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Intelligent Classification of Heartbeats for Automated Real-Time ECG Monitoring

机译:心跳的智能分类,用于自动实时心电图监测

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Background: The automatic interpretation of electrocardiography (ECG) data can provide continuous analysis of heart activity, allowing the effective use of wireless devices such as the Holter monitor. Materials and Methods: We propose an intelligent heartbeat monitoring system to detect the possibility of arrhythmia in real time. We detected heartbeats and extracted features such as the QRS complex and P wave from ECG signals using the Pan-Tompkins algorithm, and the heartbeats were then classified into 16 types using a decision tree. Results: We tested the sensitivity, specificity, and accuracy of our system against data from the MIT-BIH Arrhythmia Database. Our system achieved an average accuracy of 97% in heartbeat detection and an average heartbeat classification accuracy of above 96%, which is comparable with the best competing schemes. Conclusions: This work provides a guide to the systematic design of an intelligent classification system for decision support in Holter ECG monitoring.
机译:背景:心电图(ECG)数据的自动解释可以提供对心脏活动的连续分析,从而可以有效地使用Holter监护仪等无线设备。材料和方法:我们提出了一种智能心跳监测系统,以实时检测心律失常的可能性。我们使用Pan-Tompkins算法检测到心跳并从ECG信号中提取QRS波和P波等特征,然后使用决策树将心跳分为16种类型。结果:我们根据MIT-BIH心律失常数据库中的数据测试了系统的敏感性,特异性和准确性。我们的系统在心跳检测中的平均准确度达到97%,平均心跳分类的准确度在96%以上,与最佳竞争方案相当。结论:这项工作为Holter ECG监测决策支持的智能分类系统的系统设计提供了指南。

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