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Cell-to-Cell Variability in Protein Expression during Viral Infection: Monte-Carlo Simulation and Validation based on Confocal Imaging*

机译:病毒感染期间蛋白质表达中的细胞对细胞变异:基于共聚焦成像的蒙特卡罗模拟和验证 *

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摘要

One of the major challenges is to identify the statistical model underlying the heterogeneity in viral protein expression in single cells. In this endeavor, we propose a computational tool to address the cell-to-cell variability in protein expression by random variate generation following probability distributions. Here, we show that statistical modeling using the probability density function of various distribution offers considerable potential for providing stochastic inputs to Monte Carlo simulation. Specifically, we present the ranking between three distribution families including gamma, normal and Weibull distribution using a comparison of cumulative frequency obtained from experiment and simulation. The major contribution of the proposed simulation method is to identify the underlying statistical model in kinetic parameters that capture the variability in protein expression in single cells obtained through imaging using confocal microscopy.
机译:其中一个主要挑战是识别单细胞中病毒蛋白表达中的异质性下面的统计模型。在此努力中,我们提出了一种计算工具,通过随机变化的概率分布来解决蛋白质表达中的细胞对细胞变异性。这里,我们示出了使用各种分布的概率密度函数的统计建模提供了对Monte Carlo仿真提供随机输入的相当大的电位。具体而言,我们在包括从实验和模拟中获得的累积频率的比较,在包括伽马,正常和威布尔分布的三个分配家庭之间的排名。所提出的模拟方法的主要贡献是鉴定通过使用共聚焦显微镜通过成像通过成像而获得的单细胞中蛋白质表达的变异性的动力学参数中的底层统计模型。

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