Christopher Schmied, Michael Ebner, Paula Samsó, Rozemarijn Van Der Veen, Volker Haucke, Martin Lehmann
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引用次数: 0
摘要
背景:真核细胞由各种细胞器高度分隔,这些细胞器执行特定的细胞过程。这些细胞器在细胞内的位置受到精心调控,对其功能至关重要。例如,溶酶体相对于细胞核的位置控制其降解能力,并在病理生理条件下发生改变。对协调细胞器精确定位的分子成分仍不完全了解。这些研究中的一个干扰因素是,细胞器的定位问题出人意料地难以解决,例如,影响细胞器定位的扰动往往会导致次生表型,如细胞或细胞器大小的变化。这些表型可能会掩盖影响或导致识别出假阳性结果。为了大规模发现和测试潜在的分子成分,需要准确且易于使用的分析工具,以便对细胞器定位进行稳健的测量:结果:在此,我们介绍了一种忠实、稳健、定量分析细胞器定位表型的分析工作流程。我们的工作流程包括一个易于使用的 Fiji 插件和一个 R Shiny 应用程序。这些工具能让没有图像或数据分析背景的用户:(1)分割单细胞和细胞核并检测细胞器;(2)测量细胞大小和检测到的细胞器与细胞核之间的距离;(3)测量细胞器通道和一个附加通道的强度;(4)测量细胞器标记的径向强度曲线;(5)将结果绘制成信息丰富的图表。通过模拟数据和细胞免疫荧光图像(其中溶酶体定位的已知因子的功能受到了干扰),我们表明该工作流程对准确评估细胞器定位的常见问题(如细胞形状和大小、细胞器大小和背景的变化)具有很强的抵抗力:OrgaMapper 是一种多功能、强大且易于使用的自动图像分析工作流程,可用于基于显微镜的假设检验和筛选。它能有效地绘制细胞内空间图,发现细胞器定位的新型调节因子。
OrgaMapper: a robust and easy-to-use workflow for analyzing organelle positioning.
Background: Eukaryotic cells are highly compartmentalized by a variety of organelles that carry out specific cellular processes. The position of these organelles within the cell is elaborately regulated and vital for their function. For instance, the position of lysosomes relative to the nucleus controls their degradative capacity and is altered in pathophysiological conditions. The molecular components orchestrating the precise localization of organelles remain incompletely understood. A confounding factor in these studies is the fact that organelle positioning is surprisingly non-trivial to address e.g., perturbations that affect the localization of organelles often lead to secondary phenotypes such as changes in cell or organelle size. These phenotypes could potentially mask effects or lead to the identification of false positive hits. To uncover and test potential molecular components at scale, accurate and easy-to-use analysis tools are required that allow robust measurements of organelle positioning.
Results: Here, we present an analysis workflow for the faithful, robust, and quantitative analysis of organelle positioning phenotypes. Our workflow consists of an easy-to-use Fiji plugin and an R Shiny App. These tools enable users without background in image or data analysis to (1) segment single cells and nuclei and to detect organelles, (2) to measure cell size and the distance between detected organelles and the nucleus, (3) to measure intensities in the organelle channel plus one additional channel, (4) to measure radial intensity profiles of organellar markers, and (5) to plot the results in informative graphs. Using simulated data and immunofluorescent images of cells in which the function of known factors for lysosome positioning has been perturbed, we show that the workflow is robust against common problems for the accurate assessment of organelle positioning such as changes of cell shape and size, organelle size and background.
Conclusions: OrgaMapper is a versatile, robust, and easy-to-use automated image analysis workflow that can be utilized in microscopy-based hypothesis testing and screens. It effectively allows for the mapping of the intracellular space and enables the discovery of novel regulators of organelle positioning.
期刊介绍:
BMC Biology is a broad scope journal covering all areas of biology. Our content includes research articles, new methods and tools. BMC Biology also publishes reviews, Q&A, and commentaries.