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Deep Learning Approach For Detection Of Retinal Abnormalities Based On Color Fundus Images

机译:基于彩色眼底图像的视网膜异常检测深度学习方法

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In cases where people cannot access regular controls, treatment and care, delaying the diagnosis and treatment of eye diseases such as glaucoma, cataracts, diabetic retinopathy or leaving them to deteriorate unconsciously, may make daily life difficult and even cause blindness. Therefore, automatic examination of fundus photographs is important in terms of providing early diagnosis with fast, objective and consistent image evaluation and helping the application of large-scale scanning programs. This research uses Xception model with transfer learning method to classify images obtained from Akdeniz University Hospital Eye Diseases Department. During the analysis, the Xception model containing 50 different parameter combinations was trained by scanning the appropriate hyper-parameter space for the model. Comparisons were made for the top 9 models with the highest performance. The 4th model reached the highest accuracy rate with 91.39% for the training set, and as for the validation set, the 0th model showed 82.5% of accuracy. In addition, in order to test the performance of the model with an independent data set, open access fundus images were used for test analysis and binary classification AUC (Area Under Curve) values were calculated for 21 different diseases.
机译:如果人们无法进行常规的控制,治疗和护理,可能会延误对青光眼,白内障,糖尿病性视网膜病等眼部疾病的诊断和治疗,或者使它们不自觉地恶化,可能会使日常生活变得困难,甚至导致失明。因此,对眼底照片进行自动检查对于为早期诊断提供快速,客观和一致的图像评估以及帮助大规模扫描程序的应用而言非常重要。本研究使用带有转移学习方法的Xception模型对从阿克德尼兹大学医院眼病科获得的图像进行分类。在分析期间,通过扫描模型的适当超参数空间来训练包含50个不同参数组合的Xception模型。对性能最高的前9个型号进行了比较。第四模型达到了最高的准确率,训练集达到了91.39%,而对于验证集,第零模型显示出了82.5%的准确率。此外,为了使用独立的数据集测试模型的性能,使用开放式眼底图像进行测试分析,并针对21种不同疾病计算了二元分类AUC(曲线下面积)值。

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