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Inter-Scanner Harmonization of High Angular Resolution DW-MRI Using Null Space Deep Learning

Authors :
Yurui Gao
Samuel Remedios
Allison E. Hainline
Allen T. Newton
Kurt G. Schilling
Vaibhav A. Janve
L. Taylor Davis
Jeff Luci
Prasanna Parvathaneni
Camilo Bermudez
Colin B. Hansen
Bennett A. Landman
Baxter P. Rogers
Iwona Stepniewska
Adam W. Anderson
Justin A. Blaber
Vishwesh Nath
Ilwoo Lyu
Source :
Computational Diffusion MRI ISBN: 9783030058302, Lect Notes Monogr Ser
Publication Year :
2019
Publisher :
Springer International Publishing, 2019.

Abstract

Diffusion-weighted magnetic resonance imaging (DW-MRI) allows for non-invasive imaging of the local fiber architecture of the human brain at a millimetric scale. Multiple classical approaches have been proposed to detect both single (e.g., tensors) and multiple (e.g., constrained spherical deconvolution, CSD) fiber population orientations per voxel. However, existing techniques generally exhibit low reproducibility across MRI scanners. Herein, we propose a data-driven tech-nique using a neural network design which exploits two categories of data. First, training data were acquired on three squirrel monkey brains using ex-vivo DW-MRI and histology of the brain. Second, repeated scans of human subjects were acquired on two different scanners to augment the learning of the network pro-posed. To use these data, we propose a new network architecture, the null space deep network (NSDN), to simultaneously learn on traditional observed/truth pairs (e.g., MRI-histology voxels) along with repeated observations without a known truth (e.g., scan-rescan MRI). The NSDN was tested on twenty percent of the histology voxels that were kept completely blind to the network. NSDN significantly improved absolute performance relative to histology by 3.87% over CSD and 1.42% over a recently proposed deep neural network approach. More-over, it improved reproducibility on the paired data by 21.19% over CSD and 10.09% over a recently proposed deep approach. Finally, NSDN improved gen-eralizability of the model to a third in vivo human scanner (which was not used in training) by 16.08% over CSD and 10.41% over a recently proposed deep learn-ing approach. This work suggests that data-driven approaches for local fiber re-construction are more reproducible, informative and precise and offers a novel, practical method for determining these models.<br />Comment: 10 pages, 5 figures

Details

ISBN :
978-3-030-05830-2
ISBNs :
9783030058302
Database :
OpenAIRE
Journal :
Computational Diffusion MRI ISBN: 9783030058302, Lect Notes Monogr Ser
Accession number :
edsair.doi.dedup.....a9cf975697e0fba15bec6f8104c63468
Full Text :
https://doi.org/10.1007/978-3-030-05831-9_16