论文标题
在乳腺癌和胃癌诊断的组织状态常规图像中,用于基于鱼类的HER2致癌基因扩增测试的可解释的自动检测系统
An interpretable automated detection system for FISH-based HER2 oncogene amplification testing in histo-pathological routine images of breast and gastric cancer diagnostics
论文作者
论文摘要
组织病理学诊断是日常工作的固有部分,但特别费力,与图像数据的耗时手动分析有关。为了应对由于当前的全球人群的增长和人口变化以及个性化医学的进展,应对诊断病例数的增加,病理学家寻求帮助。从数字病理学和人工智能的使用中获利,可以提供单个解决方案(例如检测标记的癌组织切片)。建议通过荧光原位杂交(FISH)进行人表皮生长因子受体2(HER2)癌基因扩增状态,以用于乳腺癌和胃癌诊断,并在诊所定期进行。在这里,我们开发了一种可解释的,深度学习(DL)的管道,该管道自动化了鱼图像对HER2基因扩增测试的评估。它模仿了病理评估,并依赖于基于实例分割网络的相间核的检测和定位。此外,它在图像分类和对象检测卷积神经网络(CNN)的帮助下将每个核内的荧光信号定位和分类。最后,管道将有关其HER2扩增状态的整个图像分类。网络决策发生的像素的可视化,它补充了启用病理学家解释性的重要组成部分。
Histo-pathological diagnostics are an inherent part of the everyday work but are particularly laborious and associated with time-consuming manual analysis of image data. In order to cope with the increasing diagnostic case numbers due to the current growth and demographic change of the global population and the progress in personalized medicine, pathologists ask for assistance. Profiting from digital pathology and the use of artificial intelligence, individual solutions can be offered (e.g. detect labeled cancer tissue sections). The testing of the human epidermal growth factor receptor 2 (HER2) oncogene amplification status via fluorescence in situ hybridization (FISH) is recommended for breast and gastric cancer diagnostics and is regularly performed at clinics. Here, we develop an interpretable, deep learning (DL)-based pipeline which automates the evaluation of FISH images with respect to HER2 gene amplification testing. It mimics the pathological assessment and relies on the detection and localization of interphase nuclei based on instance segmentation networks. Furthermore, it localizes and classifies fluorescence signals within each nucleus with the help of image classification and object detection convolutional neural networks (CNNs). Finally, the pipeline classifies the whole image regarding its HER2 amplification status. The visualization of pixels on which the networks' decision occurs, complements an essential part to enable interpretability by pathologists.