从报告蛋白群体快照数据重建启动子活性统计

E. Cinquemani
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引用次数: 6

摘要

从蛋白质报告数据分析基因表达和调控动态的关键步骤是重建启动子活性。虽然在人口平均情况下投入了大量的注意力,但对于随机模型和单个细胞数据,这个问题还没有得到详细的解决。在这项工作中,我们从随后时间收集的细胞样本中报告蛋白丰度的相应统计数据中处理启动子活性统计数据的时间谱重建,如群体均值和方差。基于所谓的基因表达随机电报模型,我们从模型参数的结构和实际可识别性以及通过正则化反褶积直接重建启动子活性均值和方差谱两方面解决了这个问题,为相关示例的计算机分析提供了分析工具、理论结果和我们的方法的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reconstruction of promoter activity statistics from reporter protein population snapshot data
A critical step in the analysis of the dynamics of gene expression and regulation from protein reporter data is the reconstruction of promoter activity. While devoted significant attention in a population-average setting, the problem has not been addressed in much detail for stochastic models and individual cell data. In this work we address the reconstruction of time profiles of promoter activity statistics, such as population mean and variance, from the corresponding statistics of reporter protein abundance in cell samples collected at subsequent times. Based on the so-called random telegraph model of gene expression, we address the problem both in terms of structural and practical identifiability of the model parameters and of the direct reconstruction of promoter activity mean and variance profiles via regularized deconvolution, providing analysis tools, theoretical results and application of our methods to the in silico analysis of a relevant example.
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