Smart grading of diabetic retinopathy: an intelligent recommendation-based fine-tuned EfficientNetB0 framework

Vatsala Anand, Deepika Koundal, Wael Y. Alghamdi, Bayan M. Alsharbi
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Abstract

Diabetic retinopathy is a condition that affects the retina and causes vision loss due to blood vessel destruction. The retina is the layer of the eye responsible for visual processing and nerve signaling. Diabetic retinopathy causes vision loss, floaters, and sometimes blindness; however, it often shows no warning signals in the early stages. Deep learning-based techniques have emerged as viable options for automated illness classification as large-scale medical imaging datasets have become more widely available. To adapt to medical image analysis tasks, transfer learning makes use of pre-trained models to extract high-level characteristics from natural images. In this research, an intelligent recommendation-based fine-tuned EfficientNetB0 model has been proposed for quick and precise assessment for the diagnosis of diabetic retinopathy from fundus images, which will help ophthalmologists in early diagnosis and detection. The proposed EfficientNetB0 model is compared with three transfer learning-based models, namely, ResNet152, VGG16, and DenseNet169. The experimental work is carried out using publicly available datasets from Kaggle consisting of 3,200 fundus images. Out of all the transfer learning models, the EfficientNetB0 model has outperformed with an accuracy of 0.91, followed by DenseNet169 with an accuracy of 0.90. In comparison to other approaches, the proposed intelligent recommendation-based fine-tuned EfficientNetB0 approach delivers state-of-the-art performance on the accuracy, recall, precision, and F1-score criteria. The system aims to assist ophthalmologists in early detection, potentially alleviating the burden on healthcare units.
糖尿病视网膜病变的智能分级:基于智能推荐的微调 EfficientNetB0 框架
糖尿病视网膜病变是一种影响视网膜的疾病,会因血管破坏而导致视力下降。视网膜是眼睛中负责视觉处理和神经信号传递的一层。糖尿病视网膜病变会导致视力下降、浮肿,有时甚至失明;然而,它在早期阶段往往没有任何预警信号。随着大规模医学影像数据集的普及,基于深度学习的技术已成为自动疾病分类的可行选择。为了适应医学图像分析任务,迁移学习利用预先训练好的模型从自然图像中提取高级特征。本研究提出了一种基于智能推荐的微调 EfficientNetB0 模型,用于从眼底图像中快速、精确地评估糖尿病视网膜病变的诊断,帮助眼科医生进行早期诊断和检测。将所提出的 EfficientNetB0 模型与三种基于迁移学习的模型(即 ResNet152、VGG16 和 DenseNet169)进行了比较。实验使用了 Kaggle 公开提供的包含 3200 张眼底图像的数据集。在所有迁移学习模型中,EfficientNetB0 模型的准确率为 0.91,DenseNet169 紧随其后,准确率为 0.90。与其他方法相比,所提出的基于智能推荐的微调 EfficientNetB0 方法在准确率、召回率、精确度和 F1 分数标准方面都达到了最先进的水平。该系统旨在协助眼科医生进行早期检测,从而减轻医疗单位的负担。
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