Mean Arterial Pressure Prediction Based on Fully Connected Neural Networks
10.16156/j.1004-7220.2025.05.021
- VernacularTitle:基于全连接神经网络预测平均动脉压
- Author:
Yating QI
1
;
Jincheng LIU
;
Jiaying LIU
;
Siqi WU
;
Biaosheng HUANG
;
Zhixiong HU
;
Liguo YANG
Author Information
1. 北京化工大学信息科学与技术学院,北京 100029;中国计量科学研究院,北京 100029
- Publication Type:Journal Article
- Keywords:
mean arterial pressure;
fully connected neural network;
pulse wave curve;
systolic blood pressure;
diastolic blood pressure
- From:
Journal of Medical Biomechanics
2025;40(5):1239-1247,1255
- CountryChina
- Language:Chinese
-
Abstract:
Objective To achieve non-invasive and precise prediction of mean arterial pressure(MAP)based on a fully convolutional neural network(FCNN).Methods A high-precision blood pressure data acquisition system compliant with international metrological standards was used in conjunction with the'gold standard'auscultation method to collect blood pressure and pulse waveform data from patients.True MAP values were derived via Gaussian fitting of pulse waveform data,constructing a traceable dataset.The FCNN was applied to this dataset to develop a novel MAP prediction method.Additionally,the predictive accuracy of the FCNN was compared with linear regression and conventional empirical formulas.Results The mean squared errors(MSE)for MAP prediction using the FCNN,linear regression,and empirical formulas were 19.76,21.40,and 30.97,respectively.The coefficients of determination(R2)were 0.90,0.89,and 0.84,and the prediction accuracies were 0.90,0.89,and 0.85,respectively.Conclusions By using systolic blood pressure,diastolic blood pressure,age,and arm circumference as input parameters,the FCNN-based MAP prediction method significantly reduces the bias of empirical formulas.This approach not only improves the accuracy of hemodynamic boundary condition acquisition but also contributes to refining the metrological traceability system of non-invasive blood pressure measurement.