| Literature DB >> 25821719 |
Kai Kammers1, Robert N Cole2, Calvin Tiengwe3, Ingo Ruczinski1.
Abstract
We review and demonstrate how an empirical Bayes method, shrinking a protein's sample variance towards a pooled estimate, leads to far more powerful and stable inference to detect significant changes in protein abundance compared to ordinary t-tests. Using examples from isobaric mass labeled proteomic experiments we show how to analyze data from multiple experiments simultaneously, and discuss the effects of missing data on the inference. We also present easy to use open source software for normalization of mass spectrometry data and inference based on moderated test statistics.Entities:
Year: 2015 PMID: 25821719 PMCID: PMC4373093 DOI: 10.1016/j.euprot.2015.02.002
Source DB: PubMed Journal: EuPA Open Proteom ISSN: 2212-9685