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Approximate Bayesian Computation for Stochastic Single-Cell Time-Lapse Data Using Multivariate Test Statistics

机译:使用多元检验统计量对随机单细胞时移数据进行近似贝叶斯计算

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Stochastic dynamics of individual cells are mostly modeled with continuous time Markov chains (CTMCs). The parameters of CTMCs can be inferred using likelihood-based and likelihood-free methods. In this paper, we introduce a likelihood-free approximate Bayesian computation (ABC) approach for single-cell time-lapse data. This method uses multivariate statistics on the distribution of single-cell trajectories. We evaluated our method for samples of a bivariate normal distribution as well as for artificial equilibrium and non-equilibrium single-cell time-series of a one-stage model of gene expression. In addition, we assessed our method for parameter variability and for the case of tree-structured time-series data. A comparison with an existing method using univariate statistics revealed an improved parameter identifiability using multivariate test statistics.
机译:单个细胞的随机动力学大多采用连续时间马尔可夫链(CTMC)进行建模。可以使用基于似然和无似然的方法来推断CTMC的参数。在本文中,我们介绍了单细胞时移数据的无似然近似贝叶斯计算(ABC)方法。该方法使用有关单细胞轨迹分布的多元统计信息。我们评估了我们的方法,以双变量正态分布的样本以及基因表达的一阶段模型的人工平衡和非平衡单细胞时间序列。此外,我们评估了参数可变性和树形时间序列数据情况下的方法。与使用单变量统计的现有方法进行比较,发现使用多变量检验统计的参数可识别性有所提高。

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