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细胞核引导的全切片数字化病理图像乳腺癌分级网络

Nuclei-Guided Network for Breast Cancer Grading in HE-Stained Pathological Images.

机构信息

High Performance Computer Research Center, Institute of Computing Technology, Chinese Academy of Sciences, Beijing 100045, China.

University of Chinese Academy of Sciences, Beijing 101408, China.

出版信息

Sensors (Basel). 2022 May 27;22(11):4061. doi: 10.3390/s22114061.

Abstract

Breast cancer grading methods based on hematoxylin-eosin (HE) stained pathological images can be summarized into two categories. The first category is to directly extract the pathological image features for breast cancer grading. However, unlike the coarse-grained problem of breast cancer classification, breast cancer grading is a fine-grained classification problem, so general methods cannot achieve satisfactory results. The second category is to apply the three evaluation criteria of the Nottingham Grading System (NGS) separately, and then integrate the results of the three criteria to obtain the final grading result. However, NGS is only a semiquantitative evaluation method, and there may be far more image features related to breast cancer grading. In this paper, we proposed a Nuclei-Guided Network (NGNet) for breast invasive ductal carcinoma (IDC) grading in pathological images. The proposed nuclei-guided attention module plays the role of nucleus attention, so as to learn more nuclei-related feature representations for breast IDC grading. In addition, the proposed nuclei-guided fusion module in the fusion process of different branches can further enable the network to focus on learning nuclei-related features. Overall, under the guidance of nuclei-related features, the entire NGNet can learn more fine-grained features for breast IDC grading. The experimental results show that the performance of the proposed method is better than that of state-of-the-art method. In addition, we released a well-labeled dataset with 3644 pathological images for breast IDC grading. This dataset is currently the largest publicly available breast IDC grading dataset and can serve as a benchmark to facilitate a broader study of breast IDC grading.

摘要

基于苏木精-伊红(HE)染色病理图像的乳腺癌分级方法可概括为两类。第一类是直接提取病理图像特征进行乳腺癌分级。然而,与乳腺癌分类的粗粒度问题不同,乳腺癌分级是一个细粒度的分类问题,因此一般方法无法取得满意的效果。第二类是分别应用 Nottingham 分级系统(NGS)的三个评估标准,然后整合三个标准的结果得到最终的分级结果。然而,NGS 只是一种半定量评估方法,可能存在更多与乳腺癌分级相关的图像特征。在本文中,我们提出了一种用于病理图像中乳腺浸润性导管癌(IDC)分级的核引导网络(NGNet)。所提出的核引导注意力模块发挥核注意力的作用,以便为乳腺 IDC 分级学习更多与核相关的特征表示。此外,所提出的核引导融合模块在不同分支的融合过程中可以进一步使网络专注于学习与核相关的特征。总体而言,在核相关特征的指导下,整个 NGNet 可以学习更多用于乳腺 IDC 分级的细粒度特征。实验结果表明,所提出方法的性能优于最先进的方法。此外,我们发布了一个带有 3644 张病理图像的经过良好标注的乳腺 IDC 分级数据集。该数据集是目前最大的公开乳腺 IDC 分级数据集,可作为基准,促进对乳腺 IDC 分级的更广泛研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/77fa/9185232/1a58d321a041/sensors-22-04061-g001.jpg

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