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On Automatic Detection of Central Serous Chorioretinopathy and Central Exudative Chorioretinopathy in Fundus Images

机译:论眼底图像中中央浆液性胆大学病变和中央渗出性胆大学病的自动检测

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Automatic detection of chorioretinopathy plays an important role in clinical practice, but the detection of a major chorioretinopathy of central serous chorioretinopathy based on fundus photography images has rarely been studied, let alone distinguishing it from another chorioretinopathy of central exudative chorioretinopathy. Due to the high degree of similarity between the two chorioretinopathies on fundus images, it is difficult for the latest automatic methods to accurately distinguish between them. In this study, we design a deep neural network with two branches for different classification tasks, where the first one is to distinguish the normal and abnormal while the other is to classify the two chorioretinopathies. We manage to improve the classification accuracy by combining focal loss and discriminative loss. Extensive experiments are conducted for comparison between our method and other universal classification models using a private retinal fundus dataset. The results demonstrate that our method achieves the best performance with 97.69%, 99.58% and 98.87% on the accuracy, precision and sensitivity, respectively.
机译:自动检测胆管肌病在临床实践中起着重要作用,但是在基于眼底拍摄图像的基础上的中枢性浆液性胆小病虫病的主要肺动术病变的检测很少,更不用说将其与中央渗出性胆大学病变的另一种胆大学病变区分开。由于眼底图像上的两种核心诊断之间的高度相似,最新的自动方法很难准确区分它们。在这项研究中,我们设计了一个具有两个分支的深神经网络,用于不同的分类任务,其中第一个是区分正常和异常,而另一个是分类两个核心胰蛋白病。我们通过组合焦损和歧视性损失来设法提高分类准确性。进行广泛的实验,用于使用私人视网膜基底数据集进行我们的方法和其他通用分类模型。结果表明,我们的方法分别实现了97.69%,99.58%和98.87%的最佳性能,分别为准确性,精度和灵敏度。

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