Automatic segmentation of the internal carotid arteries through the skull base
An automatic method is presented to segment the internal carotid arteries through the difficult part of the skull base in CT angiography. The method uses the entropy per slice to select a cross sectio...
Asymmetric bias in user guided segmentations of brain structures
Brain morphometric studies often incorporate comparative asymmetry analyses of left and right hemispheric brain structures. In this work we show evidence that common methods of user guided structural ...
Proc. SPIE, Vol. 6512, 65120J (2007);
doi:10.1117/12.708522
Online Publication Date: 3 March 2007
Conference Date: Sunday 18 February 2007
Conference Location: San Diego, CA, USA
Conference Title: Medical Imaging 2007: Image Processing
Conference Chairs: Josien P. W. Pluim, Joseph M. Reinhardt
Bronchoscopicbiopsy of the central-chest lymph nodes is vital in thestaging of lung cancer. Three-dimensional multi-detector CT (MDCT) images providevivid anatomical detail for planning bronchoscopy. Unfortunately, many lymph nodesare situated close to the aorta, and an inadvertent needlebiopsy could puncture the aorta, causing serious harm. As aneventual aid for more complete planning of lymph-node biopsy, itis important to define the aorta. This paper proposes amethod for extracting the aorta from a 3D MDCT chestimage. The method has two main phases: (1) Off-line ModelConstruction, which provides a set of training cases for fittingnew images, and (2) On-Line Aorta Construction, which is usedfor new incoming 3D MDCT images. Off-Line Model Construction isdone once using several representative human MDCT images and consistsof the following steps: construct a likelihood image, select controlpoints of the medial axis of the aortic arch, andrecompute the control points to obtain a constant-interval medial-axis model.On-Line Aorta Construction consists of the following operations: construct alikelihood image, perform global fitting of the precomputed models tothe current case's likelihood image to find the best fittingmodel, perform local fitting to adjust the medial axis tolocal data variations, and employ a region recovery method toarrive at the complete constructed 3D aorta. The region recoverymethod consists of two steps: model-based and region-growing steps. Thisregion growing method can recover regions outside the model coverageand non-circular tube structures. In our experiments, we used threemodels and achieved satisfactory results on twelve of thirteen testcases.