Department of Surgery and Cancer, Imperial College London, London, UK.
Anal Chem. 2013 May 7;85(9):4605-12. doi: 10.1021/ac400237w. Epub 2013 Apr 9.
One-dimensional (1)H NMR spectra are widely used for metabolic profiling. Such data sets often contain hundreds or thousands of spectra, which typically have variation in their sample chemistry, which leads to chemical shift variation "positional noise". This is a severe problem for metabolite quantification and data analysis, as peak integrals do not necessarily correspond across all spectra in a set. Various alignment algorithms have been developed to address this problem, but different studies have taken different approaches to evaluating the performance of NMR alignment routines and can be subjective or rely on an arbitrary cutoff. Furthermore, most alignment approaches completely fail to deal with peaks that overlap. We adopt the simple and robust method of ordering spectra with respect to an internally varying peak and use this to compare different alignment algorithms. Furthermore, we use the information from this procedure to help improve a Bayesian approach to automated peak deconvolution by restricting the prior probability distribution of the peak position in a model-free manner and compare the performance to manual peak deconvolution and to binning. This combination of spectral ordering and compound deconvolution improved the quality of the data for quantitative metabolomics.
一维 (1)H NMR 光谱广泛用于代谢组学分析。此类数据集通常包含数百或数千个光谱,这些光谱在样本化学性质上存在差异,这导致化学位移发生变化,出现“位置噪声”。这是代谢物定量和数据分析的一个严重问题,因为峰积分不一定与数据集内的所有光谱相对应。已经开发了各种对齐算法来解决这个问题,但不同的研究采用了不同的方法来评估 NMR 对齐程序的性能,这些方法可能具有主观性或依赖于任意的截止值。此外,大多数对齐方法完全无法处理重叠的峰。我们采用简单而稳健的方法,根据内部变化的峰对光谱进行排序,并使用这种方法来比较不同的对齐算法。此外,我们利用该程序的信息,通过以无模型的方式限制模型中峰位置的先验概率分布,帮助改进自动峰分解的贝叶斯方法,并将其与手动峰分解和分箱进行比较。这种光谱排序和化合物分解的组合提高了定量代谢组学数据的质量。