An Optimal Control Framework for Joint-channel Parallel MRI Reconstruction without Coil Sensitivities

09/20/2021
by   Wanyu Bian, et al.
0

Goal: This work aims at developing a novel calibration-free fast parallel MRI (pMRI) reconstruction method incorporate with discrete-time optimal control framework. The reconstruction model is designed to learn a regularization that combines channels and extracts features by leveraging the information sharing among channels of multi-coil images. We propose to recover both magnitude and phase information by taking advantage of structured multiplayer convolutional networks in image and Fourier spaces. Methods: We develop a novel variational model with a learnable objective function that integrates an adaptive multi-coil image combination operator and effective image regularization in the image and Fourier spaces. We cast the reconstruction network as a structured discrete-time optimal control system, resulting in an optimal control formulation of parameter training where the parameters of the objective function play the role of control variables. We demonstrate that the Lagrangian method for solving the control problem is equivalent to back-propagation, ensuring the local convergence of the training algorithm. Results: We conduct a large number of numerical experiments of the proposed method with comparisons to several state-of-the-art pMRI reconstruction networks on real pMRI datasets. The numerical results demonstrate the promising performance of the proposed method evidently. Conclusion: The proposed method provides a general deep network design and training framework for efficient joint-channel pMRI reconstruction. Significance: By learning multi-coil image combination operator and performing regularizations in both image domain and k-space domain, the proposed method achieves a highly efficient image reconstruction network for pMRI.

READ FULL TEXT

page 7

page 9

page 10

page 11

research
03/02/2023

Optimization-Based Deep learning methods for Magnetic Resonance Imaging Reconstruction and Synthesis

This dissertation is devoted to provide advanced nonconvex nonsmooth var...
research
08/04/2020

Deep Parallel MRI Reconstruction Network Without Coil Sensitivities

We propose a novel deep neural network architecture by mapping the robus...
research
02/28/2022

Deep, Deep Learning with BART

Purpose: To develop a deep-learning-based image reconstruction framework...
research
09/26/2021

A Parallel-in-Time Preconditioner for the Schur Complement of Parabolic Optimal Control Problems

For optimal control problems constrained by a initial-valued parabolic P...
research
09/03/2022

A Variational Approach for Joint Image Recovery and Features Extraction Based on Spatially Varying Generalised Gaussian Models

The joint problem of reconstruction / feature extraction is a challengin...
research
07/22/2020

Learnable Descent Algorithm for Nonsmooth Nonconvex Image Reconstruction

We propose a general learning based framework for solving nonsmooth and ...
research
11/12/2020

Shared Prior Learning of Energy-Based Models for Image Reconstruction

We propose a novel learning-based framework for image reconstruction par...

Please sign up or login with your details

Forgot password? Click here to reset