Literature DB >> 11145310

Segmentation of the skull in MRI volumes using deformable model and taking the partial volume effect into account.

H Rifa1, I Bloch, S Hutchinson, J Wiart, L Garnero.   

Abstract

Segmentation of the skull in medical imagery is an important stage in applications that require the construction of realistic models of the head. Such models are used, for example, to simulate the behavior of electro-magnetic fields in the head and to model the electrical activity of the cortex in EEG and MEG data. In this paper, we present a new approach for segmenting regions of bone in MRI volumes using deformable models. Our method takes into account the partial volume effects that occur with MRI data, thus permitting a precise segmentation of these bone regions. At each iteration of the propagation of the model, partial volume is estimated in a narrow band around the deformable model. Our segmentation method begins with a pre-segmentation stage, in which a preliminary segmentation of the skull is constructed using a region-growing method. The surface that bounds the pre-segmented skull region offers an automatic 3D initialization of the deformable model. This surface is then propagated (in 3D) in the direction of its normal. This propagation is achieved using level set method, thus permitting changes to occur in the topology of the surface as it evolves, an essential capability for our problem. The speed at which the surface evolves is a function of the estimated partial volume. This provides a sub-voxel accuracy in the resulting segmentation.

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Year:  2000        PMID: 11145310     DOI: 10.1016/s1361-8415(00)00016-5

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   8.545


  8 in total

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5.  A two-stage rule-constrained seedless region growing approach for mandibular body segmentation in MRI.

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8.  Neurological software tool for reliable atrophy measurement (NeuroSTREAM) of the lateral ventricles on clinical-quality T2-FLAIR MRI scans in multiple sclerosis.

Authors:  Michael G Dwyer; Diego Silva; Niels Bergsland; Dana Horakova; Deepa Ramasamy; Jaqueline Durfee; Manuela Vaneckova; Eva Havrdova; Robert Zivadinov
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  8 in total

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