白内障
青光眼
糖尿病性视网膜病变
黄斑变性
人工智能
深度学习
计算机科学
特征提取
医学
疾病
失明
验光服务
眼病
眼科
糖尿病
病理
内分泌学
作者
Rashid Amin,Adeel Ahmed,Syed Shabih Hasan,Habib Akbar
标识
DOI:10.33897/fujeas.v3i2.689
摘要
Human eyes are susceptible to various abnormalities due to aging, trauma, and diseases like diabetes. Glaucoma, cataracts, macular degeneration, and diabetic retinopathy are the leading causes of blindness worldwide. It is crucial to detect and diagnose these eye diseases early to provide timely treatment and prevent vision loss. Multiple eye disease detection through the analysis of medical images can aid in this process. The steps involved in the detection of multiple eye diseases using deep learning include image acquisition, region of interest extraction, feature extraction, and disease classification or detection. In this study, we proposed a model using deep learning algorithms, ResNetand VGG16, to detect eye diseases such as uveitis, glaucoma, crossed eyes, bulging eyes, and cataracts. We achieved a 92% accuracy rate using ResNet50 and 79% accuracy using the VGG16 model. By automating the detection process, we can save time for doctors and increase the accuracy and detection rate. The proposed model can be integrated into the healthcare system to assist in early diagnosis and effective treatment of eye diseases.
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