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Nuclei Perception Network for Pathology Image Analysis

机译:用于病理图像分析的核感知网络

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Nuclei segmentation is a challenge task in medical image analysis. A digital microscopic tissue image may contain hundreds or even thousands nuclear. Its morphological information provides the biological basis for the diagnosis and classification of diseases. The task requires to detect every nuclear of cells in a densely packed scene and get the segmentation of them for further pathological analysis. Nuclei segmentation can also be described as an instance segmentation task in densely packed scene. In this article, we propose a novel anchor-free dense instance segmentation framework to alleviate the issues. The network detects nuclears and segment them simultaneously. Then the nuclear segmentation mask is aggregated as nuclear instance guided by the offset map generated from the network. The network works by combining target location with pixel-by-pixel classification to distinguish crowded objects. The proposed method performs well on nuclear segmentation dataset.
机译:核分割是医学图像分析中的一项挑战性任务。数字显微组织图像可能包含数百甚至数千个核。其形态学信息为疾病的诊断和分类提供了生物学基础。该任务需要在密集的场景中检测出每个细胞核,并对它们进行分割以进行进一步的病理分析。核分割也可以描述为密集场景中的实例分割任务。在本文中,我们提出了一种新颖的无锚密集实例分割框架来缓解这些问题。网络会检测核并同时对其进行分段。然后,将核分割蒙版作为由网络生成的偏移图引导的核实例进行聚合。该网络通过将目标位置与逐像素分类相结合来区分拥挤的物体而起作用。所提出的方法在核分割数据集上表现良好。

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