Literature DB >> 33007592

Super-resolution and denoising of 4D-Flow MRI using physics-Informed deep neural nets.

Mojtaba F Fathi1, Isaac Perez-Raya1, Ahmadreza Baghaie2, Philipp Berg3, Gabor Janiga3, Amirhossein Arzani4, Roshan M D'Souza5.   

Abstract

BACKGROUND AND
OBJECTIVE: Time resolved three-dimensional phase contrast magnetic resonance imaging (4D-Flow MRI) has been used to non-invasively measure blood velocities in the human vascular system. However, issues such as low spatio-temporal resolution, acquisition noise, velocity aliasing, and phase-offset artifacts have hampered its clinical application. In this research, we developed a purely data-driven method for super-resolution and denoising of 4D-Flow MRI.
METHODS: The flow velocities, pressure, and the MRI image magnitude are modeled as a patient-specific deep neural net (DNN). For training, 4D-Flow MRI images in the complex Cartesian space are used to impose data-fidelity. Physics of fluid flow is imposed through regularization. Creative loss function terms have been introduced to handle noise and super-resolution. The trained patient-specific DNN can be sampled to generate noise-free high-resolution flow images. The proposed method has been implemented using the TensorFlow DNN library and tested on numerical phantoms and validated in-vitro using high-resolution particle image velocitmetry (PIV) and 4D-Flow MRI experiments on transparent models subjected to pulsatile flow conditions.
RESULTS: In case of numerical phantoms, we were able to increase spatial resolution by a factor of 100 and temporal resolution by a factor of 5 compared to the simulated 4D-Flow MRI. There is an order of magnitude reduction of velocity normalized root mean square error (vNRMSE). In case of the in-vitro validation tests with PIV as reference, there is similar improvement in spatio-temporal resolution. Although the vNRMSE is reduced by 50%, the method is unable to negate a systematic bias with respect to the reference PIV that is introduced by the 4D-Flow MRI measurement.
CONCLUSIONS: This work has demonstrated the feasibility of using the readily available machinery of deep learning to enhance 4D-Flow MRI using a purely data-driven method. Unlike current state-of-the-art methods, the proposed method is agnostic to geometry and boundary conditions and therefore eliminates the need for tedious tasks such as accurate image segmentation for geometry, image registration, and estimation of boundary flow conditions. Arbitrary regions of interest can be selected for processing. This work will lead to user-friendly analysis tools that will enable quantitative hemodynamic analysis of vascular diseases in a clinical setting.
Copyright © 2020. Published by Elsevier B.V.

Entities:  

Keywords:  4D-Flow MRI; Data assimilation; Denoising; PI-DNN; Super-resolution; Validation

Mesh:

Year:  2020        PMID: 33007592     DOI: 10.1016/j.cmpb.2020.105729

Source DB:  PubMed          Journal:  Comput Methods Programs Biomed        ISSN: 0169-2607            Impact factor:   5.428


  7 in total

1.  Enhanced 4D Flow MRI-Based CFD with Adaptive Mesh Refinement for Flow Dynamics Assessment in Coarctation of the Aorta.

Authors:  Labib Shahid; James Rice; Haben Berhane; Cynthia Rigsby; Joshua Robinson; Lindsay Griffin; Michael Markl; Alejandro Roldán-Alzate
Journal:  Ann Biomed Eng       Date:  2022-05-27       Impact factor: 3.934

2.  Physics-Informed Neural Networks for Brain Hemodynamic Predictions Using Medical Imaging.

Authors:  Mohammad Sarabian; Hessam Babaee; Kaveh Laksari
Journal:  IEEE Trans Med Imaging       Date:  2022-08-31       Impact factor: 11.037

3.  A multi-modality approach for enhancing 4D flow magnetic resonance imaging via sparse representation.

Authors:  Jiacheng Zhang; Melissa C Brindise; Sean M Rothenberger; Michael Markl; Vitaliy L Rayz; Pavlos P Vlachos
Journal:  J R Soc Interface       Date:  2022-01-19       Impact factor: 4.293

4.  SRflow: Deep learning based super-resolution of 4D-flow MRI data.

Authors:  Suprosanna Shit; Judith Zimmermann; Ivan Ezhov; Johannes C Paetzold; Augusto F Sanches; Carolin Pirkl; Bjoern H Menze
Journal:  Front Artif Intell       Date:  2022-08-12

5.  Investigating molecular transport in the human brain from MRI with physics-informed neural networks.

Authors:  Bastian Zapf; Johannes Haubner; Miroslav Kuchta; Geir Ringstad; Per Kristian Eide; Kent-Andre Mardal
Journal:  Sci Rep       Date:  2022-09-14       Impact factor: 4.996

Review 6.  Inverse problems in blood flow modeling: A review.

Authors:  David Nolte; Cristóbal Bertoglio
Journal:  Int J Numer Method Biomed Eng       Date:  2022-05-24       Impact factor: 2.648

Review 7.  Data-driven cardiovascular flow modelling: examples and opportunities.

Authors:  Amirhossein Arzani; Scott T M Dawson
Journal:  J R Soc Interface       Date:  2021-02-10       Impact factor: 4.118

  7 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.