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Context Aware Lung Cancer Annotation in Whole Slide Images Using Fully Convolutional Neural Networks

机译:使用完全卷积神经网络的完整幻灯片图像中的上下文感知肺癌注释

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We propose a novel machine learning based methodology for detection and annotation of areas in Whole Slide lung Images (WSI) that are affected by lung cancer. Contrary to the trend of processing WSIs in small overlapping patches to generate a heat-map, we use a much larger patch with no overlap, aiming at capturing more of the context in each patch. As these larger patches are less likely to completely fall into one of the cancer/co-cancer classes, we use a pixel-level image segmentation approach consisting of a custom Fully Convolutional Neural Networks (FCNN). As opposed to the trend of using very deep neural networks, we carefully design a small FCNN, while avoiding the trainable upsampling layers, in order to cope with small training data and inaccurate region-based labeling of WSIs. We show that such an efficient architecture achieves better accuracy compared to the heat-map based approach. Apart from the descent results of our small network, this study shows that FCNNs are capable of learning region-based human labeling of biomedical images that sometimes does not correspond to a texture or a bounded object as a whole, but is more like drawing a line around a region containing a scattered number of small malignant tissues.
机译:我们提出了一种新颖的基于机器学习的方法,用于检测和标记受肺癌影响的整张肺图像(WSI)中的区域。与在小的重叠补丁中处理WSI来生成热图的趋势相反,我们使用没有重叠的更大的补丁,旨在捕获每个补丁中的更多上下文。由于这些较大的补丁不太可能完全落入癌症/共癌类别之一,因此我们使用由自定义的全卷积神经网络(FCNN)组成的像素级图像分割方法。与使用非常深的神经网络的趋势相反,我们谨慎地设计了一个小的FCNN,同时避免了可训练的上采样层,以应对小的训练数据和不准确的基于区域的WSI标记。我们证明,与基于热图的方法相比,这种有效的体系结构可实现更高的准确性。除了我们的小型网络的下降结果外,这项研究还表明,FCNN能够学习基于区域的生物医学图像人类标签,有时这些标签与纹理或有界物体总体上并不相对应,但更像画一条线周围散布着许多小恶性组织的区域。

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