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Virtual Staining for Mitosis Detection in Breast Histopathology

机译:虚拟染色在乳腺癌组织病理学中的有丝分裂检测

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We propose a virtual staining methodology based on Generative Adversarial Networks to map histopathology images of breast cancer tissue from H&E stain to PHH3 and vice versa. We use the resulting synthetic images to build Convolutional Neural Networks (CNN) for automatic detection of mitotic figures, a strong prognostic biomarker used in routine breast cancer diagnosis and grading. We propose several scenarios, in which CNN trained with synthetically generated histopathology images perform on par with or even better than the same baseline model trained with real images. We discuss the potential of this application to scale the number of training samples without the need for manual annotations.
机译:我们提出了一种基于Generative Adversarial Networks的虚拟染色方法,可将乳腺癌组织的组织病理学图像从H&E染色映射到PHH3,反之亦然。我们使用生成的合成图像来构建卷积神经网络(CNN),以自动检测有丝分裂图形,这是常规乳腺癌诊断和分级中使用的强大预后生物标记。我们提出了几种方案,其中使用合成生成的组织病理学图像训练的CNN与使用真实图像训练的相同基线模型表现相同甚至更好。我们讨论了无需手动注释即可扩展训练样本数量的这种应用程序的潜力。

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