Print Email Facebook Twitter Classification of De novo post-operative and persistent atrial fibrillation using multi-channel ECG recordings Title Classification of De novo post-operative and persistent atrial fibrillation using multi-channel ECG recordings Author Moghaddasi Kelishomi, H. (TU Delft Circuits and Systems) Hendriks, R.C. (TU Delft Circuits and Systems) van der Veen, A.J. (TU Delft Circuits and Systems) de Groot, N.M.S. (TU Delft Circuits and Systems; Erasmus MC) Hunyadi, Borbala (TU Delft Circuits and Systems) Date 2022 Abstract Atrial fibrillation (AF) is the most sustained arrhythmia in the heart and also the most common complication developed after cardiac surgery. Due to its progressive nature, timely detection of AF is important. Currently, physicians use a surface electrocardiogram (ECG) for AF diagnosis. However, when the patient develops AF, its various development stages are not distinguishable for cardiologists based on visual inspection of the surface ECG signals. Therefore, severity detection of AF could start from differentiating between short-lasting AF and long-lasting AF. Here, de novo post-operative AF (POAF) is a good model for short-lasting AF while long-lasting AF can be represented by persistent AF. Therefore, we address in this paper a binary severity detection of AF for two specific types of AF. We focus on the differentiation of these two types as de novo POAF is the first time that a patient develops AF. Hence, comparing its development to a more severe stage of AF (e.g., persistent AF) could be beneficial in unveiling the electrical changes in the atrium. To the best of our knowledge, this is the first paper that aims to differentiate these different AF stages. We propose a method that consists of three sets of discriminative features based on fundamentally different aspects of the multi-channel ECG data, namely based on the analysis of RR intervals, a greyscale image representation of the vectorcardiogram, and the frequency domain representation of the ECG. Due to the nature of AF, these features are able to capture both morphological and rhythmic changes in the ECGs. Our classification system consists of a random forest classifier, after a feature selection stage using the ReliefF method. The detection efficiency is tested on 151 patients using 5-fold cross-validation. We achieved 89.07% accuracy in the classification of de novo POAF and persistent AF. The results show that the features are discriminative to reveal the severity of AF. Moreover, inspection of the most important features sheds light on the different characteristics of de novo post-operative and persistent AF. Subject Atrial activityAtrial fibrillationDominant frequencyPoincaréVectorcardiogram To reference this document use: http://resolver.tudelft.nl/uuid:d19e60a6-2d49-4661-bdb5-9911e14e9a0a DOI https://doi.org/10.1016/j.compbiomed.2022.105270 ISSN 0010-4825 Source Computers in Biology and Medicine, 143, 1-14 Part of collection Institutional Repository Document type journal article Rights © 2022 H. Moghaddasi Kelishomi, R.C. Hendriks, A.J. van der Veen, N.M.S. de Groot, Borbala Hunyadi Files PDF 1_s2.0_S0010482522000622_main.pdf 6.22 MB Close viewer /islandora/object/uuid:d19e60a6-2d49-4661-bdb5-9911e14e9a0a/datastream/OBJ/view