Biological Cell Tracking And Lineage Inference Via Random Finite Sets

Tran Thien Dat Nguyen, Changbeom Shim, Wooil Kim
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Abstract

Automatic cell tracking has long been a challenging problem due to the uncertainty of cell dynamic and observation process, where detection probability and clutter rate are unknown and time-varying. This is compounded when cell lineages are also to be inferred. In this paper, we propose a novel biological cell tracking method based on the Labeled Random Finite Set (RFS) approach to study cell migration patterns. Our method tracks cells with lineage by using a Generalised Label Multi-Bernoulli (GLMB) filter with objects spawning, and a robust Cardinalised Probability Hypothesis Density (CPHD) to address unknown and time-varying detection probability and clutter rate. The proposed method is capable of quantifying the certainty level of the tracking solutions. The capability of the algorithm on population dynamic inference is demonstrated on a migration sequence of breast cancer cells.
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基于随机有限集的生物细胞跟踪和谱系推断
由于细胞动态和观测过程的不确定性,检测概率和杂波率是未知的,并且随时间变化,因此细胞的自动跟踪一直是一个具有挑战性的问题。当还需要推断细胞谱系时,这种情况更加复杂。在本文中,我们提出了一种基于标记随机有限集(RFS)方法的生物细胞跟踪方法来研究细胞迁移模式。我们的方法通过使用具有对象生成的广义标签多伯努利(GLMB)滤波器和鲁棒的基数概率假设密度(CPHD)来处理未知和时变的检测概率和杂波率来跟踪具有谱系的细胞。所提出的方法能够量化跟踪解的确定性水平。通过对乳腺癌细胞迁移序列的分析,验证了该算法的种群动态推断能力。
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