Research Centre for Biomedical Engineering, City, University of London, London, United Kingdom.
Research Centre for Biomedical Engineering, City, University of London, London, United Kingdom.
Comput Methods Programs Biomed. 2021 Sep;208:106222. doi: 10.1016/j.cmpb.2021.106222. Epub 2021 Jun 10.
The aim of this study was to evaluate the capability of features extracted from photoplethysmography (PPG) based Pulse Rate Variability (PRV) to classify hypertensive, normotensive and hypotensive events, and to estimate mean arterial, systolic and diastolic blood pressure in critically ill patients.
Time-domain, frequency-domain and non-linear indices from PRV were extracted from 5-min and 1-min segments obtained from PPG signals. These features were filtered using machine learning algorithms in order to obtain the optimal combination for the classification of hypertensive, hypotensive and normotensive events, and for the estimation of blood pressure.
5-min segments allowed for an improved performance in both classification and estimation tasks. Classification of blood pressure states showed around 70% accuracy and around 75% specificity. The sensitivity, precision and F1 scores were around 50%. In estimating mean arterial, systolic, and diastolic blood pressure, mean absolute errors as low as 2.55 ± 0.78 mmHg, 4.74 ± 2.33 mmHg, and 1.78 ± 0.14 mmHg were obtained, respectively. Bland-Altman analysis and Wilcoxon rank sum tests showed good agreement between real and estimated values, especially for mean and diastolic arterial blood pressures.
PRV-based features could be used for the classification of blood pressure states and the estimation of blood pressure values, although including additional features from the PPG waveform could improve the results.
PRV contains information related to blood pressure, which may aid in the continuous, noninvasive, non-intrusive estimation of blood pressure and detection of hypertensive and hypotensive events in critically ill subjects.
本研究旨在评估从光电容积脉搏波(PPG)提取的脉搏率变异性(PRV)特征,以分类高血压、正常血压和低血压事件,并估计危重症患者的平均动脉压、收缩压和舒张压。
从 PPG 信号中提取 PRV 的时域、频域和非线性指数,使用机器学习算法对这些特征进行过滤,以获得用于分类高血压、低血压和正常血压事件以及估计血压的最佳组合。
5 分钟段在分类和估计任务中都能提高性能。血压状态的分类准确率约为 70%,特异性约为 75%。灵敏度、精度和 F1 评分约为 50%。在估计平均动脉压、收缩压和舒张压方面,平均绝对误差分别低至 2.55±0.78mmHg、4.74±2.33mmHg 和 1.78±0.14mmHg。Bland-Altman 分析和 Wilcoxon 秩和检验表明,真实值和估计值之间具有良好的一致性,特别是对于平均动脉压和舒张压。
PRV 特征可用于分类血压状态和估计血压值,尽管增加 PPG 波形的其他特征可能会改善结果。
PRV 包含与血压相关的信息,这可能有助于连续、无创、非侵入性地估计血压,并在危重症患者中检测高血压和低血压事件。