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Sparse wars: A survey and comparative study of spherical deconvolution algorithms for diffusion MRI
- Source :
- Canales-Rodríguez, E J, Legarreta, J H, Pizzolato, M, Rensonnet, G, Girard, G, Patiño, J R, Barakovic, M, Romascano, D, Alemán-Gomez, Y, Radua, J, Pomarol-Clotet, E, Salvador, R, Thiran, J-P & Daducci, A 2018, ' Sparse wars : A survey and comparative study of spherical deconvolution algorithms for diffusion MRI ', NeuroImage . https://doi.org/10.1016/j.neuroimage.2018.08.071
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Abstract
- Spherical deconvolution methods are widely used to estimate the brain's white-matter fiber orientations from diffusion MRI data. In this study, eight spherical deconvolution algorithms were implemented and evaluated. These included two model selection techniques based on the extended Bayesian information criterion (i.e., best subset selection and the least absolute shrinkage and selection operator), iteratively reweighted l2- and l1-norm approaches to approximate the l0-norm, sparse Bayesian learning, Cauchy deconvolution, and two accelerated Richardson-Lucy algorithms. Results from our exhaustive evaluation show that there is no single optimal method for all different fiber configurations, suggesting that further studies should be conducted to find the optimal way of combining solutions from different methods. We found l0-norm regularization algorithms to resolve more accurately fiber crossings with small inter-fiber angles. However, in voxels with very dominant fibers, algorithms promoting more sparsity are less accurate in detecting smaller fibers. In most cases, the best algorithm to reconstruct fiber crossings with two fibers did not perform optimally in voxels with one or three fibers. Therefore, simplified validation systems as employed in a number of previous studies, where only two fibers with similar volume fractions were tested, should be avoided as they provide incomplete information. Future studies proposing new reconstruction methods based on high angular resolution diffusion imaging data should validate their results by considering, at least, voxels with one, two, and three fibers, as well as voxels with dominant fibers and different diffusion anisotropies.
- Subjects :
- Sparse regression
Computer science
Cognitive Neuroscience
LASSO
computer.software_genre
Regularization (mathematics)
050105 experimental psychology
Diffusion MRI
03 medical and health sciences
0302 clinical medicine
Lasso (statistics)
Voxel
Non-negative least squares
Bayesian information criterion
Surveys and Questionnaires
Image Processing, Computer-Assisted
Humans
0501 psychology and cognitive sciences
Angular resolution
Shrinkage
Spherical deconvolution
05 social sciences
Cauchy distribution
Brain
Reproducibility of Results
Bayes Theorem
Signal Processing, Computer-Assisted
White Matter
Diffusion Magnetic Resonance Imaging
Diffusion Tensor Imaging
Neurology
Deconvolution
computer
Algorithm
030217 neurology & neurosurgery
Algorithms
Subjects
Details
- Database :
- OpenAIRE
- Journal :
- Canales-Rodríguez, E J, Legarreta, J H, Pizzolato, M, Rensonnet, G, Girard, G, Patiño, J R, Barakovic, M, Romascano, D, Alemán-Gomez, Y, Radua, J, Pomarol-Clotet, E, Salvador, R, Thiran, J-P & Daducci, A 2018, ' Sparse wars : A survey and comparative study of spherical deconvolution algorithms for diffusion MRI ', NeuroImage . https://doi.org/10.1016/j.neuroimage.2018.08.071
- Accession number :
- edsair.doi.dedup.....5cd611b34847a3424f5c4c8db26d3bda
- Full Text :
- https://doi.org/10.1016/j.neuroimage.2018.08.071