectively. The overall accuracy for 5-class and 13-class interpatient arrhythmia classification is 91.5% and 75.6%, respectively. Furthermore, the real-time arrhythmia classification algorithm proposed in this paper has the advantages of practicability and low latency. It is easy to deploy the algorithm since the input is the original ECG signal with no feature processing required. And, the latency of the arrhythmia classification is only the duration of one heartbeat cycle.
机译:为了解决实时心律失常分类的问题,本文提出了一种使用低延迟,高实用性和高可靠性的深度学习的实时心律失常分类算法,这可以很容易地应用于实时心律失常分类系统。在算法中,分类器实时检测QRS复杂位置以进行心跳分割。然后,根据心跳分段结果构造ECG_RRR特征。最后,另一个分类器使用ECG_RRR功能实时分类心律失常。本文使用MIT-BIH心律失常数据库,并将44个合格记录分为两组(DS1和DS2)分别进行培训和评估。结果表明,算法的介入QRS复杂位置预测的召回率,精密速率和总体精度分别为98.0%,99.5%和97.6%。 5级和13级介性心律失常分类的总体准确性分别为91.5%和75.6%。此外,本文提出的实时心律失常分类算法具有实用性和低延迟的优点。它易于部署算法,因为输入是原始ECG信号,没有必需的功能处理。并且,心律失常分类的潜伏期只是一个心跳周期的持续时间。

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