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Evaluating Low-Intensity Unknown Signals in Quantitative Proton NMR Mixture Analysis

机译:在定量质子NMR混合物分析中评估低强度未知信号

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Analytical analyses of highly complex mixtures, such as biofluids or liquid food products, often give rise to signals for unknown compounds, particularly for compounds at low concentration. Here we compare two conventional chemometric approaches for NMR spectral analysis ("spectral binning" and "high-resolution analysis") with a novel library-based method ("targeted profiling of unknowns", TPU). The three methods were applied to a proton NMR spectral data set of ultrafiltered mouse serum typical of those examined in metabolomics/metabonomics studies. The advantages of high-resolution analysis of typical NMR peaks have been well described previously, and as a result we examined low intensity unknowns peaks (LIUPs). A total of 25 LIUPs were assessed based on their significance to multivariate statistical analysis of the data set using the TPU method. The linearity of NMR signals at low incremental concentration changes (<10 (mu)M) was determined by titration of endogenously occurring metabolites into filtered mouse serum. Carbon-13 decoupling of the NMR spectra was used to ensure isotope-satellite peaks were eliminated. Four peaks were noted as significant to separation between arthritic and diseased animals. The conventional spectral methods were hampered by baseline noise or overlap with high concentration metabolites and were not able to identify these LIUPs reliably. In general, conventional methods, particularly high-resolution analysis, are recommended for peaks with moderate signal-to-noise. The TPU method is recommended for peaks with low signal-to-noise or when compression of spectral data with high fidelity is desirable, such as integration of NMR data into cross-platform studies.
机译:对高度复杂的混合物(例如生物流体或液体食品)的分析通常会产生未知化合物的信号,尤其是低浓度化合物的信号。在这里,我们将两种常规的化学计量学方法(用于“ NMR光谱分析”和“高分辨率分析”)与一种基于库的新颖方法(“目标物的未知物靶向”,TPU)进行比较。将这三种方法应用于代谢组学/代谢组学研究中所检测的超滤小鼠血清的质子NMR光谱数据集。以前已经很好地描述了典型NMR峰的高分辨率分析的优点,因此,我们检查了低强度未知峰(LIUP)。基于它们对使用TPU方法对数据集进行多元统计分析的重要性,总共评估了25个LIUP。通过将内源性代谢物滴定到过滤后的小鼠血清中,可以确定低增量浓度变化(<10μM)时NMR信号的线性。 NMR谱图的碳13解耦用于确保消除同位素-卫星峰。注意到四个峰对关节炎和患病动物之间的分离具有重要意义。常规的光谱方法受到基线噪声的阻碍或与高浓度代谢物的重叠,无法可靠地识别这些LIUP。通常,对于具有中等信噪比的峰,建议使用常规方法,尤其是高分辨率分析。建议将TPU方法用于低信噪比的峰或需要压缩具有高保真度的光谱数据时,例如将NMR数据集成到跨平台研究中。

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