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Towards Standardization of Data Normalization Strategies to Improve Urinary Metabolomics Studies by GC×GC-TOFMS

机译:朝着改善GC×GC-TOFM改善尿代谢源研究的数据标准化策略的标准化

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摘要

Urine is a popular biofluid for metabolomics studies due to its simple, non-invasive collection and its availability in large quantities, permitting frequent sampling, replicate analyses, and sample banking. The biggest disadvantage with using urine is that it exhibits significant variability in concentration and composition within an individual over relatively short periods of time (arising from various external factors and internal processes regulating the body’s water and solute content). In treating the data from urinary metabolomics studies, one must account for the natural variability of urine concentrations to avoid erroneous data interpretation. Amongst various proposed approaches to account for broadly varying urine sample concentrations, normalization to creatinine has been widely accepted and is most commonly used. MS total useful signal (MSTUS) is another normalization method that has been recently reported for mass spectrometry (MS)-based metabolomics studies. Herein, we explored total useful peak area (TUPA), a modification of MSTUS that is applicable to GC×GC-TOFMS (and data from other separations platforms), for sample normalization in urinary metabolomics studies. Performance of TUPA was compared to the two most common normalization approaches, creatinine adjustment and Total Peak Area (TPA) normalization. Each normalized dataset was evaluated using Principal Component Analysis (PCA). The results showed that TUPA outperformed alternative normalization methods to overcome urine concentration variability. Results also conclusively demonstrate the risks in normalizing data to creatinine.
机译:尿液是一种流行的生物流体,用于代谢组学研究,由于其简单,无侵入性收集及其大量可用性,允许频繁采样,复制分析和样品银行。使用尿液的最大缺点是它在相对较短的时间内(由各种外部因素和调节身体水和溶质含量的内部过程产生的个体内具有显着的浓度和组成的可变性。在治疗尿代谢组研究中的数据时,必须考虑尿液浓度的自然变异,以避免错误的数据解释。在各种提出的涉及尿液样品浓度的各种拟议方法中,对肌酐的标准化已被广泛接受,并且是最常用的。 MS总有用信号(MSTUS)是最近报道的另一种标准化方法,其用于基于质谱(MS)的代谢组研究。在此,我们探讨了总有用的峰面积(TUPA),MSTU的修改,其适用于GC×GC-TOFM(以及来自其他分离平台的数据),用于尿代谢组学研究中的样本标准化。将Tupa的性能与两种最常见的归一化方法,肌酐调整和总峰值区域(TPA)标准化进行比较。使用主成分分析(PCA)评估每个归一化数据集。结果表明,TUPA优于克服尿液浓度变异性的替代标准化方法。结果还得出了展示将数据归一化为肌酐的风险。

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