The adoption of Deep Learning (DL) algorithms into the practice of ophthalmology could play an important role in screening and diagnosis of eye diseases in the coming years. In particular, DL tools interpreting ocular data derived from low-cost devices, as a fundus camera, could support massive screening also in resource limited countries. This paper explores a fully automatic method supporting the diagnosis of the Retinitis Pigmentosa by means of the segmentation of pigment signs in retinal fundus images. The proposed approach relies on an U-Net based deep convolutional network. At the present, this is the first approach for pigment signs segmentation in retinal fundus images that is not dependent on hand-crafted features, but automatically learns a hierarchy of increasingly complex features directly from data. We assess the performance by training the model on the public dataset RIPS and comparisons with the state of the art have been considered in accordance with approaches working on the same dataset. The experimental results show an improvement of 15% in F-measure score.

Segmentation of pigment signs in fundus images for retinitis pigmentosa analysis by using deep learning

Simonelli F.
2019

Abstract

The adoption of Deep Learning (DL) algorithms into the practice of ophthalmology could play an important role in screening and diagnosis of eye diseases in the coming years. In particular, DL tools interpreting ocular data derived from low-cost devices, as a fundus camera, could support massive screening also in resource limited countries. This paper explores a fully automatic method supporting the diagnosis of the Retinitis Pigmentosa by means of the segmentation of pigment signs in retinal fundus images. The proposed approach relies on an U-Net based deep convolutional network. At the present, this is the first approach for pigment signs segmentation in retinal fundus images that is not dependent on hand-crafted features, but automatically learns a hierarchy of increasingly complex features directly from data. We assess the performance by training the model on the public dataset RIPS and comparisons with the state of the art have been considered in accordance with approaches working on the same dataset. The experimental results show an improvement of 15% in F-measure score.
2019
Brancati, N.; Frucci, M.; Riccio, D.; Di Perna, L.; Simonelli, F.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11591/421927
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