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Reinforced Auto-Zoom Net: Towards Accurate and Fast Breast Cancer Segmentation in Whole-Slide Images

机译:增强型自动缩放网络:在完整幻灯片图像中实现准确快速的乳腺癌分割

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Convolutional neural networks have led to significant breakthroughs in the domain of medical image analysis. However, the task of breast cancer segmentation in whole-slide images (WSIs) is still under-explored. WSIs are large histopathological images with extremely high resolution. Constrained by the hardware and field of view, using high-magnification patches can slow down the inference process and using low-magnification patches can cause the loss of information. In this paper, we aim to achieve two seemingly conflicting goals for breast cancer segmentation: accurate and fast prediction. We propose a simple yet efficient framework Reinforced Auto-Zoom Net (RAZN) to tackle this task. Motivated by the zoom-in operation of a pathologist using a digital microscope, RAZN learns a policy network to decide whether zooming is required in a given region of interest. Because the zoom-in action is selective, RAZN is robust to unbalanced and noisy ground truth labels and can efficiently reduce overfitting. We evaluate our method on a public breast cancer dataset. RAZN outperforms both single-scale and multi-scale baseline approaches, achieving better accuracy at low inference cost.
机译:卷积神经网络已经在医学图像分析领域取得了重大突破。但是,在全幻灯片图像(WSI)中进行乳腺癌分割的任务仍未得到充分研究。 WSI是具有极高分辨率的大型组织病理学图像。受硬件和视野的限制,使用高放大率的色标会减慢推理过程,而使用低放大率的色标会导致信息丢失。在本文中,我们旨在实现乳腺癌分割中两个看似相互矛盾的目标:准确和快速的预测。我们提出了一个简单而有效的框架增强自动缩放网络(RAZN)来解决此任务。受病理学家使用数字显微镜进行放大操作的启发,RAZN学习了一个策略网络来决定在给定的感兴趣区域中是否需要进行缩放。因为放大动作是选择性的,所以RAZN对于不平衡且嘈杂的地面真相标签具有鲁棒性,并且可以有效地减少过度拟合。我们在公共乳腺癌数据集上评估我们的方法。 RAZN优于单尺度和多尺度基线方法,以较低的推理成本实现了更高的准确性。

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