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GenePattern flow cytometry suite

Authors :
Ted Liefeld
Karin Breuer
Rafick-Pierre Sekaly
Richard H. Scheuermann
Peter Carr
Josef Spidlen
Jill P. Mesirov
Aaron Barsky
Barbara Hill
Yu Qian
Michael R. Reich
Peter Wilkinson
Marc-Danie Nazaire
Ryan R. Brinkman
Koch Institute for Integrative Cancer Research at MIT
Mesirov, Jill P.
Source :
Source Code for Biology and Medicine, BioMed Central Ltd
Publication Year :
2013

Abstract

Background Traditional flow cytometry data analysis is largely based on interactive and time consuming analysis of series two dimensional representations of up to 20 dimensional data. Recent technological advances have increased the amount of data generated by the technology and outpaced the development of data analysis approaches. While there are advanced tools available, including many R/BioConductor packages, these are only accessible programmatically and therefore out of reach for most experimentalists. GenePattern is a powerful genomic analysis platform with over 200 tools for analysis of gene expression, proteomics, and other data. A web-based interface provides easy access to these tools and allows the creation of automated analysis pipelines enabling reproducible research. Results In order to bring advanced flow cytometry data analysis tools to experimentalists without programmatic skills, we developed the GenePattern Flow Cytometry Suite. It contains 34 open source GenePattern flow cytometry modules covering methods from basic processing of flow cytometry standard (i.e., FCS) files to advanced algorithms for automated identification of cell populations, normalization and quality assessment. Internally, these modules leverage from functionality developed in R/BioConductor. Using the GenePattern web-based interface, they can be connected to build analytical pipelines. Conclusions GenePattern Flow Cytometry Suite brings advanced flow cytometry data analysis capabilities to users with minimal computer skills. Functionality previously available only to skilled bioinformaticians is now easily accessible from a web browser.

Details

ISSN :
17510473
Volume :
8
Issue :
1
Database :
OpenAIRE
Journal :
Source code for biology and medicine
Accession number :
edsair.doi.dedup.....4f6f0d5a9ebac4494526d9f238285a99