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HEJČ, J.; ŘEDINA, R.; KOLÁŘOVÁ, J.; STÁREK, Z.
Original Title
Multi-channel delineation of intracardiac electrograms for arrhythmia substrate analysis using implicitly regularized convolutional neural network with wide receptive field
English Title
Type
WoS Article
Original Abstract
Objective Automated segmentation of intracardiac electrograms and extraction of fundamental cycle length intervals is crucial for reproducible arrhythmia substrate analysis conducted during electrophysiology procedures. The objective of this study is to develop a robust, computationally efficient end-to-end model for the precise electrogram multi-channel delineation using a highly imbalanced dataset. Methods A temporal deep convolutional neural network (CNN) based on the UNet architecture incorporating convolutional layers of varying dilation rates was implicitly regularized through data augmentations (DAs), a domain specific Tversky loss function, and distinct labelling strategies for segments comprising atrial fibrillation (AF). An exploratory study utilizing Bayesian search was conducted to optimize architectural and loss function hyperparameters. The impact of dilated convolutions, data augmentations, and labelling strategies on the performance and generalization capability was assessed through an ablation study. The performance of different models was evaluated using a cross-validation procedure and two independent test datasets derived from two separate patient cohorts containing 326, 84, and 97 electrograms encompassing sinus rhythms, abnormal complexes during ongoing tachycardias, and stimulation protocols. Results A UNet model with optimized loss hyperparameters, a dilated receptive field, and atrial fibrillation (AF) annotated as a positive class (D-UNet-L) achieved an average Sørensen-Dice coefficient (SDC) of 84.9 % on recordings with regular atrial beats across test datasets, surpassing the performance of models without loss optimization (81.5 %), without dilated kernels (81.3 %), and with inversed AF labelling (77.5 %). Notably, the highest average accuracy (Acc) of 95.8 % for AF recordings was obtained by a model trained on negatively assigned AF segments, outperforming D-UNet-L (88.9 %), the model without loss optimization (81.5 %), and the model without dilated kernels (81.3 %). The reference D-UNet-L model exhibited overall root-mean-square errors of 8.3 and 9.0 ms across test datasets. Additionally, 61.5 % and 20.8 % of delineations exhibited absolute errors below 5 ms and 10 ms, respectively. Disabling data augmentation (DAs) resulted in a 2.7 % decrease in validation SDC and a 5.3 % increase in training SDC.“ Conclusion Generalization capability across independent datasets was improved by employing exponentially weighted Tversky loss. The model's segmentation performance on longer sequences with atrial fibrillation was improved by incorporating dilated convolution kernels. Noise-aware and morphology data augmentations effectively mitigated overfitting potential in a limited training dataset. Label noise introduced by annotating atrial fibrillation sequences into a positive class strengthened regularization of the model, particularly in its ability to identify regular beats. However, it also negatively impacted performance on F-waves.
English abstract
Keywords
cardiac electrophysiology, local activation time, arrhythmia mapping, convolutional neural network, dilated convolution
Key words in English
Authors
RIV year
2025
Released
09.04.2024
Publisher
Elsevier
ISBN
1746-8094
Periodical
Biomedical Signal Processing and Control
Volume
94
Number
August 2024
State
United Kingdom of Great Britain and Northern Ireland
Pages from
1
Pages to
18
Pages count
URL
https://www.sciencedirect.com/science/article/pii/S174680942400332X
Full text in the Digital Library
http://hdl.handle.net/11012/245536
BibTex
@article{BUT188374, author="Jakub {Hejč} and Richard {Ředina} and Jana {Kolářová} and Zdeněk {Stárek}", title="Multi-channel delineation of intracardiac electrograms for arrhythmia substrate analysis using implicitly regularized convolutional neural network with wide receptive field", journal="Biomedical Signal Processing and Control", year="2024", volume="94", number="August 2024", pages="1--18", doi="10.1016/j.bspc.2024.106274", issn="1746-8094", url="https://www.sciencedirect.com/science/article/pii/S174680942400332X" }
Documents
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