Department of Molecular Physiology and Biophysics, School of Medicine, Vanderbilt University, Nashville, TN, 37232, USA.
Department of Biomedical Engineering, School of Engineering, Vanderbilt University, Nashville, TN, 37232, USA.
Sci Rep. 2019 Jul 15;9(1):10237. doi: 10.1038/s41598-019-46689-5.
To characterize cell types, cellular functions and intracellular processes, an understanding of the differences between individual cells is required. Although microscopy approaches have made tremendous progress in imaging cells in different contexts, the analysis of these imaging data sets is a long-standing, unsolved problem. The few robust cell segmentation approaches that exist often rely on multiple cellular markers and complex time-consuming image analysis. Recently developed deep learning approaches can address some of these challenges, but they require tremendous amounts of data and well-curated reference data sets for algorithm training. We propose an alternative experimental and computational approach, called CellDissect, in which we first optimize specimen preparation and data acquisition prior to image processing to generate high quality images that are easier to analyze computationally. By focusing on fixed suspension and dissociated adherent cells, CellDissect relies only on widefield images to identify cell boundaries and nuclear staining to automatically segment cells in two dimensions and nuclei in three dimensions. This segmentation can be performed on a desktop computer or a computing cluster for higher throughput. We compare and evaluate the accuracy of different nuclear segmentation approaches against manual expert cell segmentation for different cell lines acquired with different imaging modalities.
为了描述细胞类型、细胞功能和细胞内过程,需要了解单个细胞之间的差异。尽管显微镜方法在不同背景下对细胞成像方面取得了巨大进展,但这些成像数据集的分析仍然是一个长期存在的未解决问题。少数现有的强大细胞分割方法通常依赖于多个细胞标记物和复杂耗时的图像分析。最近开发的深度学习方法可以解决其中的一些挑战,但它们需要大量的数据和精心策划的参考数据集来进行算法训练。我们提出了一种称为 CellDissect 的替代实验和计算方法,我们首先在图像处理之前优化标本制备和数据采集,以生成更易于计算分析的高质量图像。通过专注于固定悬浮和分散贴壁细胞,CellDissect 仅依赖于宽场图像来识别细胞边界和核染色,以自动在二维和三维中分割细胞和核。这种分割可以在台式计算机或计算集群上进行,以实现更高的通量。我们比较和评估了不同核分割方法的准确性,以针对不同的细胞系,针对不同的成像模式获取的手动专家细胞分割进行比较和评估。