Title
Fully automatic segmentation of the hippocampus and the amygdala from MRI using hybrid prior knowledge.
Abstract
The segmentation of macroscopically ill-defined and highly variable structures, such as the hippocampus Hc and the amygdala Am, from MRI requires specific constraints. Here, we describe and evaluate a hybrid segmentation method that uses knowledge derived from a probabilistic atlas and from anatomical landmarks based on stable anatomical characteristics of the structures. Combined in a previously published semi-automatic segmentation method, they lead to a fast, robust and accurate fully automatic segmentation of Hc and Am. The probabilistic atlas was built from 16 young controls and registered with the "unified segmentation" of SPM5. The algorithm was quantitatively evaluated with respect to manual segmentation on two MRI datasets: the 16 young controls, with a leave-one-out strategy, and a mixed cohort of 8 controls and 15 subjects with epilepsy with variable hippocampal sclerosis. The segmentation driven by hybrid knowledge leads to greatly improved results compared to that obtained by registration of the thresholded atlas alone: mean overlap for Hc on the 16 young controls increased from 78% to 87% (p < 0.001) and on the mixed cohort from 73% to 82% (p < 0.001) while the error on volumes decreased from 10% to 7% (p < 0.005) and from 18% to 8% (p < 0.001), respectively. Automatic results were better than the semi-automatic results: for the 16 young controls, average overlap increased from 84% to 87% (p < 0.001) for Hc and from 81% to 84% (p < 0.002) for Am, with equivalent improvements in volume error.
Year
DOI
Venue
2007
10.1007/978-3-540-75757-3_106
MICCAI
Keywords
Field
DocType
manual segmentation,probabilistic atlas,automatic segmentation,hybrid segmentation method,unified segmentation,hybrid prior knowledge,hippocampus hc,thresholded atlas,semi-automatic segmentation method,mri datasets,young control
Nuclear medicine,Probabilistic atlas,Pattern recognition,Computer science,Segmentation,Amygdala,Artificial intelligence,Hippocampal sclerosis,Machine learning,Hippocampus
Conference
Volume
Issue
ISSN
10
Pt 1
0302-9743
ISBN
Citations 
PageRank 
3-540-75756-2
8
1.16
References 
Authors
10
8
Name
Order
Citations
PageRank
Marie Chupin140222.10
Alexander Hammers293561.73
Eric Bardinet344145.55
Olivier Colliot474349.59
Rebecca S N Liu581.16
J S Duncan636838.49
Line Garnero721324.63
Louis Lemieux843979.68