Abstract

Long-term Electrocardiogram (ECG) analysis has become a common means of diagnosing cardiovascular diseases. In order to reduce the workload of cardiologists and accelerate diagnosis, an automated patient-specific heartbeat classification method based on a customized convolutional neural network (CNN) is proposed in this paper. The parallel convolutional layers with kernels of different receptive fields in the network are responsible for extracting multi-spatial deep features of the heartbeats, and the channel-wise attention module is adopted to selectively emphasize the informative features, which are beneficial to distinguish different classes of beats. To facilitate the extraction and emphasis of the important features, each heartbeat is segmented and stacked to form the multi-channel network input according to the basic temporal characteristics of the main components (P wave, QRS complex, and T wave) in the ECG. Besides, to further improve the network generalization and achieve better performance on various ECG of new patients, a method of intra-record sample clustering is proposed to select the representative heartbeats to construct the training set. The proposed method classifies heartbeats into five classes (normal beat (N), supraventricular ectopic beat (SVEB), ventricular ectopic beat (VEB), fusion beat (F), and unclassifiable beat (Q)). Validated on the MIT-BIH arrhythmia database, our approach demonstrates performance superior to several state-of-the-art methods. In addition to an average accuracy and specificity of over 99%, this method achieves a sensitivity of 95.4% and a positive predictivity of 97.1% for VEB class, and a sensitivity of 81.1% and a positive predictivity of 90.0% for SVEB class. With high classification performance and pathological heartbeat detection accuracy, the proposed method is promising for clinical device applications.

Highlights

  • Cardiovascular (CVD) disease has been the number one cause of death globally

  • More than 81% of SVEBs and 95% of VEBs are correctly detected, which is superior to several stateof-the-art methods

  • The high accuracy in N-beat detection (99.4%) is noticeable, as it reduces the unnecessary workload for cardiologists to perform further examinations of the beats classified as arrhythmias

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Summary

Introduction

Cardiovascular (CVD) disease has been the number one cause of death globally. More than 17 million people die annually from CVDs, representing about 31% of all global deaths [1]. In-depth study on the detection and treatment of CVDs is of great importance. With the advantages of easy acquisition and low equipment cost, electrocardiogram (ECG) has become an important means of studying cardiac function and CVDs. Because some arrhythmias appear infrequently, it is necessary to analyze long-term ECG recordings [2]. The associate editor coordinating the review of this article and approving it for publication was Jafar A.

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