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Improved Nuclear Segmentation on Histopathology Images Using a Combination of Deep Learning and Active Contour Model

机译:结合深度学习和主动轮廓模型对组织病理学图像进行改进的核分割

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Automated nuclear segmentation on histopathological images is a prerequisite for a computer-aided diagnosis system. It becomes a challenging problem due to the nucleus occlusion, shape variation, and image background complexity. We present a computerized method for automatically segmenting nuclei in breast histopathology using an integration of a deep learning framework and an improved hybrid active contour (AC) model. A class of edge patches (nuclear boundary), in addition to the two usual classes - background patches and nuclei patches, are used to train a deep convolutional neural network (CNN) to provide accurate initial nuclear locations for the hybrid AC model. We devise a local-to-global scheme through incorporating the local image attributes in conjunction with region and boundary information to achieve robust nuclear segmentation. The experimental results demonstrated that the combination of CNN and AC model was able to gain improved performance in separating both isolated and overlapping nuclei.
机译:在组织病理学图像上进行自动核分割是计算机辅助诊断系统的先决条件。由于核闭塞,形状变化和图像背景复杂性,这成为一个具有挑战性的问题。我们提出了一种使用深度学习框架和改进的混合活动轮廓(AC)模型的集成来自动分割乳房组织病理学中的细胞核的计算机化方法。除了两个常见类别之外,一类边缘斑块(核边界)-背景斑块和核斑块用于训练深度卷积神经网络(CNN),以为混合AC模型提供准确的初始核位置。我们通过结合局部图像属性以及区域和边界信息来设计局部到全局方案,以实现可靠的核分割。实验结果表明,CNN和AC模型的组合能够在分离孤立的和重叠的原子核方面获得改进的性能。

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