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Nonlinear-Model-Based Analysis Methods for Time-Course Gene Expression Data

机译:基于非线性模型的时间课程基因表达数据分析方法

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Microarray technology has produced a huge body of time-course gene expression data and will continue to produce more. Such gene expression data has been proved useful in genomic disease diagnosis and drug design. The challenge is how to uncover useful information from such data by proper analysis methods such as significance analysis and clustering analysis. Many statistic-based significance analysis methods and distance/correlation-based clustering analysis methods have been applied to time-course expression data. However, these techniques are unable to account for the dynamics of such data. It is the dynamics that characterizes such data and that should be considered in analysis of such data. In this paper, we employ a nonlinear model to analyse time-course gene expression data. We firstly develop an efficient method for estimating the parameters in the nonlinear model. Then we utilize this model to perform the significance analysis of individually differentially expressed genes and clustering analysis of a set of gene expression profiles. The verification with two synthetic datasets shows that our developed significance analysis method and cluster analysis method outperform some existing methods. The application to one real-life biological dataset illustrates that the analysis results of our developed methods are in agreement with the existing results.
机译:微阵列技术产生了巨大的时期基因表达数据,并将继续产生更多。已经证明了这种基因表达数据可用于基因组疾病诊断和药物设计。挑战是如何通过适当的分析方法从这些数据中揭示有用信息,例如显着性分析和聚类分析。许多基于统计的显着性分析方法和基于距离/相关的聚类分析方法已应用于时间课程表达数据。但是,这些技术无法解释此类数据的动态。它是表征这些数据的动态,并且应该在分析这些数据时考虑。在本文中,我们采用非线性模型来分析时间疗程基因表达数据。我们首先开发了一种估计非线性模型中参数的有效方法。然后我们利用该模型来对一组基因表达谱进行单独差异表达基因的重要性分析和对组群表达谱的聚类分析。具有两个合成数据集的验证表明,我们的开发意义分析方法和集群分析方法优于一些现有方法。在一个真实生物数据集中的应用说明我们开发方法的分析结果与现有结果一致。

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