2007
DOI: 10.1002/pmic.200700339
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Analysis of DIGE data using a linear mixed model allowing for protein‐specific dye effects

Abstract: Differential in-gel electrophoresis (DIGE) experiments allow three protein samples to be run per gel. The three samples are labeled with the spectrally resolvable fluorescent dyes, Cy2, Cy3, and Cy5, respectively. Here, we show that protein-specific dye effects exist, and we present a linear mixed model for analysis of DIGE data which takes dye effects into account. A Java implementation of the model, called DIGEanalyzer, is freely available at http://bioinfo.thep.lu.se/ digeanalyzer.html. Three DIGE experimen… Show more

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Cited by 15 publications
(16 citation statements)
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“…Typically two quantitative proteomic platforms are used for profiling plasma: gel based 2-dimensional electrophoresis usually with difference gel electrophoresis (2DE DIGE) 2022 and mass spectrometry based quantitation using isobaric Tags for Absolute and Relative Quantitation (iTRAQ) 23, 24 . In our previous investigations of plasma samples we used 2DE DIGE platform which resulted in identification of previously not reported differential expression of proteins such as afamin and gelsolin 18, 25, 26 .…”
Section: Discussionmentioning
confidence: 99%
“…Typically two quantitative proteomic platforms are used for profiling plasma: gel based 2-dimensional electrophoresis usually with difference gel electrophoresis (2DE DIGE) 2022 and mass spectrometry based quantitation using isobaric Tags for Absolute and Relative Quantitation (iTRAQ) 23, 24 . In our previous investigations of plasma samples we used 2DE DIGE platform which resulted in identification of previously not reported differential expression of proteins such as afamin and gelsolin 18, 25, 26 .…”
Section: Discussionmentioning
confidence: 99%
“…Techniques that consider linear fixed and random effects are termed ‘linear mixed models’. Two‐stage hierarchical linear mixed models have been applied to 2‐D DIGE spot lists for normalisation of protein‐specific dye effects 124, 125. For SELDI MS, Handley 112 combined parametric mixture modelling with a two‐level linear mixed model.…”
Section: Signal Analysis In Msmentioning
confidence: 99%
“…Image pairs are then matched between gels using Decyder-BVA software, which looks for consistency of differences between samples across all the gels and applies student t-test based statistics to associate a level of confidence for each of those differences. Due to the fact that there will be a very small sample size or replications in most experiments, the inherent assumption of normal distribution of data is usually hard to meet for t-test, which may result in a misleading result in identifying the differentially expressed protein spot by using the p-value of test [6]. In fact, based on our preliminary study, small p value and reasonable volume ratio cannot guarantee the spot to be a significant DE protein spot.…”
Section: Differential Protein Spot Identificationmentioning
confidence: 78%