| Literature DB >> 32295847 |
Björn Eismann1,2, Teresa G Krieger1,2,3, Jürgen Beneke2,4, Ruben Bulkescher2,4, Lukas Adam1,2, Holger Erfle2,4, Carl Herrmann1,5, Roland Eils6,2,3,7,8, Christian Conrad6,2,8.
Abstract
3D cell cultures enable the in vitro 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 in toto 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.Entities:
Keywords: Cell cycle; High-content screening; Light-sheet microscopy
Mesh:
Year: 2020 PMID: 32295847 PMCID: PMC7286290 DOI: 10.1242/jcs.245043
Source DB: PubMed Journal: J Cell Sci ISSN: 0021-9533 Impact factor: 5.285
Fig. 1.Key steps of the light-sheet high-content live imaging screen. (A) Step 1: Sample preparation. Cells were transfected in 2D by solid-phase reverse transfection in a 96-well plate format with two different siRNAs (siRNA set 1 and siRNA set 2) per target gene. Treated cells were then mixed with Matrigel and spotted in 0.2 µl droplets onto a one-well imaging plate. Over 5 days of culture, single cells clonally expanded into 3D spheroids. Each siRNA was analyzed in triplicate in three individual experiments. (B) Step 2: diSPIM imaging. In a low-resolution stage scan pre-screen, the positions of all spheroids were detected and samples selected for imaging by their position in the Matrigel spots; fused spheroids or cells growing on the plate in 2D were excluded. Subsequently, 38 individually treated samples were imaged every 5 min for 24 h by dual-view light-sheet microscopy, acquiring full stacks of view A (red) and view B (green) at a 90° angle to each other. (C) Step 3: Data processing. Raw image data were processed by fusing visual information of view A and view B. Processed data was further analyzed to evaluate the phenotype of each spheroid throughout the time lapse with regard to global spheroid features as well as single segment (single nucleus) properties. Scale bars:30 µm.
Fig. 2.Image analysis of diSPIM data to detect mitotic phenotypes in 3D spheroids. (A) For cell cycle phase detection, 2D image slices of the 3D segments were used as input to a VGG-based convolutional neuronal network consisting of convolutional, maxpooling and fully connected layers as indicated (see also Fig. S2). The network outputs a probability for each of the cell cycle phases, with cross-correlation values shown as a measure of classification accuracy (cross-correlation values represent 10% of the manually annotated training data set, with the other 90% used for training the network). (B) Example time lapse (time points 175-187) of an untreated MCF10A cell undergoing mitosis, with interphase (white), prophase (green), metaphase (yellow) and anaphase (red) detected by deep learning image classification. (C) Four exemplary time points (t) of spheroid development imaged over 24 h (time points 1-290), with the classified cells (colors as in B), spheroid hull and segment maximum projection displayed. (D) Bar plot showing the total fraction of control nuclei detected in different cell cycle phases throughout the screen (n=205,068). (E) Violin plot depicting the distance of nuclei from the spheroid center during the different cell cycle phases (n=205,068). Black dots represent the median and whiskers the 25-75% interquantile range. (F) Examples of abnormal mitotic phase durations induced by different siRNAs. Bar plots show the total fraction of nuclei detected in different cell cycle phases for negative control samples transfected with non-coding siRNA (NC), as well as spheroids transfected with siRNAs against INCENP, AURKA and PLK1. (G) Examples of spheroid growth defects depicted by abnormal nuclei positions. Violin plots show the median distance of cells from spheroid centers during the different cell cycle phases for the same spheroids as in F. Black dots represent the median and whiskers the 25-75% interquantile range. Images show representative maximum and minimum sized spheroids at the start of the time lapse acquisition. Scale bars: 5 µm (A,B), 50 µm (C,G).
Fig. 3.Clustered phenotype analysis of all features detected in diSPIM high-content screen. (A) Rank-based hierarchical clustering of siRNA knockdown mitotic phenotypes by features describing the global and nuclei-specific properties results in distinct clusters of siRNA target genes, with the number of clusters chosen based on qualitative assessment of morphologic similarity within groups. (B) Example images of spheroids from each cluster with classified nuclear mitotic phases (white, interphase; green, prophase; yellow, metaphase; red, anaphase). Scale bar: 50 µm.
Fig. 4.Phenotype analysis of dCas9-ED targeting RGMA regulatory CpGs in 3D HEK293 spheroids. Example images of HEK293 spheroids stably expressing dCas9-ED or dCas9, after transfection with sgRNA designed to epigenetically alter RGMA expression, in the following combinations: (A) dCas9-DNMT3a with sgRNA targeting anti-correlated CpG (cyan), (B) dCas9-TET1 with sgRNA targeting correlated CpG (magenta), (C) dCas9-DNMT3a with sgRNA targeting the TSS (orange), (D) dCas9 with sgRNA targeting anti-correlated CpG (cyan), (E) dCas9 with sgRNA targeting correlated CpG (magenta) and (F) dCas9 with sgRNA targeting the TSS (orange). (G) Summary of phenotypic effects of epigenetic targeting of RGMA expression in HEK293 spheroids, showing the percentage of spheroids displaying abnormal cellular and global properties, including macronuclei formation, extended mitosis duration, reduced spheroid growth and apoptotic condensed DNA (ACD). Scale bar: 50 µm.