Mitosis nuclei count is one of the important indicators for the pathological diagnosis of breast cancer. The manual annotation needs experienced pathologists, which is very time-consuming and inefficient. With the development of deep learning methods, some models with good performance have emerged, but the generalization ability should be further strengthened. In this paper, we propose a two-stage mitosis segmentation and classification method, named SCMitosis. Firstly, the segmentation performance with a high recall rate is achieved by the proposed depthwise separable convolution residual block and channel-spatial attention gate. Then, a classification network is cascaded to further improve the detection performance of mitosis nuclei. The proposed model is verified on the ICPR 2012 dataset, and the highest F-score value of 0.8687 is obtained compared with the current state-of-the-art algorithms. In addition, the model also achieves good performance on GZMH dataset, which is prepared by our group and will be firstly released with the publication of this paper. The code will be available at: https://github.com/antifen/mitosis-nuclei-segmentation.
翻译:乳腺癌病理诊断的重要指标之一:人工注解需要经验丰富的病理学家,这非常耗时而且效率低。随着深层学习方法的发展,出现了一些表现良好的模型,但一般化能力应进一步加强。在本文件中,我们建议采用名为SCMitosis的两阶段性分解和分类方法。首先,高回溯率的分解性能是通过拟议的深度分解残块和频道空间关注大门实现的。然后,将一个分类网络连成一体,以进一步改善对分裂性核的检测性能。提议的模型将在2012年综合预防危机方案数据集上得到验证,与目前的最新算法相比,获得0.8687的最高F核心值。此外,该模型还在GZMH数据集上取得良好性能,该数据集由我们小组编写,并将首先与本文件的出版一起发布。该代码将在以下网站上公布:https://githhubub.com/antifment-enminsisionation。