Department of Experimental Oncology, European Institute of Oncology-IRCCS, Milan, Italy.
Tethis S.p.A., Milan, Italy.
Elife. 2024 Nov 22;13:RP94689. doi: 10.7554/eLife.94689.
Understanding the cell cycle at the single-cell level is crucial for cellular biology and cancer research. While current methods using fluorescent markers have improved the study of adherent cells, non-adherent cells remain challenging. In this study, we addressed this gap by combining a specialized surface to enhance cell attachment, the FUCCI(CA)2 sensor, an automated image analysis pipeline, and a custom machine learning algorithm. This approach enabled precise measurement of cell cycle phase durations in non-adherent cells. This method was validated in acute myeloid leukemia cell lines NB4 and Kasumi-1, which have unique cell cycle characteristics, and we tested the impact of cell cycle-modulating drugs on NB4 cells. Our cell cycle analysis system, which is also compatible with adherent cells, is fully automated and freely available, providing detailed insights from hundreds of cells under various conditions. This report presents a valuable tool for advancing cancer research and drug development by enabling comprehensive, automated cell cycle analysis in both adherent and non-adherent cells.
在单细胞水平上理解细胞周期对于细胞生物学和癌症研究至关重要。虽然当前使用荧光标记物的方法已经改善了对贴壁细胞的研究,但对非贴壁细胞的研究仍然具有挑战性。在这项研究中,我们通过结合专门的表面来增强细胞附着、FUCCI(CA)2 传感器、自动化图像分析管道和定制的机器学习算法来解决这一差距。这种方法能够精确测量非贴壁细胞的细胞周期各阶段持续时间。该方法在具有独特细胞周期特征的急性髓系白血病细胞系 NB4 和 Kasumi-1 中得到了验证,我们还测试了细胞周期调节剂对 NB4 细胞的影响。我们的细胞周期分析系统也与贴壁细胞兼容,完全自动化且免费提供,可根据各种条件从数百个细胞中提供详细信息。本报告通过在贴壁和非贴壁细胞中实现全面、自动化的细胞周期分析,为推进癌症研究和药物开发提供了有价值的工具。