multistateQTL

FunctionalGenomics
Actively maintained1updated 2 weeks ago
R

A collection of tools for doing various analyses of multi-state QTL data, with a focus on visualization and interpretation. The package 'multistateQTL' contains functions which can remove or impute missing data, identify significant associations, as well as categorise features into global, multi-state or unique. The analysis results are stored in a 'QTLExperiment' object, which is based on the 'SummarisedExperiment' framework.

README

multistateQTL R Package multistateQTL is an R package for applying basic statistical tests, summarizing, and visualizing QTL summary statistics from multiple states (e.g., tissues, celltypes, environmental conditions). It works on the QTLExperiment (QTLE) object class (available in Bioconductor, QTLExperiment), where rows represent features (e.g., genes, transcripts, genomic regions), columns represent states, and assays are the various summary statistics. Installation and Usage To install from…

Source attribution

  • GitHubgithub.com/dunstone-a/multistateqtl
  • BioconductormultistateQTL

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