Department of Computer Science, University of North Carolina at Chapel Hill, Chapel Hill, North Carolina, USA.
BMC Bioinformatics. 2010 Mar 9;11:123. doi: 10.1186/1471-2105-11-123.
Nuclear magnetic resonance spectroscopy is one of the primary tools in metabolomics analyses, where it is used to track and quantify changes in metabolite concentrations or profiles in response to perturbation through disease, toxicants or drugs. The spectra generated through such analyses are typically confounded by noise of various types, obscuring the signals and hindering downstream statistical analysis. Such issues are becoming increasingly significant as greater numbers of large-scale systems or longitudinal studies are being performed, in which many spectra from different conditions need to be compared simultaneously.
We describe a novel approach, termed Progressive Consensus Alignment of Nmr Spectra (PCANS), for the alignment of NMR spectra. Through the progressive integration of many pairwise comparisons, this approach generates a single consensus spectrum as an output that is then used to adjust the chemical shift positions of the peaks from the original input spectra to their final aligned positions. We characterize the performance of PCANS by aligning simulated NMR spectra, which have been provided with user-defined amounts of chemical shift variation as well as inter-group differences as would be observed in control-treatment applications. Moreover, we demonstrate how our method provides better performance than either template-based alignment or binning. Finally, we further evaluate this approach in the alignment of real mouse urine spectra and demonstrate its ability to improve downstream PCA and PLS analyses.
By avoiding the use of a template or reference spectrum, PCANS allows for the creation of a consensus spectrum that enhances the signals within the spectra while maintaining sample-specific features. This approach is of greatest benefit when complex samples are being analyzed and where it is expected that there will be spectral features unique and/or strongly different between subgroups within the samples. Furthermore, this approach can be potentially applied to the alignment of any data having spectra-like properties.
磁共振波谱分析是代谢组学分析的主要工具之一,用于跟踪和量化代谢物浓度或谱图的变化,以响应疾病、毒物或药物等因素的干扰。通过这种分析产生的光谱通常会受到各种类型的噪声的干扰,从而掩盖信号,阻碍下游的统计分析。随着越来越多的大规模系统或纵向研究的进行,这些问题变得越来越重要,因为需要同时比较来自不同条件的许多光谱。
我们描述了一种新的方法,称为磁共振波谱渐进共识对齐(PCANS),用于对齐 NMR 光谱。通过多次两两比较的逐步集成,该方法生成一个单一的共识谱作为输出,然后用于调整原始输入光谱中峰的化学位移位置,使其达到最终对齐的位置。我们通过对齐模拟 NMR 光谱来表征 PCANS 的性能,这些模拟光谱具有用户定义的化学位移变化量以及控制-处理应用中观察到的组间差异。此外,我们展示了我们的方法如何提供比基于模板的对齐或分箱更好的性能。最后,我们在对齐真实的小鼠尿液光谱中进一步评估了这种方法,并证明了它能够改善下游 PCA 和 PLS 分析。
通过避免使用模板或参考光谱,PCANS 允许创建一个共识谱,在保持样品特异性特征的同时增强谱内的信号。当分析复杂的样品,并且预计在样品内的子组之间存在独特和/或强烈不同的光谱特征时,这种方法最有优势。此外,这种方法可以潜在地应用于具有光谱特性的数据的对齐。