2018
DOI: 10.1002/bies.201700210
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Normalizing Gas‐Chromatography–Mass Spectrometry Data: Method Choice can Alter Biological Inference

Abstract: We demonstrate how different normalization techniques in GC-MS analysis impart unique properties to the data, influencing any biological inference. Using simulations, and empirical data, we compare the most commonly used techniques (Total Sum Normalization 'TSN'; Median Normalization 'MN'; Probabilistic Quotient Normalization 'PQN'; Internal Standard Normalization 'ISN'; External Standard Normalization 'ESN'; and a compositional data approach 'CODA'). When differences between biological classes are pronounced,… Show more

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Cited by 40 publications
(24 citation statements)
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References 49 publications
(157 reference statements)
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“…The Agilent Technologies Mass Hunter version 07.06 (Palo Alto, CA, USA) was used as software for acquisition and quantification of the analysis data. For relative quantification of results, normalization method was applied [ 19 ]. Recovery during trimethylsilyl (TMS) derivatization step is from 90% to 106%, and precision %RSD is less than 4% [ 20 ].…”
Section: Methodsmentioning
confidence: 99%
“…The Agilent Technologies Mass Hunter version 07.06 (Palo Alto, CA, USA) was used as software for acquisition and quantification of the analysis data. For relative quantification of results, normalization method was applied [ 19 ]. Recovery during trimethylsilyl (TMS) derivatization step is from 90% to 106%, and precision %RSD is less than 4% [ 20 ].…”
Section: Methodsmentioning
confidence: 99%
“…Because protein expression levels were determined via UPLC-MS/MS, small differences in sample concentrations and/or measurement error can introduce artefactual differences across samples. To control for this effect, we used Probabilistic Quotient Normalization (PQN) [109], which has been shown to have the best performance of all routinely used normalization methods [110]. After PQN transformation, we filtered out proteins with fewer than 100 counts per million (1018 proteins).…”
Section: Functional Go Clusteringmentioning
confidence: 99%
“…Because GC-MS profiles carry relative, and not absolute, information, even small differences in sample volume, concentration, in combination with impurities and background noise, can influence the apparent abundance of compounds, i.e., the 'size effect' (Noonan et al 2018). Because of this size effect, pre-processing must be carried out before profiles can be compared statistically.…”
Section: Statistical Analysesmentioning
confidence: 99%
“…We used Probabilistic Quotient Normalization (PQN; Dieterle et al 2006), which controls for the size effect by calibrating all profiles against the median profile (i.e., median peak values over all samples). Unlike other normalization methods, statistical analyses on PQN transformed data tend to have low false-positive rates, and can accurately recover groups of interest without introducing artefactual differences (Noonan et al 2018).…”
Section: Statistical Analysesmentioning
confidence: 99%
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