The Center for Data Science, the Beijing Key Laboratory of Network System Architecture and Convergence, the School of Information and Communication Engineering, Beijing University of Posts and Telecommunications, Xitucheng Road, Beijing, China.
The Department of Pathology, Beijing Chaoyang Hospital, the Third Clinical Medical College of Capital Medical University, Gongren Tiyuchang Nanlu, Beijing, China.
BMC Med Inform Decis Mak. 2019 Oct 22;19(1):198. doi: 10.1186/s12911-019-0913-x.
Breast cancer causes hundreds of thousands of deaths each year worldwide. The early stage diagnosis and treatment can significantly reduce the mortality rate. However, the traditional manual diagnosis needs intense workload, and diagnostic errors are prone to happen with the prolonged work of pathologists. Automatic histopathology image recognition plays a key role in speeding up diagnosis and improving the quality of diagnosis.
In this work, we propose a breast cancer histopathology image classification by assembling multiple compact Convolutional Neural Networks (CNNs). First, a hybrid CNN architecture is designed, which contains a global model branch and a local model branch. By local voting and two-branch information merging, our hybrid model obtains stronger representation ability. Second, by embedding the proposed Squeeze-Excitation-Pruning (SEP) block into our hybrid model, the channel importance can be learned and the redundant channels are thus removed. The proposed channel pruning scheme can decrease the risk of overfitting and produce higher accuracy with the same model size. At last, with different data partition and composition, we build multiple models and assemble them together to further enhance the model generalization ability.
Experimental results show that in public BreaKHis dataset, our proposed hybrid model achieves comparable performance with the state-of-the-art. By adopting the multi-model assembling scheme, our method outperforms the state-of-the-art in both patient level and image level accuracy for BACH dataset.
We propose a novel compact breast cancer histopathology image classification scheme by assembling multiple compact hybrid CNNs. The proposed scheme achieves promising results for the breast cancer image classification task. Our method can be used in breast cancer auxiliary diagnostic scenario, and it can reduce the workload of pathologists as well as improve the quality of diagnosis.
乳腺癌每年在全球导致数十万人死亡。早期诊断和治疗可以显著降低死亡率。然而,传统的手动诊断需要大量的工作量,并且病理学家工作时间延长容易导致诊断错误。自动组织病理学图像识别在加速诊断和提高诊断质量方面起着关键作用。
在这项工作中,我们通过组装多个紧凑的卷积神经网络(CNN)来对乳腺癌组织病理学图像进行分类。首先,设计了一种混合 CNN 架构,其中包含一个全局模型分支和一个局部模型分支。通过局部投票和两分支信息融合,我们的混合模型获得了更强的表示能力。其次,通过将所提出的压缩激励修剪(SEP)块嵌入到我们的混合模型中,可以学习通道重要性,并因此去除冗余通道。所提出的通道修剪方案可以降低过拟合的风险,并在相同的模型尺寸下产生更高的准确性。最后,通过不同的数据分区和组合,我们构建了多个模型并将它们组装在一起,以进一步增强模型的泛化能力。
实验结果表明,在公共 BreaKHis 数据集上,我们提出的混合模型与最先进的方法相比具有相当的性能。通过采用多模型组装方案,我们的方法在 BACH 数据集的患者级别和图像级别准确性方面均优于最先进的方法。
我们提出了一种通过组装多个紧凑的混合 CNN 来进行乳腺癌组织病理学图像分类的新方案。所提出的方案在乳腺癌图像分类任务中取得了有前景的结果。我们的方法可用于乳腺癌辅助诊断场景,可减少病理学家的工作量并提高诊断质量。