2021
DOI: 10.1007/s10462-021-09969-z
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Detection of heart valve disorders from PCG signals using TQWT, FA-MVEMD, Shannon energy envelope and deterministic learning

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Cited by 17 publications
(7 citation statements)
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“…For example, Baygin et al used feature extraction based on homeomorphically irreducible tree graph pattern and feature generation based on maximum absolute pooling to nally classify grade 7 and grade 4 arrhythmia on a large ECG dataset, the accuracy was 92.92% and 97.18%, respectively [5]. Wang et al used convolution with different kernel sizes to extract multidimensional features from ECG signals, and nally used the max-pooling layer for feature screening, achieving 99.06% accuracy on the MITDB based on mixed signal processing and deterministic theory, and nally achieved 97.75%, 98.69% and 98.48% accuracy on several databases [9]. Ghosh performed time-frequency analysis on the signal and used the multi-class composite classi er to classify the three types of PCG, namely AS, MS and MR, with sensitivities of 99.44%, 98.66% and 96.22% [10].…”
Section: B Related Workmentioning
confidence: 99%
“…For example, Baygin et al used feature extraction based on homeomorphically irreducible tree graph pattern and feature generation based on maximum absolute pooling to nally classify grade 7 and grade 4 arrhythmia on a large ECG dataset, the accuracy was 92.92% and 97.18%, respectively [5]. Wang et al used convolution with different kernel sizes to extract multidimensional features from ECG signals, and nally used the max-pooling layer for feature screening, achieving 99.06% accuracy on the MITDB based on mixed signal processing and deterministic theory, and nally achieved 97.75%, 98.69% and 98.48% accuracy on several databases [9]. Ghosh performed time-frequency analysis on the signal and used the multi-class composite classi er to classify the three types of PCG, namely AS, MS and MR, with sensitivities of 99.44%, 98.66% and 96.22% [10].…”
Section: B Related Workmentioning
confidence: 99%
“…Study of abnormal heart rate (rhythm) has important clinical meaning. PCG signals are also used to diagnose cardiac abnormalities [3]. The heart consists of two parts related to pumping, i.e.…”
Section: Phonocardiogrammentioning
confidence: 99%
“…Let Assumptions 1-4 hold. Let the weight updating laws for the critic NN and the action NN be ( 29) and (32), respectively. Then we obtain that i) Υ 0 i (K), Ĵ0 i (K −1), W 0 ic and W 0 ia are all uniformly ultimately bounded; ii) W 0 ζic (K) and W 0 ζia (K) are exponentially stable, provided that when the following assumptions are hold:…”
Section: Stabilitymentioning
confidence: 99%
“…Based on the DLT, a rapid dynamical pattern recognition (DPR) approach was proposed to indicate that a time-varying dynamical pattern could be represented in a time-invariant and spatially distributed form, and rapid DPR can be achieved based on the difference between the system dynamics of the test and training patterns [29]. Utilizing the rapid DPR approach, in previous works, we have given analytical results showing that the obtained knowledge of the fault be utilized to achieve rapid FD scheme [30], with applications on the early detection of rotating stall [31], detection of heart valve disorders from phonocardiogram signals and so on [32].…”
Section: Introductionmentioning
confidence: 99%