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用于自动迁移和相互作用跟踪的无标记细胞增强分割。

Enhanced segmentation of label-free cells for automated migration and interaction tracking.

作者信息

Belyaev Ivan, Praetorius Jan-Philipp, Medyukhina Anna, Figge Marc Thilo

机构信息

Applied Systems Biology, Leibniz Institute for Natural Product Research and Infection Biology - Hans Knöll Institute (HKI), Jena, Germany.

Faculty of Biological Sciences, Friedrich Schiller University Jena, Jena, Germany.

出版信息

Cytometry A. 2021 Dec;99(12):1218-1229. doi: 10.1002/cyto.a.24466. Epub 2021 Jun 10.

Abstract

In biomedical research, the migration behavior of cells and interactions between various cell types are frequently studied subjects. An automated and quantitative analysis of time-lapse microscopy data is an essential component of these studies, especially when characteristic migration patterns need to be identified. Plenty of software tools have been developed to serve this need. However, the majority of algorithms is designed for fluorescently labeled cells, even though it is well-known that fluorescent labels can substantially interfere with the physiological behavior of interacting cells. We here present a fully revised version of our algorithm for migration and interaction tracking (AMIT), which includes a novel segmentation approach. This approach allows segmenting label-free cells with high accuracy and also enables detecting almost all cells within the field of view. With regard to cell tracking, we designed and implemented a new method for cluster detection and splitting. This method does not rely on any geometrical characteristics of individual objects inside a cluster but relies on monitoring the events of cell-cell fusion from and cluster fission into single cells forward and backward in time. We demonstrate that focusing on these events provides accurate splitting of transient clusters. Furthermore, the substantially improved quantitative analysis of cell migration by the revised version of AMIT is more than two orders of magnitude faster than the previous implementation, which makes it feasible to process video data at higher spatial and temporal resolutions.

摘要

在生物医学研究中,细胞的迁移行为以及各种细胞类型之间的相互作用是经常研究的课题。对延时显微镜数据进行自动化定量分析是这些研究的重要组成部分,尤其是在需要识别特征性迁移模式时。已经开发了大量软件工具来满足这一需求。然而,大多数算法是为荧光标记细胞设计的,尽管众所周知荧光标记会严重干扰相互作用细胞的生理行为。我们在此展示了我们的迁移与相互作用跟踪算法(AMIT)的全面修订版,其中包括一种新颖的分割方法。这种方法能够高精度地分割无标记细胞,并且还能检测视野内几乎所有细胞。关于细胞跟踪,我们设计并实现了一种新的聚类检测和分裂方法。该方法不依赖于聚类内单个对象的任何几何特征,而是依赖于监测细胞 - 细胞融合事件以及从聚类分裂为单个细胞的事件在时间上的前后变化。我们证明关注这些事件能够准确地分割瞬时聚类。此外,修订版的AMIT对细胞迁移的定量分析有了显著改进,比之前的实现快两个数量级以上,这使得以更高的空间和时间分辨率处理视频数据成为可能。

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