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首页> 外文期刊>Journal of the royal statistical society >A dynamic probabilistic principal components model for the analysis of longitudinal metabolomics data
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A dynamic probabilistic principal components model for the analysis of longitudinal metabolomics data

机译:用于纵向代谢组学数据分析的动态概率主成分模型

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摘要

In a longitudinal metabolomics study, multiple metabolites are measured from several observations at many time points. Interest lies in reducing the dimensionality of such data and in highlighting influential metabolites which change over time. A dynamic probabilistic principal components analysis model is proposed to achieve dimension reduction while appropriately modelling the correlation due to repeated measurements. This is achieved by assuming an auto-regressive model for some of the model parameters. Linear mixed models are subsequently used to identify influential metabolites which change over time. The model proposed is used to analyse data from a longitudinal metabolomics animal study.
机译:在纵向代谢组学研究中,从多个观察点的多个时间点测量了多种代谢物。兴趣在于降低此类数据的维数并突出显示随时间变化的有影响的代谢物。提出了一种动态概率主成分分析模型,以实现降维,同时适当地建模由于重复测量而引起的相关性。这是通过为某些模型参数假设一个自动回归模型来实现的。线性混合模型随后用于识别随时间变化的有影响的代谢物。提出的模型用于分析来自纵向代谢组学动物研究的数据。

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