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SanXoT: a modular and versatile package for the quantitative analysis of high-throughput proteomics experiments.
Bioinformatics 2018 September 26
Summary: Mass spectrometry-based proteomics has had a formidable development in recent years, increasing the amount of data handled and the complexity of the statistical resources needed. Here we present SanXoT, an open-source, standalone software package for the statistical analysis of high-throughput, quantitative proteomics experiments. SanXoT is based on our previously developed WSPP statistical model and has been specifically designed to be modular, scalable, and user-configurable. SanXoT allows limitless workflows that adapt to most experimental setups, including quantitative protein analysis in multiple experiments, systems biology, quantification of post-translational modifications and comparison and merging of experimental data from technical or biological replicates.
Availability and implementation: Download links for the SanXoT Software Package, source code, and documentation are available at https://wikis.cnic.es/proteomica/index.php/SSP.
Supplementary information: Supplementary Information is available at Bioinformatics online.
Availability and implementation: Download links for the SanXoT Software Package, source code, and documentation are available at https://wikis.cnic.es/proteomica/index.php/SSP.
Supplementary information: Supplementary Information is available at Bioinformatics online.
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