Literature DB >> 18251496

Mixed-effects statistical model for comparative LC-MS proteomics studies.

D S Daly1, K K Anderson, E A Panisko, S O Purvine, R Fang, M E Monroe, S E Baker.   

Abstract

Comparing a protein's concentrations across two or more treatments is the focus of many proteomics studies. A frequent source of measurements for these comparisons is a mass spectrometry (MS) analysis of a protein's peptide ions separated by liquid chromatography (LC) following its enzymatic digestion. Alas, LC-MS identification and quantification of equimolar peptides can vary significantly due to their unequal digestion, separation, and ionization. This unequal measurability of peptides, the largest source of LC-MS nuisance variation, stymies confident comparison of a protein's concentration across treatments. Our objective is to introduce a mixed-effects statistical model for comparative LC-MS proteomics studies. We describe LC-MS peptide abundance with a linear model featuring pivotal terms that account for unequal peptide LC-MS measurability. We advance fitting this model to an often incomplete LC-MS data set with REstricted Maximum Likelihood (REML) estimation, producing estimates of model goodness-of-fit, treatment effects, standard errors, confidence intervals, and protein relative concentrations. We illustrate the model with an experiment featuring a known dilution series of a filamentous ascomycete fungus Trichoderma reesei protein mixture. For 781 of the 1546 T. reesei proteins with sufficient data coverage, the fitted mixed-effects models capably described the LC-MS measurements. The LC-MS measurability terms effectively accounted for this major source of uncertainty. Ninety percent of the relative concentration estimates were within 0.5-fold of the true relative concentrations. Akin to the common ratio method, this model also produced biased estimates, albeit less biased. Bias decreased significantly, both absolutely and relative to the ratio method, as the number of observed peptides per protein increased. Mixed-effects statistical modeling offers a flexible, well-established methodology for comparative proteomics studies integrating common experimental designs with LC-MS sample processing plans. It favorably accounts for the unequal LC-MS measurability of peptides and produces informative quantitative comparisons of a protein's concentration across treatments with objective measures of uncertainties.

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Year:  2008        PMID: 18251496     DOI: 10.1021/pr070441i

Source DB:  PubMed          Journal:  J Proteome Res        ISSN: 1535-3893            Impact factor:   4.466


  15 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.  Development and evaluation of normalization methods for label-free relative quantification of endogenous peptides.

Authors:  Kim Kultima; Anna Nilsson; Birger Scholz; Uwe L Rossbach; Maria Fälth; Per E Andrén
Journal:  Mol Cell Proteomics       Date:  2009-07-12       Impact factor: 5.911

3.  High-Dimensional Longitudinal Genomic Data: An analysis used for monitoring viral infections.

Authors:  Lawrence Carin; Alfred Hero; Joseph Lucas; David Dunson; Minhua Chen; Ricardo Heñao; Arnau Tibau-Puig; Aimee Zaas; Christopher W Woods; Geoffrey S Ginsburg
Journal:  IEEE Signal Process Mag       Date:  2012-01-01       Impact factor: 12.551

Review 4.  A comparative analysis of computational approaches to relative protein quantification using peptide peak intensities in label-free LC-MS proteomics experiments.

Authors:  Melissa M Matzke; Joseph N Brown; Marina A Gritsenko; Thomas O Metz; Joel G Pounds; Karin D Rodland; Anil K Shukla; Richard D Smith; Katrina M Waters; Jason E McDermott; Bobbie-Jo Webb-Robertson
Journal:  Proteomics       Date:  2012-11-08       Impact factor: 3.984

5.  Bioinformatics Tools for Mass Spectrometry-Based High-Throughput Quantitative Proteomics Platforms.

Authors:  Alexey V Nefedov; Miroslaw J Gilski; Rovshan G Sadygov
Journal:  Curr Proteomics       Date:  2011-07       Impact factor: 0.837

6.  Platelet proteome changes associated with diabetes and during platelet storage for transfusion.

Authors:  David L Springer; John H Miller; Sherry L Spinelli; Ljiljana Pasa-Tolic; Samuel O Purvine; Donald S Daly; Richard C Zangar; Shuangshuang Jin; Neil Blumberg; Charles W Francis; Mark B Taubman; Ann E Casey; Steven D Wittlin; Richard P Phipps
Journal:  J Proteome Res       Date:  2009-05       Impact factor: 4.466

Review 7.  A Review of Imputation Strategies for Isobaric Labeling-Based Shotgun Proteomics.

Authors:  Lisa M Bramer; Jan Irvahn; Paul D Piehowski; Karin D Rodland; Bobbie-Jo M Webb-Robertson
Journal:  J Proteome Res       Date:  2020-09-25       Impact factor: 4.466

Review 8.  Proteomics pipeline for biomarker discovery of laser capture microdissected breast cancer tissue.

Authors:  Ning Qing Liu; René B H Braakman; Christoph Stingl; Theo M Luider; John W M Martens; John A Foekens; Arzu Umar
Journal:  J Mammary Gland Biol Neoplasia       Date:  2012-05-30       Impact factor: 2.673

9.  Metaprotein expression modeling for label-free quantitative proteomics.

Authors:  Joseph E Lucas; J Will Thompson; Laura G Dubois; Jeanette McCarthy; Hans Tillmann; Alexander Thompson; Norah Shire; Ron Hendrickson; Francisco Dieguez; Phyllis Goldman; Kathleen Schwarz; Keyur Patel; John McHutchison; M Arthur Moseley
Journal:  BMC Bioinformatics       Date:  2012-05-04       Impact factor: 3.169

10.  Statistical protein quantification and significance analysis in label-free LC-MS experiments with complex designs.

Authors:  Timothy Clough; Safia Thaminy; Susanne Ragg; Ruedi Aebersold; Olga Vitek
Journal:  BMC Bioinformatics       Date:  2012-11-05       Impact factor: 3.169

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