Ipar Eugenia, Cymberknop Leandro J, Armentano Ricardo L
Universidad Tecnológica Nacional, Facultad Regional Buenos Aires, Ciudad Autónoma de Buenos Aires C1179AAQ, Argentina.
Department of Biological Engineering, Universidad de la República, Paysandú 60000, Uruguay.
Physiol Meas. 2025 Mar 31;46(3). doi: 10.1088/1361-6579/adc366.
Understanding cardiac hemodynamic status (CHS) is essential for accurate cardiovascular health assessment, as it is governed by key parameters such as cardiac output (CO), systemic vascular resistance (SVR), and arterial compliance (AC). This study aims to develop a non-invasive method using digital photoplethysmography (PPGD) signals and deep learning techniques to predict these biomarkers for a comprehensive CHS evaluation.A dataset of 4374 virtual subjects was used. Nonlinear features were extracted from PPGD signals to capture their inherent complexity and irregularity. A parallel convolutional neural network (PCNN) was implemented to process both raw signals and nonlinear features concurrently. Model performance was evaluated using, root mean squared error (RMSE), mean squared error (MSE), and mean absolute error (MAE).The PCNN demonstrated satisfactory predictive performance with, RMSE, MSE, and MAE values of 0.872, 0.086, 0.008, and 0.068 for CO; 0.851, 0.074, 0.006, and 0.058 for SVR; and 0.938, 0.049, 0.003, and 0.038 for AC. The proposed PCNN-based method offers a novel, non-invasive approach for predicting key cardiovascular biomarkers, providing an accurate CHS assessment.This method advances non-invasive cardiovascular diagnostics by combining PPGD signals and deep learning. Future work will focus on validating this findings in real-world settings for improved clinical applicability.
了解心脏血流动力学状态(CHS)对于准确评估心血管健康至关重要,因为它受诸如心输出量(CO)、全身血管阻力(SVR)和动脉顺应性(AC)等关键参数的支配。本研究旨在开发一种使用数字光电容积脉搏波描记术(PPGD)信号和深度学习技术的非侵入性方法,以预测这些生物标志物,从而进行全面的CHS评估。使用了一个包含4374个虚拟受试者的数据集。从PPGD信号中提取非线性特征,以捕捉其固有的复杂性和不规则性。实施了一个并行卷积神经网络(PCNN)来同时处理原始信号和非线性特征。使用均方根误差(RMSE)、均方误差(MSE)和平均绝对误差(MAE)评估模型性能。PCNN表现出令人满意的预测性能,对于CO,RMSE、MSE、MAE值分别为0.872、0.086、0.008和0.068;对于SVR,分别为0.851、0.074、0.006和0.058;对于AC,分别为0.938、0.049、0.003和0.038。所提出的基于PCNN的方法为预测关键心血管生物标志物提供了一种新颖的非侵入性方法,可进行准确的CHS评估。该方法通过结合PPGD信号和深度学习推进了非侵入性心血管诊断。未来的工作将集中在现实环境中验证这一发现,以提高临床适用性。