PatternMarkers & GWCoGAPS for novel data-driven biomarkers via whole transcriptome NMF
Date
2017Author
Ochs, Michael F.
Stein-O'Brien, Genevieve L.
Carey, Jacob L.
Lee, Wai Shing
Considine, Michael
Favorov, Alexander V.
Flam, Emily
Guo, Theresa
Li, Sijia
Marchionni, Luigi
Sherman, Thomas
Sivy, Shawn
Gaykalova, Daria A.
McKay, Ronald D.
Colantuoni, Carlo
Fertig, Elana J.
Metadata
Show full item recordAbstract
Abstract
Non-negative Matrix Factorization (NMF) algorithms associate gene expression with biological processes (e.g. time-course dynamics or disease subtypes). Compared with univariate associations, the relative weights of NMF solutions can obscure biomarkers. Therefore, we developed a novel patternMarkers statistic to extract genes for biological validation and enhanced visualization of NMF results. Finding novel and unbiased gene markers with patternMarkers requires whole-genome data. Therefore, we also developed Genome-Wide CoGAPS Analysis in Parallel Sets (GWCoGAPS), the first robust whole genome Bayesian NMF using the sparse, MCMC algorithm, CoGAPS. Additionally, a manual version of the GWCoGAPS algorithm contains analytic and visualization tools including patternMatcher, a Shiny web application. The decomposition in the manual pipeline can be replaced with any NMF algorithm, for further generalization of the software. Using these tools, we find granular brain-region and cell-type specific signatures with corresponding biomarkers in GTEx data, illustrating GWCoGAPS and patternMarkers ascertainment of data-driven biomarkers from whole-genome data.
Citation:
Stein-O'Brien, G., McKay, R., Carey, J., Lee, W., Considine, M., Favorov, A., ... Colantuoni, C. (2017). PatternMarkers & GWCoGAPS for novel data-driven biomarkers via whole transcriptome NMF. Bioinformatics, 33(12), 1892-1894.
Description
File not available for download due to copyright restrictions