Ul Hassan Mahmood, Al-Awady Amin A, Ahmed Naeem, Saeed Muhammad, Alqahtani Jarallah, Alahmari Ali Mousa Mohamed, Javed Muhammad Wasim
Department of Computer Skills, Deanship of Preparatory Year, Najran University, Najran, 61441 Kingdom of Saudi Arabia.
Department of Computer Science, University of Engineering and Technology Taxila, Taxila, Pakistan.
Health Inf Sci Syst. 2024 Jun 11;12(1):36. doi: 10.1007/s13755-024-00293-8. eCollection 2024 Dec.
Ocular diseases pose significant challenges in timely diagnosis and effective treatment. Deep learning has emerged as a promising technique in medical image analysis, offering potential solutions for accurately detecting and classifying ocular diseases. In this research, we propose Ocular Net, a novel deep learning model for detecting and classifying ocular diseases, including Cataracts, Diabetic, Uveitis, and Glaucoma, using a large dataset of ocular images. The study utilized an image dataset comprising 6200 images of both eyes of patients. Specifically, 70% of these images (4000 images) were allocated for model training, while the remaining 30% (2200 images) were designated for testing purposes. The dataset contains images of five categories that include four diseases, and one normal category. The proposed model uses transfer learning, average pooling layers, Clipped Relu, Leaky Relu and various other layers to accurately detect the ocular diseases from images. Our approach involves training a novel Ocular Net model on diverse ocular images and evaluating its accuracy and performance metrics for disease detection. We also employ data augmentation techniques to improve model performance and mitigate overfitting. The proposed model is tested on different training and testing ratios with varied parameters. Additionally, we compare the performance of the Ocular Net with previous methods based on various evaluation parameters, assessing its potential for enhancing the accuracy and efficiency of ocular disease diagnosis. The results demonstrate that Ocular Net achieves 98.89% accuracy and 0.12% loss value in detecting and classifying ocular diseases by outperforming existing methods.
眼部疾病在及时诊断和有效治疗方面带来了重大挑战。深度学习已成为医学图像分析中一项很有前景的技术,为准确检测和分类眼部疾病提供了潜在的解决方案。在本研究中,我们提出了眼部网络(Ocular Net),这是一种用于检测和分类眼部疾病的新型深度学习模型,它使用大量眼部图像数据集来检测和分类包括白内障、糖尿病性眼病、葡萄膜炎和青光眼在内的眼部疾病。该研究使用了一个包含6200张患者双眼图像的图像数据集。具体而言,这些图像中的70%(4000张图像)被分配用于模型训练,而其余30%(2200张图像)则指定用于测试。该数据集包含五个类别的图像,其中包括四种疾病和一个正常类别。所提出的模型使用迁移学习、平均池化层、裁剪修正线性单元(Clipped Relu)、泄漏修正线性单元(Leaky Relu)和其他各种层来从图像中准确检测眼部疾病。我们的方法包括在各种眼部图像上训练一个新型的眼部网络模型,并评估其疾病检测的准确性和性能指标。我们还采用数据增强技术来提高模型性能并减轻过拟合。所提出的模型在不同的训练和测试比例以及不同参数下进行测试。此外,我们根据各种评估参数将眼部网络的性能与先前的方法进行比较,评估其提高眼部疾病诊断准确性和效率的潜力。结果表明,眼部网络在检测和分类眼部疾病方面通过优于现有方法实现了98.89%的准确率和0.12%的损失值。