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Improving Nuclei/Gland Instance Segmentation in Histopathology Images by Full Resolution Neural Network and Spatial Constrained Loss

机译:通过全分辨率神经网络和空间约束损失改善组织病理学图像中的核/腺实例分割

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Image segmentation plays an important role in pathology image analysis as the accurate separation of nuclei or glands is crucial for cancer diagnosis and other clinical analyses. The networks and cross entropy loss in current deep learning-based segmentation methods originate from image classification tasks and have drawbacks for segmentation. In this paper, we propose a full resolution convolutional neural network (FullNet) that maintains full resolution feature maps to improve the localization accuracy. We also propose a variance constrained cross entropy (varCE) loss that encourages the network to learn the spatial relationship between pixels in the same instance. Experiments on a nuclei segmentation dataset and the 2015 MICCAI Gland Segmentation Challenge dataset show that the proposed FullNet with the varCE loss achieves state-of-the-art performance. The code is publicly available (https://github.com/huiqul8/FullNet-varCE).
机译:图像分割在病理图像分析中起着重要作用,因为准确分离核或腺对于癌症诊断和其他临床分析至关重要。当前基于深度学习的分割方法中的网络和交叉熵损失源自图像分类任务,并且具有分割的缺点。在本文中,我们提出了一种全分辨率卷积神经网络(FullNet),该网络可以保留全分辨率特征图以提高定位精度。我们还提出了方差约束交叉熵(varCE)损失,该损失鼓励网络学习同一实例中像素之间的空间关系。在核分割数据集和2015年MICCAI腺体分割挑战数据集上进行的实验表明,所提出的具有varCE损失的FullNet可以实现最新的性能。该代码是公开可用的(https://github.com/huiqul8/FullNet-varCE)。

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