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基于单通道光电容积脉搏波信号的连续血压估计新方法。

A novel method for continuous blood pressure estimation based on a single-channel photoplethysmogram signal.

机构信息

Department of Electronic Engineering, Fudan University, Shanghai 200433, People's Republic of China.

Authors have contributed equally to this work.

出版信息

Physiol Meas. 2021 Jan 1;41(12):125009. doi: 10.1088/1361-6579/abc8dd.

Abstract

OBJECTIVE

Currently, continuous blood pressure (BP) measurements are mostly based on multi-sensor combinations and datasets with limited BP ranges. Besides, most BP-related features derive from the photoplethysmogram (PPG) signal. The mechanism of PPG signal formation is not considered. We aimed to design a noninvasive and continuous method for estimation of BP using a single PPG sensor, which takes the mechanism of PPG signal formation into account.

APPROACH

We prepared a dataset containing PPG signals for 294 patients from three public databases for constructing the BP estimation model. The features used in the model consisted of two types: novel features based on a multi-Gaussian model and existing features. The multi-Gaussian model fitted the different components (i.e. the main wave, the dicrotic wave and the tidal wave) of the PPG signal. Ensemble machine learning algorithms were applied to estimate systolic blood pressure (SBP) and diastolic blood pressure (DBP). When partitioning the dataset, there was an overlap between the training set and the testing set.

MAIN RESULTS

Datasets with a wide-range of SBP and DBP values (SBP ranging from 74 to 229 mmHg and DBP ranging from 26 to 141 mmHg) were used to evaluate our method. The mean and standard deviation of error for SBP and DBP estimations were -0.21 ± 5.21 mmHg and -0.19 ± 3.37 mmHg, respectively. The model performance fully met the Association for the Advancement of Medical Instrumentation standard and was grade 'A' on the British Hypertension Society standard.

SIGNIFICANCE

The multi-Gaussian model could be used to estimate BP, and our method was able to track a wide range of BP accurately. In addition our method is based on a single PPG sensor, making it very convenient.

摘要

目的

目前,连续血压(BP)测量大多基于多传感器组合和有限 BP 范围的数据集。此外,大多数与 BP 相关的特征都来自光体积描记图(PPG)信号。但没有考虑 PPG 信号形成的机制。我们旨在设计一种使用单个 PPG 传感器无创且连续估计 BP 的方法,该方法考虑了 PPG 信号形成的机制。

方法

我们从三个公共数据库中准备了包含 294 名患者的 PPG 信号数据集,用于构建 BP 估计模型。模型中使用的特征包括两种类型:基于多高斯模型的新型特征和现有特征。多高斯模型拟合 PPG 信号的不同分量(即主波、重搏波和潮汐波)。应用集成机器学习算法来估计收缩压(SBP)和舒张压(DBP)。在数据集分区时,训练集和测试集之间存在重叠。

主要结果

使用具有广泛 SBP 和 DBP 值范围的数据集(SBP 范围为 74 至 229 mmHg,DBP 范围为 26 至 141 mmHg)来评估我们的方法。SBP 和 DBP 估计的误差均值和标准差分别为-0.21 ± 5.21 mmHg 和-0.19 ± 3.37 mmHg。模型性能完全符合医疗器械协会标准,在英国高血压学会标准中为“A”级。

意义

多高斯模型可用于估计 BP,我们的方法能够准确跟踪广泛的 BP。此外,我们的方法基于单个 PPG 传感器,非常方便。

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