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一种使用两个光电容积脉搏波和基于卷积神经网络的无创血压监测临床设置。

A clinical set-up for noninvasive blood pressure monitoring using two photoplethysmograms and based on convolutional neural networks.

机构信息

Department of Electrical Engineering, Islamic Azad University, Boukan Branch, Boukan, Iran.

Shariati Hospital, Tehran University of Medical Science, Tehran, Iran.

出版信息

Biomed Tech (Berl). 2021 Apr 8;66(4):375-385. doi: 10.1515/bmt-2020-0197. Print 2021 Aug 26.

DOI:10.1515/bmt-2020-0197
PMID:33826809
Abstract

Blood pressure is a reliable indicator of many cardiac arrhythmias and rheological problems. This study proposes a clinical set-up using conventional monitoring systems to estimate systolic and diastolic blood pressures continuously based on two photoplethysmogram signals (PPG) taken from the earlobe and toe. Several amendments were applied to conventional clinical monitoring devices to construct our project plan. We used two monitors to acquire two PPGs, one ECG, and invasive blood pressure as the reference to evaluate the estimation accuracy. One of the most critical requirements was the synchronization of the acquired signals that was accomplished by using ECG as the time reference. Following data acquisition and preparation procedures, the performance of each PPG signal alone and together was investigated using deep convolutional neural networks. The proposed architecture was evaluated on 32 records acquired from 14 patients after cardiovascular surgery. The results showed a better performance for toe PPG in comparison with earlobe PPG. Moreover, they indicated the algorithm accuracy improves if both signals are applied together to the network. According to the British Hypertension Society standards, the results achieved grade A for both blood pressure measurements. The mean and standard deviation of estimation errors were +0.3 ± 4.9 and +0.1 ± 3.2 mmHg for systolic and diastolic BPs, respectively. Since the method is based on conventional monitoring equipment and provides a high estimation consistency, it can be considered as a possible alternative for inconvenient invasive BP monitoring in clinical environments.

摘要

血压是许多心律失常和流变学问题的可靠指标。本研究提出了一种临床设置,使用常规监测系统基于耳垂和脚趾采集的两个光体积描记图(PPG)信号连续估计收缩压和舒张压。对常规临床监测设备进行了几项修改,以构建我们的项目计划。我们使用两个监视器采集两个 PPG、一个心电图和有创血压作为参考,以评估估计的准确性。最重要的要求之一是采集信号的同步,这是通过使用心电图作为时间参考来完成的。在进行数据采集和准备程序后,使用深度卷积神经网络研究了每个 PPG 信号单独和一起的性能。所提出的架构在 14 名心血管手术后患者采集的 32 个记录上进行了评估。结果表明,与耳垂 PPG 相比,脚趾 PPG 的性能更好。此外,如果将两个信号一起应用于网络,算法精度会提高。根据英国高血压学会的标准,两种血压测量的结果均达到 A 级。收缩压和舒张压的估计误差的平均值和标准差分别为+0.3±4.9 和+0.1±3.2mmHg。由于该方法基于常规监测设备并提供了较高的估计一致性,因此可以考虑在临床环境中作为不方便的有创血压监测的替代方法。

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