2020
DOI: 10.3390/app10217505
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Application of Stockwell Transform and Shannon Energy for Pace Pulses Detection in a Single-Lead ECG Corrupted by EMG Artifacts

Abstract: Electrocardiogram (ECG) analysis is important for the detection of pace pulse artifacts, since their existence indicates the presence of a pacemaker. ECG gives information on the proper functionality of the device and could help to evaluate the reaction of the heart. Beyond the challenges related to the diversity of ECG arrhythmias and pace pulses, the existence of electromyogram (EMG) noise could cause serious problems for the correct detection of pace pulses. This study reveals the potential of a methodology… Show more

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Cited by 3 publications
(1 citation statement)
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“…The ECG test of patients with implanted pacemakers is burned with EMG noises that disrupt the pace of pulse artifact detection. Accordingly, [30] introduces a methodology based on ST, Shannon energy computing, and threshold rule for identifying pace artifacts on noisy ECG caused by EMG noise. The time-frequency domain is potentially one of the promising techniques that can accurately recognize integrated noises with ECG.…”
Section: ) Time-frequency Domain and Ecg Denoisingmentioning
confidence: 99%
“…The ECG test of patients with implanted pacemakers is burned with EMG noises that disrupt the pace of pulse artifact detection. Accordingly, [30] introduces a methodology based on ST, Shannon energy computing, and threshold rule for identifying pace artifacts on noisy ECG caused by EMG noise. The time-frequency domain is potentially one of the promising techniques that can accurately recognize integrated noises with ECG.…”
Section: ) Time-frequency Domain and Ecg Denoisingmentioning
confidence: 99%