Literature DB >> 34182203

A machine learning-based method for estimating the number and orientations of major fascicles in diffusion-weighted magnetic resonance imaging.

Davood Karimi1, Lana Vasung2, Camilo Jaimes3, Fedel Machado-Rivas3, Shadab Khan3, Simon K Warfield3, Ali Gholipour3.   

Abstract

Accurate modeling of diffusion-weighted magnetic resonance imaging measurements is necessary for accurate brain connectivity analysis. Existing methods for estimating the number and orientations of fascicles in an imaging voxel either depend on non-convex optimization techniques that are sensitive to initialization and measurement noise, or are prone to predicting spurious fascicles. In this paper, we propose a machine learning-based technique that can accurately estimate the number and orientations of fascicles in a voxel. Our method can be trained with either simulated or real diffusion-weighted imaging data. Our method estimates the angle to the closest fascicle for each direction in a set of discrete directions uniformly spread on the unit sphere. This information is then processed to extract the number and orientations of fascicles in a voxel. On realistic simulated phantom data with known ground truth, our method predicts the number and orientations of crossing fascicles more accurately than several classical and machine learning methods. It also leads to more accurate tractography. On real data, our method is better than or compares favorably with other methods in terms of robustness to measurement down-sampling and also in terms of expert quality assessment of tractography results.
Copyright © 2021 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Deep learning; Diffusion weighted imaging; Fiber orientation distribution; Machine learning; Tractography

Mesh:

Year:  2021        PMID: 34182203      PMCID: PMC8320341          DOI: 10.1016/j.media.2021.102129

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   13.828


  36 in total

1.  Reliable selection of the number of fascicles in diffusion images by estimation of the generalization error.

Authors:  Benoit Scherrer; Maxime Taquet; Simon K Warfield
Journal:  Inf Process Med Imaging       Date:  2013

2.  Multitensor approach for analysis and tracking of complex fiber configurations.

Authors:  B W Kreher; J F Schneider; I Mader; E Martin; J Hennig; K A Il'yasov
Journal:  Magn Reson Med       Date:  2005-11       Impact factor: 4.668

3.  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

4.  Resolving crossing fibres using constrained spherical deconvolution: validation using diffusion-weighted imaging phantom data.

Authors:  J-Donald Tournier; Chun-Hung Yeh; Fernando Calamante; Kuan-Hung Cho; Alan Connelly; Ching-Po Lin
Journal:  Neuroimage       Date:  2008-05-09       Impact factor: 6.556

5.  A deep network for tissue microstructure estimation using modified LSTM units.

Authors:  Chuyang Ye; Xiuli Li; Jingnan Chen
Journal:  Med Image Anal       Date:  2019-04-18       Impact factor: 8.545

6.  Fiber Orientation Estimation Guided by a Deep Network.

Authors:  Chuyang Ye; Jerry L Prince
Journal:  Med Image Comput Comput Assist Interv       Date:  2017-09-04

7.  Combined tract segmentation and orientation mapping for bundle-specific tractography.

Authors:  Jakob Wasserthal; Peter F Neher; Dusan Hirjak; Klaus H Maier-Hein
Journal:  Med Image Anal       Date:  2019-09-12       Impact factor: 8.545

8.  Multi-tissue constrained spherical deconvolution for improved analysis of multi-shell diffusion MRI data.

Authors:  Ben Jeurissen; Jacques-Donald Tournier; Thijs Dhollander; Alan Connelly; Jan Sijbers
Journal:  Neuroimage       Date:  2014-08-07       Impact factor: 6.556

9.  Histological validation of diffusion MRI fiber orientation distributions and dispersion.

Authors:  Kurt G Schilling; Vaibhav Janve; Yurui Gao; Iwona Stepniewska; Bennett A Landman; Adam W Anderson
Journal:  Neuroimage       Date:  2017-10-23       Impact factor: 6.556

10.  Evaluating the accuracy of diffusion MRI models in white matter.

Authors:  Ariel Rokem; Jason D Yeatman; Franco Pestilli; Kendrick N Kay; Aviv Mezer; Stefan van der Walt; Brian A Wandell
Journal:  PLoS One       Date:  2015-04-16       Impact factor: 3.240

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  2 in total

1.  Deep learning-based parameter estimation in fetal diffusion-weighted MRI.

Authors:  Davood Karimi; Camilo Jaimes; Fedel Machado-Rivas; Lana Vasung; Shadab Khan; Simon K Warfield; Ali Gholipour
Journal:  Neuroimage       Date:  2021-08-26       Impact factor: 6.556

2.  Insights from the IronTract challenge: Optimal methods for mapping brain pathways from multi-shell diffusion MRI.

Authors:  Chiara Maffei; Gabriel Girard; Kurt G Schilling; Dogu Baran Aydogan; Nagesh Adluru; Andrey Zhylka; Ye Wu; Matteo Mancini; Andac Hamamci; Alessia Sarica; Achille Teillac; Steven H Baete; Davood Karimi; Fang-Cheng Yeh; Mert E Yildiz; Ali Gholipour; Yann Bihan-Poudec; Bassem Hiba; Andrea Quattrone; Aldo Quattrone; Tommy Boshkovski; Nikola Stikov; Pew-Thian Yap; Alberto de Luca; Josien Pluim; Alexander Leemans; Vivek Prabhakaran; Barbara B Bendlin; Andrew L Alexander; Bennett A Landman; Erick J Canales-Rodríguez; Muhamed Barakovic; Jonathan Rafael-Patino; Thomas Yu; Gaëtan Rensonnet; Simona Schiavi; Alessandro Daducci; Marco Pizzolato; Elda Fischi-Gomez; Jean-Philippe Thiran; George Dai; Giorgia Grisot; Nikola Lazovski; Santi Puch; Marc Ramos; Paulo Rodrigues; Vesna Prčkovska; Robert Jones; Julia Lehman; Suzanne N Haber; Anastasia Yendiki
Journal:  Neuroimage       Date:  2022-05-26       Impact factor: 7.400

  2 in total

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