Abstract

Standard 12-lead electrocardiography (ECG) is used as the primary clinical tool to diagnose changes in heart function. The value of automated 12-lead ECG diagnostic approaches lies in their ability to screen the general population and to provide a second opinion for doctors. Yet, the clinical utility of automated ECG interpretations remains limited. We introduce a two-way approach to an automated cardiac disease identification system using standard digital or image 12-lead ECG recordings. Two different network architectures, one trained using digital signals (CNN-dig) and one trained using images (CNN-ima), were generated. An open-source dataset of 41,830 classified standard ECG recordings from patients and volunteers was generated. CNN-ima was trained to identify atrial fibrillation (AF) using 12-lead ECG digital signals and images that were also transformed to mimic mobile device camera-acquired ECG plot snapshots. CNN-dig accurately (92.9–100%) identified every possible combination of the eight most-common cardiac conditions. Both CNN-dig and CNN-ima accurately (98%) detected AF from standard 12-lead ECG digital signals and images, respectively. Similar classification accuracy was achieved with images containing smartphone camera acquisition artifacts. Automated detection of cardiac conditions in standard digital or image 12-lead ECG signals is feasible and may improve current diagnostic methods.

Highlights

  • Standard 12-lead electrocardiography (ECG) is used as the primary clinical tool to diagnose changes in heart function

  • This work aimed to develop a two-way approach to a standard 12-lead ECG database, that can use as an input either standard digital or image 12-lead ECG signals and would classify recordings as normal sinus or one or more of the following disorder types: atrial fibrillation (AF), first-degree atrioventricular block (I-AVB), left bundle branch block (LBBB), right bundle branch block (RBBB), premature atrial contraction (PAC), premature ventricular contraction (PVC), ST-segment depression (STD) or ST-segment elevation (STE)

  • There are several innovative aspects that are included in this paper: (1) This proof-of-concept work demonstrated that an automated ECG interpretation system can be created and can reach high accuracy using deep learning tools

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Summary

Introduction

Standard 12-lead electrocardiography (ECG) is used as the primary clinical tool to diagnose changes in heart function. (3) The work developed a generic deep network architecture that can be applied to many diseases of different types with high accuracy, can detect all disorders appearing in the same record, and can be extended to additional diseases with relatively minimal effort. (5) The deep network architecture proved compatible with images with background noise and change of plot perspective that observed when ECG plot is captured by mobile device Achieving these innovative aspects will promote the generation of an automated 12-lead ECG diagnostic system that will allow for screening of the general population in any clinic equipped with a standard 12-lead ECG machine and provide a second opinion for the health care provider

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