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AneuFinder

Copy-number detection in whole-genome single cell sequencing (WGSCS) and Strand-seq data using a Hidden Markov Model. The package implements copy-number detection, commonly used plotting functions, export to BED format for upload to genome browsers, and measures for assessment of karyotype heterogeneity and quality metrics.

Installation

Stable release version from Bioconductor

To install the current stable version from Bioconductor, please visit http://bioconductor.org/packages/AneuFinder/ and follow the provided instructions.

Development version from Github

To install the development version from Github, follow the steps given below. The installation has only been tested on Ubuntu so far, if you need to install on Windows or Mac additional steps might be necessary (e.g. installation of Rtools from https://cran.r-project.org/bin/windows/Rtools/)

  1. Install a recent version of R (>3.2.3) from https://www.r-project.org/

  2. Optional: For ease of use, install Rstudio from https://www.rstudio.com/

  3. Open R and install all dependencies. Please ensure that you have writing permissions to install packages. Execute the following lines one by one:

    install.packages("devtools")
    source("http://bioconductor.org/biocLite.R")
    biocLite("GenomicRanges")
    biocLite("GenomicAlignments")
    library(devtools)
    install_github("ataudt/aneufinderData")
    install_github("ataudt/aneufinder")

    Or alternatively if the above line doesn't work:

    install_git("git://github.com/ataudt/aneufinderData.git", branch = "master")
    install_git("git://github.com/ataudt/aneufinder.git", branch = "master")

How to use AneuFinder

Please refer to the vignette for tutorials on how to use AneuFinder.

Report Errors

If you encounter errors of any kind, please file an issue here. I will try to react within one day.

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Find CNVs in single cell sequencing data.

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  • R 68.1%
  • C++ 31.9%