Detection and Classification of Diabetic Retinopathy Using Inception V3 and Xception Architectures

V. Sathiya, B. Shenbagavalli, V. Nirupa, K. Subramani
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Abstract

Patients with diabetes usually develop a condition called diabetic retinopathy (DR), resulting from retinal damage. This impairment usually happens when the glucose levels in the blood are elevated, finally causing a blockage in the blood vessels that feed a part of the eye called the retina and finally severing it from the blood supply. Therefore, the eye attempts to produce fresh blood cells. But these cells are either poorly developed or weak. So, it can be leaked out easily. Hence, to lessen the severe effects of this disease, these patients must be diagnosed as soon as possible. Earlier, a number of approaches were put forth to recognise this illness using machine learning algorithms, image processing, and other techniques. The diagnosis process of this disease involves pre-processing of coloured images of the fundus, extraction of clinical features and classification of retinopathy. In this research, fundus photography of the retina is utilised to accelerate the detection of various kinds of retinopathy caused by diabetes based on convolutional neural network (CNN) pre-trained transfer learning algorithm. Inception V3 and Xception are used in this model to determine and categorise diabetic retinopathy, respectively. As a result, people with this disease can lower their risk of exposure to permanent blindness.
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使用 Inception V3 和 Xception 架构检测和分类糖尿病视网膜病变
糖尿病患者通常会出现一种叫做糖尿病视网膜病变(DR)的病症,由视网膜损伤引起。这种损害通常发生在血液中葡萄糖水平升高时,最终导致为眼睛视网膜部分供血的血管堵塞,并最终切断其血液供应。因此,眼睛会试图制造新鲜的血细胞。但这些细胞要么发育不良,要么很脆弱。因此,它很容易泄漏出来。因此,为了减轻这种疾病的严重影响,必须尽快对这些患者进行诊断。早些时候,人们提出了许多利用机器学习算法、图像处理和其他技术来识别这种疾病的方法。这种疾病的诊断过程包括眼底彩色图像的预处理、临床特征的提取和视网膜病变的分类。在这项研究中,基于卷积神经网络(CNN)预训练的迁移学习算法,利用视网膜眼底摄影加速检测糖尿病引起的各种视网膜病变。该模型使用 Inception V3 和 Xception 分别对糖尿病视网膜病变进行判断和分类。因此,患有这种疾病的人可以降低永久失明的风险。
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CiteScore
0.80
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0.00%
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1
期刊介绍: The International Journal of Nutrition, Pharmacology, Neurological Diseases (IJNPND) is an international, open access, peer reviewed journal which covers all fields related to nutrition, pharmacology, neurological diseases. IJNPND was started by Dr. Mohamed Essa based on his personal interest in Science in 2009. This journal doesn’t link with any society or any association. The co-editor-in chiefs of IJNPND (Prof. Gilles J. Guillemin, Dr. Abdur Rahman and Prof. Ross grant) and editorial board members are well known figures in the fields of Nutrition, pharmacology, and neuroscience. First, the journal was started as two issues per year, then it was changed into 3 issues per year and since 2013, it publishes 4 issues per year till now. This shows the slow and steady growth of this journal. To support the reviewers and editorial board members, IJNPND offers awards to the people who does more reviews within one year. The International Journal of Nutrition, Pharmacology, Neurological Diseases (IJNPND) is published Quarterly. IJNPND has three main sections, such as nutrition, pharmacology, and neurological diseases. IJNPND publishes Research Papers, Review Articles, Commentaries, case reports, brief communications and Correspondence in all three sections. Reviews and Commentaries are normally commissioned by the journal, but consideration will be given to unsolicited contributions. International Journal of Nutrition, Pharmacology, Neurological Diseases is included in the UGC-India Approved list of journals.
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