Super-resolution Left Ventricular Flow and Pressure Mapping by Navier-Stokes-Informed Neural Networks
Super-resolution Left Ventricular Flow and Pressure Mapping by Navier-Stokes-Informed Neural Networks
Abstract Intraventricular vector flow mapping (VFM) is a growingly adopted echocardiographic modality that derives time-resolved two-dimensional flow maps in the left ventricle (LV) from color-Doppler sequences. Current VFM models rely on kinematic constraints arising from planar flow incompressibility. However, these models are not informed by crucial information about flow physics; most notably the pressure and shear forces within the fluid and the resulting accelerations. This limitation has rendered VFM unable to combine information from different time frames in an acquisition sequence or derive fluctuating pressure maps. In this study, we leveraged recent advances in artificial intelligence (AI) to develop AI-VFM, a vector flow mapping modality that uses physics-informed neural networks (PINNs) encoding mass conservation and momentum balance inside the LV, and no-slip boundary conditions at the LV endocardium. AI-VFM recovers the flow and pressure fields in the LV from standard echocardiographic scans. It performs phase unwrapping and recovers flow data in areas without input color-Doppler data. AI-VFM also recovers complete flow maps at time points without color-Doppler input data, producing super-resolution flow maps. We show that informing the PINNs with momentum balance is essential to achieving temporal super-resolution and significantly increases the accuracy of AI-VFM compared to informing the PINNs only with mass conservation. AI-VFM is solely informed by each patient’s flow physics; it does not utilize explicit smoothness constraints or incorporate data from other patients or flow models. AI-VFM takes 15 minutes to run in off-the-shelf graphics processing units and its underlying PINN framework could be extended to map other flow-associated metrics like blood residence time or the concentration of coagulation species.
Maidu Bahetihazi、Martinez-Legazpi Pablo、Bermejo Javier、del Alamo Juan C.、Nguyen Cathleen M.、Kahn Andrew M.、Guerrero-Hurtado Manuel、Gonzalo Alejandro、Flores Oscar
Dept. of Mechanical Engineering, University of WashingtonDept. of Mathematical Physics and Fluids. Universidad Nacional de Educaci¨?n a Distancia & CIBERCVDept. of Cardiology, Hospital General Universitario Gregorio Mara?on & CIBERCVDept. of Mechanical Engineering, University of Washington||Center for Cardiovascular Biology, University of Washington School of Medicine||Division of Cardiology, University of Washington School of MedicineDept. of Mechanical Engineering, University of WashingtonDivision of Cardiovascular Medicine., University of California San DiegoDept. of Aerospace Engineering and Bioengineering, Universidad Carlos III De MadridDept. of Mechanical Engineering, University of WashingtonDept. of Aerospace Engineering and Bioengineering, Universidad Carlos III De Madrid
医学研究方法基础医学生物科学研究方法、生物科学研究技术
Maidu Bahetihazi,Martinez-Legazpi Pablo,Bermejo Javier,del Alamo Juan C.,Nguyen Cathleen M.,Kahn Andrew M.,Guerrero-Hurtado Manuel,Gonzalo Alejandro,Flores Oscar.Super-resolution Left Ventricular Flow and Pressure Mapping by Navier-Stokes-Informed Neural Networks[EB/OL].(2025-03-28)[2025-05-16].https://www.biorxiv.org/content/10.1101/2024.04.12.589319.点此复制
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