Development and Application of Ultra-Performance Liquid Chromatography-TOF MS for Precision Large Scale Urinary Metabolic Phenotyping

作者:Lewis Matthew R*; Pearce Jake T M; Spagou Konstantina; Green Martin; Dona Anthony C; Yuen Ada H Y; David Mark; Berry David J; Chappell Katie; Horneffer van der Sluis Verena; Shaw Rachel; Lovestone Simon; Elliott Paul; Shockcor John; Lindon John C; Cloarec Olivier; Takats Zoltan; Holmes Elaine; Nicholson Jeremy K*
来源:Analytical Chemistry, 2016, 88(18): 9004-9013.
DOI:10.1021/acs.analchem.6b01481

摘要

To better understand the molecular mechanisms underpinning physiological variation in human populations, metabolic phenotyping approaches are increasingly being applied to studies involving hundreds and thousands of biofluid samples. Hyphenated ultra-performance liquid chromatography-mass spectrometry (UPLC-MS) has become a fundamental tool for this purpose. However, the seemingly inevitable need to analyze large studies in multiple analytical batches for. UPLC-MS analysis poses a challenge to. data quality which has been recognized in the field. Herein., we describe in detail a fit-for-purpose UPLC-MS platform:: method set, and sample analysis workflow, capable of sustained analysis on an industrial scale and allowing batch-free operation for large studies. Using complementary reversed-phase chromatography (RPC) and hydrophilic interaction liquid chromatography (HILT() together with high resolution orthogonal acceleration time-of-flight mass spectrometry (oaTOF-MS), exceptional measurement precision is exemplified with independent,epidemiological sample sets of approximately 650 and 1000 participant samples. Evaluation of molecular reference targets in repeated injections of pooled quality control (QC) samples distributed throughout each experiment demonstrates a mean retention time relative standard deviation (RSD) of <0.3% across all assays in both studies and a mean peak area RSD of <15% in the raw data. To more globally assess quality of the profiling data, untargeted feature extraction was performed followed by data filtration according to feature intensity response to QC sample dilution. Analysis of the remaining, features within the-repeated QC sample measurements demonstrated median peak area RSD values of <20% for the RPC assays and <25% for the HILIC assays. These values represent the quality of the raw data, as no normalization or feature-specific intensity correction was applied: While the data in each experiment was acquired in a single continuous' batch, instances of minor time-dependent intensity drift were observed, highlighting the utility of data correction technique's despite reducing the dependency on them for generating high quality data. These results demonstrate that the platform and methodology presented herein is fit-for-use in large scale metabolic phenotyping studies, challenging the assertion that such screening is inherently limited by batch effects. Details of the pipeline used to generate high quality raw data and mitigate the need for batch correction are provided.