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Subset Optimization by Reference Matching (STORM): An Optimized Statistical Approach for Recovery of Metabolic Biomarker Structural Information from ~1H NMR Spectra of Biofluids

机译:通过参考匹配(STORM)进行子集优化:从生物流体的〜1H NMR光谱中回收代谢生物标志物结构信息的优化统计方法

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We describe a new multivariate statistical approach to recover metabolite structure information from multiple ~1H NMR spectra in population sample sets. Subset optimization by reference matching (STORM) was developed to select subsets of ~1H NMR spectra that contain specific spectroscopic signatures of biomarkers differentiating between different human populations. STORM aims to improve the visualization of structural correlations in spectroscopic data by using these reduced spectral subsets containing smaller numbers of samples than the number of variables (n p). We have used statistical shrinkage to limit the number of false positive associations and to simplify the overall interpretation of the autocorrelation matrix. The STORM approach has been applied to findings from an ongoing human metabolome-wide association study on body mass index to identify a biomarker metabolite present in a subset of the population. Moreover, we have shown how STORM improves the visualization of more abundant NMR peaks compared to a previously published method (statistical total correlation spectroscopy, STOCSY). STORM is a useful new tool for biomarker discovery in the "omic" sciences that has widespread applicability. It can be applied to any type of data, provided that there is interpretable correlation among variables, and can also be applied to data with more than one dimension (e.g., 2D NMR spectra).
机译:我们描述了一种新的多元统计方法,可从人群样本集中的多个〜1H NMR光谱中回收代谢物的结构信息。开发了通过参考匹配(STORM)进行的子集优化,以选择〜1H NMR光谱的子集,该子集包含可区分不同人群的生物标志物的特定光谱特征。 STORM的目的是通过使用这些减少的光谱子集来改善光谱数据中结构相关性的可视化,这些子集包含的样本数少于变量数(n p)。我们使用统计收缩来限制假阳性关联的数量,并简化自相关矩阵的整体解释。 STORM方法已应用于正在进行的人类代谢组全范围体重指数关联研究的发现,以识别人群中存在的生物标志物代谢物。此外,我们已经显示了STORM与以前发布的方法(统计总相关光谱法,STOCSY)相比如何改善了更丰富的NMR峰的可视化。 STORM是在“组学”科学中发现生物标志物的有用的新工具,具有广泛的适用性。只要变量之间存在可解释的相关性,它就可以应用于任何类型的数据,也可以应用于具有一个以上维度的数据(例如2D NMR光谱)。

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