基于前馈神经网络的连续无袖带血压测量

Q3 Computer Science Radioelectronic and Computer Systems Pub Date : 2023-05-25 DOI:10.32620/reks.2023.2.04
O. Viunytskyi, V. Lukin, A. Totsky, V. Shulgin, Nadejda Kozhemiakina
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引用次数: 0

摘要

高血压(BP)或高血压是一种极其常见和危险的疾病,影响着世界18-27%以上的人口。它导致许多心血管疾病,每年导致全世界760万人死亡。检测高血压最准确的方法是持续24小时甚至更长时间的动态血压监测。传统的无创血压测量方法有示波法和听诊法,它们使用咬合套作为外部压力源。不幸的是,带袖带的血压测量给患者带来了一些不便,并且可能由于不正确的袖带放置而不准确。针对袖带法引起的问题,有必要开发无袖带血压测量方法,该方法基于血压与心脏活动和血流动力学的各种表现的关系,可以无创地记录和测量,而无需使用压缩袖带,并且技术手段简单。在过去的十年里,已经有许多出版物致力于基于脉搏波速度(PWV)或脉搏波传输时间(PTT)来估计血压。然而,这种方法几乎没有缺点。首先,仅使用PTT参数测量血压仅对给定患者有效。其次,BP和PTT之间关系的线性模型仅在BP变化的小范围内有效。为了解决这个问题,使用了神经网络或线性回归模型。这种方法的主要问题是血压测量的准确性。本研究建立了一个前馈神经网络(FFNN),用于基于从心电图(ECG)和光体积描记术(PPG)信号中提取的特征来确定收缩压和舒张压,而无需袖带和校准程序。这项工作的新颖之处在于发现了PPG信号的五个新关键点,以及计算了ECG和PPG信号中的九个新特征,提高了血压测量的准确性。研究对象是从患者手上记录的心电图和PPG信号。该研究的目标是基于FFNN获得收缩压和舒张压,其输入参数是ECG和PPG信号的参数。详细描述了基于PPG信号中的特征点的确定、ECG信号中的R峰的位置以及根据这些信号的时间参数和幅度比的关系计算的参数来估计信号参数的算法。确定了这些参数和BP的Pearson相关系数,这有助于选择对BP估计有价值的信号参数集。结果表明,收缩压和舒张压的平均绝对误差±标准差分别为1.72±3.008mmHg和1.101±1.9mmHg;估计BP和真实BP的相关系数等于0.94。结论。该模型符合AAMI标准和BHS标准中的“A”级,证明了所提出的方法对BP评估的高精度。与其他已知方法进行了比较,证实了所提出方法的优点。
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Continuous cuffless blood pressure measurement using feed-forward neural network
High blood pressure (BP) or hypertension is an extremely common and dangerous condition affecting more than 18–27 % of the world population. It causes many cardiovascular diseases that kill 7.6 million people around the world per year. The most accurate way to detect hypertension is ambulatory monitoring of blood pressure lasting up to 24 h and even more. Traditional non-invasive methods for measuring BP are oscillometric and auscultatory, they use an occlusal cuff as an external pressure source. Unfortunately, cuffed BP measurement creates some inconvenience for the patient and can be inaccurate due to incorrect cuff placement. In connection with the problems caused by cuff methods, it has become necessary to develop cuffless methods for measuring blood pressure, which are based on the relationship of blood pressure with various manifestations of cardiac activity and hemodynamics, which can be recorded and measured non-invasively, without the use of a compression cuff and with simple technical means. Over the past decade, there have been many publications devoted to estimating blood pressure based on pulse wave velocity (PWV) or pulse wave transit time (PTT). However, this approach has few disadvantages. First, the measurement of BP using only PTT parameter is valid only for a given patient. Second, the linear model of the relationship between BP and PTT is valid only in a small range of BP variations. To solve this problem neural networks or linear regression models were used. The main problem with this approach is the accuracy of blood pressure measurement. This study builds one feed-forward neural network (FFNN) for determining systolic and diastolic blood pressure based on features extracted from electrocardiography (ECG) and photoplethysmography (PPG) signals without a cuff and calibration procedure. The novelty of this work is the discovery of five new key points of the PPG signal, as well as the calculation of nine new features of the ECG and PPG signals, which improve the accuracy of blood pressure measurement. The object of the study was the ECG and PPG signals recorded from the patient's hand. The target of the study was to obtain systolic and diastolic blood pressure based on an FFNN, the input arguments of which are the parameters of the ECG and PPG signals. Algorithms for estimating signal parameters based on the determination of characteristic points in the PPG signal, the position of R-peaks in the ECG signal, and parameters calculated from the relationship of time parameters and amplitude ratios of these signals are described in detail. The Pearson correlation coefficients for these parameters and BP are determined, which helps to choose the set of signal parameters valuable for BP estimation. The results obtained show that the mean absolute error ± standard deviation for systolic and diastolic BP is equal to 1.72±3.008 mmHg and 1.101±1.9 mmHg, respectively; the correlation coefficients for the estimated and true BP are equal to 0.94. Conclusions. The model corresponds to the AAMI standard and the “A” grade in the BHS standard, which proves the high accuracy of BP assessment by the proposed approach. Comparison to other known methods was performed, which confirmed the advantages of the proposed approach.
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来源期刊
Radioelectronic and Computer Systems
Radioelectronic and Computer Systems Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
3.60
自引率
0.00%
发文量
50
审稿时长
2 weeks
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