Fetal, Infant and Ophthalmic Medical Image Analysis

  • Sun Q
  • Deng L
  • Liu J
  • et al.
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Abstract

We present a novel approach to automatically identify the corneal ulcer areas using fluorescein staining images. The proposed method is based on a deep convolutional neural network that labels each pixel in the corneal image as either ulcer area or non-ulcer area, which is essentially a two-class classification problem. Patch-based approach was employed; for every image pixel, a surrounding patch of size 19 × 19 was used to extract the RGB intensities to be used as features for training and testing. For the architecture of our deep network, there were four convolutional layers followed by three fully connected layers with dropout. The final classification was inferred from the probabilistic output from the network. The proposed approach has been validated on a total of 48 images using 5-fold cross-validation, with high segmentation accuracy established; the proposed method was found to be superior to both a baseline method (active contour) and another representative network method (VGG net). Our automated segmentation method had a mean Dice overlap of 0.86 when compared to the manually delineated gold standard as well as a strong and significant manual-vsautomatic correlation in terms of the ulcer area size (correlation coefficient = 0.9934, p-value = 6.3e-45). To the best of our knowledge, this is one of the first few works that have accurately tackled the corneal ulcer area segmentation challenge using deep neural network techniques.

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Sun, Q., Deng, L., Liu, J., Huang, H., Yuan, J., & Tang, X. (2017). Fetal, Infant and Ophthalmic Medical Image Analysis. (M. J. Cardoso, T. Arbel, A. Melbourne, H. Bogunovic, P. Moeskops, X. Chen, … T. Vercauteren, Eds.), Fetal, Infant and Ophthalmic Medical Image Analysis (Vol. 10554, pp. 42–51). Springer International Publishing. Retrieved from http://link.springer.com/10.1007/978-3-319-67561-9

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