Signal Processing Group, Swiss Center for Electronics and Microtechnology (CSEM), Neuchâtel, Switzerland.
Signal Processing Laboratory (LTS4), Ecole Polytechnique Fédérale de Lausanne (EPFL), Lausanne, Switzerland.
PLoS One. 2023 Feb 3;18(2):e0279419. doi: 10.1371/journal.pone.0279419. eCollection 2023.
Blood pressure (BP) is a crucial biomarker giving valuable information regarding cardiovascular diseases but requires accurate continuous monitoring to maximize its value. In the effort of developing non-invasive, non-occlusive and continuous BP monitoring devices, photoplethysmography (PPG) has recently gained interest. Researchers have attempted to estimate BP based on the analysis of PPG waveform morphology, with promising results, yet often validated on a small number of subjects with moderate BP variations. This work presents an accurate BP estimator based on PPG morphology features. The method first uses a clinically-validated algorithm (oBPM®) to perform signal preprocessing and extraction of physiological features. A subset of features that best reflects BP changes is automatically identified by Lasso regression, and a feature relevance analysis is conducted. Three machine learning (ML) methods are then investigated to translate this subset of features into systolic BP (SBP) and diastolic BP (DBP) estimates; namely Lasso regression, support vector regression and Gaussian process regression. The accuracy of absolute BP estimates and trending ability are evaluated. Such an approach considerably improves the performance for SBP estimation over previous oBPM® technology, with a reduction in the standard deviation of the error of over 20%. Furthermore, rapid BP changes assessed by the PPG-based approach demonstrates concordance rate over 99% with the invasive reference. Altogether, the results confirm that PPG morphology features can be combined with ML methods to accurately track BP variations generated during anesthesia induction. They also reinforce the importance of adding a calibration measure to obtain an absolute BP estimate.
血压(BP)是一种重要的生物标志物,可提供有关心血管疾病的有价值信息,但需要进行准确的连续监测,以最大程度地发挥其价值。为了开发非侵入性、非闭塞性和连续的血压监测设备,光电容积脉搏波描记法(PPG)最近引起了关注。研究人员试图根据 PPG 波形形态分析来估计血压,取得了有希望的结果,但通常仅在少数血压变化适中的受试者中进行验证。本工作提出了一种基于 PPG 形态特征的准确血压估计器。该方法首先使用经过临床验证的算法(oBPM®)进行信号预处理和生理特征提取。通过套索回归自动识别出最佳反映血压变化的特征子集,并进行特征相关性分析。然后研究了三种机器学习(ML)方法,将这组特征子集转换为收缩压(SBP)和舒张压(DBP)估计值,即套索回归、支持向量回归和高斯过程回归。评估了绝对血压估计值的准确性和趋势能力。与以前的 oBPM®技术相比,这种方法大大提高了 SBP 估计的性能,误差的标准差降低了 20%以上。此外,基于 PPG 的方法评估的快速血压变化与侵入性参考具有超过 99%的一致性率。总之,结果证实 PPG 形态特征可以与 ML 方法结合使用,以准确跟踪麻醉诱导期间产生的血压变化。它们还强调了添加校准措施以获得绝对血压估计值的重要性。