Division of Theoretical Bioinformatics, German Cancer Research Center (DKFZ), Heidelberg 69120, Germany.
Center for Quantitative Analysis of Molecular and Cellular Biosystems (BioQuant), University of Heidelberg, Heidelberg 69120, Germany.
J Cell Sci. 2020 Jun 1;133(11):jcs245043. doi: 10.1242/jcs.245043.
3D cell cultures enable the study of dynamic biological processes such as the cell cycle, but their use in high-throughput screens remains impractical with conventional fluorescent microscopy. Here, we present a screening workflow for the automated evaluation of mitotic phenotypes in 3D cell cultures by light-sheet microscopy. After sample preparation by a liquid handling robot, cell spheroids are imaged for 24 h with a dual-view inverted selective plane illumination microscope (diSPIM) with a much improved signal-to-noise ratio, higher imaging speed, isotropic resolution and reduced light exposure compared to a spinning disc confocal microscope. A dedicated high-content image processing pipeline implements convolutional neural network-based phenotype classification. We illustrate the potential of our approach using siRNA knockdown and epigenetic modification of 28 mitotic target genes for assessing their phenotypic role in mitosis. By rendering light-sheet microscopy operational for high-throughput screening applications, this workflow enables target gene characterization or drug candidate evaluation in tissue-like 3D cell culture models.
3D 细胞培养可用于研究细胞周期等动态生物学过程,但传统荧光显微镜在高通量筛选中应用仍不切实际。在这里,我们提出了一种通过光片显微镜自动评估 3D 细胞培养物有丝分裂表型的筛选工作流程。在液体处理机器人进行样品制备后,使用具有高得多的信噪比、更高的成像速度、各向同性分辨率和减少光暴露的双视角倒置选择平面照明显微镜(diSPIM)对细胞球体进行 24 小时成像,与旋转盘共聚焦显微镜相比。专用的高内涵图像处理管道实现了基于卷积神经网络的表型分类。我们使用 siRNA 敲低和 28 个有丝分裂靶基因的表观遗传修饰来评估它们在有丝分裂中的表型作用,说明了我们方法的潜力。通过使光片显微镜能够用于高通量筛选应用,该工作流程可用于在类似组织的 3D 细胞培养模型中对靶基因进行特征描述或候选药物评估。