[HTML][HTML] Enhanced differential expression statistics for data-independent acquisition proteomics

T Suomi, LL Elo - Scientific reports, 2017 - nature.com
Scientific reports, 2017nature.com
We describe a new reproducibility-optimization method ROPECA for statistical analysis of
proteomics data with a specific focus on the emerging data-independent acquisition (DIA)
mass spectrometry technology. ROPECA optimizes the reproducibility of statistical testing on
peptide-level and aggregates the peptide-level changes to determine differential protein-
level expression. Using a 'gold standard'spike-in data and a hybrid proteome benchmark
data we show the competitive performance of ROPECA over conventional protein-based …
Abstract
We describe a new reproducibility-optimization method ROPECA for statistical analysis of proteomics data with a specific focus on the emerging data-independent acquisition (DIA) mass spectrometry technology. ROPECA optimizes the reproducibility of statistical testing on peptide-level and aggregates the peptide-level changes to determine differential protein-level expression. Using a ‘gold standard’ spike-in data and a hybrid proteome benchmark data we show the competitive performance of ROPECA over conventional protein-based analysis as well as state-of-the-art peptide-based tools especially in DIA data with consistent peptide measurements. Furthermore, we also demonstrate the improved accuracy of our method in clinical studies using proteomics data from a longitudinal human twin study.
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