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An integrative clustering and modeling algorithm for dynamical gene expression data

机译:动态基因表达数据的集成聚类与建模算法

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Motivation: The precise dynamics of gene expression is often crucial for proper response to stimuli. Time-course gene-expression profiles can provide insights about the dynamics of many cellular responses, but are often noisy and measured at arbitrary intervals, posing a major analysis challenge.Results: We developed an algorithm that interleaves clustering time-course gene-expression data with estimation of dynamic models of their response by biologically meaningful parameters. In combining these two tasks we overcome obstacles posed in each one. Moreover, our approach provides an easy way to compare between responses to different stimuli at the dynamical level. We use our approach to analyze the dynamical transcriptional responses to inflammation and anti-viral stimuli in mice primary dendritic cells, and extract a concise representation of the different dynamical response types. We analyze the similarities and differences between the two stimuli and identify potential regulators of this complex transcriptional response.
机译:动机:基因表达的精确动态通常对于正确响应刺激至关重要。时程基因表达谱可以提供有关许多细胞反应动力学的见解,但通常是嘈杂的,并且以任意间隔进行测量,从而构成了主要的分析挑战。结果:我们开发了一种交错聚类时程基因表达数据的算法并通过生物学上有意义的参数估算其响应的动态模型。通过将这两项任务结合起来,我们克服了每一项任务中的障碍。此外,我们的方法提供了一种简单的方法,可以在动力学水平上比较对不同刺激的反应。我们使用我们的方法来分析小鼠原代树突状细胞中对炎症和抗病毒刺激的动态转录反应,并提取不同动力反应类型的简明表示。我们分析了两种刺激之间的异同,并确定了这种复杂转录反应的潜在调控因子。

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