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Myelin water imaging data analysis in less than one minute

Authors :
Shannon H. Kolind
Qing-San Xiang
Anthony Traboulsee
David K.B. Li
Roger Tam
Irene M. Vavasour
Hanwen Liu
Adam V. Dvorak
Cornelia Laule
John L.K. Kramer
Alex L. MacKay
Source :
NeuroImage, Vol 210, Iss, Pp 116551-(2020)
Publication Year :
2019

Abstract

Purpose: Based on a deep learning neural network (NN) algorithm, a super fast and easy to implement data analysis method was proposed for myelin water imaging (MWI) to calculate the myelin water fraction (MWF). Methods: A NN was constructed and trained on MWI data acquired by a 32-echo 3D gradient and spin echo (GRASE) sequence. Ground truth labels were created by regularized non-negative least squares (NNLS) with stimulated echo corrections. Voxel-wise GRASE data from 5 brains (4 healthy, 1 multiple sclerosis (MS)) were used for NN training. The trained NN was tested on 2 healthy brains, 1 MS brain with segmented lesions, 1 healthy spinal cord, and 1 healthy brain acquired from a different scanner. Results: Production of whole brain MWF maps in approximately 33 ​s can be achieved by a trained NN without graphics card acceleration. For all testing regions, no visual differences between NN and NNLS MWF maps were observed, and no obvious regional biases were found. Quantitatively, all voxels exhibited excellent agreement between NN and NNLS (all R2>0.98, p ​

Details

ISSN :
10959572
Volume :
210
Database :
OpenAIRE
Journal :
NeuroImage
Accession number :
edsair.doi.dedup.....e5c89e1ee725c00596c9d4e3db4b8329