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一种基于自动学习的稳健细胞核分割框架。

An Automatic Learning-Based Framework for Robust Nucleus Segmentation.

作者信息

Xing Fuyong, Xie Yuanpu, Yang Lin

出版信息

IEEE Trans Med Imaging. 2016 Feb;35(2):550-66. doi: 10.1109/TMI.2015.2481436. Epub 2015 Sep 23.

DOI:10.1109/TMI.2015.2481436
PMID:26415167
Abstract

Computer-aided image analysis of histopathology specimens could potentially provide support for early detection and improved characterization of diseases such as brain tumor, pancreatic neuroendocrine tumor (NET), and breast cancer. Automated nucleus segmentation is a prerequisite for various quantitative analyses including automatic morphological feature computation. However, it remains to be a challenging problem due to the complex nature of histopathology images. In this paper, we propose a learning-based framework for robust and automatic nucleus segmentation with shape preservation. Given a nucleus image, it begins with a deep convolutional neural network (CNN) model to generate a probability map, on which an iterative region merging approach is performed for shape initializations. Next, a novel segmentation algorithm is exploited to separate individual nuclei combining a robust selection-based sparse shape model and a local repulsive deformable model. One of the significant benefits of the proposed framework is that it is applicable to different staining histopathology images. Due to the feature learning characteristic of the deep CNN and the high level shape prior modeling, the proposed method is general enough to perform well across multiple scenarios. We have tested the proposed algorithm on three large-scale pathology image datasets using a range of different tissue and stain preparations, and the comparative experiments with recent state of the arts demonstrate the superior performance of the proposed approach.

摘要

组织病理学标本的计算机辅助图像分析有可能为脑肿瘤、胰腺神经内分泌肿瘤(NET)和乳腺癌等疾病的早期检测和特征改善提供支持。自动细胞核分割是包括自动形态特征计算在内的各种定量分析的前提条件。然而,由于组织病理学图像的复杂性,这仍然是一个具有挑战性的问题。在本文中,我们提出了一个基于学习的框架,用于进行具有形状保留的鲁棒且自动的细胞核分割。给定一个细胞核图像,该框架首先使用深度卷积神经网络(CNN)模型生成一个概率图,然后在该概率图上执行迭代区域合并方法进行形状初始化。接下来,利用一种新颖的分割算法,结合基于鲁棒选择的稀疏形状模型和局部排斥可变形模型来分离单个细胞核。所提出框架的一个显著优点是它适用于不同染色的组织病理学图像。由于深度CNN的特征学习特性和高级形状先验建模,所提出的方法具有足够的通用性,能够在多种场景下表现良好。我们使用一系列不同的组织和染色制剂在三个大规模病理学图像数据集上测试了所提出的算法,与近期先进方法的对比实验证明了所提出方法的优越性能。

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