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首页> 外文期刊>Applied mathematics letters >A structured population modeling framework for quantifying and predicting gene expression noise in flow cytometry data
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A structured population modeling framework for quantifying and predicting gene expression noise in flow cytometry data

机译:结构化的种群建模框架,用于量化和预测流式细胞仪数据中的基因表达噪声

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摘要

We formulated a structured population model with distributed parameters to identify mechanisms that contribute to gene expression noise in time-dependent flow cytometry data. The model was validated using cell population-level gene expression data from two experiments with synthetically engineered eukaryotic cells. Our model captures the qualitative noise features of both experiments and accurately fit the data from the first experiment. Our results suggest that cellular switching between high and low expression states and transcriptional re-initiation are important factors needed to accurately describe gene expression noise with a structured population model.
机译:我们制定了具有分布参数的结构化种群模型,以确定在时间依赖性流式细胞仪数据中有助于基因表达噪声的机制。使用来自两个人工合成真核细胞实验的细胞群体水平基因表达数据验证了该模型。我们的模型捕获了两个实验的定性噪声特征,并准确拟合了第一个实验的数据。我们的结果表明,在高表达状态和低表达状态之间进行细胞切换以及转录重新初始化是使用结构化种群模型准确描述基因表达噪声所需的重要因素。

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