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Automatic Cell Tracking and Kinetic Feature Description of Cell Paths for Image Mining

机译:用于图像挖掘的自动细胞跟踪和细胞路径动力学特征描述

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Live-cell assays are used to study the dynamic functional cellular processes in High-Content Screening (HCA) of drug discovery processes or in computational biology experiments. The large amount of image data created during the screening requires automatic image-analysis procedures that can describe these dynamic processes. One class of tasks in this application is the tracking of cells. We describe in this paper a fast and robust cell tracking algorithm applied to High-Content Screening in drug discovery or computational biology experiments. We developed a similarity-based tracking algorithm that can track the cells without an initialization phase of the parameters of the tracker. The similarity-based detection algorithm is robust enough to find similar cells although small changes in the cell morphology have been occurred. The cell tracking algorithm can track normal cells as well as mitotic cells by classifying the cells based on our previously developed texture classifier. Results for the cell path are given on a test series from a real drug discovery process. We present the path of the cell and the low-level features that describe the path of the cell. This information can be used for further image mining of high-level descriptions of the kinetics of the cells.
机译:活细胞分析用于研究药物发现过程的高内涵筛选(HCA)或计算生物学实验中的动态功能性细胞过程。在筛选过程中创建的大量图像数据需要可描述这些动态过程的自动图像分析程序。此应用程序中的一类任务是跟踪单元。我们在本文中描述了一种快速且鲁棒的细胞跟踪算法,该算法适用于药物发现或计算生物学实验中的高内涵筛选。我们开发了一种基于相似度的跟踪算法,该算法可以跟踪单元而无需跟踪器参数的初始化阶段。尽管已经发生了细胞形态的微小变化,但是基于相似度的检测算法足够强大,可以找到相似的细胞。细胞跟踪算法可以根据我们先前开发的纹理分类器对细胞进行分类,从而跟踪正常细胞以及有丝分裂细胞。在真实药物发现过程的测试系列中给出了细胞路径的结果。我们介绍了单元格的路径以及描述单元格路径的低级功能。该信息可用于对细胞动力学的高级描述的进一步图像挖掘。

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