Description Details Author(s) References
Exploratory data analysis to assess the quality of a set of label-free LC-MS/MS experiments, quantified by spectral counts, and visualize de influence of the involved factors. Visualization tools to assess quality and to discover outliers and eventual confounding.
Package: | msmsEDA |
Type: | Package |
Version: | 1.2.0 |
Date: | 2014-01-18 |
License: | GPL-2 |
pp.msms.data | data preprocessing |
gene.table | extract gene symbols from protein description |
count.stats | summaries by sample |
counts.pca | principal components analysis |
counts.hc | hierarchical clustering of samples |
norm.counts | normalization of spectral counts matrix |
counts.heatmap | experiment heatmap |
disp.estimates | dispersion analysis and plots |
filter.flags | flag informative features |
spc.barplots | sample sizes barplots |
spc.boxplots | samples SpC boxplots |
spc.densityplot | samples SpC density plots |
spc.scatterplot | scatterplot comparing two conditions |
batch.neutralize | batch effects correction |
Josep Gregori, Alex Sanchez and Josep Villanueva
Maintainer: Josep Gregori <josep.gregori@gmail.com>
Gregori J, Villarreal L, Mendez O, Sanchez A, Baselga J, Villanueva J, "Batch effects correction improves the sensitivity of significance tests in spectral counting-based comparative discovery proteomics." J Proteomics. 2012 Jul 16;75(13):3938-51. doi: 10.1016/j.jprot.2012.05.005. Epub 2012 May 12.
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