Physics-Informed Graph Neural Networks to solve 1-D equations of blood flow

被引:0
|
作者
Sen, Ahmet [1 ]
Ghajar-Rahimi, Elnaz [2 ]
Aguirre, Miquel [3 ,4 ]
Navarro, Laurent [1 ]
Goergen, Craig J. [2 ]
Avril, Stephane [1 ]
机构
[1] Univ Jean Monnet, INSERM, U 1059, Mines St Etienne, F-42023 Sainbiose, France
[2] Purdue Univ, Weldon Sch Biomed Engn, W Lafayette, IN 47907 USA
[3] CIMNE, Gran Capita 08034, Spain
[4] Univ Politecn Cataluna, LaCaN, Jordi Girona 1, E-08034 Barcelona, Spain
关键词
Blood flow modeling; Pulse wave propagation; Graph neural network; Machine learning; Physics-Informed Neural Networks; HEMODYNAMICS; DYNAMICS;
D O I
10.1016/j.cmpb.2024.108427
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Background and Objective: Computational models of hemodynamics can contribute to optimizing surgical plans, and improve our understanding of cardiovascular diseases. Recently, machine learning methods have become essential to reduce the computational cost of these models. In this study, we propose a method that integrates 1-D blood flow equations with Physics-Informed Graph Neural Networks (PIGNNs) to estimate the propagation of blood flow velocity and lumen area pulse waves along arteries. Methods: Our methodology involves the creation of a graph based on arterial topology, where each 1-D line represents edges and nodes in the blood flow analysis. The innovation lies in decoding the mathematical data connecting the nodes, where each node has velocity and lumen area pulse waveform outputs. The training protocol for PIGNNs involves measurement data, specifically velocity waves measured from inlet and outlet vessels and diastolic lumen area measurements from each vessel. To optimize the learning process, our approach incorporates fundamental physical principles directly into the loss function. This comprehensive training strategy not only harnesses the power of machine learning but also ensures that PIGNNs respect fundamental laws governing fluid dynamics. Results: The accuracy was validated in silico with different arterial networks, where PIGNNs achieved a coefficient of determination (R-2) consistently above 0.99, comparable to numerical methods like the discontinuous Galerkin scheme. Moreover, with in vivo data, the prediction reached R-2 values greater than 0.80, demonstrating the method's effectiveness in predicting flow and lumen dynamics using minimal data. Conclusions: This study showcased the ability to calculate lumen area and blood flow rate in blood vessels within a given topology by seamlessly integrating 1-D blood flow with PIGNNs, using only blood flow velocity measurements. Moreover, this study is the first to compare the PIGNNs method with other classic Physics-Informed Neural Network (PINNs) approaches for blood flow simulation. Our findings highlight the potential to use this cost-effective and proficient tool to estimate real-time arterial pulse waves.
引用
收藏
页数:11
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