A method for whole-brain segmentation of longitudinal MRI scans that is adaptive to different scanners and MRI sequences and can also segment white matter lesions simultaneously.
Authors
Andrew Hoopes
3 papers
D. Greve
3 papers
K. V. Leemput
4 papers
Stefano Cerri
3 papers
H. Siebner
2 papers
Mark Muhlau
2 papers
Henrik Lundell
1 papers
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) the baseline EDSS score is between 1 and 5.5 and there is an increase of 1 point from the baseline EDSS score to the last time point EDSS score