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A Growth Curve Model with Fractional Polynomials for Analysing Incomplete Time-Course Data in Microarray Gene Expression Studies

机译:具有分数多项式的增长曲线模型用于分析微阵列基因表达研究中不完整的时间课程数据

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摘要

Identifying the various gene expression response patterns is a challenging issue in expression microarray time-course experiments. Due to heterogeneity in the regulatory reaction among thousands of genes tested, it is impossible to manually characterize a parametric form for each of the time-course pattern in a gene by gene manner. We introduce a growth curve model with fractional polynomials to automatically capture the various time-dependent expression patterns and meanwhile efficiently handle missing values due to incomplete observations. For each gene, our procedure compares the performances among fractional polynomial models with power terms from a set of fixed values that offer a wide range of curve shapes and suggests a best fitting model. After a limited simulation study, the model has been applied to our human in vivo irritated epidermis data with missing observations to investigate time-dependent transcriptional responses to a chemical irritant. Our method was able to identify the various nonlinear time-course expression trajectories. The integration of growth curves with fractional polynomials provides a flexible way to model different time-course patterns together with model selection and significant gene identification strategies that can be applied in microarray-based time-course gene expression experiments with missing observations.
机译:在表达微阵列时程实验中,鉴定各种基因表达应答模式是一个具有挑战性的问题。由于测试的数千个基因在调节反应中存在异质性,因此无法通过基因方式手动表征每个时程模式的参数形式。我们引入带有分数多项式的增长曲线模型,以自动捕获各种时间相关的表达模式,并同时有效处理由于观察不完整而导致的缺失值。对于每个基因,我们的程序将分数多项式模型与幂项的性能进行比较,这些幂项来自一组固定值,这些固定值提供了广泛的曲线形状并提出了最佳拟合模型。经过有限的模拟研究后,该模型已应用于我们的人体体内刺激的表皮数据,但缺少观察值,以研究对化学刺激物的时间依赖性转录反应。我们的方法能够识别各种非线性时程表达轨迹。生长曲线与分数多项式的集成提供了一种灵活的方式来对不同的时程模式进行建模,并提供了模型选择和重要的基因识别策略,这些策略可用于基于微阵列的时程基因表达实验而缺少观察值。

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