College of Science and Engineering, James Cook University, Cairns, Queensland, Australia.
School of Engineering and Mathematical Sciences, La Trobe University, Melbourne, Victoria, Australia.
PLoS One. 2021 Apr 8;16(4):e0249843. doi: 10.1371/journal.pone.0249843. eCollection 2021.
Continuous and non-invasive respiratory rate (RR) monitoring would significantly improve patient outcomes. Currently, RR is under-recorded in clinical environments and is often measured by manually counting breaths. In this work, we investigate the use of respiratory signal quality quantification and several neural network (NN) structures for improved RR estimation. We extract respiratory modulation signals from the electrocardiogram (ECG) and photoplethysmogram (PPG) signals, and calculate a possible RR from each extracted signal. We develop a straightforward and efficient respiratory quality index (RQI) scheme that determines the quality of each moonddulation-extracted respiration signal. We then develop NNs for the estimation of RR, using estimated RRs and their corresponding quality index as input features. We determine that calculating RQIs for modulation-extracted RRs decreased the mean absolute error (MAE) of our NNs by up to 38.17%. When trained and tested using 60-sec waveform segments, the proposed scheme achieved an MAE of 0.638 breaths per minute. Based on these results, our scheme could be readily implemented into non-invasive wearable devices for continuous RR measurement in many healthcare applications.
连续且非侵入式的呼吸速率 (RR) 监测将显著改善患者的预后。目前,RR 在临床环境中的记录不足,并且通常通过手动计数呼吸来测量。在这项工作中,我们研究了使用呼吸信号质量量化和几种神经网络 (NN) 结构来进行改进的 RR 估计。我们从心电图 (ECG) 和光体积描记图 (PPG) 信号中提取呼吸调制信号,并从每个提取的信号中计算出可能的 RR。我们开发了一种简单有效的呼吸质量指数 (RQI) 方案,用于确定每个调制提取的呼吸信号的质量。然后,我们使用估计的 RR 和相应的质量指数作为输入特征,为 RR 的估计开发 NN。我们确定,为调制提取的 RR 计算 RQIs 可以将我们的 NN 的平均绝对误差 (MAE) 降低多达 38.17%。当使用 60 秒的波形段进行训练和测试时,所提出的方案的 MAE 达到了 0.638 次/分钟。基于这些结果,我们的方案可以很容易地应用于非侵入式可穿戴设备中,用于许多医疗保健应用中的连续 RR 测量。