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SIBER: systematic identification of bimodally expressed genes using RNAseq data.


ABSTRACT:

Motivation

Identification of bimodally expressed genes is an important task, as genes with bimodal expression play important roles in cell differentiation, signalling and disease progression. Several useful algorithms have been developed to identify bimodal genes from microarray data. Currently, no method can deal with data from next-generation sequencing, which is emerging as a replacement technology for microarrays.

Results

We present SIBER (systematic identification of bimodally expressed genes using RNAseq data) for effectively identifying bimodally expressed genes from next-generation RNAseq data. We evaluate several candidate methods for modelling RNAseq count data and compare their performance in identifying bimodal genes through both simulation and real data analysis. We show that the lognormal mixture model performs best in terms of power and robustness under various scenarios. We also compare our method with alternative approaches, including profile analysis using clustering and kurtosis (PACK) and cancer outlier profile analysis (COPA). Our method is robust, powerful, invariant to shifting and scaling, has no blind spots and has a sample-size-free interpretation.

Availability

The R package SIBER is available at the website http://bioinformatics.mdanderson.org/main/OOMPA:Overview.

SUBMITTER: Tong P 

PROVIDER: S-EPMC3582265 | biostudies-literature | 2013 Mar

REPOSITORIES: biostudies-literature

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Publications

SIBER: systematic identification of bimodally expressed genes using RNAseq data.

Tong Pan P   Chen Yong Y   Su Xiao X   Coombes Kevin R KR  

Bioinformatics (Oxford, England) 20130109 5


<h4>Motivation</h4>Identification of bimodally expressed genes is an important task, as genes with bimodal expression play important roles in cell differentiation, signalling and disease progression. Several useful algorithms have been developed to identify bimodal genes from microarray data. Currently, no method can deal with data from next-generation sequencing, which is emerging as a replacement technology for microarrays.<h4>Results</h4>We present SIBER (systematic identification of bimodall  ...[more]

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