Microstructure Imaging of Crossing (MIX) White Matter Fibers from diffusion MRI.

Citation data:

Scientific reports, ISSN: 2045-2322, Vol: 6, Issue: 1, Page: 38927

Publication Year:
2016
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PMID:
27982056
DOI:
10.1038/srep38927
PMCID:
PMC5159854
Author(s):
Farooq, Hamza, Xu, Junqian, Nam, Jung Who, Keefe, Daniel F, Yacoub, Essa, Georgiou, Tryphon, Lenglet, Christophe
Publisher(s):
Springer Nature
Tags:
Multidisciplinary
article description
Diffusion MRI (dMRI) reveals microstructural features of the brain white matter by quantifying the anisotropic diffusion of water molecules within axonal bundles. Yet, identifying features such as axonal orientation dispersion, density, diameter, etc., in complex white matter fiber configurations (e.g. crossings) has proved challenging. Besides optimized data acquisition and advanced biophysical models, computational procedures to fit such models to the data are critical. However, these procedures have been largely overlooked by the dMRI microstructure community and new, more versatile, approaches are needed to solve complex biophysical model fitting problems. Existing methods are limited to models assuming single fiber orientation, relevant to limited brain areas like the corpus callosum, or multiple orientations but without the ability to extract detailed microstructural features. Here, we introduce a new and versatile optimization technique (MIX), which enables microstructure imaging of crossing white matter fibers. We provide a MATLAB implementation of MIX, and demonstrate its applicability to general microstructure models in fiber crossings using synthetic as well as ex-vivo and in-vivo brain data.

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