Zhang Jia, Scebba Gaetano, Karlen Walter
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:5939-5942. doi: 10.1109/EMBC44109.2020.9175943.
Respiratory rate (RR) can be estimated from the photoplethysmogram (PPG) recorded by optical sensors in wearable devices. The fusion of estimates from different PPG features has lead to an increase in accuracy, but also reduced the numbers of available final estimates due to discarding of unreliable data. We propose a novel, tunable fusion algorithm using covariance intersection to estimate the RR from PPG (CIF). The algorithm is adaptive to the number of available feature estimates and takes each estimates' trustworthiness into account. In a benchmarking experiment using the CapnoBase dataset with reference RR from capnography, we compared the CIF against the state-of-the-art Smart Fusion (SF) algorithm. The median root mean square error was 1.4 breaths/min for the CIF and 1.8 breaths/min for the SF. The CIF significantly increased the retention rate distribution of all recordings from 0.46 to 0.90 (p < 0.001). The agreement with the reference RR was high with a Pearson's correlation coefficient of 0.94, a bias of 0.3 breaths/min, and limits of agreement of -4.6 and 5.2 breaths/min. In addition, the algorithm was computationally efficient. Therefore, CIF could contribute to a more robust RR estimation from wearable PPG recordings.
呼吸频率(RR)可通过可穿戴设备中的光学传感器记录的光电容积脉搏波图(PPG)进行估算。来自不同PPG特征的估算融合提高了准确性,但由于丢弃了不可靠数据,可用最终估算的数量也减少了。我们提出了一种新颖的、可调谐的融合算法,使用协方差交集从PPG估算RR(CIF)。该算法能适应可用特征估算的数量,并考虑每个估算的可信度。在使用具有来自二氧化碳描记法的参考RR的CapnoBase数据集进行的基准实验中,我们将CIF与最先进的智能融合(SF)算法进行了比较。CIF的中位数均方根误差为1.4次/分钟,SF为1.8次/分钟。CIF显著提高了所有记录的保留率分布,从0.46提高到0.90(p < 0.001)。与参考RR的一致性很高,皮尔逊相关系数为0.94,偏差为0.3次/分钟,一致性界限为-4.6和5.2次/分钟。此外,该算法计算效率高。因此,CIF有助于从可穿戴PPG记录中进行更稳健的RR估算。