Abstract

Abnormal vital signs often predict a serious condition of acutely ill hospital patients in 24 hours. The notable fluctuations of respiratory rate (RR) are highly predictive of deteriorations among the vital signs measured. Traditional methods of detecting RR are performed by directly measuring the air flow in or out of the lungs or indirectly measuring the changes of the chest volume. These methods require the use of cumbersome devices, which may interfere with natural breathing, are uncomfortable, have frequently moving artifacts, and are extremely expensive. This study aims to estimate the RR from electrocardiogram (ECG) and photoplethysmogram (PPG) signals, which consist of passive and non-invasive acquisition modules. Algorithms have been validated by using PhysioNet’s Multiparameter Intelligent Monitoring in Intensive Care II (MIMIC-II)’s patient datasets. RR estimation provides the value of mean absolute error (MAE) for ECG as 1.25 bpm (MIMIC-II) and 1.05 bpm for the acquired data. MAE for PPG is 1.15 bpm (MIMIC-II) and 0.90 bpm for the acquired data. By using 1-minute windows, this method reveals that the filtering method efficiently extracted respiratory information from the ECG and PPG signals. Smaller MAE for PPG signals results from fewer artifacts due to easy sensor attachment for the PPG because PPG recording requires only one-finger pulse oximeter sensor placement. However, ECG recording requires at least three electrode placements at three positions on the subject’s body surface for a single lead (lead II), thereby increasing the artifacts. A reliable technique has been proposed for RR estimation.

Highlights

  • Based on the Strategic Plan of the Ministry of Health of Malaysia for 2016–2020, the increased prevalence of infectious and non-infectious diseases implies the government's concern for hospital healthcare services and resources [1]

  • Most high-risk patients suffering from diseases require full monitoring of vital signs, such as pulse rate, respiratory rate (RR), blood pressure, and body temperature [2], which are used as the main references to the patient's health level [3]

  • The ECG signal preprocessing showing (a) raw signal (b) removal of baseline wander (c) removal of power line interference (d) after signal smoothening by Savitzky-Golay filter, using MIMIC-II dataset

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Summary

Introduction

Based on the Strategic Plan of the Ministry of Health of Malaysia for 2016–2020, the increased prevalence of infectious and non-infectious diseases implies the government's concern for hospital healthcare services and resources [1]. Most high-risk patients suffering from diseases require full monitoring of vital signs, such as pulse rate, respiratory rate (RR), blood pressure, and body temperature [2], which are used as the main references to the patient's health level [3]. ISSN: 2302-9285 important parameter where Abdul Malik et al in 2017 [6] have conducted a study to classify normal respiratory sounds and crackles respiratory sounds in healthy individuals and lung cancer patients. Another parameter such as the cardiorespiratory information can be measured using multiple piezoelectric sensors as investigated by Igasaki et al [7]

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