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用于全切片组织病理学的自动化结直肠癌诊断

Automated colorectal cancer diagnosis for whole-slice histopathology.

作者信息

Kalkan Habil, Nap Marius, Duin Robert P W, Loog Marco

机构信息

Pattern Recognition Laboratory, Delft University of Technology, The Netherlands.

出版信息

Med Image Comput Comput Assist Interv. 2012;15(Pt 3):550-7. doi: 10.1007/978-3-642-33454-2_68.

Abstract

In this study, we propose a computational diagnosis system for detecting the colorectal cancer from histopathological slices. The computational analysis was usually performed on patch level where only a small part of the slice is covered. However, slice-based classification is more realistic for histopathological diagnosis. The developed method combines both textural and structural features from patch images and proposes a two level classification scheme. In the first level, the patches in slices are classified into possible classes (adenomatous, inflamed, cancer and normal) and the distribution of the patches into these classes is considered as the information representing the slices. Then the slices are classified using a logistic linear classifier. In patch level, we obtain the correct classification accuracies of 94.36% and 96.34% for the cancer and normal classes, respectively. However, in slice level, the accuracies of the 79.17% and 92.68% are achieved for cancer and normal classes, respectively.

摘要

在本研究中,我们提出了一种用于从组织病理学切片中检测结直肠癌的计算诊断系统。计算分析通常在补丁级别上进行,其中仅覆盖切片的一小部分。然而,基于切片的分类对于组织病理学诊断更为现实。所开发的方法结合了补丁图像的纹理和结构特征,并提出了一种两级分类方案。在第一级中,将切片中的补丁分类为可能的类别(腺瘤性、炎症性、癌性和正常),并将补丁在这些类别中的分布视为表示切片的信息。然后使用逻辑线性分类器对切片进行分类。在补丁级别上,癌性和正常类别的正确分类准确率分别为94.36%和96.34%。然而,在切片级别上,癌性和正常类别的准确率分别为79.17%和92.68%。

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