Real-Time Phonocardiogram Anomaly Detection by Adaptive 1d Convolutional Neural Networks
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Date
2020-10
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier
Open Access Color
HYBRID
Green Open Access
Yes
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Publicly Funded
No
Abstract
The heart sound signals (Phonocardiogram - PCG) enable the earliest monitoring to detect a potential cardiovascular pathology and have recently become a crucial tool as a diagnostic test in outpatient monitoring to assess heart hemodynamic status. The need for an automated and accurate anomaly detection method for PCG has thus become imminent. To determine the state-of-the-art PCG classification algorithm, 48 international teams competed in the PhysioNet (CinC) Challenge in 2016 over the largest benchmark dataset with 3126 records with the classification outputs, normal (N), abnormal (A) and unsure - too noisy (U). In this study, our aim is to push this frontier further; however, we focus deliberately on the anomaly detection problem while assuming a reasonably high Signal-to-Noise Ratio (SNR) on the records. By using 1D Convolutional Neural Networks trained with a novel data purification approach, we aim to achieve the highest detection performance and real-time processing ability with significantly lower delay and computational complexity. The experimental results over the high-quality subset of the same benchmark dataset show that the proposed approach achieves both objectives. Furthermore, our findings reveal the fact that further improvements indeed require a personalized (patient-specific) approach to avoid major drawbacks of a global PCG classification approach. (C) 2020 The Authors. Published by Elsevier B.V.
Description
Keywords
Phonocardiogram classification, Convolutional Neural Networks, Real-time heart sound monitoring, Structural Damage Detection, Deep, Segmentation, Recognition, Wireless, High signalto-noise ratios (SNR), phonocardiography, Classification approach, Biomedical signal processing, convolutional neural network, Anomaly detection, outlier detection, 113, Classification algorithm, International team, Detection performance, human, Purification, Signal to noise ratio, Classification (of information), adult, article, 600, 113 Computer and information sciences, Convolution, 004, signal noise ratio, Benchmarking, Realtime processing, Benchmark datasets, Convolutional neural networks, Anomaly detection methods
Fields of Science
0206 medical engineering, 02 engineering and technology, 0202 electrical engineering, electronic engineering, information engineering
Citation
WoS Q
Q1
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OpenCitations Citation Count
37
Source
Neurocomputıng
Volume
411
Issue
Start Page
291
End Page
301
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CrossRef : 46
Scopus : 43
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Mendeley Readers : 62
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44
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35
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3
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68
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