Robust deep learning pipeline for PVC beats localization
- PMID: 33682784
- PMCID: PMC8150659
- DOI: 10.3233/THC-218045
Robust deep learning pipeline for PVC beats localization
Abstract
Background: Premature ventricular contraction (PVC) is among the most frequently occurring types of arrhythmias. Existing approaches for automated PVC identification suffer from a range of disadvantages related to hand-crafted features and benchmarking on datasets with a tiny sample of PVC beats.
Objective: The main objective is to address the drawbacks described above in the proposed framework, which takes a raw ECG signal as an input and localizes R peaks of the PVC beats.
Methods: Our method consists of two neural networks. First, an encoder-decoder architecture trained on PVC-rich dataset localizes the R peak of both Normal and anomalous heartbeats. Provided R peaks positions, our CardioIncNet model does the delineation of healthy versus PVC beats.
Results: We have performed an extensive evaluation of our pipeline with both single- and cross-dataset paradigms on three public datasets. Our approach results in over 0.99 and 0.979 F1-measure on both single- and cross-dataset paradigms for R peaks localization task and above 0.96 and 0.85 F1 score for the PVC beats classification task.
Conclusions: We have shown a method that provides robust performance beyond the beats of Normal nature and clearly outperforms classical algorithms both in the case of a single and cross-dataset evaluation. We provide a Github1 repository for the reproduction of the results.
Keywords: ECG classification; ECG segmentation; Electrocardiography; PVC identification.
Conflict of interest statement
None to report.
Figures
Similar articles
-
Localization of origins of premature ventricular contraction in the whole ventricle based on machine learning and automatic beat recognition from 12-lead ECG.Physiol Meas. 2020 Jun 10;41(5):055007. doi: 10.1088/1361-6579/ab86d7. Physiol Meas. 2020. PMID: 32252035
-
Premature beats detection based on a novel convolutional neural network.Physiol Meas. 2021 Jul 28;42(7). doi: 10.1088/1361-6579/ac0e82. Physiol Meas. 2021. PMID: 34167103
-
Automatic diagnosis of premature ventricular contraction based on Lyapunov exponents and LVQ neural network.Comput Methods Programs Biomed. 2015 Oct;122(1):47-55. doi: 10.1016/j.cmpb.2015.06.010. Epub 2015 Jul 9. Comput Methods Programs Biomed. 2015. PMID: 26198132
-
Application of deep learning techniques for heartbeats detection using ECG signals-analysis and review.Comput Biol Med. 2020 May;120:103726. doi: 10.1016/j.compbiomed.2020.103726. Epub 2020 Apr 8. Comput Biol Med. 2020. PMID: 32421643 Review.
-
Machine Learning for Localization of Premature Ventricular Contraction Origins: A Review.Pacing Clin Electrophysiol. 2024 Nov;47(11):1481-1491. doi: 10.1111/pace.15089. Epub 2024 Oct 20. Pacing Clin Electrophysiol. 2024. PMID: 39428720 Review.
Cited by
-
State-of-the-Art Deep Learning Methods on Electrocardiogram Data: Systematic Review.JMIR Med Inform. 2022 Aug 15;10(8):e38454. doi: 10.2196/38454. JMIR Med Inform. 2022. PMID: 35969441 Free PMC article. Review.
References
-
- Stanfield CL, Germann WJ. Principles of human physiology. Pearson Benjamin Cummings, 2008.
-
- Moody GB, Mark RG. The impact of the MIT-BIH arrhythmia database. In: IEEE engineering in medicine and biology magazine: the quarterly maga- zine of the Engineering in Medicine Biology Society. 2001; 20: 45-50. - PubMed
-
- Greenwald SD, Patil RS, Mark RG. Improved detection and classification of arrhythmias in noise-corrupted electrocardiograms using contextual information. In: 1990; pp. 461-464. - PubMed
-
- The 3rd China Physiological Signal Challenge 2020. http//www.icbeb.org/: CSPC2020.
-
- Pan J, Tompkins WJ. A Real-Time QRS Detection Algorithm. IEEE Transactions on Biomedical Engineering BME. 1985; 32(3): 230-236. - PubMed
MeSH terms
LinkOut - more resources
Full Text Sources
Other Literature Sources