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Deep Adversarial Training for Multi-Organ Nuclei Segmentation in Histopathology Images

机译:组织病理学图像中多器官核细胞的深对抗训练

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摘要

Nuclei mymargin segmentation is a fundamental task for various computational pathology applications including nuclei morphology analysis, cell type classification, and cancer grading. Deep learning has emerged as a powerful approach to segmenting nuclei but the accuracy of convolutional neural networks (CNNs) depends on the volume and the quality of labeled histopathology data for training. In particular, conventional CNN-based approaches lack structured prediction capabilities, which are required to distinguish overlapping and clumped nuclei. Here, we present an approach to nuclei segmentation that overcomes these challenges by utilizing a conditional generative adversarial network (cGAN) trained with synthetic and real data. We generate a large dataset of H&E training images with perfect nuclei segmentation labels using an unpaired GAN framework. This synthetic data along with real histopathology data from six different organs are used to train a conditional GAN with spectral normalization and gradient penalty for nuclei segmentation. This adversarial regression framework enforces higher-order spacial-consistency when compared to conventional CNN models. We demonstrate that this nuclei segmentation approach generalizes across different organs, sites, patients and disease states, and outperforms conventional approaches, especially in isolating individual and overlapping nuclei.
机译:Nuclei MyMargin分割是各种计算病理学应用的基本任务,包括细胞核形态学分析,细胞类型分类和癌症分级。深度学习被出现为分段核的强大方法,但卷积神经网络(CNNS)的准确性取决于标记的组织病理学数据进行培训的体积和质量。特别地,常规的基于CNN的方法缺少结构化预测能力,这是区分重叠和块状的核来区分的。在这里,我们提出了一种核心细分的方法,通过利用具有合成和实际数据的条件生成的对抗性网络(CGAN)来克服这些挑战。我们使用未配对的GaN框架生成具有完美核细胞组标签的H&E培训图像的大型数据集。这种合成数据以及来自六种不同器官的真实组织病理学数据用于训练具有谱标准化和核细胞分割的梯度惩罚的条件GaN。与传统的CNN模型相比,这种对抗性回归框架强制执行高阶的间歇 - 一致性。我们证明,这种核细胞分割方法在不同的器官,地点,患者和疾病状态上推广,并且优于常规方法,特别是在分离个体和重叠核中。

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