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Cell Tracking Accuracy Measurement Based on Comparison of Acyclic Oriented Graphs

机译:基于无环有向图比较的细胞跟踪精度测量

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摘要

Tracking motile cells in time-lapse series is challenging and is required in many biomedical applications. Cell tracks can be mathematically represented as acyclic oriented graphs. Their vertices describe the spatio-temporal locations of individual cells, whereas the edges represent temporal relationships between them. Such a representation maintains the knowledge of all important cellular events within a captured field of view, such as migration, division, death, and transit through the field of view. The increasing number of cell tracking algorithms calls for comparison of their performance. However, the lack of a standardized cell tracking accuracy measure makes the comparison impracticable. This paper defines and evaluates an accuracy measure for objective and systematic benchmarking of cell tracking algorithms. The measure assumes the existence of a ground-truth reference, and assesses how difficult it is to transform a computed graph into the reference one. The difficulty is measured as a weighted sum of the lowest number of graph operations, such as split, delete, and add a vertex and delete, add, and alter the semantics of an edge, needed to make the graphs identical. The measure behavior is extensively analyzed based on the tracking results provided by the participants of the first Cell Tracking Challenge hosted by the 2013 IEEE International Symposium on Biomedical Imaging. We demonstrate the robustness and stability of the measure against small changes in the choice of weights for diverse cell tracking algorithms and fluorescence microscopy datasets. As the measure penalizes all possible errors in the tracking results and is easy to compute, it may especially help developers and analysts to tune their algorithms according to their needs.
机译:在延时序列中跟踪运动细胞具有挑战性,并且在许多生物医学应用中都是必需的。单元轨迹可以在数学上表示为非循环定向图。它们的顶点描述了单个细胞的时空位置,而边缘代表了它们之间的时间关系。这样的表示保持了在捕获的视野内的所有重要细胞事件的知识,例如迁移,分裂,死亡和通过视野的过渡。越来越多的小区跟踪算法要求对其性能进行比较。但是,由于缺乏标准化的小区跟踪精度测量,因此无法进行比较。本文为细胞跟踪算法的客观和系统的基准测试定义并评估了一种精度度量。该度量假定存在真实的参考,并评估将计算的图形转换为参考的难度。难度的度量是使图形相同的最少数量的图形操作(如拆分,删除和添加顶点以及删除,添加和更改边的语义)的加权总和。根据2013年IEEE国际生物医学成像专题研讨会主办的首届细胞跟踪挑战赛参与者提供的跟踪结果,对测量行为进行了广泛的分析。我们证明了针对各种细胞跟踪算法和荧光显微镜数据集的权重选择方面的微小变化,该措施的鲁棒性和稳定性。由于该度量会惩罚跟踪结果中所有可能的错误并且易于计算,因此它尤其有助于开发人员和分析人员根据需要调整算法。

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