Tissue typology annotation in Whole Slide histological images is a complex and tedious, yet necessary task for the development of computational pathology models. We propose to address this problem by applying Open Set Recognition techniques to the task of jointly classifying tissue that belongs to a set of annotated classes, e.g. clinically relevant tissue categories, while rejecting in test time Open Set samples, i.e. images that belong to categories not present in the training set. To this end, we introduce a new approach for Open Set histopathological image recognition based on training a model to accurately identify image categories and simultaneously predict which data augmentation transform has been applied. In test time, we measure model confidence in predicting this transform, which we expect to be lower for images in the Open Set. We carry out comprehensive experiments in the context of colorectal cancer assessment from histological images, which provide evidence on the strengths of our approach to automatically identify samples from unknown categories. Code is released at https://github.com/agaldran/t3po .
翻译:整个幻灯片组织图象中的组织类型说明是一项复杂而繁琐的任务,但对于计算病理模型的开发来说却是必要的任务。我们提议解决这一问题,在对属于一组附加说明类的组织进行联合分类的任务中采用Open Set识别技术,例如与临床有关的组织类别,同时在试验时间拒绝OpenSet样本,即属于培训集中不存在的类别。为此,我们引入了一种基于培训模型的 OpenSet 组织病理图象识别新办法,以准确识别图像类别并同时预测应用了哪些数据增强变异。在试验时间,我们衡量预测这种变异的模型信心,我们预期在OpenSet中图像中会降低这种变异。我们从直观图像中进行色切癌评估方面进行了全面实验,以证明我们自动识别未知类别样本的方法的长处。代码在https://github.com/agaldran/t3po发布。