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A generalized model for multi-marker analysis of cell cycle progression in synchrony experiments

机译:同步实验中细胞周期进程多标记分析的通用模型

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摘要

>Motivation: To advance understanding of eukaryotic cell division, it is important to observe the process precisely. To this end, researchers monitor changes in dividing cells as they traverse the cell cycle, with the presence or absence of morphological or genetic markers indicating a cell's position in a particular interval of the cell cycle. A wide variety of marker data is available, including information-rich cellular imaging data. However, few formal statistical methods have been developed to use these valuable data sources in estimating how a population of cells progresses through the cell cycle. Furthermore, existing methods are designed to handle only a single binary marker of cell cycle progression at a time. Consequently, they cannot facilitate comparison of experiments involving different sets of markers.>Results: Here, we develop a new sampling model to accommodate an arbitrary number of different binary markers that characterize the progression of a population of dividing cells along a branching process. We engineer a strain of Saccharomyces cerevisiae with fluorescently labeled markers of cell cycle progression, and apply our new model to two image datasets we collected from the strain, as well as an independent dataset of different markers. We use our model to estimate the duration of post-cytokinetic attachment between a S.cerevisiae mother and daughter cell. The Java implementation is fast and extensible, and includes a graphical user interface. Our model provides a powerful and flexible cell cycle analysis tool, suitable to any type or combination of binary markers.>Availability: The software is available from: .>Contact: ;
机译:>动机:要增进对真核细胞分裂的了解,准确观察该过程非常重要。为此,研究人员监视分裂的细胞横穿细胞周期时的变化,是否存在形态或遗传标记表明细胞在特定的细胞周期间隔中的位置。各种各样的标记数据可用,包括信息丰富的细胞成像数据。但是,很少有正式的统计方法可以使用这些有价值的数据源来估计细胞群体在整个细胞周期中的进展情况。此外,现有方法被设计为一次仅处理细胞周期进程的单个二进制标记。因此,它们不能促进比较涉及不同标记物组的实验。>结果:在这里,我们开发了一种新的采样模型,以容纳任意数量的不同二元标记物,这些标记物表征了分裂细胞群体的进程分支过程中。我们用细胞周期进程的荧光标记标记物改造了酿酒酵母菌株,并将我们的新模型应用于我们从该菌株收集的两个图像数据集以及不同标记的独立数据集。我们使用我们的模型来估计酿酒酵母母细胞和子细胞之间的细胞动力学附着的持续时间。 Java实现是快速且可扩展的,并且包括图形用户界面。我们的模型提供了功能强大且灵活的细胞周期分析工具,适用于任何类型或组合的二进制标记。>可用性:该软件可从以下网站获得:。>联系方式:

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