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Difficulty Translation in Histopathology Images

机译:组织病理学图像中的难度平移

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The unique nature of histopathology images opens the door to domain-specific formulations of image translation models. We propose a difficulty translation model that modifies colorectal histopathology images to be more challenging to classify. Our model comprises a scorer, which provides an output confidence to measure the difficulty of images, and an image translator, which learns to translate images from easy-to-classify to hard-to-classify using a training set defined by the scorer. We present three findings. First, generated images were indeed harder to classify for both human pathologists and machine learning classifiers than their corresponding source images. Second, image classifiers trained with generated images as augmented data performed better on both easy and hard images from an independent test set. Finally, human annotator agreement and our model's measure of difficulty correlated strongly, implying that for future work requiring human annotator agreement, the confidence score of a machine learning classifier could be used as a proxy.
机译:组织病理学图像的独特性打开大门,像翻译模型的特定领域的配方。我们提出了一个难度翻译模型,修改结病理图像更加具有挑战性的分类。我们的模型包括射手,它提供一个输出信心以测量图像的难度,以及图像转换,这学会从翻译图像易于分类到难以分类使用由射手限定的训练集。我们提出三项发现。首先,生成的图像确实很难为人类病理学家和机器学习分类比其相应的源图像进行分类。第二,与所生成的图像作为增强数据来训练分类器的图像从一个独立的测试集执行上既容易又硬图像更好。最后,人的注释协议和困难的我们的模型的措施密切相关,这意味着对于需要人的注释协议今后的工作中,机器学习分类的信心评分可以作为一个代理。

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