Automatic segmentation of the striatum and globus pallidus using MIST: Multimodal Image Segmentation Tool

Open Access
Authors
Publication date 01-2016
Journal NeuroImage
Volume | Issue number 125
Pages (from-to) 479-497
Number of pages 19
Organisations
  • Faculty of Social and Behavioural Sciences (FMG) - Psychology Research Institute (PsyRes)
Abstract
Accurate segmentation of the subcortical structures is frequently required in neuroimaging studies. Most existing methods use only a T1-weighted MRI volume to segment all supported structures and usually rely on a database of training data. We propose a new method that can use multiple image modalities simultaneously and a single reference segmentation for initialisation, without the need for a manually labelled training set. The method models intensity profiles in multiple images around the boundaries of the structure after nonlinear registration. It is trained using a set of unlabelled training data, which may be the same images that are to be segmented, and it can automatically infer the location of the physical boundary using user-specified priors. We show that the method produces high-quality segmentations of the striatum, which is clearly visible on T1-weighted scans, and the globus pallidus, which has poor contrast on such scans. The method compares favourably to existing methods, showing greater overlap with manual segmentations and better consistency.
Document type Article
Note With supplementary data
Language English
Published at https://doi.org/10.1016/j.neuroimage.2015.10.013
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