School of Computer Science and Engineering, Nanyang Technological University, Singapore, 639798, Singapore.
Department of Electronics and Electrical Communications Engineering, Ministry of Higher Education Pyramids Higher Institute (PHI) for Engineering and Technology, 6th of October, 12566, Egypt.
Comput Biol Med. 2024 Feb;169:107834. doi: 10.1016/j.compbiomed.2023.107834. Epub 2023 Dec 11.
Diabetic retinopathy (DR) is a significant cause of vision impairment, emphasizing the critical need for early detection and timely intervention to avert visual deterioration. Diagnosing DR is inherently complex, as it necessitates the meticulous examination of intricate retinal images by experienced specialists. This makes the early diagnosis of DR essential for effective treatment and prevention of eventual blindness. Traditional diagnostic methods, relying on human interpretation of medical images, face challenges in terms of accuracy and efficiency. In the present research, we introduce a novel method that offers superior precision in DR diagnosis, compared to traditional methods, by employing advanced deep learning techniques. Central to this approach is the concept of transfer learning. This entails the utilization of pre-existing, well-established models, specifically InceptionResNetv2 and Inceptionv3, to extract features and fine-tune selected layers to cater to the unique requirements of this specific diagnostic task. Concurrently, we also present a newly devised model, DiaCNN, which is tailored for the classification of eye diseases. To prove the efficacy of the proposed methodology, we leveraged the Ocular Disease Intelligent Recognition (ODIR) dataset, which comprises eight different eye disease categories. The results are promising. The InceptionResNetv2 model, incorporating transfer learning, registered an impressive 97.5% accuracy in both the training and testing phases. Its counterpart, the Inceptionv3 model, achieved an even more commendable 99.7% accuracy during training, and 97.5% during testing. Remarkably, the DiaCNN model showcased unparalleled precision, achieving 100% accuracy in training and 98.3% in testing. These figures represent a significant leap in classification accuracy when juxtaposed with existing state-of-the-art diagnostic methods. Such advancements hold immense promise for the future, emphasizing the potential of our proposed technique to revolutionize the accuracy of DR and other eye disease diagnoses. By facilitating earlier detection and more timely interventions, this approach stands poised to significantly reduce the incidence of blindness associated with DR, thus heralding a new era of improved patient outcomes. Therefore, this work, through its novel approach and stellar results, not only pushes the boundaries of DR diagnostic accuracy but also promises a transformative impact in early detection and intervention, aiming to substantially diminish DR-induced blindness and champion enhanced patient care.
糖尿病视网膜病变(DR)是导致视力损害的主要原因,这强调了早期发现和及时干预以避免视力恶化的重要性。诊断 DR 本身就很复杂,因为它需要经验丰富的专家仔细检查复杂的视网膜图像。这使得早期诊断 DR 对于有效治疗和预防最终失明至关重要。传统的诊断方法依赖于医学图像的人工解释,在准确性和效率方面都面临挑战。在本研究中,我们引入了一种新方法,该方法通过使用先进的深度学习技术,在 DR 诊断方面提供了比传统方法更高的精度。这种方法的核心是迁移学习的概念。这涉及到利用预先存在的、成熟的模型,特别是 InceptionResNetv2 和 Inceptionv3,来提取特征并微调选定的层,以满足这一特定诊断任务的独特需求。同时,我们还提出了一种新的模型 DiaCNN,它是专门为眼病分类设计的。为了证明所提出方法的有效性,我们利用了包含八种不同眼病类别的 Ocular Disease Intelligent Recognition (ODIR) 数据集。结果是有希望的。结合迁移学习的 InceptionResNetv2 模型在训练和测试阶段的准确率分别达到了 97.5%。其对应的 Inceptionv3 模型在训练阶段的准确率甚至更令人钦佩,达到了 99.7%,在测试阶段的准确率为 97.5%。值得注意的是,DiaCNN 模型表现出了无与伦比的精度,在训练阶段的准确率达到了 100%,在测试阶段的准确率为 98.3%。与现有的最先进的诊断方法相比,这些数字代表了分类准确性的重大飞跃。这些进展为未来带来了巨大的希望,强调了我们提出的技术在提高 DR 和其他眼病诊断准确性方面的潜力。通过促进早期发现和更及时的干预,这种方法有望显著降低与 DR 相关的失明发生率,从而迎来改善患者预后的新时代。因此,这项工作通过其新颖的方法和出色的结果,不仅推动了 DR 诊断准确性的边界,而且有望在早期检测和干预方面产生变革性的影响,旨在大幅减少 DR 引起的失明,并倡导改善患者护理。