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基于长短期记忆网络的腕部脉搏信号收缩期和舒张期的自动分段。

Automated Segmentation of the Systolic and Diastolic Phases in Wrist Pulse Signal Using Long Short-Term Memory Network.

机构信息

Institute of Intelligent Perception and Diagnosis, School of Mechanical and Power Engineering, East China University of Science and Technology, Shanghai 200237, China.

Shanghai Key Laboratory of Health Identification and Assessment, Comprehensive Laboratory of Traditional Chinese Medicine Four Diagnostic Information, Shanghai University of Traditional Chinese Medicine, Shanghai 201203, China.

出版信息

Biomed Res Int. 2022 Aug 21;2022:2766321. doi: 10.1155/2022/2766321. eCollection 2022.

DOI:10.1155/2022/2766321
PMID:36046449
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9420585/
Abstract

PURPOSE

Single-period segmentation is one of the important steps in time-domain analysis of pulse signals, which is the basis of time-domain feature extraction. The existing single-period segmentation methods have the disadvantages of generalization, reliability, and robustness.

METHOD

This paper proposed a period segmentation method of pulse signals based on long short-term memory (LSTM) network. The preprocessing was performed to remove noises and baseline drift of pulse signals. Thus, LabelMe was used to label each period of the pulse signals into two parts according to the location of the starting point of main wave and the dicrotic notch, and the dataset of the pulse signal period segmentation was established. Consequently, the labeled dataset was input into the LSTM for training and testing, and the results were compared with sum slope function method.

RESULT

The remarkable result with the whole period segmentation accuracy of 92.8% was achieved for the segmentation of seven types of pulse signals. And the segmentation accuracies of the systolic phase, diastolic phase, and whole period using this method were higher than those of the sum slope function method.

CONCLUSION

LSTM-based pulse signal segmentation method can achieve outstanding, robust, and reliable segmentation effects of the systolic phase, diastolic phase, and whole period of pulse signals. The research provides a new idea and method for the segmentation of pulse signals.

摘要

目的

单周期分段是脉搏信号时域分析的重要步骤之一,是时域特征提取的基础。现有的单周期分段方法存在泛化性、可靠性和鲁棒性差的缺点。

方法

本文提出了一种基于长短期记忆(LSTM)网络的脉搏信号周期分段方法。对脉搏信号进行预处理,去除噪声和基线漂移。然后,使用 LabelMe 根据主波和降支切迹的位置将脉搏信号的每个周期标记为两部分,建立脉搏信号周期分段数据集。将标记后的数据集输入 LSTM 进行训练和测试,并与和斜率函数法的结果进行比较。

结果

对于七种类型的脉搏信号的整体周期分段准确率达到了 92.8%。并且,该方法在收缩期、舒张期和整个周期的分段准确率均高于和斜率函数法。

结论

基于 LSTM 的脉搏信号分段方法可以实现脉搏信号的收缩期、舒张期和整个周期的出色、稳健和可靠的分段效果。该研究为脉搏信号的分段提供了新的思路和方法。

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