Mayya Veena, S Sowmya Kamath, Kulkarni Uma, Surya Divyalakshmi Kaiyoor, Acharya U Rajendra
Healthcare Analytics and Language Engineering (HALE) Lab, Department of Information Technology, National Institute of Technology Karnataka, Surathkal, Mangalore 575025 India.
Department of Information, Communication Technology, Manipal Institute of Technology, Manipal Academy of Higher Education (MAHE), Manipal, 576104 Karnataka India.
Appl Intell (Dordr). 2023;53(2):1548-1566. doi: 10.1007/s10489-022-03490-8. Epub 2022 Apr 30.
Chronic Ocular Diseases (COD) such as myopia, diabetic retinopathy, age-related macular degeneration, glaucoma, and cataract can affect the eye and may even lead to severe vision impairment or blindness. According to a recent World Health Organization (WHO) report on vision, at least 2.2 billion individuals worldwide suffer from vision impairment. Often, overt signs indicative of COD do not manifest until the disease has progressed to an advanced stage. However, if COD is detected early, vision impairment can be avoided by early intervention and cost-effective treatment. Ophthalmologists are trained to detect COD by examining certain minute changes in the retina, such as microaneurysms, macular edema, hemorrhages, and alterations in the blood vessels. The range of eye conditions is diverse, and each of these conditions requires a unique patient-specific treatment. Convolutional neural networks (CNNs) have demonstrated significant potential in multi-disciplinary fields, including the detection of a variety of eye diseases. In this study, we combined several preprocessing approaches with convolutional neural networks to accurately detect COD in eye fundus images. To the best of our knowledge, this is the first work that provides a qualitative analysis of preprocessing approaches for COD classification using CNN models. Experimental results demonstrate that CNNs trained on the region of interest segmented images outperform the models trained on the original input images by a substantial margin. Additionally, an ensemble of three preprocessing techniques outperformed other state-of-the-art approaches by 30% and 3%, in terms of Kappa and scores, respectively. The developed prototype has been extensively tested and can be evaluated on more comprehensive COD datasets for deployment in the clinical setup.
近视、糖尿病视网膜病变、年龄相关性黄斑变性、青光眼和白内障等慢性眼病(COD)会影响眼睛,甚至可能导致严重的视力损害或失明。根据世界卫生组织(WHO)最近一份关于视力的报告,全球至少有22亿人患有视力损害。通常,COD的明显迹象直到疾病发展到晚期才会显现出来。然而,如果能早期发现COD,通过早期干预和具有成本效益的治疗就可以避免视力损害。眼科医生通过检查视网膜的某些微小变化,如微动脉瘤、黄斑水肿、出血和血管改变等来检测COD。眼部疾病的范围很广,每种疾病都需要针对特定患者进行独特的治疗。卷积神经网络(CNN)在包括多种眼部疾病检测在内的多学科领域已显示出巨大潜力。在本研究中,我们将几种预处理方法与卷积神经网络相结合,以准确检测眼底图像中的COD。据我们所知,这是第一项使用CNN模型对COD分类的预处理方法进行定性分析的工作。实验结果表明,在感兴趣区域分割图像上训练的CNN模型比在原始输入图像上训练的模型有显著优势。此外,三种预处理技术的组合在Kappa和 分数方面分别比其他现有方法高出30%和3%。所开发的原型已经过广泛测试,可以在更全面的COD数据集上进行评估,以便在临床环境中部署。