regionalpcs

DNAMethylation
Stale4updated 2 years ago
R
NOASSERTION

Functions to summarize DNA methylation data using regional principal components. Regional principal components are computed using principal components analysis within genomic regions to summarize the variability in methylation levels across CpGs. The number of principal components is chosen using either the Marcenko-Pasteur or Gavish-Donoho method to identify relevant signal in the data.

README

regionalpcs ================ Table of Contents Introduction Repository Contents System Requirements Installation Guide Demo Introduction Tiffany Eulalio The regionalpcs package aims to address the challenge of summarizing and interpreting DNA methylation data at a regional level. Traditional methods of analysis may not capture the biological complexity of methylation patterns, potentially leading to less accurate or less meaningful interpretations. This package introduces the concept of…

Source attribution

  • GitHubgithub.com/tyeulalio/regionalpcs
  • Bioconductorregionalpcs

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