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使用线性和非线性优化特征选择的无袖带血压测量

Cuffless Blood Pressure Measurement Using Linear and Nonlinear Optimized Feature Selection.

作者信息

Khan Mamun Mohammad Mahbubur Rahman, Alouani Ali T

机构信息

Department of Electrical and Computer Engineering, Tennessee Technological University, Cookeville, TN 38501, USA.

出版信息

Diagnostics (Basel). 2022 Feb 5;12(2):408. doi: 10.3390/diagnostics12020408.

DOI:10.3390/diagnostics12020408
PMID:35204499
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8870879/
Abstract

The cuffless blood pressure (BP) measurement allows for frequent measurement without discomfort to the patient compared to the cuff inflation measurement. With the availability of a large dataset containing physiological waveforms, now it is possible to use them through different learning algorithms to produce a relationship with changes in BP. In this paper, a novel cuffless noninvasive blood pressure measurement technique has been proposed using optimized features from electrocardiogram and photoplethysmography based on multivariate symmetric uncertainty (MSU). The technique is an improvement over other contemporary methods due to the inclusion of feature optimization depending on both linear and nonlinear relationships with the change of blood pressure. MSU has been used as a selection criterion with algorithms such as the fast correlation and ReliefF algorithms followed by the penalty-based regression technique to make sure the features have maximum relevance as well as minimum redundancy. The result from the technique was compared with the performance of similar techniques using the MIMIC-II dataset. After training and testing, the root mean square error (RMSE) comes as 5.28 mmHg for systolic BP and 5.98 mmHg for diastolic BP. In addition, in terms of mean absolute error, the result improved to 4.27 mmHg for SBP and 5.01 for DBP compared to recent cuffless BP measurement techniques which have used substantially large datasets and feature optimization. According to the British Hypertension Society Standard (BHS), our proposed technique achieved at least grade B in all cumulative criteria for cuffless BP measurement.

摘要

与袖带充气测量相比,无袖带血压测量允许对患者进行频繁测量且不会使其感到不适。随着包含生理波形的大型数据集的出现,现在可以通过不同的学习算法使用这些数据集来建立与血压变化的关系。在本文中,基于多变量对称不确定性(MSU),提出了一种利用心电图和光电容积脉搏波描记法的优化特征的新型无袖带无创血压测量技术。由于纳入了根据与血压变化的线性和非线性关系进行的特征优化,该技术是对其他当代方法的改进。MSU已被用作一种选择标准,与快速相关性和ReliefF算法等算法一起使用,随后采用基于惩罚的回归技术,以确保特征具有最大相关性以及最小冗余性。使用MIMIC-II数据集将该技术的结果与类似技术的性能进行了比较。经过训练和测试,收缩压的均方根误差(RMSE)为5.28 mmHg,舒张压为5.98 mmHg。此外,就平均绝对误差而言,与最近使用大量数据集和特征优化的无袖带血压测量技术相比,收缩压的结果提高到4.27 mmHg,舒张压为5.01。根据英国高血压学会标准(BHS),我们提出的技术在无袖带血压测量的所有累积标准中至少达到了B级。

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Assessment of Non-Invasive Blood Pressure Prediction from PPG and rPPG Signals Using Deep Learning.使用深度学习评估从 PPG 和 rPPG 信号进行无创血压预测。
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Low-frequency component of photoplethysmogram reflects the autonomic control of blood pressure.
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Biophys J. 2021 Jul 6;120(13):2657-2664. doi: 10.1016/j.bpj.2021.05.020. Epub 2021 Jun 2.
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