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Blood Pressure Estimation Based on Blood Flow, ECG and Respiratory Signals Using Recurrent Neural Networks

机译:基于递归神经网络的基于血流量,心电图和呼吸信号的血压估算

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The estimation of systolic and diastolic blood pressure using artificial neural network is considered in the paper. The blood pressure values are estimated using pulse arrival time, and additionally RR intervals of ECG signal together with respiration signal. A single layer recurrent neural network with hyperbolic tangent activation function was used. The average blood pressure estimation error for the data obtained from 21 subjects from MIMIC database was equal to 2.490 mmHg with standard deviation equal to 1.063 mmHg for systolic blood pressure, and was equal to 1.330 mmHg with standard deviation equal to 0.627 mmHg for diastolic blood pressure using vanilla recurrent neural networks. Similar results were obtained for long short term memory cells. The simulation shows that taking into account pulse arrival time together with RR intervals and respiration signal gave better results than pulse arrival time alone.
机译:本文考虑了使用人工神经网络估算收缩压和舒张压。使用脉搏到达时间,ECG信号的RR间隔以及呼吸信号来估计血压值。使用具有双曲正切激活函数的单层递归神经网络。从MIMIC数据库的21位受试者获得的数据的平均血压估计误差为2.490 mmHg,收缩压的标准偏差等于1.063 mmHg,而与舒张压的标准差的标准偏差等于0.630 mmHg的1.330 mmHg使用香草递归神经网络。对于长期短期存储单元,获得了相似的结果。仿真表明,将脉冲到达时间与RR间隔和呼吸信号一起考虑在内,比单独的脉冲到达时间得到更好的结果。

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