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An error model for protein quantification

机译:蛋白质定量的误差模型

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Motivation: Quantitative experimental data is the critical bottleneck in the modeling of dynamic cellular processes in systems biology. Here, we present statistical approaches improving reproducibility of protein quantification by immunoprecipitation and immunoblotting. Results: Based on a large data set with more than 3600 data points, we unravel that the main sources of biological variability and experimental noise are multiplicative and log-normally distributed. Therefore, we suggest a log-transformation of the data to obtain additive normally distributed noise. After this transformation, common statistical procedures can be applied to analyze the data. An error model is introduced to account for technical as well as biological variability. Elimination of these systematic errors decrease variability of measurements and allow for a more precise estimation of underlying dynamics of protein concentrations in cellular signaling. The proposed error model is relevant for simulation studies, parameter estimation and model selection, basic tools of systems biology.
机译:动机:定量实验数据是系统生物学中动态细胞过程建模的关键瓶颈。在这里,我们提出了统计方法,通过免疫沉淀和免疫印迹提高了蛋白质定量的可重复性。结果:基于具有3600多个数据点的大型数据集,我们得出结论,生物变异性和实验噪声的主要来源是可乘的并且呈对数正态分布。因此,我们建议对数据进行对数转换以获得加法正态分布的噪声。进行此转换后,可以应用通用的统计程序来分析数据。引入了一个误差模型来说明技术和生物学上的可变性。消除这些系统误差可降低测量的可变性,并可以更精确地估算细胞信号传导中蛋白质浓度的潜在动态。提出的误差模型与仿真研究,参数估计和模型选择,系统生物学的基本工具有关。

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