使用机器学习模式检测和检查糖尿病视网膜病变

S. Sandhya, A. Suhasini, Mukul Kumar
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引用次数: 0

摘要

糖尿病视网膜病变是一种旁路感染和糖尿病混淆,影响眼睛。它是由眼睛后部(视网膜)的轻触组织的静脉受到伤害引起的。糖尿病患者的庞大群体及其巨大的筛查需求,激发了人们对PC支持的、完全程序化的DR发现的热情。早期发现DR对于DR的诊断和治疗至关重要,这导致了对DR相关异常特征的大量研究,如微动脉瘤、出血、硬渗出物等。目前使用的大多数分类技术增加了筛选时间、人为误差、复杂性和准确性。该方法包括特征提取、增强和使用CNN计算准确率。该模型使用Conda、Tensorflow和利用Messidor数据集的Keras框架实现。
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Detection and Scrutiny of Diabetic Retinopathy Using Machine Learning Modus
Diabetic retinopathy is a bypassed infection and a diabetes confusion that influences eyes. It's brought about by harm to the veins of the light-touchy tissue at the rear of the eye (retina). The tremendous populace of diabetic patients and their huge screening necessities have brought forth enthusiasm for PC supported and totally programmed discovery of DR. Early detection of DR is critical for diagnosis and treatment of DR, which has led to a great deal of research towards the research of abnormal features related to DR that can be microneurysms, haemorrhages, hard exudates, etc. Most of the currently used classification techniques increases screening time, human error, complexity and reduce the accuracy. The proposed method involves feature extraction, augmentation and calculation of accuracy using CNN. The proposed model is implemented using Conda, along with Tensorflow and Keras Framework utilizing the Messidor dataset.
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