Authors
Mona K Garvin, Michael D Abràmoff, Randy Kardon, Stephen R Russell, Xiaodong Wu, Milan Sonka
Publication date
2008/4/22
Journal
IEEE transactions on medical imaging
Volume
27
Issue
10
Pages
1495-1505
Publisher
IEEE
Description
Current techniques for segmenting macular optical coherence tomography (OCT) images have been 2-D in nature. Furthermore, commercially available OCT systems have only focused on segmenting a single layer of the retina, even though each intraretinal layer may be affected differently by disease. We report an automated approach for segmenting (anisotropic) 3-D macular OCT scans into five layers. Each macular OCT dataset consisted of six linear radial scans centered at the fovea. The six surfaces defining the five layers were identified on each 3-D composite image by transforming the segmentation task into that of finding a minimum-cost closed set in a geometric graph constructed from edge/regional information and a priori determined surface smoothness and interaction constraints. The method was applied to the macular OCT scans of 12 patients (24 3-D composite image datasets) with unilateral anterior …
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Scholar articles
MK Garvin, MD Abràmoff, R Kardon, SR Russell, X Wu… - IEEE transactions on medical imaging, 2008