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Document type:
Zeitschriftenaufsatz
Author(s):
Molina-Romero, M.; Wiestler, B.; Gómez, PA.; Menzel, MI.; Menze, B.
Title:
Deep learning with synthetic diffusion MRI data for free-water elimination in glioblastoma cases
Abstract:
Glioblastoma is the most common and aggressive brain tumor. In clinical practice, diffusion MRI (dMRI) enables tumor infiltration assessment, tumor recurrence prognosis, and identification of white matter tracks close to the resection volume. However, the vasogenic edema (free-water) surrounding the tumor causes partial volume contamination, which induces a bias in the estimates of the diffusion properties and limits the clinical utility of dMRI. We introduce a voxel-based deep learning method...     »
Keywords:
MedicalImaging,IBBM,MICCAI,Glioblastoma,CSF,DeepLearning,Free-water
Journal title:
Miccai
Year:
2018
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