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RDnet: Deep Learning-based model for the Identification of Retinal Detachment

Resource type
Authors/contributors
Title
RDnet: Deep Learning-based model for the Identification of Retinal Detachment
Abstract
Retinal Detachment (RD) is one of the major problems with retinal disorder patients. Till to date there existing no confirmatory sign or marker on retina for the early detection of RD. Therefore, patients may have sudden RD at any time of their life. Moreover, it is completely dependent upon the subjective judgement of ophthalmologist to make the final diagnostic decision on RD. To support the decision making process for the ophthalmologist, in this article we proposed RDNet, a SqueezeNet architecture based deep learning model for the early detection of RD. We used publicly available dataset of 1017 images covering rhegmatogenous RD and control group. The proposed model built on this image set achieved 97.55% sensitivity, 99.26% specificity and 98.23% accuracy in detecting RD. The proposed model outperformed the existing models for the same purpose with the highest area under the ROC curve (AUC) of 0.995. We believe our model will support the early detection of RD in clinical setup and assist the ophthalmologist in identifying RD at its early stage.
Proceedings Title
Proceedings of the 2024 7th International Conference on Healthcare Service Management
Publisher
Association for Computing Machinery
Place
New York, NY, USA
Date
March 10, 2025
Pages
1–6
Series
ICHSM '24
ISBN
979-8-4007-1016-2
Citation Key
islamRDnetDeepLearningbased2025
Accessed
2025-04-24
Short Title
RDnet
Library Catalog
ACM Digital Library
Citation
Islam, M. T., Hafruza, K., Musleh, S., Arif, M., & Alam, T. (2025). RDnet: Deep Learning-based model for the Identification of Retinal Detachment. Proceedings of the 2024 7th International Conference on Healthcare Service Management, ICHSM ’24, 1–6. https://doi.org/10.1145/3704239.3704243