Literature DB >> 19605365

Normalization and statistical analysis of quantitative proteomics data generated by metabolic labeling.

Lily Ting1, Mark J Cowley, Seah Lay Hoon, Michael Guilhaus, Mark J Raftery, Ricardo Cavicchioli.   

Abstract

Comparative proteomics is a powerful analytical method for learning about the responses of biological systems to changes in growth parameters. To make confident inferences about biological responses, proteomics approaches must incorporate appropriate statistical measures of quantitative data. In the present work we applied microarray-based normalization and statistical analysis (significance testing) methods to analyze quantitative proteomics data generated from the metabolic labeling of a marine bacterium (Sphingopyxis alaskensis). Quantitative data were generated for 1,172 proteins, representing 1,736 high confidence protein identifications (54% genome coverage). To test approaches for normalization, cells were grown at a single temperature, metabolically labeled with (14)N or (15)N, and combined in different ratios to give an artificially skewed data set. Inspection of ratio versus average (MA) plots determined that a fixed value median normalization was most suitable for the data. To determine an appropriate statistical method for assessing differential abundance, a -fold change approach, Student's t test, unmoderated t test, and empirical Bayes moderated t test were applied to proteomics data from cells grown at two temperatures. Inverse metabolic labeling was used with multiple technical and biological replicates, and proteomics was performed on cells that were combined based on equal optical density of cultures (providing skewed data) or on cell extracts that were combined to give equal amounts of protein (no skew). To account for arbitrarily complex experiment-specific parameters, a linear modeling approach was used to analyze the data using the limma package in R/Bioconductor. A high quality list of statistically significant differentially abundant proteins was obtained by using lowess normalization (after inspection of MA plots) and applying the empirical Bayes moderated t test. The approach also effectively controlled for the number of false discoveries and corrected for the multiple testing problem using the Storey-Tibshirani false discovery rate (Storey, J. D., and Tibshirani, R. (2003) Statistical significance for genomewide studies. Proc. Natl. Acad. Sci. U.S.A. 100, 9440-9445). The approach we have developed is generally applicable to quantitative proteomics analyses of diverse biological systems.

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Year:  2009        PMID: 19605365      PMCID: PMC2758752          DOI: 10.1074/mcp.M800462-MCP200

Source DB:  PubMed          Journal:  Mol Cell Proteomics        ISSN: 1535-9476            Impact factor:   5.911


  40 in total

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2.  Analysis of the Plasmodium falciparum proteome by high-accuracy mass spectrometry.

Authors:  Edwin Lasonder; Yasushi Ishihama; Jens S Andersen; Adriaan M W Vermunt; Arnab Pain; Robert W Sauerwein; Wijnand M C Eling; Neil Hall; Andrew P Waters; Hendrik G Stunnenberg; Matthias Mann
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3.  Statistics for proteomics: experimental design and 2-DE differential analysis.

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Journal:  J Chromatogr B Analyt Technol Biomed Life Sci       Date:  2006-11-01       Impact factor: 3.205

4.  Evaluation of multidimensional chromatography coupled with tandem mass spectrometry (LC/LC-MS/MS) for large-scale protein analysis: the yeast proteome.

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Journal:  J Proteome Res       Date:  2003 Jan-Feb       Impact factor: 4.466

5.  Statistical analysis of relative labeled mass spectrometry data from complex samples using ANOVA.

Authors:  Ann L Oberg; Douglas W Mahoney; Jeanette E Eckel-Passow; Christopher J Malone; Russell D Wolfinger; Elizabeth G Hill; Leslie T Cooper; Oyere K Onuma; Craig Spiro; Terry M Therneau; H Robert Bergen
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6.  Mass spectrometric sequencing of proteins silver-stained polyacrylamide gels.

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7.  Treatment of missing values for multivariate statistical analysis of gel-based proteomics data.

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8.  DNA microarray normalization methods can remove bias from differential protein expression analysis of 2D difference gel electrophoresis results.

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9.  Experimental and statistical considerations to avoid false conclusions in proteomics studies using differential in-gel electrophoresis.

Authors:  Natasha A Karp; Paul S McCormick; Matthew R Russell; Kathryn S Lilley
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10.  Novel method for rapid measurement of growth of mycobacteria in detergent-free media.

Authors:  P R Meyers; W R Bourn; L M Steyn; P D van Helden; A D Beyers; G D Brown
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  49 in total

1.  Peptide-level Robust Ridge Regression Improves Estimation, Sensitivity, and Specificity in Data-dependent Quantitative Label-free Shotgun Proteomics.

Authors:  Ludger J E Goeminne; Kris Gevaert; Lieven Clement
Journal:  Mol Cell Proteomics       Date:  2015-11-13       Impact factor: 5.911

2.  Precision, proteome coverage, and dynamic range of Arabidopsis proteome profiling using (15)N metabolic labeling and label-free approaches.

Authors:  Borjana Arsova; Henrik Zauber; Waltraud X Schulze
Journal:  Mol Cell Proteomics       Date:  2012-05-05       Impact factor: 5.911

3.  tRNA tKUUU, tQUUG, and tEUUC wobble position modifications fine-tune protein translation by promoting ribosome A-site binding.

Authors:  Vanessa Anissa Nathalie Rezgui; Kshitiz Tyagi; Namit Ranjan; Andrey L Konevega; Joerg Mittelstaet; Marina V Rodnina; Matthias Peter; Patrick G A Pedrioli
Journal:  Proc Natl Acad Sci U S A       Date:  2013-07-08       Impact factor: 11.205

4.  Quantitative proteomics by metabolic labeling of model organisms.

Authors:  Joost W Gouw; Jeroen Krijgsveld; Albert J R Heck
Journal:  Mol Cell Proteomics       Date:  2009-11-19       Impact factor: 5.911

5.  Proteomic insights into the lifestyle of an environmentally relevant marine bacterium.

Authors:  Joseph Alexander Christie-Oleza; Bernard Fernandez; Balbina Nogales; Rafael Bosch; Jean Armengaud
Journal:  ISME J       Date:  2011-07-21       Impact factor: 10.302

6.  Glycoprotein Enrichment Analytical Techniques: Advantages and Disadvantages.

Authors:  R Zhu; L Zacharias; K M Wooding; W Peng; Y Mechref
Journal:  Methods Enzymol       Date:  2017-01-16       Impact factor: 1.600

7.  Lipid Droplet Isolation for Quantitative Mass Spectrometry Analysis.

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Journal:  J Vis Exp       Date:  2017-04-17       Impact factor: 1.355

Review 8.  Protein analysis by shotgun/bottom-up proteomics.

Authors:  Yaoyang Zhang; Bryan R Fonslow; Bing Shan; Moon-Chang Baek; John R Yates
Journal:  Chem Rev       Date:  2013-02-26       Impact factor: 60.622

9.  Interspecies Competition Impacts Targeted Manipulation of Human Gut Bacteria by Fiber-Derived Glycans.

Authors:  Michael L Patnode; Zachary W Beller; Nathan D Han; Jiye Cheng; Samantha L Peters; Nicolas Terrapon; Bernard Henrissat; Sophie Le Gall; Luc Saulnier; David K Hayashi; Alexandra Meynier; Sophie Vinoy; Richard J Giannone; Robert L Hettich; Jeffrey I Gordon
Journal:  Cell       Date:  2019-09-19       Impact factor: 41.582

10.  Tracking the transcriptional host response from the acute to the regenerative phase of experimental pneumococcal meningitis.

Authors:  Matthias Wittwer; Denis Grandgirard; Janine Rohrbach; Stephen L Leib
Journal:  BMC Infect Dis       Date:  2010-06-17       Impact factor: 3.090

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