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Continuous Blood Pressure Prediction Using Pulse Features and Elman Neural Networks

机译:使用脉冲特征和ELMAN神经网络的连续血压预测

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The present study designs an algorithm to improve the accuracy of continuous blood pressure (BP) prediction. Pulse wave transmission time has been widely used for continuous BP prediction. However, because of the limitation of the linear model and the complexity of signal acquisition traditional method is often troubled with low BP prediction accuracy. In this paper, Elman neural networks (Elmans) are used to construct the continuous blood pressure measurement model. Continuous measurement of blood pressure is achieved by a single channel pulse signal (PPG). Based on the time-related features of Elman, we apply a method using the feature input matrix by the pulse wave feature points at time t-1 and time t. We select the SBP and DBP at time t as the output matrix of the model; finally establish the Elman continuous blood pressure measurement model. Twenty physiological data segments of two hours selected from the MIMIC II database are used to evaluate the performance. Compared with straightforward use of the PWTT-based linear regression model and the back propagation neural network model, the proposed model achieves higher measurement accuracy.
机译:本研究设计了一种提高连续血压(BP)预测精度的算法。脉冲波传输时间已广泛用于连续BP预测。然而,由于线性模型的限制和信号采集的复杂性传统方法通常以低BP预测精度陷入困境。在本文中,Elman神经网络(ELMANS)用于构建连续血压测量模型。通过单声道脉冲信号(PPG)实现血压的连续测量。基于ELMAN的时间相关特征,我们在时间t-1和时间t的脉冲波特征点使用特征输入矩阵应用方法。我们在时间t选择SBP和DBP作为模型的输出矩阵;最后建立了埃尔曼连续血压测量模型。从模拟II数据库中选择的20小时的20小时生理数据段用于评估性能。与基于PWTT的线性回归模型和后传播神经网络模型的直接使用相比,所提出的模型达到更高的测量精度。

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