Deep Predictive Motion Tracking in Magnetic Resonance Imaging: Application to Fetal Imaging

09/25/2019
by   Ayush Singh, et al.
13

Fetal magnetic resonance imaging (MRI) is challenged by uncontrollable, large, and irregular fetal movements. Fetal MRI is performed in a fully interactive manner in which a technologist monitors motion to prescribe slices in right angles with respect to the anatomy of interest. Current practice involves repeated acquisitions to ensure diagnostic-quality images are acquired; and the scans are retrospectively registered slice-by-slice to reconstruct 3D images. Nonetheless, manual monitoring of 3D fetal motion based on displayed 2D slices and navigation at the level of stacks-of-slices (instead of slices) is sub-optimal and inefficient. The current process is highly operator-dependent, requires extensive training, and significantly increases the length of fetal MRI scans which makes them difficult for pregnant women, and costly. With that motivation, we presented a new real-time image-based motion tracking technique in MRI using deep learning that can significantly improve state of the art. Through a combination of spatial and temporal encoder-decoder networks, our system learns to predict 3D pose of the fetal head based on dynamics of motion inferred directly from sequences of acquired slices. Compared to recent works that estimate static 3D pose of the subject from slices, our method learns to predict dynamics of 3D motion. We compared our trained network on held-out test sets (including data with different characteristics, e.g. different age ranges, and motion trajectories recorded from volunteer subjects) with networks designed for estimation as well as methods adopted to make predictions. The results of all estimation and prediction tasks show that we achieved reliable motion tracking in fetal MRI. This technique can be augmented with deep learning based fast anatomy detection, segmentation, and image registration techniques to build real-time motion tracking and navigation systems.

READ FULL TEXT

page 1

page 3

page 4

page 6

page 8

research
08/28/2019

Self-supervised Recurrent Neural Network for 4D Abdominal and In-utero MR Imaging

Accurately estimating and correcting the motion artifacts are crucial fo...
research
02/08/2023

A Survey of Feature detection methods for localisation of plain sections of Axial Brain Magnetic Resonance Imaging

Matching MRI brain images between patients or mapping patients' MRI slic...
research
07/10/2020

Localized Motion Artifact Reduction on Brain MRI Using Deep Learning with Effective Data Augmentation Techniques

In-scanner motion degrades the quality of magnetic resonance imaging (MR...
research
11/11/2015

Multimodal MRI Neuroimaging with Motion Compensation Based on Particle Filtering

Head movement during scanning impedes activation detection in fMRI studi...
research
03/15/2018

Real-time Deep Registration With Geodesic Loss

With an aim to increase the capture range and accelerate the performance...
research
07/02/2020

Image Processing and Quality Control for Abdominal Magnetic Resonance Imaging in the UK Biobank

An end-to-end image analysis pipeline is presented for the abdominal MRI...
research
10/29/2021

Fetal MRI by robust deep generative prior reconstruction and diffeomorphic registration: application to gestational age prediction

Magnetic resonance imaging of whole fetal body and placenta is limited b...

Please sign up or login with your details

Forgot password? Click here to reset