Using machine learning models for cuffless blood pressure estimation with ballistocardiogram and impedance plethysmogram.

IF 3.2 Q1 HEALTH CARE SCIENCES & SERVICES Frontiers in digital health Pub Date : 2025-02-21 eCollection Date: 2025-01-01 DOI:10.3389/fdgth.2025.1511667
Shing-Hong Liu, Yao Sun, Bo-Yan Wu, Wenxi Chen, Xin Zhu
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Abstract

Introduction: Blood pressure (BP) serves as a crucial parameter in the management of three prevalent chronic diseases, hypertension, cardiovascular diseases, and cerebrovascular diseases. However, the conventional sphygmomanometer, utilizing a cuff, is unsuitable for the approach of mobile health (mHealth).

Methods: Cuffless blood pressure measurement, which eliminates the need for a cuff, is considered a promising avenue. This method is based on the relationship between pulse arrival time (PAT) parameters and BP. In this study, pulse transit time (PTT) was derived from ballistocardiograms (BCG) and impedance plethysmograms (IPG) obtained from a weight-fat scale. This study aims to address two challenges using deep learning and machine learning technologies: first, identifying BCG and IPG signals with good quality, and then extracting PTT parameters from them to estimate BP. A stacked model comprising a one-dimensional convolutional neural network (1D CNN) and gated recurrent unit (GRU) was proposed to classify the quality of BCG and IPG signals. Seven parameters, including calibration-based and calibration-free PTT parameters and heart rate (HR), were examined to estimate BP using random forest (RF) and XGBoost models. Seventeen healthy subjects participated in the study, with their BP elevated through exercise. A digital sphygmomanometer was employed to measure BP as reference values. Our methodology was validated using data collected from our custom-made device.

Results: The results demonstrated a signal quality classification accuracy of 0.989. Furthermore, in the five-fold cross-validation, Pearson correlation coefficients of 0.953 ± 0.007 and 0.935 ± 0.007 were achieved for systolic BP (SBP) and diastolic BP (DBP) estimations, respectively. The mean absolute differences (MADs) of XGBoost model were calculated as 3.54 ± 0.34 and 2.57 ± 0.17 mmHg for SBP and DBP, respectively.

Discussion: The proposed method significantly improved the accuracy of cuffless BP measurement, indicating its potential integration into weight-fat scales as an unconstrained device for effective utilization in mHealth applications.

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使用机器学习模型进行无袖扣血压与心电图和阻抗容积图的估计。
简介:血压(BP)在高血压、心脑血管疾病和脑血管疾病这三种常见慢性病的治疗中起着至关重要的作用。然而,使用袖带的传统血压计不适合移动医疗(mHealth)方法。方法:无袖带血压测量,消除了对袖带的需要,被认为是一个有前途的途径。该方法基于脉冲到达时间(PAT)参数与BP之间的关系。在这项研究中,脉冲传递时间(PTT)来源于弹道心动图(BCG)和阻抗体积描记图(IPG),这些描记图来自体重-脂肪秤。本研究旨在利用深度学习和机器学习技术解决两个挑战:首先,识别出质量良好的BCG和IPG信号,然后从中提取PTT参数来估计BP。提出了一种由一维卷积神经网络(1D CNN)和门控循环单元(GRU)组成的叠加模型,用于对BCG和IPG信号的质量进行分类。使用随机森林(RF)和XGBoost模型对7个参数(包括基于校准和无校准的PTT参数和心率(HR))进行检测,以估计BP。17名健康受试者参加了这项研究,他们的血压通过锻炼而升高。采用数字血压计测量血压作为参考值。我们的方法通过使用从定制设备收集的数据进行验证。结果:信号质量分类准确率为0.989。此外,在五重交叉验证中,收缩压(SBP)和舒张压(DBP)的Pearson相关系数分别为0.953±0.007和0.935±0.007。XGBoost模型收缩压和舒张压的平均绝对差值(MADs)分别为3.54±0.34和2.57±0.17 mmHg。讨论:所提出的方法显著提高了无袖扣血压测量的准确性,表明其有潜力集成到体重-脂肪秤中,作为一种不受约束的设备,可在移动健康应用中有效利用。
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来源期刊
CiteScore
4.20
自引率
0.00%
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0
审稿时长
13 weeks
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