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Machine Learning-based Diabetic Retinopathy Early Detection and Classification Systems- A Survey

机译:基于机器学习的糖尿病视网膜病变早期检测和分类系统 - 调查

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Diabetes Mellitus is a chronic disease that spreads quickly worldwide. It results from increasing the blood glucose level and causes complications in the heart, kidney, and eyes. Diabetic Retinopathy (DR) is an eye disease that refers to the bursting of blood vessels in the retina as Diabetes exacerbates. It is considered the main reason for blindness because it appears without showing any symptoms in the primitive stages. Earlier detection and classification of DR cases is a crucial step toward providing the necessary medical treatment. Recently, machine learning plays an efficient role in medical applications and computer-aided diagnosis due to the accelerated development in its algorithms. In this paper, we aim to study the performance of various machine learning algorithms-based DR detection and classification systems. These systems are trained and tested using massive amounts of retina fundus and thermal images from various publicly available datasets. These systems proved their success in tracking down the warning signs and identifying the DR severity level. The reviewed systems' results indicate that ResNet50 deep convolutional neural network was the most effective algorithm for performance metrics. The Resnet50 contains a set of feature extraction kernels that can analyze retina images to extract wealth information. We conclude that machine learning algorithms can support the physician in adopting appropriate diagnoses and treating DR cases.
机译:糖尿病是一种慢性疾病,迅速蔓延到全世界。它因增加血糖水平而导致心脏,肾脏和眼中的并发症。糖尿病视网膜病变(DR)是一种眼部疾病,指的是视网膜中血管的损伤,因为糖尿病加剧了。它被认为是失明的主要原因,因为它出现而不显示原始阶段中的任何症状。博士病例的早期检测和分类是提供必要的医疗的重要步骤。最近,由于其算法的加速开发,机器学习在医疗应用和计算机辅助诊断中起着有效的作用。在本文中,我们的目的是研究各种机器学习算法的DR检测和分类系统的性能。使用来自各种公共数据集的大量视网膜眼底和热图像进行培训和测试这些系统。这些系统在跟踪警告标志并识别DR严重程度时证明了他们的成功。综述系统的结果表明,Reset50深度卷积神经网络是最有效的性能度量算法。 resnet50包含一组特征提取内核,可以分析视网膜图像以提取财富信息。我们得出结论,机器学习算法可以支持医生采用适当的诊断和治疗DR病例。

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