Xing Xiaoman, Ma Zhimin, Zhang Mingyou, Gao Xi, Li Ying, Song Mingxuan, Dong Wen-Fei
Medical Imaging Department, Suzhou Institute of Biomedical Engineering and Technology, Chinese Academy of Sciences, Suzhou, Jiangsu, People's Republic of China.
Physiol Meas. 2020 Mar 9;41(2):025007. doi: 10.1088/1361-6579/ab755d.
This work aims to develop an efficient and robust age-dependent multiple linear regression (MLR) model to estimate blood pressure (BP) from a single-source photoplethysmography (PPG) and biometrics, which could be embedded in the microcontroller of pulse oximeters.
Hemodynamic features were extracted from the PPG signal using its waveform, derivatives, and biometrics. Whole-based, feature-based, and fusion models were evaluated and compared for different age groups. Their performance was tested using 1086 subjects with a leave-one-subject-out cross-validation. The improvement by adding biometrics and the long-term calibration effect were investigated in detail. The relative importance of each feature was compared between different age groups and the implication was discussed.
The fusion model achieved the best performance in subjects with well-defined PPG features, whereas the feature-based method was better suited for subjects with damped signals. Adding age significantly improved both systolic BP (SBP) and diastolic BP (DBP) estimation accuracy for older subjects (> 50 years old) with well-defined features, while it only improved diastolic BP accuracy for older subjects with damped signals. For younger subjects (≤ 50 years old), the contribution of age was very small. A simple subtraction of subject-specific calibration factors significantly reduced biometric-related errors, which also improved the linearity of BP estimation. The relative importance analysis of input features suggests that separate models are indeed necessary for different age groups with different signal qualities, especially for DBP estimation in older subjects.
This study shows a reasonable BP estimation accuracy with age-dependent MLR models, which may help to equip current pulse oximeters with additional functionalities.
本研究旨在开发一种高效且稳健的年龄相关多元线性回归(MLR)模型,以便从单源光电容积脉搏波描记法(PPG)和生物特征数据估算血压(BP),该模型可嵌入脉搏血氧仪的微控制器中。
利用PPG信号的波形、导数和生物特征数据提取血流动力学特征。对不同年龄组的基于整体、基于特征和融合模型进行评估和比较。使用1086名受试者进行留一法交叉验证来测试其性能。详细研究了添加生物特征数据带来的改善以及长期校准效果。比较了不同年龄组中每个特征的相对重要性并讨论了其意义。
融合模型在具有明确PPG特征的受试者中表现最佳,而基于特征的方法更适合信号衰减的受试者。对于具有明确特征的老年受试者(>50岁),添加年龄显著提高了收缩压(SBP)和舒张压(DBP)的估计准确性,而对于信号衰减的老年受试者,仅提高了舒张压的准确性。对于年轻受试者(≤50岁),年龄的贡献非常小。简单减去受试者特定的校准因子可显著减少与生物特征相关的误差,这也提高了血压估计的线性度。输入特征的相对重要性分析表明,对于具有不同信号质量的不同年龄组,尤其是老年受试者的舒张压估计,确实需要单独的模型。
本研究表明年龄相关的MLR模型具有合理的血压估计准确性,这可能有助于为当前的脉搏血氧仪赋予额外功能。