Literature DB >> 34456460

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

Vishwesh Nath1, Prasanna Parvathaneni1, Colin B Hansen1, Allison E Hainline2, Camilo Bermudez3, Samuel Remedios4, Justin A Blaber1, Kurt G Schilling3, Ilwoo Lyu1, Vaibhav Janve3, Yurui Gao3, Iwona Stepniewska5, Baxter P Rogers6, Allen T Newton6, L Taylor Davis7, Jeff Luci8, Adam W Anderson3, Bennett A Landman1,3.   

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 technique 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 proposed. 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. Moreover, it improved reproducibility on the paired data by 21.19% over CSD and 10.09% over a recently proposed deep approach. Finally, NSDN improved generalizability 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 learning approach. This work suggests that data-driven approaches for local fiber reconstruction are more reproducible, informative and precise and offers a novel, practical method for determining these models.

Entities:  

Keywords:  CSD; DW-MRI; Deep Learning; Diffusion; HARDI; Harmonization; Inter-Scanner; Null Space

Year:  2019        PMID: 34456460      PMCID: PMC8388262     

Source DB:  PubMed          Journal:  Lect Notes Monogr Ser        ISSN: 0749-2170


  20 in total

1.  How to correct susceptibility distortions in spin-echo echo-planar images: application to diffusion tensor imaging.

Authors:  Jesper L R Andersson; Stefan Skare; John Ashburner
Journal:  Neuroimage       Date:  2003-10       Impact factor: 6.556

2.  Persistent Angular Structure: new insights from diffusion MRI data. Dummy version.

Authors:  Kalvis M Jansons; Daniel C Alexander
Journal:  Inf Process Med Imaging       Date:  2003-07

3.  Q-ball imaging.

Authors:  David S Tuch
Journal:  Magn Reson Med       Date:  2004-12       Impact factor: 4.668

4.  Measurement of fiber orientation distributions using high angular resolution diffusion imaging.

Authors:  Adam W Anderson
Journal:  Magn Reson Med       Date:  2005-11       Impact factor: 4.668

5.  Robust determination of the fibre orientation distribution in diffusion MRI: non-negativity constrained super-resolved spherical deconvolution.

Authors:  J-Donald Tournier; Fernando Calamante; Alan Connelly
Journal:  Neuroimage       Date:  2007-02-21       Impact factor: 6.556

6.  Reproducibility and consistency of evaluation techniques for HARDI data.

Authors:  Kamil Gorczewski; Sarah Mang; Uwe Klose
Journal:  MAGMA       Date:  2008-09-23       Impact factor: 2.310

7.  Comparison of Multi-Fiber Reproducibility of PAS-MRI and Q-ball With Empirical Multiple b-Value HARDI.

Authors:  Vishwesh Nath; Kurt G Schilling; Justin A Blaber; Zhaohua Ding; Adam W Anderson; Bennett A Landman
Journal:  Proc SPIE Int Soc Opt Eng       Date:  2017-02-24

8.  Harmonization of multi-site diffusion tensor imaging data.

Authors:  Jean-Philippe Fortin; Drew Parker; Birkan Tunç; Takanori Watanabe; Mark A Elliott; Kosha Ruparel; David R Roalf; Theodore D Satterthwaite; Ruben C Gur; Raquel E Gur; Robert T Schultz; Ragini Verma; Russell T Shinohara
Journal:  Neuroimage       Date:  2017-08-18       Impact factor: 6.556

9.  Comparison of 3D orientation distribution functions measured with confocal microscopy and diffusion MRI.

Authors:  Kurt Schilling; Vaibhav Janve; Yurui Gao; Iwona Stepniewska; Bennett A Landman; Adam W Anderson
Journal:  Neuroimage       Date:  2016-01-21       Impact factor: 6.556

10.  An integrated approach to correction for off-resonance effects and subject movement in diffusion MR imaging.

Authors:  Jesper L R Andersson; Stamatios N Sotiropoulos
Journal:  Neuroimage       Date:  2015-10-20       Impact factor: 6.556

View more
  1 in total

1.  Semi-supervised Machine Learning with MixMatch and Equivalence Classes.

Authors:  Colin B Hansen; Vishwesh Nath; Riqiang Gao; Camilo Bermudez; Yuankai Huo; Kim L Sandler; Pierre P Massion; Jeffrey D Blume; Thomas A Lasko; Bennett A Landman
Journal:  Lect Notes Monogr Ser       Date:  2020-10-02
  1 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.