Hassan Saima, Alrajeh Nabil A, Mohammed Emad A, Khan Shafiullah
Institute of Computing, Kohat University of Science and Technology (KUST), Kohat City 24000, Pakistan.
Biomedical Technology Department, College of Applied Medical Sciences, King Saud University, P.O. Box 10219, Riyadh 1433, Saudi Arabia.
Biomimetics (Basel). 2023 Apr 30;8(2):187. doi: 10.3390/biomimetics8020187.
The medical and healthcare domains require automatic diagnosis systems (ADS) for the identification of health problems with technological advancements. Biomedical imaging is one of the techniques used in computer-aided diagnosis systems. Ophthalmologists examine fundus images (FI) to detect and classify stages of diabetic retinopathy (DR). DR is a chronic disease that appears in patients with long-term diabetes. Unattained patients can lead to severe conditions of DR, such as retinal eye detachments. Therefore, early detection and classification of DR are crucial to ward off advanced stages of DR and preserve the vision. Data diversity in an ensemble model refers to the use of multiple models trained on different subsets of data to improve the ensemble's overall performance. In the context of an ensemble model based on a convolutional neural network (CNN) for diabetic retinopathy, this could involve training multiple CNNs on various subsets of retinal images, including images from different patients or those captured using distinct imaging techniques. By combining the predictions of these multiple models, the ensemble model can potentially make more accurate predictions than a single prediction. In this paper, an ensemble model (EM) of three CNN models is proposed for limited and imbalanced DR data using data diversity. Detecting the Class 1 stage of DR is important to control this fatal disease in time. CNN-based EM is incorporated to classify the five classes of DR while giving attention to the early stage, i.e., Class 1. Furthermore, data diversity is created by applying various augmentation and generation techniques with affine transformation. Compared to the single model and other existing work, the proposed EM has achieved better multi-class classification accuracy, precision, sensitivity, and specificity of 91.06%, 91.00%, 95.01%, and 98.38%, respectively.
随着技术进步,医疗保健领域需要自动诊断系统(ADS)来识别健康问题。生物医学成像是计算机辅助诊断系统中使用的技术之一。眼科医生通过检查眼底图像(FI)来检测和分类糖尿病视网膜病变(DR)的阶段。DR是一种出现在长期糖尿病患者身上的慢性疾病。未得到治疗的患者可能会导致DR的严重情况,如视网膜脱离。因此,DR的早期检测和分类对于预防DR的晚期阶段和保护视力至关重要。集成模型中的数据多样性是指使用在不同数据子集上训练的多个模型来提高集成模型的整体性能。在基于卷积神经网络(CNN)的糖尿病视网膜病变集成模型的背景下,这可能涉及在各种视网膜图像子集上训练多个CNN,包括来自不同患者的图像或使用不同成像技术捕获的图像。通过组合这些多个模型的预测,集成模型可能比单个预测做出更准确的预测。本文提出了一种基于数据多样性的针对有限且不平衡的DR数据的由三个CNN模型组成的集成模型(EM)。检测DR的1级阶段对于及时控制这种致命疾病很重要。基于CNN的EM被用于对DR的五个类别进行分类,同时关注早期阶段,即1级。此外,通过应用各种具有仿射变换的增强和生成技术来创建数据多样性。与单个模型和其他现有工作相比,所提出的EM分别实现了更好的多类别分类准确率、精确率、灵敏度和特异性,分别为91.06%、91.00%、95.01%和98.38%。