Lheuristic
github.com/aspresearch/lheuristicThe Lheuristic package identifies scatterpots that follow and L-shaped, negative distribution. It can be used to identify genes regulated by methylation by integration of an expression and a methylation array. The package uses two different methods to detect expression and methyaltion L- shapped scatterplots. The parameters can be changed to detect other scatterplot patterns.
Sourced from
- Bioconductor — Lheuristic
- GitHub — github.com/aspresearch/lheuristic
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