Bao Shunxing, Cui Can, Li Jia, Tang Yucheng, Lee Ho Hin, Deng Ruining, Remedios Lucas W, Yu Xin, Yang Qi, Chiron Sophie, Patterson Nathan Heath, Lau Ken S, Liu Qi, Roland Joseph T, Coburn Lori A, Wilson Keith T, Landman Bennett A, Huo Yuankai
Dept. of Electrical and Computer Engineering, Vanderbilt University, Nashville, TN, USA.
Dept. of Computer Science, Vanderbilt University, Nashville, TN, USA.
Proc SPIE Int Soc Opt Eng. 2023 Feb;12471. doi: 10.1117/12.2654087. Epub 2023 Apr 6.
Multiplex immunofluorescence (MxIF) is an emerging imaging technology whose downstream molecular analytics highly rely upon the effectiveness of cell segmentation. In practice, multiple membrane markers (e.g., NaKATPase, PanCK and β-catenin) are employed to stain membranes for different cell types, so as to achieve a more comprehensive cell segmentation since no single marker fits all cell types. However, prevalent watershed-based image processing might yield inferior capability for modeling complicated relationships between markers. For example, some markers can be misleading due to questionable stain quality. In this paper, we propose a deep learning based membrane segmentation method to aggregate complementary information that is uniquely provided by large scale MxIF markers. We aim to segment tubular membrane structure in MxIF data using global (membrane markers z-stack projection image) and local (separate individual markers) information to maximize topology preservation with deep learning. Specifically, we investigate the feasibility of four SOTA 2D deep networks and four volumetric-based loss functions. We conducted a comprehensive ablation study to assess the sensitivity of the proposed method with various combinations of input channels. Beyond using adjusted rand index (ARI) as the evaluation metric, which was inspired by the clDice, we propose a novel volumetric metric that is specific for skeletal structure, denoted as . In total, 80 membrane MxIF images were manually traced for 5-fold cross-validation. Our model outperforms the baseline with a 20.2% and 41.3% increase in and ARI performance, which is significant (p<0.05) using the Wilcoxon signed rank test. Our work explores a promising direction for advancing MxIF imaging cell segmentation with deep learning membrane segmentation. Tools are available at https://github.com/MASILab/MxIF_Membrane_Segmentation.
多重免疫荧光(MxIF)是一种新兴的成像技术,其下游分子分析高度依赖于细胞分割的有效性。在实践中,多种膜标记物(如钠钾ATP酶、泛细胞角蛋白和β-连环蛋白)被用于对不同细胞类型的膜进行染色,以便实现更全面的细胞分割,因为没有单一标记物适用于所有细胞类型。然而,普遍使用的基于分水岭的图像处理在对标记物之间复杂关系进行建模时可能能力不足。例如,由于染色质量存疑,一些标记物可能会产生误导。在本文中,我们提出一种基于深度学习的膜分割方法,以聚合由大规模MxIF标记物独特提供的互补信息。我们旨在利用全局(膜标记物z轴堆叠投影图像)和局部(单独的各个标记物)信息对MxIF数据中的管状膜结构进行分割,以通过深度学习最大化拓扑结构保留。具体而言,我们研究了四种最先进的二维深度网络和四种基于体积的损失函数的可行性。我们进行了全面的消融研究,以评估所提方法在各种输入通道组合下的敏感性。除了使用受clDice启发的调整兰德指数(ARI)作为评估指标外,我们还提出了一种针对骨骼结构的新型体积指标,记为 。总共手动追踪了80张膜MxIF图像用于五折交叉验证。我们的模型在 和ARI性能上分别比基线提高了20.2%和41.3%,使用威尔科克森符号秩检验具有显著性(p<0.05)。我们的工作探索了一个有前景的方向,即通过深度学习膜分割推进MxIF成像细胞分割。工具可在https://github.com/MASILab/MxIF_Membrane_Segmentation获取。