This package contains implementation of UniBic biclustering algorithm for gene expression data [Wang2016] The algorithm tries to locate trend-preserving biclusters within complex and noisy data.
This package provides the following main functions:
BCUnibic
/runibic
- parallel UniBic for continuous dataBCUnibicD
- parallel UniBic for discrete data
The package provides some additional functions:
pairwiseLCS
- calculates Longest Common Subsequence (LCS) between two vectorscalculateLCS
- calculates LCSes between all pairs of the input datasetbacktrackLCS
- recovers LCS from the dynamic programming matrixcluster
- main part of UniBic algorithm (biclusters seeding and expanding)unisort
- returns matrix of indexes based on the increasing order in each rowdiscretize
- performs discretization using Fibonacci heap (sorting method used originally in UniBic) or standard sorting
The package may be installed as follows:
install.packages("devtools")
devtools::install_github("athril/runibic")
This example presents how to use runibic package on gene expression dataset:
library(runibic)
library(biclust)
data(BicatYeast)
res <- biclust(method=BCUnibic(),BicatYeast)
drawHeatmap(BicatYeast, res, 1)
parallelCoordinates(BicatYeast,res,1)
This example presents how to use runibic package on SummarizedExperiment:
library(runibic)
library(biclust)
library(SummarizedExperiment)
data(airway, package="airway")
se <- airway[1:20,]
res<- runibic(se)
parallelCoordinates(assays(se)[[1]], res[[1]], 2)
Please check runibic tutorial
For the original sequential version of the UniBic please use the following citation:
Zhenjia Wang, Guojun Li, Robert W. Robinson, Xiuzhen Huang UniBic: Sequential row-based biclustering algorithm for analysis of gene expression data Scientific Reports 6, 2016; 23466, doi: https://doi:10.1038/srep23466
If you use in your work this package with parallel version of UniBic please use the following citation:
Patryk Orzechowski, Artur Pańszczyk, Xiuzhen Huang Jason H. Moore: runibic: a Bioconductor package for parallel row-based biclustering of gene expression data bioRxiv, 2017; 210682, doi: https://doi.org/10.1101/210682
BibTex entry:
@article{orzechowski2018runibic,
author = {Orzechowski, Patryk and Pańszczyk, Artur and Huang, Xiuzhen and Moore, Jason H},
title = {runibic: a Bioconductor package for parallel row-based biclustering of gene expression data},
journal = {Bioinformatics},
volume = {},
number = {},
pages = {bty512},
year = {2018},
doi = {10.1093/bioinformatics/bty512},
URL = {http://dx.doi.org/10.1093/bioinformatics/bty512},
eprint = {/oup/backfile/content_public/journal/bioinformatics/pap/10.1093_bioinformatics_bty512/4/bty512.pdf}
}
- [Wang2016] Wang, Zhenjia, et al. "UniBic: Sequential row-based biclustering algorithm for analysis of gene expression data." Scientific reports 6 (2016): 23466.