| Literature DB >> 27348712 |
Stefka Tyanova1, Tikira Temu1, Pavel Sinitcyn1, Arthur Carlson1, Marco Y Hein2, Tamar Geiger3, Matthias Mann4, Jürgen Cox1.
Abstract
A main bottleneck in proteomics is the downstream biological analysis of highly multivariate quantitative protein abundance data generated using mass-spectrometry-based analysis. We developed the Perseus software platform (http://www.perseus-framework.org) to support biological and biomedical researchers in interpreting protein quantification, interaction and post-translational modification data. Perseus contains a comprehensive portfolio of statistical tools for high-dimensional omics data analysis covering normalization, pattern recognition, time-series analysis, cross-omics comparisons and multiple-hypothesis testing. A machine learning module supports the classification and validation of patient groups for diagnosis and prognosis, and it also detects predictive protein signatures. Central to Perseus is a user-friendly, interactive workflow environment that provides complete documentation of computational methods used in a publication. All activities in Perseus are realized as plugins, and users can extend the software by programming their own, which can be shared through a plugin store. We anticipate that Perseus's arsenal of algorithms and its intuitive usability will empower interdisciplinary analysis of complex large data sets.Entities:
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Year: 2016 PMID: 27348712 DOI: 10.1038/nmeth.3901
Source DB: PubMed Journal: Nat Methods ISSN: 1548-7091 Impact factor: 28.547