Herbsthofer Laurin, Tomberger Martina, Smolle Maria A, Prietl Barbara, Pieber Thomas R, López-García Pablo
CBmed, Center for Biomarker Research in Medicine GmbH, Graz, Austria.
BioTechMed, Graz, Austria.
J Med Imaging (Bellingham). 2022 Nov;9(6):067501. doi: 10.1117/1.JMI.9.6.067501. Epub 2022 Nov 30.
Cell segmentation algorithms are commonly used to analyze large histologic images as they facilitate interpretation, but on the other hand they complicate hypothesis-free spatial analysis. Therefore, many applications train convolutional neural networks (CNNs) on high-resolution images that resolve individual cells instead, but their practical application is severely limited by computational resources. In this work, we propose and investigate an alternative spatial data representation based on cell segmentation data for direct training of CNNs.
We introduce and analyze the properties of Cell2Grid, an algorithm that generates compact images from cell segmentation data by placing individual cells into a low-resolution grid and resolves possible cell conflicts. For evaluation, we present a case study on colorectal cancer relapse prediction using fluorescent multiplex immunohistochemistry images.
We could generate Cell2Grid images at resolution that were 100 times smaller than the original ones. Cell features, such as phenotype counts and nearest-neighbor cell distances, remain similar to those of original cell segmentation tables ( ). These images could be directly fed to a CNN for predicting colon cancer relapse. Our experiments showed that test set error rate was reduced by 25% compared with CNNs trained on images rescaled to with bilinear interpolation. Compared with images at resolution (bilinear rescaling), our method reduced CNN training time by 85%.
Cell2Grid is an efficient spatial data representation algorithm that enables the use of conventional CNNs on cell segmentation data. Its cell-based representation additionally opens a door for simplified model interpretation and synthetic image generation.
细胞分割算法常用于分析大型组织学图像,因为它们便于解读,但另一方面,它们使无假设空间分析变得复杂。因此,许多应用改为在解析单个细胞的高分辨率图像上训练卷积神经网络(CNN),但其实际应用受到计算资源的严重限制。在这项工作中,我们提出并研究了一种基于细胞分割数据的替代空间数据表示方法,用于直接训练CNN。
我们介绍并分析了Cell2Grid的特性,这是一种通过将单个细胞放置到低分辨率网格中并解决可能的细胞冲突,从细胞分割数据生成紧凑图像的算法。为了进行评估,我们展示了一个使用荧光多重免疫组化图像预测结直肠癌复发的案例研究。
我们能够以比原始图像小100倍的分辨率生成Cell2Grid图像。细胞特征,如表型计数和最近邻细胞距离,与原始细胞分割表中的特征相似( )。这些图像可以直接输入到CNN中以预测结肠癌复发。我们的实验表明,与在通过双线性插值缩放到 的图像上训练的CNN相比,测试集错误率降低了25%。与 分辨率的图像(双线性缩放)相比,我们的方法将CNN训练时间减少了85%。
Cell2Grid是一种高效的空间数据表示算法,能够在细胞分割数据上使用传统的CNN。其基于细胞的表示还为简化模型解释和合成图像生成打开了一扇门。