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Non-invasive estimation of central aortic pressure from radial artery tonometry by neural networks

机译:神经网络从from动脉眼压计无创估计中心主动脉压

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This study compares a neural network-based autoregressive exogenous (NNARX) model with a linear autoregressive exogenous (ARX) model in reconstructing central aortic pulse curve from peripheral arterial pulse. Invasive aortic and radial tonometry pressures were recorded in 20 patients in rest condition. A set of 10 patients (learning) was used to estimate the model parameters, the remaining 10 patients (test set) were used for validation. The estimated waveform of aortic pressure obtained by NNARX results more accurate than that estimated by linear ARX model providing a more fine reconstruction of dicrotic notch and systolic flex. Comparison of augmentation index measurement computed from NNARX and ARX reconstructed pressure signals with the reference value derived from invasive aortic waveform showed an improvement in accuracy of the NNARX measure.
机译:这项研究比较了基于神经网络的自回归外生(NNARX)模型和线性自回归外生(ARX)模型在从外周动脉脉冲中重建中心主动脉脉搏曲线的过程。记录了20名处于休息状态的患者的主动脉和radial动脉血压的创压。一组10位患者(学习)用于估计模型参数,其余10位患者(测试集)用于验证。通过NNARX获得的主动脉压力估计波形比通过线性ARX模型估计的主动脉压力波形更准确,从而可以更精确地重建重创性切口和收缩期屈曲。从NNARX和ARX重建的压力信号计算得到的增强指数测量值与从侵入性主动脉波形得出的参考值的比较显示出NNARX测量值的准确性有所提高。

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