RolDE

github.com/elolab/rolde
Active5updated 4 months ago
R
GPL-3.0

RolDE detects longitudinal differential expression between two conditions in noisy high-troughput data. Suitable even for data with a moderate amount of missing values.RolDE is a composite method, consisting of three independent modules with different approaches to detecting longitudinal differential expression. The combination of these diverse modules allows RolDE to robustly detect varying differences in longitudinal trends and expression levels in diverse data types and experimental settings.

Sourced from

  • GitHubgithub.com/elolab/rolde
  • BioconductorRolDE

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