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SMITAL, L. HAIDER, C. VÍTEK, M. LEINVEBER, P. JURÁK, P. NĚMCOVÁ, A. SMÍŠEK, R. MARŠÁNOVÁ, L. PROVAZNÍK, I. FELTON, C. GILBERT, B. HOLMES, D.
Original Title
Real-Time Quality Assessment of Long-Term ECG Signals Recorded by Wearables in Free-Living Conditions
Type
journal article in Web of Science
Language
English
Original Abstract
Objective: Nowadays, methods for ECG quality assessment are mostly designed to binary distinguish between good/bad quality of the whole signal. Such classification is not suitable to long-term data collected by wearable devices. In this paper, a novel approach to estimate long-term ECG signal quality is proposed. Methods: The real-time quality estimation is performed in a local time window by calculation of continuous signal-to-noise ratio (SNR) curve. The layout of the data quality segments is determined by analysis of SNR waveform. It is distinguished between three levels of ECG signal quality: signal suitable for full wave ECG analysis, signal suitable only for QRS detection, and signal unsuitable for further processing. Results: The SNR limits for reliable QRS detection and full ECG waveform analysis are 5 and 18 dB respectively. The method was developed and tested using synthetic data and validated on real data from wearable device. Conclusion: The proposed solution is a robust, accurate and computationally efficient algorithm for annotation of ECG signal quality that will facilitate the subsequent tailored analysis of ECG signals recorded in free-living conditions. Significance: The field of long-term ECG signals self-monitoring by wearable devices is swiftly developing. The analysis of massive amount of collected data is time consuming. It is advantageous to characterize data quality in advance and thereby limit consequent analysis to useable signals.
Keywords
Electrocardiography; Signal to noise ratio; Estimation; Biomedical monitoring; Performance evaluation; Real-time systems; ECG delineation; ECG signal; QRS detection; signal quality; signal segmentation; SNR estimation
Authors
SMITAL, L.; HAIDER, C.; VÍTEK, M.; LEINVEBER, P.; JURÁK, P.; NĚMCOVÁ, A.; SMÍŠEK, R.; MARŠÁNOVÁ, L.; PROVAZNÍK, I.; FELTON, C.; GILBERT, B.; HOLMES, D.
Released
27. 1. 2020
Publisher
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
Location
PISCATAWAY
ISBN
1558-2531
Periodical
IEEE TRANSACTIONS ON BIOMEDICAL ENGINEERING
Year of study
67
Number
10
State
United States of America
Pages from
2721
Pages to
2734
Pages count
14
URL
https://ieeexplore.ieee.org/document/8970507
BibTex
@article{BUT165449, author="Lukáš {Smital} and Clifton {Haider} and Martin {Vítek} and Pavel {Leinveber} and Pavel {Jurák} and Andrea {Němcová} and Radovan {Smíšek} and Lucie {Šaclová} and Valentine {Provazník} and Christopher L. {Felton} and Barry {Gilbert} and David {Holmes}", title="Real-Time Quality Assessment of Long-Term ECG Signals Recorded by Wearables in Free-Living Conditions", journal="IEEE TRANSACTIONS ON BIOMEDICAL ENGINEERING", year="2020", volume="67", number="10", pages="2721--2734", doi="10.1109/TBME.2020.2969719", issn="1558-2531", url="https://ieeexplore.ieee.org/document/8970507" }