| Literature DB >> 22038874 |
Bobbie-Jo M Webb-Robertson1, Melissa M Matzke, Jon M Jacobs, Joel G Pounds, Katrina M Waters.
Abstract
Quantification of LC-MS peak intensities assigned during peptide identification in a typical comparative proteomics experiment will deviate from run-to-run of the instrument due to both technical and biological variation. Thus, normalization of peak intensities across an LC-MS proteomics dataset is a fundamental step in pre-processing. However, the downstream analysis of LC-MS proteomics data can be dramatically affected by the normalization method selected. Current normalization procedures for LC-MS proteomics data are presented in the context of normalization values derived from subsets of the full collection of identified peptides. The distribution of these normalization values is unknown a priori. If they are not independent from the biological factors associated with the experiment the normalization process can introduce bias into the data, possibly affecting downstream statistical biomarker discovery. We present a novel approach to evaluate normalization strategies, which includes the peptide selection component associated with the derivation of normalization values. Our approach evaluates the effect of normalization on the between-group variance structure in order to identify the most appropriate normalization methods that improve the structure of the data without introducing bias into the normalized peak intensities.Entities:
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Year: 2011 PMID: 22038874 PMCID: PMC3517140 DOI: 10.1002/pmic.201100078
Source DB: PubMed Journal: Proteomics ISSN: 1615-9853 Impact factor: 3.984