consensusSeekeR

BiologicalQuestion
Maintenance light1updated 7 months ago
R
Artistic-2.0

This package compares genomic positions and genomic ranges from multiple experiments to extract common regions. The size of the analyzed region is adjustable as well as the number of experiences in which a feature must be present in a potential region to tag this region as a consensus region. In genomic analysis where feature identification generates a position value surrounded by a genomic range, such as ChIP-Seq peaks and nucleosome positions, the replication of an experiment may result in slight differences between predicted values. This package enables the conciliation of the results into consensus regions.

README

consensusSeekeR: Detection of consensus regions inside a group of experiments using genomic positions and genomic ranges ===================== This R package compares multiple narrowPeak data from different experiments to extract common peak regions. The size of the analyzed region is adjustable, as well as the number of experiences in which a peak must be present to tag a potential region as a consensus region. If needed, the consensus regions can be extended to cover the entire regions of…

Source attribution

  • BioconductorconsensusSeekeR
  • GitHubgithub.com/adeschen/consensusseeker

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