QDB 1.1 – Query Driven Biclustering

QDB 1.1

:: DESCRIPTION

QDB (Query Driven Biclustering) is a Bayesian query-driven biclustering framework for microarray data in which the prior distributions allow introducing knowledge from a set of seed genes (query) to guide the pattern search.

::DEVELOPER

 Kathleen Marchal 

:: SCREENSHOTS

N/A

:: REQUIREMENTS

:: DOWNLOAD

 QDB

:: MORE INFORMATION

Citation

Dhollander,T. et al. (2007)
Query-driven module discovery in microarray data.
Bioinformatics, 23, 2573-2580.

QUBIC2 / QUBIC-R 1.20.1 – Biclustering Tool for Microarray Data

QUBIC2 / QUBIC-R 1.20.1

:: DESCRIPTION

QUBIC ( QUalitative BIClustering algorithm) provides a biclustering module for microarray data. For a set of genes and a set of conditions, the program outputs a block-like structure which shows uniform pattern within the block, the block would contain only subsets of all given genes under subsets of all given conditions.

QUBIC2 is a novel biclustering algorithm for analyses of gene expression data from bulk and single-cell RNA-Sequencing.

::DEVELOPER

Qin Ma  , Bioinformatic and Mathematical Biosciences Lab, The Ohio State University

:: SCREENSHOTS

N/A

:: REQUIREMENTS

  • Linux
  • C++ Compiler

:: DOWNLOAD

QUBIC2 / QUBIC-R

:: MORE INFORMATION

Citation

Zhang Y, Xie J, Yang J, Fennell A, Zhang C, Ma Q.
QUBIC: a bioconductor package for qualitative biclustering analysis of gene co-expression data.
Bioinformatics. 2017 Feb 1;33(3):450-452. doi: 10.1093/bioinformatics/btw635. PMID: 28172469.

Guojun Li, Qin Ma, Haibao Tang, Andrew H. Paterson, Ying Xu,
QUBIC: A Qualitative Biclustering Algorithm for Analyses of Gene Expression Data,
Nucleic Acids Research, 2009, 37(15): e101-

Bicluster – Seed-based Biclustering of Gene Expression Data

Bicluster

:: DESCRIPTION

Bicluster is a seed-based algorithm that identifies coherent genes in an exhaustive, but efficient manner.

::DEVELOPER

AUSTRALIAN PROSTATE CANCER RESEARCH CENTRE.

:: SCREENSHOTS

N/A

:: REQUIREMENTS

  • Windows / Linux / MacOsX
  •  java

:: DOWNLOAD

 Bicluster

:: MORE INFORMATION

Citation

An J, Liew AW-C, Nelson CC (2012)
Seed-Based Biclustering of Gene Expression Data.
PLoS ONE 7(8): e42431. doi:10.1371/journal.pone.0042431

SS-CoSBI – Finding Combinatorial Histone Code by Semi-supervised Biclustering

SS-CoSBI

:: DESCRIPTION

SS-CoSBI (Semi-Supervised Coherent and Shifted Bicluster Identification) identify combinatorial chromatin modification patterns by semi-supervised biclustering

::DEVELOPER

Tan Laboratory

:: SCREENSHOTS

N/A

:: REQUIREMENTS

  • Linux

:: DOWNLOAD

 SS-CoSBI

:: MORE INFORMATION

Citation:

BMC Genomics. 2012 Jul 3;13:301. doi: 10.1186/1471-2164-13-301.
Finding combinatorial histone code by semi-supervised biclustering.
Teng L1, Tan K.

BICLIC 1.0 – BIclustering by Correlated and Large number of Individual Clustered seeds

BICLIC 1.0

:: DESCRIPTION

BICLIC searches comprehensive sets of biclusters in gene expression datasets.

::DEVELOPER

Synergistic Bioinformatics lab

:: SCREENSHOTS

N/A

:: REQUIREMENTS

  • Linux / WIndows
  • R

:: DOWNLOAD

BICLIC

:: MORE INFORMATION

Citation

Yun T, Yi GS.
Biclustering for the comprehensive search of correlated gene expression patterns using clustered seed expansion.
BMC Genomics. 2013 Mar 5;14:144. doi: 10.1186/1471-2164-14-144. PMID: 23496895; PMCID: PMC3618306.

cMonkey 2 1.2.2 – Biclustering from Diverse System Biology Data

cMonkey 2 1.2.2

:: DESCRIPTION

cMonkey identifies relevant conditions in which the genes within a given bicluster (where “biclustering” is condition- or cell-state-specific clustering) are expected to be co-regulated (importantly, in later stages of analysis we use only these conditions to learn TFs and EFs that influence each bicluster). The methods separates the calculation of the score components associated with each datatype into individual calculations but still effectively sample biclusters that optimally satisfy multiple model components (each representing a separate data-type). The method was designed as a preprocessing step for network inference and performed well in comparison to all other methods tested when the trade-off between sensitivity, specificity, and coverage (fraction of conditions and genes included in one or more biclusters) were considered, particularly in context of the other bulk characteristics (cluster size, residual, etc.).

::DEVELOPER

Baliga Lab

:: SCREENSHOTS

N/A

:: REQUIREMENTS

:: DOWNLOAD

cMonkey

:: MORE INFORMATION

Citation

cMonkey2: Automated, systematic, integrated detection of co-regulated gene modules for any organism.
Reiss DJ, Plaisier CL, Wu WJ, Baliga NS.
Nucleic Acids Res. 2015 Apr 14. pii: gkv300.

BMC Bioinformatics. 2006 Jun 2;7:280.
Integrated biclustering of heterogeneous genome-wide datasets for the inference of global regulatory networks.
Reiss DJ, Baliga NS, Bonneau R.

BiMS 1.0 – Biclustering for Mass Spectrometry data

BiMS 1.0

:: DESCRIPTION

BiMS is a Java application designed to allow the application of biclustering algorithms to mass spectrometry datasets.

::DEVELOPER

SING Group.

:: SCREENSHOTS

BiMS

:: REQUIREMENTS

  • Linux / Windows / MacOsX
  • JRE
  • R

:: DOWNLOAD

 BiMS

:: MORE INFORMATION

Citation

H. López-Fernández, M. Reboiro-Jato, Sara C. Madeira, Rubén López Cortés, J. D. Nunes-Miranda, H. M. Santos, Florentino Fdez-Riverola, Daniel Glez-Peña
A Workflow for the Application of Biclustering to Mass Spectrometry Data
7th International Conference on Practical Applications of Computational Biology & Bioinformatics – Advances in Intelligent Systems and Computing, 222, 2013, pp. 145-153. ISBN: 978-3-319-00577-5 (Print) 978-3-319-00578-2 (Online)

BiGGEsTS 1.0.5 – Biclustering Analysis of Time Series Gene Expression Data

BiGGEsTS 1.0.5

:: DESCRIPTION

BiGGEsTS (Biclustering Gene Expression Time Series) is a free and open source software tool providing an integrated environment for the biclustering analysis of time series gene expression data. It offers a complete set of operations for retrieving potentially relevant information from the gene expression data, relying either on visualization or additional techniques for manipulating and processing this particular kind of data.

::DEVELOPER

BiGGEsTS team

:: SCREENSHOTS

BiGGEsTS

:: REQUIREMENTS

  • Linux / Windows/ MacOsX
  • Java

:: DOWNLOAD

 BiGGEsTS

:: MORE INFORMATION

Citation

BMC Res Notes. 2009 Jul 7;2:124. doi: 10.1186/1756-0500-2-124.
BiGGEsTS: integrated environment for biclustering analysis of time series gene expression data.
Gonçalve JP, Madeira SC, Oliveira AL.

Treebic 1.11 – Hierarchical Generative Biclustering for MicroRNA Expression Analysis

Treebic 1.11

:: DESCRIPTION

Treebic is a Software package for hierarchical biclustering.

::DEVELOPER

Probabilistic Machine Learning

:: SCREENSHOTS

N/A

:: REQUIREMENTS

  • Linux / Windows /MacOsX
  • R package

:: DOWNLOAD

 Treebic

:: MORE INFORMATION

Citation

J. Caldas and S. Kaski.
Hierarchical generative biclustering for microRNA expression analysis.
J. Caldas and S. Kaski. Journal of Computational Biology, 18(3):251-261, 2011

CCS – Biclustering analysis and detection of Condition-dependent Coexpression Network Modules

CCS

:: DESCRIPTION

CCS (Condition-dependent Correlation Subgroups) Biclustering is a CUDA C/C++ software for GPU-accelerated algorithm for biclustering analysis and detection of condition-dependent coexpression network modules.

::DEVELOPER

Yan Cui’s Lab at University of Tennessee Health Science Center

:: SCREENSHOTS

N/A

:: REQUIREMENTS

  • Linux

:: DOWNLOAD

CCS

:: MORE INFORMATION

Citation:

Sci Rep. 2017 Jun 23;7(1):4162. doi: 10.1038/s41598-017-04070-4.
A GPU-accelerated algorithm for biclustering analysis and detection of condition-dependent coexpression network modules.
Bhattacharya A, Cui Y.