Characterization of Heart Diseases per Single Lead Using ECG Images and CNN-2D

Author:

Aversano Lerina1ORCID,Bernardi Mario Luca2ORCID,Cimitile Marta3ORCID,Montano Debora4ORCID,Pecori Riccardo56ORCID

Affiliation:

1. Department of Agricultural Science, Food, Natural Resources and Engineering, University of Foggia, 71122 Foggia, FG, Italy

2. Department of Engineering, University of Sannio, 82100 Benevento, BN, Italy

3. Department of Law and Digital Society, Unitelma Sapienza University, 00161 Rome, RM, Italy

4. CeRICT scrl, Regional Center Information Communication Technology, 82100 Benevento, BN, Italy

5. Institute of Materials for Electronics and Magnetism, National Research Council of Italy, 43124 Parma, PR, Italy

6. SMARTEST Research Centre, eCampus University, 22060 Novedrate, CO, Italy

Abstract

Cardiopathy has become one of the predominant global causes of death. The timely identification of different types of heart diseases significantly diminishes mortality risk and enhances the efficacy of treatment. However, fast and efficient recognition necessitates continuous monitoring, encompassing not only specific clinical conditions but also diverse lifestyles. Consequently, an increasing number of studies are striving to automate and progress in the identification of different cardiopathies. Notably, the assessment of electrocardiograms (ECGs) is crucial, given that it serves as the initial diagnostic test for patients, proving to be both the simplest and the most cost-effective tool. This research employs a customized architecture of Convolutional Neural Network (CNN) to forecast heart diseases by analyzing the images of both three bands of electrodes and of each single electrode signal of the ECG derived from four distinct patient categories, representing three heart-related conditions as well as a spectrum of healthy controls. The analyses are conducted on a real dataset, providing noteworthy performance (recall greater than 80% for the majority of the considered diseases and sometimes even equal to 100%) as well as a certain degree of interpretability thanks to the understanding of the importance a band of electrodes or even a single ECG electrode can have in detecting a specific heart-related pathology.

Publisher

MDPI AG

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