CShaperApp: Segmenting and analyzing cellular morphologies of the developing Caenorhabditis elegans embryo

Jianfeng Cao, Lihan Hu, Guoye Guan, Zelin Li, Zhongying Zhao, Chao Tang, Hong Yan
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Abstract

Caenorhabditis elegans has been widely used as a model organism in developmental biology due to its invariant development. In this study, we developed a desktop software CShaperApp to segment fluorescence‐labeled images of cell membranes and analyze cellular morphologies interactively during C. elegans embryogenesis. Based on the previously proposed framework CShaper, CShaperApp empowers biologists to automatically and efficiently extract quantitative cellular morphological data with either an existing deep learning model or a fine‐tuned one adapted to their in‐house dataset. Experimental results show that it takes about 30 min to process a three‐dimensional time‐lapse (4D) dataset, which consists of 150 image stacks at a ∼1.5‐min interval and covers C. elegans embryogenesis from the 4‐cell to 350‐cell stages. The robustness of CShaperApp is also validated with the datasets from different laboratories. Furthermore, modularized implementation increases the flexibility in multi‐task applications and promotes its flexibility for future enhancements. As cell morphology over development has emerged as a focus of interest in developmental biology, CShaperApp is anticipated to pave the way for those studies by accelerating the high‐throughput generation of systems‐level quantitative data collection. The software can be freely downloaded from the website of Github (cao13jf/CShaperApp) and is executable on Windows, macOS, and Linux operating systems.
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CShaperApp:分割和分析发育中的秀丽隐杆线虫胚胎的细胞形态
秀丽隐杆线虫(Caenorhabditis elegans)因其发育的不变性而被广泛用作发育生物学的模式生物。在这项研究中,我们开发了一款桌面软件 CShaperApp,用于在秀丽隐杆线虫胚胎发生过程中分割荧光标记的细胞膜图像并交互式分析细胞形态。CShaperApp 基于之前提出的 CShaper 框架,使生物学家能够利用现有的深度学习模型或根据其内部数据集进行微调的模型,自动、高效地提取定量的细胞形态数据。实验结果表明,处理一个三维延时(4D)数据集大约需要30分钟,该数据集由150幅图像堆叠组成,每幅图像的间隔为1.5分钟,涵盖秀丽隐杆线虫胚胎发育的4细胞至350细胞阶段。来自不同实验室的数据集也验证了 CShaperApp 的鲁棒性。此外,模块化的实现方式增加了多任务应用的灵活性,并提高了未来改进的灵活性。随着细胞形态在发育过程中的变化成为发育生物学的关注焦点,CShaperApp 预计将通过加速系统级定量数据收集的高通量生成,为这些研究铺平道路。该软件可从 Github 网站(cao13jf/CShaperApp)免费下载,并可在 Windows、macOS 和 Linux 操作系统上执行。
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