Breast cancer is one of the most common cancers in women worldwide, and early detection can significantly reduce the mortality rate of breast cancer. It is crucial to take multi-scale information of tissue structure into account in the detection of breast cancer. And thus, it is the key to design an accurate computer-aided detection (CAD) system to capture multi-scale contextual features in a cancerous tissue. In this work, we present a novel graph convolutional neural network for histopathological image classification of breast cancer. The new method, named multi-scale graph wavelet neural network (MS-GWNN), leverages the localization property of spectral graph wavelet to perform multi-scale analysis. By aggregating features at different scales, MS-GWNN can encode the multi-scale contextual interactions in the whole pathological slide. Experimental results on two public datasets demonstrate the superiority of the proposed method. Moreover, through ablation studies, we find that multi-scale analysis has a significant impact on the accuracy of cancer diagnosis.
翻译:乳腺癌是全世界妇女最常见的癌症之一,早期发现可以显著降低乳腺癌的死亡率。在检测乳腺癌时,必须考虑到组织结构的多尺度信息。因此,这是设计一个精确的计算机辅助检测系统(CAD)以捕捉癌症组织中的多尺度背景特征的关键。在这项工作中,我们展示了一个用于乳腺癌生理病理学图像分类的新型图象革命神经网络。名为多尺度图形波子神经网络(MS-GWNNN)的新方法,利用光谱图波子的本地化特性进行多尺度分析。MS-GWNN通过将不同尺度的特征汇总,可以在整个病理幻灯片中编码多尺度背景互动。两个公共数据集的实验结果显示了拟议方法的优越性。此外,通过实验研究,我们发现多尺度分析对癌症诊断的准确性有重大影响。