Robust Peak Detection for Holter Ecgs by Self-Organized Operational Neural Networks

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Date

2022

Journal Title

Journal ISSN

Volume Title

Publisher

IEEE-Inst Electrical Electronics Engineers Inc

Open Access Color

HYBRID

Green Open Access

Yes

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Publicly Funded

No
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Top 10%
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Top 10%
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Top 10%

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Abstract

Although numerous R-peak detectors have been proposed in the literature, their robustness and performance levels may significantly deteriorate in low-quality and noisy signals acquired from mobile electrocardiogram (ECG) sensors, such as Holter monitors. Recently, this issue has been addressed by deep 1-D convolutional neural networks (CNNs) that have achieved state-of-the-art performance levels in Holter monitors; however, they pose a high complexity level that requires special parallelized hardware setup for real-time processing. On the other hand, their performance deteriorates when a compact network configuration is used instead. This is an expected outcome as recent studies have demonstrated that the learning performance of CNNs is limited due to their strictly homogenous configuration with the sole linear neuron model. This has been addressed by operational neural networks (ONNs) with their heterogenous network configuration encapsulating neurons with various nonlinear operators. In this study, to further boost the peak detection performance along with an elegant computational efficiency, we propose 1-D Self-Organized ONNs (Self-ONNs) with generative neurons. The most crucial advantage of 1-D Self-ONNs over the ONNs is their self-organization capability that voids the need to search for the best operator set per neuron since each generative neuron has the ability to create the optimal operator during training. The experimental results over the China Physiological Signal Challenge-2020 (CPSC) dataset with more than one million ECG beats show that the proposed 1-D Self-ONNs can significantly surpass the state-of-the-art deep CNN with less computational complexity. Results demonstrate that the proposed solution achieves a 99.10% F1-score, 99.79% sensitivity, and 98.42% positive predictivity in the CPSC dataset, which is the best R-peak detection performance ever achieved.

Description

Keywords

Neurons, Electrocardiography, Monitoring, Biomedical monitoring, Libraries, Benchmark testing, Training, Convolutional neural networks (CNNs), Holter monitors, operational neural networks (ONNs), R-peak detection, Classification, System, Signal Processing (eess.SP), FOS: Computer and information sciences, operational neural networks (ONNs), Computer Science - Machine Learning, China, Monitoring, Libraries, 610, Holter monitors, 113, R-peak detection., Machine Learning (cs.LG), Electrocardiography, FOS: Electrical engineering, electronic engineering, information engineering, Training, Electrical Engineering and Systems Science - Signal Processing, Neurons, Benchmark testing, 113 Computer and information sciences, Convolutional neural networks (CNNs), 004, Electrocardiography, Ambulatory, Linear Models, Neural Networks, Computer, R-peak detection, Biomedical monitoring

Fields of Science

02 engineering and technology, 03 medical and health sciences, 0302 clinical medicine, 0202 electrical engineering, electronic engineering, information engineering

Citation

WoS Q

Q1

Scopus Q

Q1
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OpenCitations Citation Count
26

Source

Ieee Transactıons on Neural Networks And Learnıng Systems

Volume

34

Issue

Start Page

9363

End Page

9374
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Citations

CrossRef : 12

Scopus : 42

PubMed : 5

Captures

Mendeley Readers : 34

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7.0592

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