Mathematics, Imperial College, London, UK.
Adv Exp Med Biol. 2011;696:307-15. doi: 10.1007/978-1-4419-7046-6_31.
Metabolomics is the study of the complement of small molecule metabolites in cells, biofluids and tissues. Many metabolomic experiments are designed to compare changes observed over time under two or more experimental conditions (e.g. a control and drug-treated group), thus producing time course data. Models from traditional time series analysis are often unsuitable because, by design, only very few time points are available and there are a high number of missing values. We propose a functional data analysis approach for modelling short time series arising in metabolomic studies which overcomes these obstacles. Our model assumes that each observed time series is a smooth random curve, and we propose a statistical approach for inferring this curve from repeated measurements taken on the experimental units. A test statistic for detecting differences between temporal profiles associated with two experimental conditions is then presented. The methodology has been applied to NMR spectroscopy data collected in a pre-clinical toxicology study.
代谢组学是研究细胞、生物体液和组织中小分子代谢物成分的学科。许多代谢组学实验旨在比较两种或更多实验条件下(例如,对照和药物处理组)随时间观察到的变化,从而产生时间过程数据。传统时间序列分析的模型通常不适用,因为设计时只有很少的时间点可用,并且存在大量缺失值。我们提出了一种功能数据分析方法来建模代谢组学研究中产生的短期时间序列,该方法克服了这些障碍。我们的模型假设每个观察到的时间序列是一条平滑的随机曲线,我们提出了一种从实验单元上重复测量中推断该曲线的统计方法。然后提出了一个用于检测与两种实验条件相关的时间分布差异的检验统计量。该方法已应用于临床前毒理学研究中采集的 NMR 光谱数据。