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Live Cell Compartment Tracking: Object Tracking in Oscillating Intensity Images

机译:活细胞室跟踪:振荡强度图像中的对象跟踪

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摘要

Mathematical modeling has made great strides since the Lotka-Volterra predator-prey models. Newer models attempt to describe sub-cellular signal transduction pathways, such as the JAK-STAT and NF-κB pathways. However, the tools to accurately determine reaction and translocation rates in these pathways still have a number of drawbacks, including the effects of concentration scale on determining reaction rates and the effects of bulky additions to translocation rates. One method of overcoming these problems in signal transduction rate determination is to sample and stain cells from a full population at specific time points. However, fixed cell methods can only generate an average population rate. This could become an issue if the rate depends on the genotype of one of the proteins in the pathway. Another method of overcoming these problems in signal transduction rates is to use unmarked nuclei in live-cell imaging techniques. However, live cell imaging methods poses different problems, primarily how to find and track nuclei and cytoplasm when cells are actively moving and the nuclear and cytoplasmic intensities are by necessity fluctuating. To date, there is only one software package designed for tracking cells under these conditions - Cell Tracker (Shen et al., 2006). Cell Tracker is designed to handle the tracking of live cell images for protein translocation studies. They recommend using a separate color channel to mark the nucleus, although results can be obtained using unmarked nuclei. The results from Cell Tracker with unmarked nuclei are often less than optimal. We have developed a novel segmentation scheme and variation of the particle filter algorithm to allow more accurate tracking in time series with unmarked nuclei. The proposed segmentation scheme uses a non-parametric level set algorithm to refine a fast initial thresholding step. The tracking scheme uses a dense optical flow calculation to assist the particle filter algorithm in continuing to follow the true positions of the nuclei. To test the proposed algorithm, a novel mimicry of cell movement has been developed using random perturbations of a triangular mesh structure through the use of the finite element method.
机译:自从Lotka-Volterra捕食者-捕食者模型建立以来,数学建模取得了长足的进步。较新的模型试图描述亚细胞信号转导途径,例如JAK-STAT和NF-κB途径。然而,在这些途径中准确确定反应和转运速率的工具仍然具有许多缺点,包括浓度规模对确定反应速率的影响以及大量添加转运速率的影响。克服信号传导速率确定中的这些问题的一种方法是在特定时间点对整个种群的细胞进行采样和染色。但是,固定单元格方法只能生成平均人口率。如果速率取决于途径中一种蛋白质的基因型,则可能会成为问题。克服信号转导率问题的另一种方法是在活细胞成像技术中使用未标记的核。然而,活细胞成像方法提出了不同的问题,主要是当细胞活跃地移动并且核和细胞质的强度必然波动时,如何寻找和追踪细胞核和细胞质。迄今为止,只有一种设计用于在这些条件下跟踪细胞的软件包-Cell Tracker(Shen等人,2006)。 Cell Tracker设计用于处理活细胞图像的跟踪,以进行蛋白质转运研究。他们建议使用单独的颜色通道标记核,尽管使用未标记的核可以获得结果。 Cell Tracker带有未标记核的结果通常不太理想。我们已经开发了一种新颖的分割方案和粒子滤波算法的变体,可以在没有标记核的时间序列中进行更精确的跟踪。提出的分割方案使用非参数水平集算法来完善快速初始阈值化步骤。跟踪方案使用密集的光流计算来辅助粒子滤波算法继续跟踪原子核的真实位置。为了测试提出的算法,已经通过使用有限元方法利用三角形网格结构的随机扰动开发了一种新型的细胞运动模拟。

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    DeHoff Kevin;

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  • 年度 2012
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