Self-Supervised Physics-Based Deep Learning MRI Reconstruction Without Fully-Sampled Data

10/21/2019
by   Burhaneddin Yaman, et al.
0

Deep learning (DL) has emerged as a tool for improving accelerated MRI reconstruction. A common strategy among DL methods is the physics-based approach, where a regularized iterative algorithm alternating between data consistency and a regularizer is unrolled for a finite number of iterations. This unrolled network is then trained end-to-end in a supervised manner, using fully-sampled data as ground truth for the network output. However, in a number of scenarios, it is difficult to obtain fully-sampled datasets, due to physiological constraints such as organ motion or physical constraints such as signal decay. In this work, we tackle this issue and propose a self-supervised learning strategy that enables physics-based DL reconstruction without fully-sampled data. Our approach is to divide the acquired sub-sampled points for each scan into training and validation subsets. During training, data consistency is enforced over the training subset, while the validation subset is used to define the loss function. Results show that the proposed self-supervised learning method successfully reconstructs images without fully-sampled data, performing similarly to the supervised approach that is trained with fully-sampled references. This has implications for physics-based inverse problem approaches for other settings, where fully-sampled data is not available or possible to acquire.

READ FULL TEXT

page 3

page 4

research
12/16/2019

Self-Supervised Learning of Physics-Based Reconstruction Neural Networks without Fully-Sampled Reference Data

Purpose: To develop a strategy for training a physics-driven MRI reconst...
research
09/30/2021

Noise2Recon: A Semi-Supervised Framework for Joint MRI Reconstruction and Denoising

Deep learning (DL) has shown promise for faster, high quality accelerate...
research
02/15/2021

Scan-Specific MRI Reconstruction using Zero-Shot Physics-Guided Deep Learning

Physics-guided deep learning (PG-DL) has emerged as a powerful tool for ...
research
08/05/2023

K-band: Self-supervised MRI Reconstruction via Stochastic Gradient Descent over K-space Subsets

Although deep learning (DL) methods are powerful for solving inverse pro...
research
10/26/2020

Improved Supervised Training of Physics-Guided Deep Learning Image Reconstruction with Multi-Masking

Physics-guided deep learning (PG-DL) via algorithm unrolling has receive...
research
05/20/2022

Self-supervised deep learning MRI reconstruction with Noisier2Noise

In recent years, there has been attention on leveraging the statistical ...
research
11/29/2020

Semi-Supervised Learning of Mutually Accelerated Multi-Contrast MRI Synthesis without Fully-Sampled Ground-Truths

This study proposes a novel semi-supervised learning framework for mutua...

Please sign up or login with your details

Forgot password? Click here to reset