IEEE J Biomed Health Inform. 2021 May;25(5):1747-1757. doi: 10.1109/JBHI.2020.3039414. Epub 2021 May 11.
Nucleus detection is a fundamental task in histological image analysis and an important tool for many follow up analyses. It is known that sample preparation and scanning procedure of histological slides introduce a great amount of variability to the histological images and poses challenges for automated nucleus detection. Here, we studied the effect of histopathological sample fixation on the accuracy of a deep learning based nuclei detection model trained with hematoxylin and eosin stained images. We experimented with training data that includes three methods of fixation; PAXgene, formalin and frozen, and studied the detection accuracy results of various convolutional neural networks. Our results indicate that the variability introduced during sample preparation affects the generalization of a model and should be considered when building accurate and robust nuclei detection algorithms. Our dataset includes over 67 000 annotated nuclei locations from 16 patients and three different sample fixation types. The dataset provides excellent basis for building an accurate and robust nuclei detection model, and combined with unsupervised domain adaptation, the workflow allows generalization to images from unseen domains, including different tissues and images from different labs.
核检测是组织学图像分析中的一项基本任务,也是许多后续分析的重要工具。众所周知,组织学幻灯片的样本制备和扫描过程会给组织学图像带来大量的可变性,给自动化核检测带来挑战。在这里,我们研究了基于深度学习的核检测模型在训练时使用苏木精和伊红染色图像的情况下,病理样本固定对其准确性的影响。我们用包括 PAXgene、福尔马林和冷冻三种固定方法的训练数据进行了实验,并研究了各种卷积神经网络的检测精度结果。我们的结果表明,样本制备过程中引入的可变性会影响模型的泛化能力,因此在构建准确和鲁棒的核检测算法时应予以考虑。我们的数据集包括来自 16 名患者和三种不同样本固定类型的超过 67000 个注释核位置。该数据集为构建准确和鲁棒的核检测模型提供了极好的基础,并且结合无监督领域自适应,该工作流程允许对来自未知领域的图像进行泛化,包括不同的组织和来自不同实验室的图像。