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Automated Diabetic Retinopathy Screening With Montage Fundus Images

机译:用蒙太奇眼底图像筛选自动糖尿病视网膜病变

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Diabetic retinopathy (DR), also known as diabetic eye disease is one of the major causes of blindness in the active population. The longer a person has diabetes, higher the chances of developing DR. This research paper is an attempt towards finding an automatic way to staging DR using montage eye images through artificial intelligence (AI). Convolutional neural networks (CNNs) play a big role in DR detection. Using transfer learning and hyper-parameter tuning DR staging is analyzed through different models. VGG16 gave the highest classification accuracies for the stages Proliferative DR (PDR) & Non-proliferative DR (NPDR). The highest level of NPDR is severe DR which achieved 94.9% classification accuracy (CA) & special features like cotton wool & laser treatment performed at 83.3% CA for each. Moreover, by using patient's history data such as age, right eye & left eye value accuracies & diabetic diagnosed year, system can predict the DR stages. That predictive model has achieved the best CA of 94 % by using Xgboost classifier. Overall, a fully functional app has been developed to detect DR stages with Montage Fundus images using AI.
机译:糖尿病视网膜病(DR),又称糖尿病眼病是活性人群失明的主要原因之一。一个人患糖尿病的时间越长,开发博士的机会就越高。本研究论文是一种尝试通过人工智能(AI)使用蒙太奇眼睛图像来寻找自动化博士。卷积神经网络(CNNS)在DR检测中发挥着重要作用。使用传输学习和超参数调整DR分段通过不同的模型分析。 VGG16为阶段增殖博士(PDR)和非增殖博士(NPDR)提供了最高的分类准确性。最高水平的NPDR是严重的DR,可达到94.9%的分类精度(CA)和特殊功能,如棉绒和激光治疗,每次83.3%。此外,通过使用患者的历史数据,如年龄,右眼和左眼价值和糖尿病诊断年,系统可以预测DR阶段。通过使用XGBoost分类器,该预测模型已经实现了94%的最佳CA。总的来说,已经开发了一个全功能应用程序来使用AI使用蒙太奇眼底图像检测DR阶段。

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