da_Tracker: Automated workflow for high throughput single cell and single phagosome tracking in infected cells.

IF 1.8 4区 生物学 Q3 BIOLOGY Biology Open Pub Date : 2024-09-15 Epub Date: 2024-09-19 DOI:10.1242/bio.060555
Jacques Augenstreich, Anushka Poddar, Ashton T Belew, Najib M El-Sayed, Volker Briken
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Abstract

Time-lapse microscopy has emerged as a crucial tool in cell biology, facilitating a deeper understanding of dynamic cellular processes. While existing tracking tools have proven effective in detecting and monitoring objects over time, the quantification of signals within these tracked objects often faces implementation constraints. In the context of infectious diseases, the quantification of signals at localized compartments within the cell and around intracellular pathogens can provide even deeper insight into the interactions between the pathogen and host cell organelles. Existing quantitative analysis at a single-phagosome level remains limited and dependent on manual tracking methods. We developed a near-fully automated workflow that performs with limited bias, high-throughput cell segmentation and quantitative tracking of both single cell and single bacterium/phagosome within multi-channel, z-stack, time-lapse confocal microscopy videos. We took advantage of the PyImageJ library to bring Fiji functionality into a Python environment and combined deep-learning-based segmentation from Cellpose with tracking algorithms from Trackmate. The 'da_tracker' workflow provides a versatile toolkit of functions for measuring relevant signal parameters at the single-cell level (such as velocity or bacterial burden) and at the single-phagosome level (i.e. assessment of phagosome maturation over time). Its capabilities in both single-cell and single-phagosome quantification, its flexibility and open-source nature should assist studies that aim to decipher for example the pathogenicity of bacteria and the mechanism of virulence factors that could pave the way for the development of innovative therapeutic approaches.

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da_Tracker:用于高通量追踪感染细胞中单细胞和单吞噬体的自动化工作流程。
延时显微镜已成为细胞生物学的重要工具,有助于加深对动态细胞过程的理解。虽然现有的跟踪工具已被证明能有效地检测和监测随时间变化的物体,但对这些被跟踪物体内部信号的量化往往面临实施方面的限制。在传染病方面,对细胞内局部区块和细胞内病原体周围的信号进行量化,可以更深入地了解病原体与宿主细胞器之间的相互作用。现有的单吞噬细胞水平定量分析仍然有限,而且依赖于人工追踪方法。我们开发了一种近乎全自动的工作流程,可在多通道、Z 叠、延时共聚焦显微镜视频中对单细胞和单个细菌/吞噬体进行高通量细胞分割和定量跟踪,且偏差有限。我们利用 PyImageJ 库将 Fiji 功能引入 Python 环境,并将 Cellpose 基于深度学习的细胞分割与 Trackmate 的跟踪算法相结合。da_tracker"(即 "跟踪器")工作流程提供了一个多功能工具包,用于测量单细胞水平(如速度或细菌负荷)和单吞噬体水平(即评估随时间变化的吞噬体成熟度)的相关信号参数。它在单细胞和单吞噬体定量方面的能力、灵活性和开源性将有助于旨在破解细菌致病性和毒力因子机制等问题的研究,从而为开发创新的治疗方法铺平道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Biology Open
Biology Open BIOLOGY-
CiteScore
3.90
自引率
0.00%
发文量
162
审稿时长
8 weeks
期刊介绍: Biology Open (BiO) is an online Open Access journal that publishes peer-reviewed original research across all aspects of the biological sciences. BiO aims to provide rapid publication for scientifically sound observations and valid conclusions, without a requirement for perceived impact.
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