Cloud-based uniform ChIP-Seq processing tools for modENCODE and ENCODE
Autor: | Quang M. Trinh, Lincoln Stein, Ziru Zhou, Sergio Contrino, Fei-Yang Arthur Jen, Marc D. Perry, P. Ruzanov, Kar Ming Chu, E. Kephart |
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Rok vydání: | 2013 |
Předmět: |
Chromatin Immunoprecipitation
0303 health sciences business.industry Cloud computing Terabyte Biology ENCODE Data science Biotechnology Data set 03 medical and health sciences 0302 clinical medicine Workflow Software Genetics Encyclopedia business Peak calling 030217 neurology & neurosurgery 030304 developmental biology |
Zdroj: | BMC Genomics |
ISSN: | 1471-2164 |
Popis: | Background Funded by the National Institutes of Health (NIH), the aim of the Mod el Organism ENC yclopedia o f D NA E lements (modENCODE) project is to provide the biological research community with a comprehensive encyclopedia of functional genomic elements for both model organisms C. elegans (worm) and D. melanogaster (fly). With a total size of just under 10 terabytes of data collected and released to the public, one of the challenges faced by researchers is to extract biologically meaningful knowledge from this large data set. While the basic quality control, pre-processing, and analysis of the data has already been performed by members of the modENCODE consortium, many researchers will wish to reinterpret the data set using modifications and enhancements of the original protocols, or combine modENCODE data with other data sets. Unfortunately this can be a time consuming and logistically challenging proposition. Results In recognition of this challenge, the modENCODE DCC has released uniform computing resources for analyzing modENCODE data on Galaxy (https://github.com/modENCODE-DCC/Galaxy), on the public Amazon Cloud (http://aws.amazon.com), and on the private Bionimbus Cloud for genomic research (http://www.bionimbus.org). In particular, we have released Galaxy workflows for interpreting ChIP-seq data which use the same quality control (QC) and peak calling standards adopted by the modENCODE and ENCODE communities. For convenience of use, we have created Amazon and Bionimbus Cloud machine images containing Galaxy along with all the modENCODE data, software and other dependencies. Conclusions Using these resources provides a framework for running consistent and reproducible analyses on modENCODE data, ultimately allowing researchers to use more of their time using modENCODE data, and less time moving it around. |
Databáze: | OpenAIRE |
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