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Learning to Segment Breast Biopsy Whole Slide Images

机译:学习分割乳房活检整个幻灯片图像

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We trained and applied an encoder-decoder model to semantically segment breast biopsy images into biologically meaningful tissue labels. Since conventional encoderdecoder networks cannot be applied directly on large biopsy images and the different sized structures in biopsies present novel challenges, we propose four modifications: (1) an input-aware encoding block to compensate for information loss, (2) a new dense connection pattern between encoder and decoder, (3) dense and sparse decoders to combine multi-level features, (4) a multi-resolution network that fuses the results of encoder-decoders run on different resolutions. Our model outperforms a feature-based approach and conventional encoder-decoders from the literature. We use semantic segmentations produced with our model in an automated diagnosis task and obtain higher accuracies than a baseline approach that employs an SVM for featurebased segmentation, both using the same segmentationbased diagnostic features.
机译:我们训练并应用了编码器-解码器模型,以语义方式将乳房活检图像分割成具有生物学意义的组织标签。由于常规的编码器/解码器网络无法直接应用于大型活检图像,并且活检中不同尺寸的结构提出了新的挑战,因此我们提出了四个修改方案:(1)输入感知编码块以补偿信息丢失;(2)新的密集连接编码器和解码器之间的模式;(3)密集和稀疏解码器以组合多级功能;(4)多分辨率网络,该网络融合了以不同分辨率运行的编码器-解码器的结果。我们的模型优于文献中基于特征的方法和传统的编码器/解码器。我们在自动诊断任务中使用模型产生的语义分割,并且比使用SVM进行基于特征的分割的基线方法(使用相同的基于分割的诊断功能)获得更高的准确性。

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