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Detection and classification of ECG noises using decomposition on mixed codebook for quality analysis

机译:使用混合码本上的分解对ECG噪声进行检测和分类以进行质量分析

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摘要

In this Letter, a robust technique is presented to detect and classify different electrocardiogram (ECG) noises including baseline wander (BW), muscle artefact (MA), power line interference (PLI) and additive white Gaussian noise (AWGN) based on signal decomposition on mixed codebooks. These codebooks employ temporal and spectral-bound waveforms which provide sparse representation of ECG signals and can extract ECG local waves as well as ECG noises including BW, PLI, MA and AWGN simultaneously. Further, different statistical approaches and temporal features are applied on decomposed signals for detecting the presence of the above mentioned noises. The accuracy and robustness of the proposed technique are evaluated using a large set of noise-free and noisy ECG signals taken from the Massachusetts Institute of Technology-Boston's Beth Israel Hospital (MIT-BIH) arrhythmia database, MIT-BIH polysmnographic database and Fantasia database. It is shown from the results that the proposed technique achieves an average detection accuracy of above 99% in detecting all kinds of ECG noises. Furthermore, average results show that the technique can achieve an average sensitivity of 98.55%, positive productivity of 98.6% and classification accuracy of 97.19% for ECG signals taken from all three databases.
机译:在这封信中,提出了一种可靠的技术,可以基于信号分解来检测和分类不同的心电图(ECG)噪声,包括基线漂移(BW),肌肉伪影(MA),电力线干扰(PLI)和加性高斯白噪声(AWGN)在混合码本上。这些密码本采用时间波形和频谱约束波形,这些波形提供ECG信号的稀疏表示,并且可以同时提取ECG本地波以及包括BW,PLI,MA和AWGN在内的ECG噪声。此外,将不同的统计方法和时间特征应用于分解后的信号,以检测上述噪声的存在。使用从麻省理工学院-波士顿贝斯以色列医院(MIT-BIH)心律失常数据库,MIT-BIH多导睡眠图数据库和幻想曲数据库获取的大量无噪声和嘈杂的ECG信号评估所提出技术的准确性和鲁棒性。结果表明,该技术在检测各种心电图噪声中均达到了99%以上的平均检测精度。此外,平均结果表明,对于从这三个数据库中获取的ECG信号,该技术可实现98.55%的平均灵敏度,98.6%的正生产率和97.19%的分类精度。

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