Advancements in Ophthalmic Healthcare with Deep Learning-Driven Segmentation for Multi-Stage Eye Fundus Disease Diagnosis

Amritha Lakshmi, Meghna, Mukesh Raj, Mrs. U Vijayalakshmi
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Abstract

The global rise in eye diseases highlights the need for advanced diagnostic tools in ophthalmic care. This project introduces a deep learning model for classifying eye diseases, streamlining diagnosis, and improving accuracy. Using real-time images from reputable healthcare facilities like Bajwa Hospital in Punjab and Shang gong Medical Tech in China, the model is fine-tuned to clinical nuances. Segmentation of the optic disc and blood vessels is key for precise retinal structure delineation, enhancing disease identification. Various CNN models, including Mobile Net, Dense Net, Reset, and a custom CNN, were utilized for retinal image analysis. Additionally, the Vision Transformer (ViT) model was integrated to capture intricate patterns. The model is deployed as a web application using Django, HTML, SQLite, and Bootstrap, featuring a secure, user-friendly interface. Users can input images to receive prompt disease predictions, along with verified information on prevention, treatment options, and medications. This system not only automates and improves diagnostic processes but also provides reliable medical guidance.
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利用深度学习驱动的眼底疾病多阶段诊断分割技术,推动眼科医疗保健的发展
全球眼科疾病的增加凸显了眼科护理对先进诊断工具的需求。该项目引入了一种深度学习模型,用于眼病分类、简化诊断和提高准确性。利用来自旁遮普省巴杰瓦医院和中国上工医疗科技公司等知名医疗机构的实时图像,该模型可根据临床细微差别进行微调。视盘和血管的分割是精确划分视网膜结构、提高疾病识别能力的关键。在视网膜图像分析中使用了多种 CNN 模型,包括移动网络、密集网络、重置和定制 CNN。此外,还集成了视觉变换器(ViT)模型,以捕捉复杂的图案。该模型以网络应用程序的形式部署,使用了 Django、HTML、SQLite 和 Bootstrap,具有安全、用户友好的界面。用户可以输入图像,获得及时的疾病预测,以及经过验证的预防、治疗方案和药物信息。该系统不仅能自动化和改进诊断流程,还能提供可靠的医疗指导。
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