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Automated Classification for Breast Cancer Histopathology Images: Is Stain Normalization Important?

机译:乳腺癌组织病理学的自动分类图像:染色标准化重要吗?

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Breast cancer is one of the most commonly diagnosed cancer in women worldwide. A popular diagnostic method involves histopathological microscopy imaging, which can be augmented by automated image analysis. In histopathology image analysis, stain normalization is an important procedure of color transfer between a source (reference) and the test image, that helps in addressing an important concern of stain color variation. In this work, we hypothesize that if color-texture information is well captured with suitable features using data containing sufficient color variation, it may obviate the need for stain normalization. Considering that such an image analysis study is relatively less explored, some questions are yet unresolved such as (a) How can texture and color information be effectively extracted and used for classification so as to reduce the burden on the uniform staining or stain normalization. (b) Are there good feature-classifier combinations which work consistently across all magnifications? (c) Can there be an automated way to select reference image for stain normalization? In this work, we attempt to address such questions. In the process, we compare the independent texture and color channel information with that of some more sophisticated features which consider jointly color-texture information. We have extracted above features using images with and without stain normalization to validate the above hypothesis. Moreover, we also compare different types of contemporary classification in conjunction with the above features. Based on the results of our exhaustive experimentation we provide some useful indications.
机译:乳腺癌是全球妇女最常见的癌症之一。流行的诊断方法涉及组织病理学显微镜成像,其可以通过自动图像分析来增强。在组织病理学图像分析中,污染归一化是源(参考)和测试图像之间的颜色传递的重要过程,有助于解决染色颜色变化的重要关注。在这项工作中,我们假设使用使用包含足够颜色变化的数据的适当特征充分捕获颜色纹理信息,可以避免对污染标准化的需求。考虑到这样的图像分析研究探索了相对较少,一些问题尚未解决,例如(a)如何有效地提取纹理和颜色信息,以便减少均匀染色或污渍归一化的负担。 (b)是否有良好的特征分类器组合,始终如一地跨所有放大倍率工作? (c)是否可以有自动方法选择参考图像以进行污染标准化?在这项工作中,我们试图解决这些问题。在此过程中,我们将独立的纹理和颜色信道信息与一些更复杂的特征进行比较,其考虑共同纹理信息。我们使用具有和无污染归一化的图像提取的特征以验证上述假设。此外,我们还与上述功能相比,比较不同类型的当代分类。根据我们详尽实验的结果,我们提供了一些有用的指示。

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