Chenomx Inc, Edmonton, AB, T5K 2J1, Canada.
J Biomol NMR. 2011 Apr;49(3-4):307-23. doi: 10.1007/s10858-011-9480-x. Epub 2011 Mar 1.
Nuclear magnetic resonance (NMR) and Mass Spectroscopy (MS) are the two most common spectroscopic analytical techniques employed in metabolomics. The large spectral datasets generated by NMR and MS are often analyzed using data reduction techniques like Principal Component Analysis (PCA). Although rapid, these methods are susceptible to solvent and matrix effects, high rates of false positives, lack of reproducibility and limited data transferability from one platform to the next. Given these limitations, a growing trend in both NMR and MS-based metabolomics is towards targeted profiling or "quantitative" metabolomics, wherein compounds are identified and quantified via spectral fitting prior to any statistical analysis. Despite the obvious advantages of this method, targeted profiling is hindered by the time required to perform manual or computer-assisted spectral fitting. In an effort to increase data analysis throughput for NMR-based metabolomics, we have developed an automatic method for identifying and quantifying metabolites in one-dimensional (1D) proton NMR spectra. This new algorithm is capable of using carefully constructed reference spectra and optimizing thousands of variables to reconstruct experimental NMR spectra of biofluids using rules and concepts derived from physical chemistry and NMR theory. The automated profiling program has been tested against spectra of synthetic mixtures as well as biological spectra of urine, serum and cerebral spinal fluid (CSF). Our results indicate that the algorithm can correctly identify compounds with high fidelity in each biofluid sample (except for urine). Furthermore, the metabolite concentrations exhibit a very high correlation with both simulated and manually-detected values.
核磁共振(NMR)和质谱(MS)是代谢组学中最常用的两种光谱分析技术。NMR 和 MS 产生的大型光谱数据集通常使用数据缩减技术(如主成分分析(PCA))进行分析。虽然这些方法速度很快,但它们容易受到溶剂和基质效应、高假阳性率、缺乏重现性以及从一个平台到另一个平台的数据可转移性有限的影响。鉴于这些限制,NMR 和基于 MS 的代谢组学中出现了一种针对特定谱图或“定量”代谢组学的趋势,其中通过光谱拟合来识别和定量化合物,然后再进行任何统计分析。尽管这种方法具有明显的优势,但针对特定谱图的方法受到执行手动或计算机辅助光谱拟合所需时间的限制。为了提高基于 NMR 的代谢组学数据分析的通量,我们开发了一种自动方法,用于识别和定量一维(1D)质子 NMR 光谱中的代谢物。该新算法能够使用精心构建的参考光谱并优化数千个变量,使用源自物理化学和 NMR 理论的规则和概念来重建生物流体的实验 NMR 光谱。该自动分析程序已针对合成混合物的光谱以及尿液、血清和脑脊液(CSF)的生物光谱进行了测试。我们的结果表明,该算法可以在每个生物流体样本中非常准确地识别化合物(尿液除外)。此外,代谢物浓度与模拟值和手动检测值高度相关。