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Automatic Intracranial Space Segmentation for Computed Tomography Brain Images

Authors :
Adamson, C
Da Costa, AC
Beare, R
Wood, AG
Adamson, C
Da Costa, AC
Beare, R
Wood, AG
Publication Year :
2013

Abstract

Craniofacial disorders are routinely diagnosed using computed tomography imaging. Corrective surgery is often performed early in life to restore the skull to a more normal shape. In order to quantitatively assess the shape change due to surgery, we present an automated method for intracranial space segmentation. The method utilizes a two-stage approach which firstly initializes the segmentation with a cascade of mathematical morphology operations. This segmentation is then refined with a level-set-based approach that ensures that low-contrast boundaries, where bone is absent, are completed smoothly. We demonstrate this method on a dataset of 43 images and show that the method produces consistent and accurate results.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1315706743
Document Type :
Electronic Resource