Abstract

Respiratory rate (RR) is a key parameter used in healthcare for monitoring and predicting patient deterioration. However, continuous and automatic estimation of this parameter from wearable sensors is still a challenging task. Various methods have been proposed to estimate RR from wearable sensors using windowed segments of the data; e.g., often using a minimum of 32 s. Little research has been reported in the literature concerning the instantaneous detection of respiratory rate from such sources. In this paper, we develop and evaluate a method to estimate instantaneous respiratory rate (IRR) from body-worn reflectance photoplethysmography (PPG) sensors. The proposed method relies on a nonlinear time-frequency representation, termed the wavelet synchrosqueezed transform (WSST). We apply the latter to derived modulations of the PPG that arise from the act of breathing.We validate the proposed algorithm using (i) a custom device with a PPG probe placed on various body positions and (ii) a commercial wrist-worn device (WaveletHealth Inc., Mountain View, CA, USA). Comparator reference data were obtained via a thermocouple placed under the nostrils, providing ground-truth information concerning respiration cycles. Tracking instantaneous frequencies was performed in the joint time-frequency spectrum of the (4 Hz re-sampled) respiratory-induced modulation using the WSST, from data obtained from 10 healthy subjects. The estimated instantaneous respiratory rates have shown to be highly correlated with breath-by-breath variations derived from the reference signals. The proposed method produced more accurate results compared to averaged RR obtained using 32 s windows investigated with overlap between successive windows of (i) zero and (ii) 28 s. For a set of five healthy subjects, the averaged similarity between reference RR and instantaneous RR, given by the longest common subsequence (LCSS) algorithm, was calculated as 0.69; this compares with averaged similarity of 0.49 using 32 s windows with 28 s overlap between successive windows. The results provide insight into estimation of IRR and show that upper body positions produced PPG signals from which a better respiration signal was extracted than for other body locations.

Highlights

  • Continuous monitoring of at high-risk hospital patients is a crucial step to improving patient outcomes by identifying physiological deterioration in patients, and informing clinicians [1]

  • In this work described by this paper, we address the estimation of instantaneous Respiratory rate (RR) from reflectance PPG signals rather than using ECG signals

  • instantaneous respiratory rate (IRR) has been estimated from infrared PPG signals recorded using the custom device from various body positions where simultaneous breathing signal was recorded using the thermocouple

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Summary

Introduction

Continuous monitoring of at high-risk hospital patients is a crucial step to improving patient outcomes by identifying physiological deterioration in patients, and informing clinicians [1]. Due to a high patient-to-nurse ratio in many healthcare settings, poor patient outcomes can occur when physiological deterioration goes unseen by clinical staff Wearable technologies, such as wrist-worn reflectance photoplethysmography (PPG) sensors, can be used to monitor physiological parameters such as heart rate, blood oxygen level (SpO2 ), and respiratory rate in a noninvasive manner. Sensors 2018, 18, 3705 of patients at risk of deterioration, current systems are less unobtrusive and not fully wearable (e.g., electrocardigraphy (ECG) electrodes, PPG sensors with finger probes, etc.). They are used for averaged measurements over a long interval of time, such as a minute, and do not typically offer instantaneous values. This lack of accuracy is due to motion artefact that affects the recorded signals

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