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CNN-KCL: Automatic myocarditis diagnosis using convolutional neural network combined with k-means clustering

journal contribution
posted on 2022-01-04, 00:00 authored by D Sharifrazi, Roohallah AlizadehsaniRoohallah Alizadehsani, J H Joloudari, S S Band, S Hussain, Z A Sani, F Hasanzadeh, A Shoeibi, A Dehzangi, M Sookhak, H Alinejad-Rokny

Myocarditis is the form of an inflammation of the middle layer of the heart wall which is caused by a viral infection and can affect the heart muscle and its electrical system. It has remained one of the most challenging diagnoses in cardiology. Myocardial is the prime cause of unexpected death in approximately 20% of adults less than 40 years of age. Cardiac MRI (CMR) has been considered a noninvasive and golden standard diagnostic tool for suspected myocarditis and plays an indispensable role in diagnosing various cardiac diseases. However, the performance of CMR depends heavily on the clinical presentation and features such as chest pain, arrhythmia, and heart failure. Besides, other imaging factors like artifacts, technical errors, pulse sequence, acquisition parameters, contrast agent dose, and more importantly qualitatively visual interpretation can affect the result of the diagnosis. This paper introduces a new deep learning-based model called Convolutional Neural Network-Clustering (CNN-KCL) to diagnose Myocarditis. In this study, we used 47 subjects with a total number of 98,898 images to diagnose myocarditis disease. Our results demonstrate that the proposed method achieves an accuracy of 97.41% based on 10 fold-cross validation technique with 4 clusters for diagnosis of Myocarditis. To the best of our knowledge, this research is the first to use deep learning algorithms for the diagnosis of myocarditis.

History

Journal

Mathematical Biosciences and Engineering

Volume

19

Issue

3

Pagination

2381 - 2402

Publisher

American Institute of Mathematical Sciences

Location

Springfield, Mo

ISSN

1547-1063

eISSN

1551-0018

Language

English

Publication classification

C1 Refereed article in a scholarly journal