gwasurvivr

GenomeWideAssociation
Stale13updated 2 years ago
R

gwasurvivr is a package to perform survival analysis using Cox proportional hazard models on imputed genetic data.

README

Introduction gwasurvivr can be used to perform survival analyses of imputed genotypes from Sanger and Michigan imputation servers and IMPUTE2 software. This vignette is a tutorial on how to perform these analyses. This package can be run locally on a Linux, Mac OS X, Windows or conveniently batched on a high performing computing cluster. gwasurvivr iteratively processes the data in chunks and therefore intense memory requirements are not necessary. gwasurvivr package comes with three main…

Source attribution

  • GitHubgithub.com/suchestoncampbelllab/gwasurvivr
  • Bioconductorgwasurvivr

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