School of Mathematics, University of Bristol, Bristol, United Kingdom.
School of Biochemistry, University of Bristol, Bristol, United Kingdom.
Elife. 2024 Sep 23;12:RP87949. doi: 10.7554/eLife.87949.
Cell division is fundamental to all healthy tissue growth, as well as being rate-limiting in the tissue repair response to wounding and during cancer progression. However, the role that cell divisions play in tissue growth is a collective one, requiring the integration of many individual cell division events. It is particularly difficult to accurately detect and quantify multiple features of large numbers of cell divisions (including their spatio-temporal synchronicity and orientation) over extended periods of time. It would thus be advantageous to perform such analyses in an automated fashion, which can naturally be enabled using deep learning. Hence, we develop a pipeline of deep learning models that accurately identify dividing cells in time-lapse movies of epithelial tissues in vivo. Our pipeline also determines their axis of division orientation, as well as their shape changes before and after division. This strategy enables us to analyse the dynamic profile of cell divisions within the pupal wing epithelium, both as it undergoes developmental morphogenesis and as it repairs following laser wounding. We show that the division axis is biased according to lines of tissue tension and that wounding triggers a synchronised (but not oriented) burst of cell divisions back from the leading edge.
细胞分裂是所有健康组织生长的基础,也是组织对创伤和癌症进展的修复反应中限制速度的关键因素。然而,细胞分裂在组织生长中的作用是集体的,需要整合许多单个细胞分裂事件。因此,长时间内准确地检测和量化大量细胞分裂的多个特征(包括它们的时空同步性和方向)是非常困难的。因此,使用深度学习以自动化的方式进行此类分析是有利的。因此,我们开发了一个深度学习模型的管道,该管道可以准确地识别体内上皮组织延时电影中的分裂细胞。我们的管道还确定了它们的分裂方向轴,以及分裂前后的形状变化。这种策略使我们能够分析蛹翅上皮组织中的细胞分裂的动态特征,包括发育形态发生和激光损伤后的修复过程。我们表明,分裂轴根据组织张力线偏向,并且损伤触发了从前缘向后的同步(但非定向)细胞分裂爆发。