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An Automatic Algorithm for Segmentation of the Boundaries of Corneal Layers in Optical Coherence Tomography Images Using Gaussian Mixture Model Publisher



Jahromi MK1 ; Kafieh R1 ; Rabbani H1 ; Dehnavi AM1 ; Peyman A2 ; Hajizadeh F3 ; Ommani M1
Authors
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Authors Affiliations
  1. 1. Department of Advanced Medical Technologies, Medical Image and Signal Processing Research Center, Isfahan University of Medical Sciences, Isfahan, Iran
  2. 2. Department of Ophthalmology, Isfahan University of Medical Sciences and Health Services, Isfahan, Iran
  3. 3. Noor Ophthalmology Research Center, Noor Eye Hospital, Tehran, Iran

Source: Journal of Medical Signals and Sensors Published:2014


Abstract

Diagnosis of corneal diseases is possible by measuring and evaluation of corneal thickness in different layers. Thus, the need for precise segmentation of corneal layer boundaries is inevitable. Obviously, manual segmentation is timeconsuming and imprecise. In this paper, the Gaussian mixture model (GMM) is used for automatic segmentation of three clinically important corneal boundaries on optical coherence tomography (OCT) images. For this purpose, we apply the GMM method in two consequent steps. In the first step, the GMM is applied on the original image to localize the first and the last boundaries. In the next step, gradient response of a contrast enhanced version of the image is fed into another GMM algorithm to obtain a more clear result around the second boundary. Finally, the first boundary is traced toward down to localize the exact location of the second boundary. We tested the performance of the algorithm on images taken from a Heidelberg OCT imaging system. To evaluate our approach, the automatic boundary results are compared with the boundaries that have been segmented manually by two corneal specialists. The quantitative results show that the proposed method segments the desired boundaries with a great accuracy. Unsigned mean errors between the results of the proposed method and the manual segmentation are 0.332, 0.421, and 0.795 for detection of epithelium, Bowman, and endothelium boundaries, respectively. Unsigned mean errors of the interobserver between two corneal specialists have also a comparable unsigned value of 0.330, 0.398, and 0.534, respectively.
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