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A Deep Learning Based Diabetic Retinopathy Detection from Retinal Images

机译:视网膜图像的深度学习糖尿病视网膜病变检测

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Diabetes is increased tremendously due to metabolism. Lack of early detection, prolonged diabetics might lead to medical complications such as heart problems, eye vision problems, skin issues etc. Diabetic retinopathy (DR) is a frequent abnormality of diabetics. In this paper, we propose computer vision based technique to analyze and predict diabetes from the retinal input images. This helps in an early stage detection of DR. In this image processing steps such as pre-processing, segmentation, feature extraction steps are applied. After the image processing steps, machine learning based classification step is performed. For experimental results, we used python programming language for better results. For experimental results platform, we use jupyter for developing the coding. The framework developed was evaluated on open access public repository datasets, achieving an accuracy of 98.50% using CNN as compared to the accuracy of 87.40% achieved by SVM. These results perform better than several advanced unsupervised ML techniques. It results in decrease of procedural complexity and improved assessment metrics, hence making it suitable to be used in the diagnosis of DR using retinal image analysis.
机译:由于新陈代谢,糖尿病巨大增加。缺乏早期检测,延长的糖尿病患者可能导致心脏问题,眼睛视觉问题,皮肤问题等医疗并发症等糖尿病视网膜病变(DR)是糖尿病患者的常见异常。本文提出了基于计算机视觉的技术来分析和预测视网膜输入图像的糖尿病。这有助于博士的早期检测。在诸如预处理的图像处理步骤中,应用了分割,特征提取步骤。在图像处理步骤之后,执行基于机器学习的分类步骤。对于实验结果,我们使用Python编程语言以获得更好的结果。对于实验结果平台,我们使用Jupyter开发编码。在开放访问公共储存库数据集中评估了开发的框架,与SVM实现的87.40%的精度相比,使用CNN实现了98.50%的准确性。这些结果表现优于几种先进的无监督ML技术。它导致程序性复杂性和改进的评估度量的降低,因此适合使用视网膜图像分析的诊断。

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