3D velocity and pressure field reconstruction in the cardiac left ventricle via physics informed neural network from echocardiography guided by 3D color Doppler

被引:0
作者
Wong, Hong Shen [1 ]
Chan, Wei Xuan [1 ]
Mao, Wenbin [2 ]
Yap, Choon Hwai [1 ]
机构
[1] Imperial Coll London, Dept Bioengn, Exhibit Rd, London SW7 2AZ, England
[2] Univ South Florida USF, Dept Mech Engn, Tampa, FL 33620 USA
关键词
Physics informed neural network; Left ventricle fluid mechanics; Cardiac color Doppler imaging; OPTIMAL VORTEX FORMATION; DEEP LEARNING FRAMEWORK; FLUID-MECHANICS; FLOW;
D O I
10.1016/j.cmpb.2025.108671
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Fluid dynamics of the heart chamber can provide critical biological cues for understanding cardiac health and disease and have the potential for supporting diagnosis and prognosis. However, directly acquiring fluid dynamics information from clinical imaging remains challenging, as they are often noisy and have limited resolution, preventing accurate detailed fluid dynamics analysis. Image-based flow simulations offer high detail but are typically difficult to align with clinical velocity measurements, and as a result, may not accurately depict true fluid dynamics. Inverse-computing velocity fields from images via intra-ventricular flow mapping (VFM) has been reported, but it can become inaccurate when faced with missing or noisy measurement data, which is common with modalities such as ultrasound. Here, we propose a physics-informed neural network (PINN) framework that can accurately reconstruct detailed 3D flow fields of the cardiac left ventricle within a localized time window, using supervision from color Doppler measurements, despite their low resolution and signal-tonoise ratio. This framework couples PINN solvers at consecutive time frames with discrete temporal numerical differentiation and is thus named the "Coupled Sequential Frame PINN" or CSF-PINN. We used image-based flow simulations of fetal and adult hearts to generate synthetic color Doppler velocity data at different spatial and temporal resolution for testing the framework. Results show that CSF-PINN can accurately predict high levels of fluid dynamics details, including flow patterns, intraventricular pressure gradients, vorticity structures, and energy losses. CSF-PINN outperforms vanilla PINN in both accuracy and computational efficiency, however, its accuracy is more limited for velocity-gradient-dependent parameters, such as vorticity and wall shear stress (WSS) magnitude. CSF-PINN's accuracy is maintained even when color Doppler velocity data are spatially and temporally sparse and noisy, and when complex motions of the mitral valve are modelled. These are scenarios in which previous methodologies, including image-based flow simulations and VFM, have struggled. Additionally, we propose a scheme for advancing fluid dynamics predictions to subsequent time windows by using training from the previous time window to initialize networks for the subsequent window, further minimizing errors.
引用
收藏
页数:16
相关论文
共 46 条
  • [31] DOPPLER COLOR FLOW IMAGING
    MERRITT, CRB
    [J]. JOURNAL OF CLINICAL ULTRASOUND, 1987, 15 (09) : 591 - &
  • [32] Unsupervised dealiasing and denoising of color-Doppler data
    Muth, Stephan
    Dort, Sarah
    Sebag, Igal A.
    Blais, Marie-Josee
    Garcia, Damien
    [J]. MEDICAL IMAGE ANALYSIS, 2011, 15 (04) : 577 - 588
  • [33] Efficient training of physics-informed neural networks via importance sampling
    Nabian, Mohammad Amin
    Gladstone, Rini Jasmine
    Meidani, Hadi
    [J]. COMPUTER-AIDED CIVIL AND INFRASTRUCTURE ENGINEERING, 2021, 36 (08) : 962 - 977
  • [34] Evaluation of the skin-to-heart distance in the standing adult by two-dimensional echocardiography
    Rahko, Peter S.
    [J]. JOURNAL OF THE AMERICAN SOCIETY OF ECHOCARDIOGRAPHY, 2008, 21 (06) : 761 - 764
  • [35] Physics-informed neural networks: A deep learning framework for solving forward and inverse problems involving nonlinear partial differential equations
    Raissi, M.
    Perdikaris, P.
    Karniadakis, G. E.
    [J]. JOURNAL OF COMPUTATIONAL PHYSICS, 2019, 378 : 686 - 707
  • [36] Hidden fluid mechanics: Learning velocity and pressure fields from flow visualizations
    Raissi, Maziar
    Yazdani, Alireza
    Karniadakis, George Em
    [J]. SCIENCE, 2020, 367 (6481) : 1026 - +
  • [37] A comprehensive review on CFD simulations of left ventricle hemodynamics: numerical methods, experimental validation techniques, and emerging trends
    Soni, Priyanshu
    Kumar, Sumit
    Kumar, B. V. Rathish
    Rai, Sanjay Kumar
    Verma, Ashish
    Shankar, Om
    [J]. JOURNAL OF THE BRAZILIAN SOCIETY OF MECHANICAL SCIENCES AND ENGINEERING, 2024, 46 (05)
  • [38] Flow dynamics and energy efficiency of flow in the left ventricle during myocardial infarction
    Vasudevan, Vivek
    Low, Adriel Jia Jun
    Annamalai, Sarayu Parimal
    Sampath, Smita
    Poh, Kian Keong
    Totman, Teresa
    Mazlan, Muhammad
    Croft, Grace
    Richards, A. Mark
    de Kleijn, Dominique P. V.
    Chin, Chih-Liang
    Yap, Choon Hwai
    [J]. BIOMECHANICS AND MODELING IN MECHANOBIOLOGY, 2017, 16 (05) : 1503 - 1517
  • [39] Full-volume three-component intraventricular vector flow mapping by triplane color Doppler
    Vixege, Florian
    Berod, Alain
    Courand, Pierre-Yves
    Mendez, Simon
    Nicoud, Franck
    Blanc-Benon, Philippe
    Vray, Didier
    Garcia, Damien
    [J]. PHYSICS IN MEDICINE AND BIOLOGY, 2022, 67 (09)
  • [40] Physics-constrained intraventricular vector flow mapping by color Doppler
    Vixege, Florian
    Berod, Alain
    Sun, Yunyun
    Mendez, Simon
    Bernard, Olivier
    Ducros, Nicolas
    Courand, Pierre-Yves
    Nicoud, Franck
    Garcia, Damien
    [J]. PHYSICS IN MEDICINE AND BIOLOGY, 2021, 66 (24)