结合物理信息 PointNet 和二次残差网络,对血管内动脉瘤修补术后的腹主动脉瘤进行四维血流动力学预测

IF 4.1 2区 工程技术 Q1 MECHANICS Physics of Fluids Pub Date : 2024-08-07 DOI:10.1063/5.0220173
Jiaheng Kang, Gaoyang Li, Yue Che, Xiran Cao, Mingyu Wan, Jing Zhu, Mingyao Luo, Xuelan Zhang
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引用次数: 0

摘要

血液动力学参数可以监测腹主动脉瘤在进行血管内动脉瘤修补术(EVAR)后的并发症风险。然而,通过计算流体动力学(CFD)获取血液动力学参数存在操作复杂、计算成本高等缺点。最近提出的物理信息神经网络利用流体动力学的基本物理守恒原理,为解决这些问题提供了新的解决方案。基于心血管点数据集,我们进一步提出了一种结合物理信息点网络和二次残差网络(PIPN-QN)的集成算法,该算法能够将稀疏点云映射到四维血液动力学参数。实施的工作流程包括通过 CFD 模拟生成点云数据集,并通过深度学习在空间和时间维度上动态再现三维流场。与物理信息点网(PIPN)相比,PIPN-QN 可将压力和壁剪应力的均方误差分别降低约 32.1% 和 33.1%,并能在 2 秒内预测血液动力学参数(比 CFD 快 14 400 倍)。为了应对大数据需求的挑战,我们使用较少的监督点来量化通用流场,而不是使用 CFD 模拟生成的大量点云。PIPN-QN 能以更高的准确度、更快的速度和更低的训练成本满足腹主动脉瘤患者在 EVAR 术后获得的实时血流动力学参数。
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Four-dimensional hemodynamic prediction of abdominal aortic aneurysms following endovascular aneurysm repair combining physics-informed PointNet and quadratic residual networks
Hemodynamic parameters can provide surveillance for the risk of complication of abdominal aortic aneurysms following endovascular aneurysm repair (EVAR). However, obtaining hemodynamic parameters through computational fluid dynamics (CFD) has disadvantages of complex operation and high computational costs. Recently proposed physics-informed neural networks offer novel solutions to solve these issues by leveraging fundamental physical conservation principles of fluid dynamics. Based on cardiovascular point datasets, we further propose an integration algorithm combining physics-informed PointNet and quadratic residual networks (PIPN-QN) that is capable of mapping sparse point clouds to four-dimensional hemodynamic parameters. The implemented workflow includes generating point cloud datasets through CFD simulation and dynamically reproducing the three-dimensional flow field in the spatial and temporal dimensions through deep learning. Compared with physics-informed PointNet (PIPN), the PIPN-QN reduces the mean square error of pressure and wall shear stress by around 32.1% and 33.1% and anticipates hemodynamic parameters in less than 2 s (14 400 times faster than CFD). To address the challenge of big data requirements, we quantify the universal flow field using a reduced number of supervision points, as opposed to the large number of point clouds generated from the CFD simulation. The PIPN-QN can meet the real-time hemodynamic parameters obtained from patients with abdominal aortic aneurysms following EVAR with higher accuracy, faster speed, and lower training costs.
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来源期刊
Physics of Fluids
Physics of Fluids 物理-力学
CiteScore
6.50
自引率
41.30%
发文量
2063
审稿时长
2.6 months
期刊介绍: Physics of Fluids (PoF) is a preeminent journal devoted to publishing original theoretical, computational, and experimental contributions to the understanding of the dynamics of gases, liquids, and complex or multiphase fluids. Topics published in PoF are diverse and reflect the most important subjects in fluid dynamics, including, but not limited to: -Acoustics -Aerospace and aeronautical flow -Astrophysical flow -Biofluid mechanics -Cavitation and cavitating flows -Combustion flows -Complex fluids -Compressible flow -Computational fluid dynamics -Contact lines -Continuum mechanics -Convection -Cryogenic flow -Droplets -Electrical and magnetic effects in fluid flow -Foam, bubble, and film mechanics -Flow control -Flow instability and transition -Flow orientation and anisotropy -Flows with other transport phenomena -Flows with complex boundary conditions -Flow visualization -Fluid mechanics -Fluid physical properties -Fluid–structure interactions -Free surface flows -Geophysical flow -Interfacial flow -Knudsen flow -Laminar flow -Liquid crystals -Mathematics of fluids -Micro- and nanofluid mechanics -Mixing -Molecular theory -Nanofluidics -Particulate, multiphase, and granular flow -Processing flows -Relativistic fluid mechanics -Rotating flows -Shock wave phenomena -Soft matter -Stratified flows -Supercritical fluids -Superfluidity -Thermodynamics of flow systems -Transonic flow -Turbulent flow -Viscous and non-Newtonian flow -Viscoelasticity -Vortex dynamics -Waves
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