Template based classification of cardiac Arrhythmia in ECG data

Gourav Bansal, Pulkit Gera, Deepti R. Bathula
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引用次数: 4

Abstract

Electrocardiogram (ECG) is a key diagnostic tool to visualize the heart's activity and to study its normal or abnormal functioning. Physicians perform routine diagnosis by visually examining the shapes of ECG waveform. However, automatic processing and classification of ECG data would be extremely useful in patient monitoring and telemedicine systems. Such realtime applications require techniques that are highly accurate and very efficient. Most of the literature on ECG data rely on timing based features for heartbeat classification. This paper presents a shape or template based method to classify heartbeats as Normal vs. Premature Ventricular Contraction (PVC) beats which is capable of being implemented on low computing, low power consuming and low cost mobile devices such as smartphones. Data analysis is based on MIT-BIH Arrhythmia Database containing 48 Holter recordings of different patients. An overall accuracy of 91% was achieved using the proposed method, which is quite significant considering more than 40,000 heartbeats were analysed. Furthermore, it was observed that only 3 patients with peculiar recordings had significantly low accuracies. Excluding these recordings increased the overall accuracy to 97%. Atypical nature of these recordings was closely investigated to elicit ideas for future work.
基于模板的心电数据心律失常分类
心电图(Electrocardiogram, ECG)是观察心脏活动和研究其正常或异常功能的重要诊断工具。医生通过目视检查心电图波形的形状来进行常规诊断。然而,心电数据的自动处理和分类将在病人监护和远程医疗系统中非常有用。这种实时应用程序需要高度精确和非常高效的技术。大多数关于心电数据的文献依赖于基于时间的特征来进行心跳分类。本文提出了一种基于形状或模板的方法来将心跳分类为正常心跳与室性早搏(PVC)心跳,该方法能够在低计算,低功耗和低成本的移动设备(如智能手机)上实现。数据分析基于MIT-BIH心律失常数据库,其中包含48例不同患者的动态心电图记录。使用所提出的方法,总体准确率达到91%,考虑到分析了超过40,000次心跳,这是相当重要的。此外,我们观察到只有3例特殊记录的患者准确性明显较低。排除这些录音后,整体准确率提高到97%。仔细研究了这些录音的非典型性质,以引出未来工作的想法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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