Abstract

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.

Highlights

  • Cultures of Human induced pluripotent stem cells offer unprecedented scope to profile and screen conditions affecting cell fate decisions, self-organisation and early embryonic development

  • HiPSCs spheroids cultured in Knock Out Serum Replacement medium (KSR)+BMP4 medium elongate in shape producing budding and branches

  • Examples of the shape parameters obtained for these structures from confocal microscopy images are included indicating changes in spheroid morphology parameters (Appendix 2A)

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Summary

Introduction

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. 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. Many systems are emerging that enable scientists to observe and quantify cell patterning and the formation of 3D structures, such as spheroids [2] These applications require the ability to acquire dynamic information over time and ideally perform on-the-fly analyses for quality control, screening and profiling campaigns [3]. High content analysis (HCA) approaches designed to obtain quantitative read-outs from microscopy images provide opportunities to derive automated multi-parametric data to quantify single cell behaviour and morphology This information can be obtained from both live and endpoint image datasets [4]. ⁎ Corresponding author at: Centre for Stem Cells & Regenerative Medicine, King's College London, 28th floor, Tower Wing, Guy's Hospital, Great Maze Pond, London SE1 9RT, United Kingdom

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