Investigative Ophthalmology & Visual Science Cover Image for Volume 61, Issue 7
June 2020
Volume 61, Issue 7
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ARVO Annual Meeting Abstract  |   June 2020
Segmentation of Optic Nerve images for glaucoma detection, using U-Net Deep Learning Model
Author Affiliations & Notes
  • Sandra Belalcazar
    Fundacion Oftalmologica Nacional, Bogota, Colombia
  • Francisco Rodriguez
    Fundacion Oftalmologica Nacional, Bogota, Colombia
  • Shirley Rosensthiel
    Fundacion Oftalmologica Nacional, Bogota, Colombia
  • Claudia Carvajal
    Fundacion Oftalmologica Nacional, Bogota, Colombia
  • Oscar Perdomo
    Universidad del Rosario, Bogota, Colombia
  • Vanessa Carpio-Rosso
    Fundacion Oftalmologica Nacional, Bogota, Colombia
  • Footnotes
    Commercial Relationships   Sandra Belalcazar, None; Francisco Rodriguez, None; Shirley Rosensthiel, None; Claudia Carvajal, None; Oscar Perdomo, None; Vanessa Carpio-Rosso, None
  • Footnotes
    Support  None
Investigative Ophthalmology & Visual Science June 2020, Vol.61, 4547. doi:
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      Sandra Belalcazar, Francisco Rodriguez, Shirley Rosensthiel, Claudia Carvajal, Oscar Perdomo, Vanessa Carpio-Rosso; Segmentation of Optic Nerve images for glaucoma detection, using U-Net Deep Learning Model. Invest. Ophthalmol. Vis. Sci. 2020;61(7):4547.

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      © ARVO (1962-2015); The Authors (2016-present)

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Abstract

Purpose : To evaluate de U-Net Deep Learning ((Convolutional Networks for Biomedical Image Segmentation) for automatic segmentation of optic disc and their disc cupping using eye fundus images.

Methods : The training of the Deep Learning model was performed using 209 eye fundus pictures of glaucomatous optic nerves and healthy optic nerves. The Deep learning model was tested using 26 images which had been previously evaluated by a glaucoma specialist, who delineated the border of the optic nerve and the internal border of the rim using Labelbox tool.
Finally, the Jaccard coefficient was used to evaluate cuantitavely the accuracy of the model segmentating the image of the optic nerve and the cupping of the disc to detect glaucoma.

Results : The results of the evaluation show a Jaccard index of 0.82 for the segmentation of the optic disc and 0.72 for the segmentation of the disc cupping.

Conclusions : Although the results are aceptable, a study with a larger number of images is needed to determine the use of U-Net in the detection of glaucomatous optic nerves. U-Net model has shown good results with smaller samples compared to other Deep Learning models, which need larger samples.

This is a 2020 ARVO Annual Meeting abstract.

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