VisionAI - Human Eye Fundus Screening System Based on AI Deep Learning Technology
DOI:
https://doi.org/10.47611/jsrhs.v12i1.4337Keywords:
artificial intelligence, convolutional neural network, fundus image, machine learning, ocular diseaseAbstract
The recent development in artificial intelligence contributed to the utilization of information and communication technologies in medical fields. In ophthalmology, the fundus photograph decoding technology is receiving wider attentions as it can easily detect the retinal disorders without having to embrace side effects or inconveniences that follow with pupil dilation test. As AI-based diagnostic technologies can effectively discover disorders in optic nerves, optic layers in retina, retinal vessels, it can be useful in early detection and health checks. This study therefore develops a model which classifies and analyzes 24,000 fundus photographs into four categories (normal, cataract, glaucoma, diabetic retinopathy) based on diagnostic data. The model is further realized into a website which will contribute to effective diagnoses of fundus diseases. Convolutional neural network (CNN, specialized in image processing) is applied as a learning model and EfficientNet was used to configure the network. Hyperparameter optimization was used for tuning, and the developed model is later realized as a public webpage. For the enhancement of performance, this model would necessitate extensive datasets and more intricate classifications of fundus diseases through the collaborative research with medical institutions. The author anticipates more prompt diagnosis and treatment for patients with reduced accessibility and quicker diagnosis for medical professionals.
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Hyung-Gon Yoo, Fundus Examination, Seoul National University School of Medicine, Ophthalmology Seminar
Kaur, Palwinder (2022), “Bajwa Hospital (Multi Eye Disease Dataset)”, Mendeley Data, V3, doi: 10.17632/rgwpd4m785.3
“Peking university international competition on ocular disease intelligent recognition (odir-2019),” https://odir2019.grandchallenge.org/
Eyepacs, LLC. (n.d.). Eyepacs. Retrieved Feb 21,2017, from http://www.eyepacs.com/eyepacssystem/
Li, T., Gao, Y., Wang, K., Guo, S., Liu, H., Kang, H. (2019): Diagnostic assessment of deep learning algorithms for diabetic retinopathy screening. Information Sciences 501, 511–522.
Ahmed Almazroa, Sami Alodhayb, Essameldin Osman, Eslam Ramadan, Mohammed Hummadi, Mohammed Dlaim, Muhannad Alkatee, Kaamran Raahemifar, Vasudevan Lakshminarayanan (2018), “Retinal fundus images for glaucoma analysis: the RIGA dataset”, Proc. SPIE 10579, Medical Imaging 2018: Imaging Informatics for Healthcare, Research, and Applications, 105790B (6 March 2018); https://doi.org/10.1117/12.2293584
Huazhu Fu, Fei Li, José Ignacio Orlando, Hrvoje Bogunović, Xu Sun, Jingan Liao, Yanwu Xu, Shaochong Zhang, Xiulan Zhang. REFUGE: Retinal Fundus Glaucoma Challenge. IEEE Dataport. (2019) https://dx.doi.org/10.21227/tz6e-r977
Sa'idah, Sofia; Magdalena, Rita; Nur Fuadah, Yunendah, 2022, “Immature Cataract Fundus Images”, https://doi.org/10.34820/FK2/CDWESA, Telkom University Dataverse, V1
Tan, Mingxing, and Quoc Le. “Efficientnet: Rethinking model scaling for convolutional neural networks.” International conference on machine learning. PMLR, 2019. https://doi.org/10.48550/arXiv.1905.11946
Sandler, Mark, et al. “Mobilenetv2: Inverted residuals and linear bottlenecks.” Proceedings of the IEEE conference on computer vision and pattern recognition. 2018 https://arxiv.org/abs/1801.04381
Park & Baek (2022), AI-Based Cataract Detection Platform Development. Journal of Platform Technology, vol.10, no., pp.1725. DOI: 10.23023/JPT.2021.10.1.017
Lee, H. D. & Kim, J. S. & Kwon, Y. H. & Kim, Y. K (2019), Classification of ROP Using Deep Learning. The Journal of Korean Institute of Information Technology (JKIIT), vol.17, no.10, pp. 17-24. DOI: 10.14801/jkiit.2019.17.10.
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