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Sub-category Classifiers for Multiple-instance Learning and Its Application to Retinal Nerve Fiber Layer Visibility Classification

机译:多实例学习的子类别分类器及其在视网膜神经纤维层可见性分类中的应用

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We propose a novel multiple instance learning method to assess the visibility (visibleot visible) of the retinal nerve fiber layer (RNFL) in fundus camera images. Using only image-level labels, our approach learns to classify the images as well as to localize the RNFL visible regions. We transform the original feature space to a discriminative subspace, and learn a region-level classifier in that subspace. We propose a margin-based loss function to jointly learn this subspace and the region-level classifier. Experiments with a RNFL dataset containing 576 images annotated by two experienced ophthalmologists give an agreement (kappa values) of 0.65 and 0.58 respectively, with an inter-annotator agreement of 0.62. Note that our system gives higher agreements with the more experienced annotator. Comparative tests with three public datasets (MESSIDOR and DR for diabetic retinopathy, UCSB for breast cancer) show improved performance over the state-of-the-art.
机译:我们提出了一种新颖的多实例学习方法来评估眼底照相机图像中视网膜神经纤维层(RNFL)的可见性(可见/不可见)。仅使用图像级别的标签,我们的方法就可以对图像进行分类以及对RNFL可见区域进行定位。我们将原始特征空间转换为可区分的子空间,并在该子空间中学习区域级分类器。我们提出基于边际的损失函数,以共同学习该子空间和区域级分类器。 RNFL数据集包含由两位经验丰富的眼科医生注释的576张图像的实验得出的一致性(kappa值)分别为0.65和0.58,注释者之间的一致性为0.62。请注意,我们的系统与经验丰富的注释者之间的协议更高。与三个公共数据集(用于糖尿病性视网膜病变的MESSIDOR和DR,用于乳腺癌的UCSB)进行的比较测试显示,与最新技术相比,性能得到了改善。

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