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Micro and Macro Breast Histology Image Analysis by Partial Network Re-use

机译:通过部分网络重新使用微型和宏观乳房组织学图像分析

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Convolutional neural networks (CNN) have shown to be effective in medical image processing and analysis. Herein, we propose a CNN approach to perform patch- and pixel-wise histology labeling on breast microscopy and whole slide images (WSI), respectively. We devise a processing block that is capable of extracting compact features in an efficient manner. Based upon the processing block, classification and segmentation networks are built. Two networks share an encoder via partial transformation and transfer learning to maximally utilize the trained network and available dataset. 400 microscopy images and 10 WSI were employed to evaluate the proposed approach. For patch classification, an accuracy of 71% and 65% were obtained on the training and testing dataset, respectively. As for segmentation, we achieved an overall score of 0.7343 and 0.4945 on the training and testing dataset, respectively.
机译:卷积神经网络(CNN)已显示在医学图像处理和分析中有效。这里,我们提出了一种CNN方法,分别在乳房显微镜和整个幻灯片(WSI)上执行斑块和像素 - 明智的组织学标记。我们设计了一种能够以有效的方式提取紧凑特征的处理块。基于处理块,构建分类和分段网络。两个网络通过部分转换和传输学习共享编码器,以最大限度地利用培训的网络和可用数据集。使用400显微镜图像和10 WSI来评估所提出的方法。对于补丁分类,分别在训练和测试数据集中获得71%和65%的准确度。至于分段,我们分别在培训和测试数据集中实现了0.7343和0.4945的总成绩。

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