Application of Deep Learning Methods in a Moroccan Ophthalmic Center: Analysis and Discussion

Author:

Farahat Zineb12,Zrira Nabila1,Souissi Nissrine1ORCID,Benamar Safia34,Belmekki Mohammed34,Ngote Mohamed Nabil14,Megdiche Kawtar2

Affiliation:

1. LISTD Laboratory, Ecole Nationale Supérieure des Mines de Rabat, Rabat 10000, Morocco

2. Cheikh Zaïd Foundation Medical Simulation Center, Rabat 10000, Morocco

3. Cheikh Zaïd Ophthalmic Center, Cheikh Zaïd International University Hospital, Rabat 10000, Morocco

4. Institut Supérieur d’Ingénierie et Technologies de Santé/Faculté de Médecine Abulcasis, Université Internationale Abulcasis des Sciences de la Santé, Rabat 10000, Morocco

Abstract

Diabetic retinopathy (DR) remains one of the world’s frequent eye illnesses, leading to vision loss among working-aged individuals. Hemorrhages and exudates are examples of signs of DR. However, artificial intelligence (AI), particularly deep learning (DL), is poised to impact nearly every aspect of human life and gradually transform medical practice. Insight into the condition of the retina is becoming more accessible thanks to major advancements in diagnostic technology. AI approaches can be used to assess lots of morphological datasets derived from digital images in a rapid and noninvasive manner. Computer-aided diagnosis tools for automatic detection of DR early-stage signs will ease the pressure on clinicians. In this work, we apply two methods to the color fundus images taken on-site at the Cheikh Zaïd Foundation’s Ophthalmic Center in Rabat to detect both exudates and hemorrhages. First, we apply the U-Net method to segment exudates and hemorrhages into red and green colors, respectively. Second, the You Look Only Once Version 5 (YOLOv5) method identifies the presence of hemorrhages and exudates in an image and predicts a probability for each bounding box. The segmentation proposed method obtained a specificity of 85%, a sensitivity of 85%, and a Dice score of 85%. The detection software successfully detected 100% of diabetic retinopathy signs, the expert doctor detected 99% of DR signs, and the resident doctor detected 84%.

Publisher

MDPI AG

Subject

Clinical Biochemistry

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