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A framework for automated cell tracking in phase contrast microscopic videos based on normal velocities

机译:基于法向速度的相衬显微视频中自动细胞跟踪的框架

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This paper introduces a novel framework for the automated tracking of cells, with a particular focus on the challenging situation of phase contrast microscopic videos. Our framework is based on a topology preserving variational segmentation approach applied to normal velocity components obtained from optical flow computations, which appears to yield robust tracking and automated extraction of cell trajectories. In order to obtain improved trackings of local shape features we discuss an additional correction step based on active contours and the image Laplacian which we optimize for an example class of transformed renal epithelial (MDCK-F) cells. We also test the framework for human melanoma cells and mur-ine neutrophil granulocytes that were seeded on different types of extracellular matrices. The results are validated with manual tracking results.
机译:本文介绍了一种用于细胞自动跟踪的新颖框架,特别关注相衬显微镜视频的挑战性情况。我们的框架基于拓扑保留变异分段方法,该方法适用于从光流计算获得的法向速度分量,该方法似乎可产生可靠的跟踪和细胞轨迹的自动提取。为了获得对局部形状特征的改进跟踪,我们讨论了基于活动轮廓和图像Laplacian的附加校正步骤,我们针对转化的肾上皮(MDCK-F)细胞的示例类别进行了优化。我们还测试了植入不同类型细胞外基质的人黑素瘤细胞和鼠氨酸中性粒细胞粒细胞的框架。通过手动跟踪结果验证结果。

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