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 50 条
  • [31] 3D reconstruction and nonlinear finite element analysis of the embryonic left ventricle
    Faas, Daniela
    Buffinton, Christine Miller
    Sedmera, David
    PROCEEDING OF THE ASME SUMMER BIOENGINEERING CONFERENCE - 2007, 2007, : 253 - 254
  • [32] Vertical coherence applied to spect imagery in the 3D reconstruction of the left ventricle
    Garcia-Panyella, O
    Susin, A
    COMPUTERS IN CARDIOLOGY 2003, VOL 30, 2003, 30 : 753 - 756
  • [33] Analysis of wall thickness of human left ventricle based on 3D reconstruction
    Wang, Yeming
    Liu, Jihong
    He, Runnan
    BASIC & CLINICAL PHARMACOLOGY & TOXICOLOGY, 2019, 125 : 12 - 12
  • [34] Anatomically accurate three dimensional (3D) reconstruction of the left ventricle (LV)
    Legget, M
    Sheehan, F
    McDonald, J
    Jin, H
    Leotta, D
    Bolson, E
    Bashein, G
    Li, XN
    Otto, C
    Martin, R
    CIRCULATION, 1996, 94 (08) : 1229 - 1229
  • [35] 3D Face Reconstruction Based on Convolutional Neural Network
    Li Fangmin
    Chen Ke
    Liu Xinhua
    2017 10TH INTERNATIONAL CONFERENCE ON INTELLIGENT COMPUTATION TECHNOLOGY AND AUTOMATION (ICICTA 2017), 2017, : 71 - 74
  • [36] 3D traveltime calculation of first arrival wave using physics-informed neural network
    Du G.
    Tan J.
    Song P.
    Xie C.
    Wang S.
    Shiyou Diqiu Wuli Kantan/Oil Geophysical Prospecting, 2023, 58 (01): : 9 - 20
  • [37] Double-chambered left ventricle diagnosis by 2D and 3D echocardiography: From fetus to birth
    Xue, Chao
    Zhao, Ying
    Zhang, Ye
    Gu, Xiaoyan
    Han, Jiancheng
    Henein, Michael
    He, Yihua
    ECHOCARDIOGRAPHY-A JOURNAL OF CARDIOVASCULAR ULTRASOUND AND ALLIED TECHNIQUES, 2019, 36 (01): : 196 - 198
  • [38] A Physics-Informed Neural Network Framework for PDEs on 3D Surfaces: Time Independent Problems
    Fang, Zhiwei
    Zhan, Justin
    IEEE ACCESS, 2020, 8 : 26328 - 26335
  • [39] Influence of left ventricle longitudinal axis translation on rotation measurements in 3D echocardiography
    Cansiz, Baris
    Sveric, Krunoslav
    Fassl, Jens
    Linke, Axel
    Kaliske, Michael
    COMPUTER METHODS IN BIOMECHANICS AND BIOMEDICAL ENGINEERING-IMAGING AND VISUALIZATION, 2024, 12 (01):
  • [40] Physics-Informed Neural Networks for Modal Wave Field Predictions in 3D Room Acoustics
    Schoder, Stefan
    APPLIED SCIENCES-BASEL, 2025, 15 (02):