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. 2021;29(S1):475-486.
doi: 10.3233/THC-218045.

Robust deep learning pipeline for PVC beats localization

Affiliations

Robust deep learning pipeline for PVC beats localization

Bohdan Petryshak et al. Technol Health Care. 2021.

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.

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Conflict of interest statement

None to report.

Figures

Figure 1.
Figure 1.
InceptionTime module, used for PVC beats classification. The bottleneck layer reduces the dimension of the input data and models complexity mitigating the over- fitting. Multi-scale convolutional windows effectively learn patterns at different scales of the abnormal cardiac cycle.

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References

    1. Stanfield CL, Germann WJ. Principles of human physiology. Pearson Benjamin Cummings, 2008.
    1. 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
    1. 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
    1. The 3rd China Physiological Signal Challenge 2020. http//www.icbeb.org/: CSPC2020.
    1. Pan J, Tompkins WJ. A Real-Time QRS Detection Algorithm. IEEE Transactions on Biomedical Engineering BME. 1985; 32(3): 230-236. - PubMed

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