Literature DB >> 32315684

A morphology based deep learning model for atrial fibrillation detection using single cycle electrocardiographic samples.

Sarah W E Baalman1, Florian E Schroevers2, Abel J Oakley2, Tom F Brouwer1, Willeke van der Stuijt1, Hidde Bleijendaal1, Lucas A Ramos1, Ricardo R Lopes1, Henk A Marquering1, Reinoud E Knops1, Joris R de Groot3.   

Abstract

BACKGROUND: Deep learning (DL) has shown promising results in improving atrial fibrillation (AF) detection algorithms. However, these models are often criticized because of their "black box" nature. AIM: To develop a morphology based DL model to discriminate AF from sinus rhythm (SR), and to visualize which parts of the ECG are used by the model to derive to the right classification.
METHODS: We pre-processed raw data of 1469 ECGs in AF or SR, of patients with a history AF. Input data was generated by normalizing all single cycles (SC) of one ECG lead to SC-ECG samples by 1) centralizing the R wave or 2) scaling from R-to- R wave. Different DL models were trained by splitting the data in a training, validation and test set. By using a DL based heat mapping technique we visualized those areas of the ECG used by the classifier to come to the correct classification.
RESULTS: The DL model with the best performance was a feedforward neural network trained by SC-ECG samples on a R-to-R wave basis of lead II, resulting in an accuracy of 0.96 and F1-score of 0.94. The onset of the QRS complex proved to be the most relevant area for the model to discriminate AF from SR.
CONCLUSION: The morphology based DL model developed in this study was able to discriminate AF from SR with a very high accuracy. DL model visualization may help clinicians gain insights into which (unrecognized) ECG features are most sensitive to discriminate AF from SR.
Copyright © 2020 The Authors. Published by Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Atrial fibrillation; Black box; Deep learning; Electrocardiogram; Morphology; Visualization

Mesh:

Year:  2020        PMID: 32315684     DOI: 10.1016/j.ijcard.2020.04.046

Source DB:  PubMed          Journal:  Int J Cardiol        ISSN: 0167-5273            Impact factor:   4.164


  5 in total

Review 1.  Artificial intelligence for the detection, prediction, and management of atrial fibrillation.

Authors:  Jonas L Isaksen; Mathias Baumert; Astrid N L Hermans; Molly Maleckar; Dominik Linz
Journal:  Herzschrittmacherther Elektrophysiol       Date:  2022-02-11

2.  Atrioventricular Synchronization for Detection of Atrial Fibrillation and Flutter in One to Twelve ECG Leads Using a Dense Neural Network Classifier.

Authors:  Irena Jekova; Ivaylo Christov; Vessela Krasteva
Journal:  Sensors (Basel)       Date:  2022-08-14       Impact factor: 3.847

Review 3.  State-of-the-Art Deep Learning Methods on Electrocardiogram Data: Systematic Review.

Authors:  Georgios Petmezas; Leandros Stefanopoulos; Vassilis Kilintzis; Andreas Tzavelis; John A Rogers; Aggelos K Katsaggelos; Nicos Maglaveras
Journal:  JMIR Med Inform       Date:  2022-08-15

4.  Multiscale Residual Network Based on Channel Spatial Attention Mechanism for Multilabel ECG Classification.

Authors:  Shuhong Wang; Runchuan Li; Xu Wang; Shengya Shen; Bing Zhou; Zongmin Wang
Journal:  J Healthc Eng       Date:  2021-05-03       Impact factor: 2.682

Review 5.  How machine learning is impacting research in atrial fibrillation: implications for risk prediction and future management.

Authors:  Ivan Olier; Sandra Ortega-Martorell; Mark Pieroni; Gregory Y H Lip
Journal:  Cardiovasc Res       Date:  2021-06-16       Impact factor: 10.787

  5 in total

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