GLEAM: Greedy Learning for Large-Scale Accelerated MRI Reconstruction

07/18/2022
by   Batu Ozturkler, et al.
9

Unrolled neural networks have recently achieved state-of-the-art accelerated MRI reconstruction. These networks unroll iterative optimization algorithms by alternating between physics-based consistency and neural-network based regularization. However, they require several iterations of a large neural network to handle high-dimensional imaging tasks such as 3D MRI. This limits traditional training algorithms based on backpropagation due to prohibitively large memory and compute requirements for calculating gradients and storing intermediate activations. To address this challenge, we propose Greedy LEarning for Accelerated MRI (GLEAM) reconstruction, an efficient training strategy for high-dimensional imaging settings. GLEAM splits the end-to-end network into decoupled network modules. Each module is optimized in a greedy manner with decoupled gradient updates, reducing the memory footprint during training. We show that the decoupled gradient updates can be performed in parallel on multiple graphical processing units (GPUs) to further reduce training time. We present experiments with 2D and 3D datasets including multi-coil knee, brain, and dynamic cardiac cine MRI. We observe that: i) GLEAM generalizes as well as state-of-the-art memory-efficient baselines such as gradient checkpointing and invertible networks with the same memory footprint, but with 1.3x faster training; ii) for the same memory footprint, GLEAM yields 1.1dB PSNR gain in 2D and 1.8 dB in 3D over end-to-end baselines.

READ FULL TEXT

page 1

page 2

page 5

page 6

page 7

page 8

page 9

research
03/06/2021

Memory-efficient Learning for High-Dimensional MRI Reconstruction

Deep learning (DL) based unrolled reconstructions have shown state-of-th...
research
04/03/2023

Accelerated parallel MRI using memory efficient and robust monotone operator learning (MOL)

Model-based deep learning methods that combine imaging physics with lear...
research
05/12/2022

Image Gradient Decomposition for Parallel and Memory-Efficient Ptychographic Reconstruction

Ptychography is a popular microscopic imaging modality for many scientif...
research
04/21/2022

Scale-Equivariant Unrolled Neural Networks for Data-Efficient Accelerated MRI Reconstruction

Unrolled neural networks have enabled state-of-the-art reconstruction pe...
research
02/01/2021

An End-To-End-Trainable Iterative Network Architecture for Accelerated Radial Multi-Coil 2D Cine MR Image Reconstruction

Purpose: Iterative Convolutional Neural Networks (CNNs) which resemble u...
research
08/01/2022

Locally Supervised Learning with Periodic Global Guidance

Locally supervised learning aims to train a neural network based on a lo...
research
12/11/2019

Memory-efficient Learning for Large-scale Computational Imaging

Computational imaging systems jointly design computation and hardware to...

Please sign up or login with your details

Forgot password? Click here to reset