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Robustness of electrocardiogram signal quality indices
Author(s) -
Saifur Rahman,
Chandan Karmakar,
Iynkaran Natgunanathan,
John Yearwood,
Marimuthu Palaniswami
Publication year - 2022
Publication title -
journal of the royal society interface
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.655
H-Index - 139
eISSN - 1742-5689
pISSN - 1742-5662
DOI - 10.1098/rsif.2022.0012
Subject(s) - robustness (evolution) , computer science , kurtosis , noise (video) , artificial intelligence , skewness , pattern recognition (psychology) , signal (programming language) , statistics , mathematics , image (mathematics) , biochemistry , chemistry , gene , programming language
Electrocardiogram (ECG) signal quality indices (SQIs) are essential for improving diagnostic accuracy and reliability of ECG analysis systems. In various practical applications, the ECG signals are corrupted by different types of noise. These corrupted ECG signals often provide insufficient and incorrect information regarding a patient’s health. To solve this problem, signal quality measurements should be made before an ECG signal is used for decision-making. This paper investigates the robustness of existing popular statistical signal quality indices (SSQIs): relative power of QRS complex (SQIp ), skewness (SQIskew ), signal-to-noise ratio (SQIsnr ), higher order statistics SQI (SQIhos ) and peakedness of kurtosis (SQIkur ). We analysed the robustness of these SSQIs against different window sizes across diverse datasets. Results showed that the performance of SSQIs considerably fluctuates against varying datasets, whereas the impact of varying window sizes was minimal. This fluctuation occurred due to the use of a static threshold value for classifying noise-free ECG signals from the raw ECG signals. Another drawback of these SSQIs is the bias towards noise-free ECG signals, that limits their usefulness in clinical settings. In summary, the fixed threshold-based SSQIs cannot be used as a robust noise detection system. In order to solve this fixed threshold problem, other techniques can be developed using adaptive thresholds and machine-learning mechanisms.

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