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Rail-dbGaP: analyzing dbGaP-protected data in the cloud with Amazon Elastic MapReduce

Abhinav Nellore, Christopher Wilks, Kasper D Hansen, Jeffrey T Leek, Ben Langmead
doi: https://doi.org/10.1101/035287
Abhinav Nellore
1Department of Computer Science, Johns Hopkins University
2Department of Biostatistics, Johns Hopkins Bloomberg School of Public Health
3Center for Computational Biology, Johns Hopkins University
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Christopher Wilks
1Department of Computer Science, Johns Hopkins University
3Center for Computational Biology, Johns Hopkins University
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Kasper D Hansen
2Department of Biostatistics, Johns Hopkins Bloomberg School of Public Health
3Center for Computational Biology, Johns Hopkins University
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Jeffrey T Leek
2Department of Biostatistics, Johns Hopkins Bloomberg School of Public Health
3Center for Computational Biology, Johns Hopkins University
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Ben Langmead
1Department of Computer Science, Johns Hopkins University
2Department of Biostatistics, Johns Hopkins Bloomberg School of Public Health
3Center for Computational Biology, Johns Hopkins University
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Abstract

Motivation: Public archives contain thousands of trillions of bases of valuable sequencing data. More than 40% of the Sequence Read Archive is human data protected by provisions such as dbGaP To analyze dbGaP-protected data, researchers must typically work with IT administrators and signing officials to ensure all levels of security are implemented at their institution. This is a major obstacle, impeding reproducibility and reducing the utility of archived data.

Results: We present a protocol and software tool for analyzing protected data in a commercial cloud. The protocol, Rail-dbGaP, is applicable to any tool running on Amazon Web Services Elastic MapReduce. The tool, Rail-RNA v0.2, is a spliced aligner for RNA- seq data, which we demonstrate by running on 9,662 samples from the dbGaP-protected GTEx consortium dataset. The Rail-dbGaP protocol makes explicit for the first time the steps an investigator must take to develop Elastic MapReduce pipelines that analyze dbGaP-protected data in a manner compliant with NIH guidelines. Rail-RNA automates implementation of the protocol, making it easy for typical biomedical investigators to study protected RNA-seq data, regardless of their local IT resources or expertise.

Availability: Rail-RNA is available from http://rail.bio. Technical details on the Rail-dbGaP protocol as well as an implementation walkthrough are available at https://github.com/nellore/rail-dbgap. Detailed instructions on running Rail-RNA on dbGaP-protected data using Amazon Web Services are available at http://docs.rail.bio/dbgap/.

Contact: anellore{at}gmail.com, langmea{at}cs.jhu.edu

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY 4.0 International license.
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Posted March 05, 2016.
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Rail-dbGaP: analyzing dbGaP-protected data in the cloud with Amazon Elastic MapReduce
Abhinav Nellore, Christopher Wilks, Kasper D Hansen, Jeffrey T Leek, Ben Langmead
bioRxiv 035287; doi: https://doi.org/10.1101/035287
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Rail-dbGaP: analyzing dbGaP-protected data in the cloud with Amazon Elastic MapReduce
Abhinav Nellore, Christopher Wilks, Kasper D Hansen, Jeffrey T Leek, Ben Langmead
bioRxiv 035287; doi: https://doi.org/10.1101/035287

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