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Closed-loop, multiobjective optimization of two-dimensional gas chromatography/mass spectrometry for serum metabolomics

机译:血清代谢组学的二维气相色谱/质谱的闭环多目标优化

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摘要

Metabolomics seeks to measure potentially all the metabolites in a biological sample, and consequently, we need to develop and optimize methods to increase significantly the number of metabolites we can detect. We extended the closed-loop (iterative, automated) optimization system that we had previously developed for one-dimensional GC-TOF-MS (O'Hagan, S.; Dunn, W. B.; Brown, M.; Knowles, J. D.; Kell, D. B. Anal. Chem. 2005, 77, 290-303) to comprehensive two-dimensional (GCxGC) chromatography. The heuristic approach used was a multiobjective version of the efficient global optimization algorithm. In just 300 automated runs, we improved the number of metabolites observable relative to those in 1D GC by some 3-fold. The optimized conditions allowed for the detection of over 4000 raw peaks, of which some 1800 were considered to be real metabolite peaks and not impurities or peaks with a signaloise ratio of less than 5. A variety of computational methods served to explain the basis for the improvement. This closed-loop optimization strategy is a generic and powerful approach for the optimization of any analytical instrumentation.
机译:代谢组学试图检测生物样品中所有可能的代谢物,因此,我们需要开发和优化方法以显着增加可检测到的代谢物的数量。我们扩展了先前为一维GC-TOF-MS开发的闭环(迭代,自动化)优化系统(O'Hagan,S。; Dunn,WB; Brown,M。; Knowles,JD; Kell, DB Anal。Chem。2005,77,290-303)进行全面的二维(GCxGC)色谱分析。使用的启发式方法是高效全局优化算法的多目标版本。在300次自动运行中,与一维GC中的代谢产物相比,我们将可观察到的代谢产物数量提高了约3倍。优化的条件允许检测4000多个原始峰,其中约1800个被认为是真实的代谢物峰,而不是杂质或信噪比小于5的峰。多种计算方法可用来解释该基础为改善。这种闭环优化策略是用于优化任何分析仪器的通用且强大的方法。

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