Literature DB >> 23875961

Assessment and improvement of statistical tools for comparative proteomics analysis of sparse data sets with few experimental replicates.

Veit Schwämmle1, Ileana Rodríguez León, Ole Nørregaard Jensen.   

Abstract

Large-scale quantitative analyses of biological systems are often performed with few replicate experiments, leading to multiple nonidentical data sets due to missing values. For example, mass spectrometry driven proteomics experiments are frequently performed with few biological or technical replicates due to sample-scarcity or due to duty-cycle or sensitivity constraints, or limited capacity of the available instrumentation, leading to incomplete results where detection of significant feature changes becomes a challenge. This problem is further exacerbated for the detection of significant changes on the peptide level, for example, in phospho-proteomics experiments. In order to assess the extent of this problem and the implications for large-scale proteome analysis, we investigated and optimized the performance of three statistical approaches by using simulated and experimental data sets with varying numbers of missing values. We applied three tools, including standard t test, moderated t test, also known as limma, and rank products for the detection of significantly changing features in simulated and experimental proteomics data sets with missing values. The rank product method was improved to work with data sets containing missing values. Extensive analysis of simulated and experimental data sets revealed that the performance of the statistical analysis tools depended on simple properties of the data sets. High-confidence results were obtained by using the limma and rank products methods for analyses of triplicate data sets that exhibited more than 1000 features and more than 50% missing values. The maximum number of differentially represented features was identified by using limma and rank products methods in a complementary manner. We therefore recommend combined usage of these methods as a novel and optimal way to detect significantly changing features in these data sets. This approach is suitable for large quantitative data sets from stable isotope labeling and mass spectrometry experiments and should be applicable to large data sets of any type. An R script that implements the improved rank products algorithm and the combined analysis is available.

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Year:  2013        PMID: 23875961     DOI: 10.1021/pr400045u

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


  51 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.  Integrated Omic Analysis of a Guinea Pig Model of Heart Failure and Sudden Cardiac Death.

Authors:  D Brian Foster; Ting Liu; Kai Kammers; Robert O'Meally; Ni Yang; Kyriakos N Papanicolaou; C Conover Talbot; Robert N Cole; Brian O'Rourke
Journal:  J Proteome Res       Date:  2016-08-03       Impact factor: 4.466

3.  Mutations in Vps15 perturb neuronal migration in mice and are associated with neurodevelopmental disease in humans.

Authors:  Thomas Gstrein; Andrew Edwards; Anna Přistoupilová; Ines Leca; Martin Breuss; Sandra Pilat-Carotta; Andi H Hansen; Ratna Tripathy; Anna K Traunbauer; Tobias Hochstoeger; Gavril Rosoklija; Marco Repic; Lukas Landler; Viktor Stránecký; Gerhard Dürnberger; Thomas M Keane; Johannes Zuber; David J Adams; Jonathan Flint; Tomas Honzik; Marta Gut; Sergi Beltran; Karl Mechtler; Elliott Sherr; Stanislav Kmoch; Ivo Gut; David A Keays
Journal:  Nat Neurosci       Date:  2018-01-08       Impact factor: 24.884

4.  Detecting Significant Changes in Protein Abundance.

Authors:  Kai Kammers; Robert N Cole; Calvin Tiengwe; Ingo Ruczinski
Journal:  EuPA Open Proteom       Date:  2015-06

5.  Motor neurons from ALS patients with mutations in C9ORF72 and SOD1 exhibit distinct transcriptional landscapes.

Authors:  Ching-On Wong; Kartik Venkatachalam
Journal:  Hum Mol Genet       Date:  2019-08-15       Impact factor: 6.150

Review 6.  Review, evaluation, and discussion of the challenges of missing value imputation for mass spectrometry-based label-free global proteomics.

Authors:  Bobbie-Jo M Webb-Robertson; Holli K Wiberg; Melissa M Matzke; Joseph N Brown; Jing Wang; Jason E McDermott; Richard D Smith; Karin D Rodland; Thomas O Metz; Joel G Pounds; Katrina M Waters
Journal:  J Proteome Res       Date:  2015-04-22       Impact factor: 4.466

7.  Lysosomal proteome analysis reveals that CLN3-defective cells have multiple enzyme deficiencies associated with changes in intracellular trafficking.

Authors:  Carolin Schmidtke; Stephan Tiede; Melanie Thelen; Reijo Käkelä; Sabrina Jabs; Georgia Makrypidi; Marc Sylvester; Michaela Schweizer; Ingke Braren; Nahal Brocke-Ahmadinejad; Susan L Cotman; Angela Schulz; Volkmar Gieselmann; Thomas Braulke
Journal:  J Biol Chem       Date:  2019-04-30       Impact factor: 5.157

8.  Experimental Null Method to Guide the Development of Technical Procedures and to Control False-Positive Discovery in Quantitative Proteomics.

Authors:  Xiaomeng Shen; Qiang Hu; Jun Li; Jianmin Wang; Jun Qu
Journal:  J Proteome Res       Date:  2015-09-01       Impact factor: 4.466

9.  Lysosomal Proteome and Secretome Analysis Identifies Missorted Enzymes and Their Nondegraded Substrates in Mucolipidosis III Mouse Cells.

Authors:  Giorgia Di Lorenzo; Renata Voltolini Velho; Dominic Winter; Melanie Thelen; Shiva Ahmadi; Michaela Schweizer; Raffaella De Pace; Kerstin Cornils; Timur Alexander Yorgan; Saskia Grüb; Irm Hermans-Borgmeyer; Thorsten Schinke; Sven Müller-Loennies; Thomas Braulke; Sandra Pohl
Journal:  Mol Cell Proteomics       Date:  2018-05-17       Impact factor: 5.911

10.  Identification of Novel Natural Substrates of Fibroblast Activation Protein-alpha by Differential Degradomics and Proteomics.

Authors:  Hui Emma Zhang; Elizabeth J Hamson; Maria Magdalena Koczorowska; Stefan Tholen; Sumaiya Chowdhury; Charles G Bailey; Angelina J Lay; Stephen M Twigg; Quintin Lee; Ben Roediger; Martin L Biniossek; Matthew B O'Rourke; Geoffrey W McCaughan; Fiona M Keane; Oliver Schilling; Mark D Gorrell
Journal:  Mol Cell Proteomics       Date:  2018-09-26       Impact factor: 5.911

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