Deep Factor Model: A Novel Approach for Motion Compensated Multi-Dimensional MRI

03/31/2023
by   Yan Chen, et al.
0

Recent quantitative parameter mapping methods including MR fingerprinting (MRF) collect a time series of images that capture the evolution of magnetization. The focus of this work is to introduce a novel approach termed as Deep Factor Model(DFM), which offers an efficient representation of the multi-contrast image time series. The higher efficiency of the representation enables the acquisition of the images in a highly undersampled fashion, which translates to reduced scan time in 3D high-resolution multi-contrast applications. The approach integrates motion estimation and compensation, making the approach robust to subject motion during the scan.

READ FULL TEXT

page 3

page 4

research
05/18/2019

Factor Models for High-Dimensional Tensor Time Series

Large tensor (multi-dimensional array) data are now routinely collected ...
research
05/17/2021

Accelerating 3D MULTIPLEX MRI Reconstruction with Deep Learning

Multi-contrast MRI images provide complementary contrast information abo...
research
06/23/2021

STRESS: Super-Resolution for Dynamic Fetal MRI using Self-Supervised Learning

Fetal motion is unpredictable and rapid on the scale of conventional MR ...
research
08/24/2021

Correcting inter-scan motion artefacts in quantitative R1 mapping at 7T

Purpose: Inter-scan motion is a substantial source of error in R_1 estim...
research
03/06/2019

Temporal Registration in Application to In-utero MRI Time Series

We present a robust method to correct for motion in volumetric in-utero ...
research
11/21/2021

Dynamic imaging using motion-compensated smoothness regularization on manifolds (MoCo-SToRM)

We introduce an unsupervised deep manifold learning algorithm for motion...
research
01/24/2017

Speech Map: A Statistical Multimodal Atlas of 4D Tongue Motion During Speech from Tagged and Cine MR Images

Quantitative measurement of functional and anatomical traits of 4D tongu...

Please sign up or login with your details

Forgot password? Click here to reset