Centre for Stem Cells & Regenerative Medicine, King's College London, UK.
Centre for Stem Cells & Regenerative Medicine, King's College London, UK; National Heart and Lung Institute, Imperial College London, UK.
Methods. 2021 Jun;190:33-43. doi: 10.1016/j.ymeth.2020.05.017. Epub 2020 May 21.
High-throughput imaging methods can be applied to relevant cell culture models, fostering their use in research and translational applications. Improvements in microscopy, computational capabilities and data analysis have enabled high-throughput, high-content approaches from endpoint 2D microscopy images. Nonetheless, trade-offs in acquisition, computation and storage between content and throughput remain, in particular when cells and cell structures are imaged in 3D. Moreover, live 3D phase contrast microscopy images are not often amenable to analysis because of the high level of background noise. Cultures of Human induced pluripotent stem cells (hiPSC) offer unprecedented scope to profile and screen conditions affecting cell fate decisions, self-organisation and early embryonic development. However, quantifying changes in the morphology or function of cell structures derived from hiPSCs over time presents significant challenges. Here, we report a novel method based on the analysis of live phase contrast microscopy images of hiPSC spheroids. We compare self-renewing versus differentiating media conditions, which give rise to spheroids with distinct morphologies; round versus branched, respectively. These cell structures are segmented from 2D projections and analysed based on frame-to-frame variations. Importantly, a tailored convolutional neural network is trained and applied to predict culture conditions from time-frame images. We compare our results with more classic and involved endpoint 3D confocal microscopy and propose that such approaches can complement spheroid-based assays developed for the purpose of screening and profiling. This workflow can be realistically implemented in laboratories using imaging-based high-throughput methods for regenerative medicine and drug discovery.
高通量成像方法可应用于相关的细胞培养模型,促进其在研究和转化应用中的使用。显微镜、计算能力和数据分析方面的改进使得能够从终点 2D 显微镜图像进行高通量、高内涵方法。尽管如此,内容和吞吐量之间的获取、计算和存储之间仍然存在权衡,特别是当细胞和细胞结构在 3D 中成像时。此外,由于背景噪声水平高,活 3D 相差显微镜图像通常不适于分析。人类诱导多能干细胞(hiPSC)的培养为分析和筛选影响细胞命运决定、自我组织和早期胚胎发育的条件提供了前所未有的机会。然而,随着时间的推移定量 hiPSC 衍生的细胞结构的形态或功能变化仍然存在重大挑战。在这里,我们报告了一种基于 hiPSC 球体活相差显微镜图像分析的新方法。我们比较了自我更新和分化培养基条件,这些条件分别导致形态不同的球体;圆形和分支形。从 2D 投影中分割这些细胞结构,并根据帧到帧的变化进行分析。重要的是,我们训练并应用了一个定制的卷积神经网络,以从时间帧图像预测培养条件。我们将我们的结果与更经典和更复杂的终点 3D 共聚焦显微镜进行了比较,并提出这些方法可以补充为筛选和分析目的而开发的基于球体的测定法。这种工作流程可以使用基于成像的高通量方法在再生医学和药物发现实验室中实际实现。