multistateQTL
github.com/dunstone-a/multistateqtlA 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.
Sourced from
- GitHub — github.com/dunstone-a/multistateqtl
- Bioconductor — multistateQTL
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