Segmentation of Subcortical structures in T1 weighted MRI as a component of a Brain Atrophy Computation Pipeline

Cecilie Benedicte Anker

AbstractAmong the top performing automated hippocampal segmentation methods from structural Magnetic Resonance Imaging (MRI), are multi-atlas segmentation methods, which rely on manual annotations.
In this thesis two fundamentally different multi-atlas segmentation methods are implemented, N-L Patch and BrainFuseLab. In N-L Patch, each voxel is segmented using information from atlases which have been coarsely aligned using affine registrations. BrainFuseLab aligns atlases using non-rigid registrations, and is thus comparatively slower. To make a fair comparison, both methods will use the same atlases from a new Harmonized Hippocampal Protocol (HHP).
Method parameters are optimized in a leave-one-out cross-validation using two different atlas sets. Based on volume overlap with the manual annotations, N-L Patch is chosen to segment a standardized ADNI dataset containing 1.5T MRIs from 504 diagnosed subjects (169 cognitively normal (CN), 234 mild cognitive impairment (MCI), 101 alzheimer's disease (AD)) at baseline, month 12 and month 24. Hippocampal atrophy calculated as percentage volume change from baseline to follow-up is estimated. Based on a statistical analysis, the diagnostic group separation capabilities of N-L Patch are compared to two state-of-the-art methods, cross-sectional FreeSurfer and longitudinal FreeSurfer.
Including the HHP annotations in N-L Patch yielded signi cantly better group separation than cross-sectional FreeSurfer in separating AD from CN and AD from MCI. This illustrates the longitudinal robustness of segmentations when annotations from the new hippocampal standard are included in automated segmentation methods. Also longitudinal FreeSurfer exploiting baseline and follow-up simultaneously showed no diagnostic improvement over N-L Patch.
TypeMaster's thesis [Industrial collaboration]
Year2014
PublisherTechnical University of Denmark, Department of Applied Mathematics and Computer Science
AddressRichard Petersens Plads, Building 324, DK-2800 Kgs. Lyngby, Denmark, compute@compute.dtu.dk
SeriesDTU Compute M.Sc.-2014
NoteSupervised by: Prof. Mads Nielsen, KU, Prof. Rasmus Larsen, rlar@dtu.dk, DTU Compute, Prof. Knut Conradsen, knco@dtu.dk, DTU Compute, & Postdoc Mark Lyksborg, DTU Compute
Electronic version(s)[pdf]
Publication linkhttp://www.compute.dtu.dk/English.aspx
BibTeX data [bibtex]
IMM Group(s)Image Analysis & Computer Graphics