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Event Indicator Function classifier for identifying cell tracking errors and phenotypes

机译:事件指示符函数分类,用于识别单元格跟踪错误和表型

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Biologists estimate parameters such as division time, death time, time to differentiate into specialized cell in order to model cell behavior and to develop novel ways to fight diseases such as Cancer, HIV and others. One of the critical steps of such analysis of cells in video microscopy is to follow each of the cells through their generations and collect relevant information. Variability of cell density and dynamics in different video, hamper portability of existing automated cell tracking systems across videos. These errors have to be identified and corrected using human assistance to achieve tracker portability across videos. In this paper, we propose Event Indicator Function (EIF) classifier to predict the tracking errors and cell phenotypes (division and death) frame-by-frame using a set of features (metrics) that are collected during tracking. EIF classifier models the metrics using empirical thresholds to identify the errors and phenotypes. Finally, EIF classifier performance has been evaluated on variety of microscopic videos that differ both in cell density and dynamics, illustrated results show the significance of the proposed classifier.
机译:生物学家估计诸如划分时间,死亡时间,时间的参数,以区分为专业的细胞,以便模拟细胞行为,并开发癌症,艾滋病毒等疾病的新方法。这种视频显微镜中细胞分析的关键步骤之一是通过他们的代来遵循每个细胞并收集相关信息。不同视频中细胞密度和动力学的可变性,跨越视频的现有自动小区跟踪系统的阻碍便携性。必须使用人类辅助来识别和纠正这些错误,以实现跨视频的跟踪器可移植性。在本文中,我们提出了使用在跟踪期间收集的一组特征(度量)来预测逐帧逐帧的跟踪误差和细胞表型(分割和死亡)。 EIF分类器使用经验阈值模拟度量标准以识别错误和表型。最后,已经在细胞密度和动态中的各种微观视频中评估了EIF分类器性能,所示结果显示了所提出的分类器的重要性。

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