Flow cytometry (FCM) is an important technique used in basic and clinical research for studying the immunological status of patients treated with vaccines or other immunotherapies, as well as for characterizing cancer, HIV infection and other diseases. Current data standards lack sufficient depth to represent the full scope of FCM experiments and there is considerable demand for tools that can organize FCM analyses into databases and assist in the exploration and analysis of large datasets. We therefore propose to implement a standardized approach to capturing, analyzing, and disseminating FCM data by building and extending novel and existing open source software tools. To facilitate data management, initial work will focus on developing a community-based guideline for recording and reporting the details of FCM experiments. Platform-independent software implementations of this standard will be created to facilitate data exchange between both software components and collaborative groups, enabling reproducible and extensible data analyses. Statistical tools with reference implementations will also be developed to support more complex visualization and analyses of large data sets in a high throughput fashion. As well, novel tools for electronic collaboration will be developed to facilitate the integrated access and comprehension of analysis results, data and supporting software to empower users to be able to evaluate, reproduce, and extend original analyses. The overriding hypothesis is that joint development of bioinformatics standards and software tools for FCM will greatly facilitate both basic and clinical research of multiparametric cell analyses in human disease areas that depend upon this technique. We anticipate that this work will also stimulate the development of further commercial and academic implementations.

Agency
National Institute of Health (NIH)
Institute
National Institute of Biomedical Imaging and Bioengineering (NIBIB)
Type
Research Project (R01)
Project #
5R01EB005034-03
Application #
7176900
Study Section
Special Emphasis Panel (ZRG1-BDMA (01))
Program Officer
Korte, Brenda
Project Start
2005-05-01
Project End
2009-02-28
Budget Start
2007-03-01
Budget End
2008-02-29
Support Year
3
Fiscal Year
2007
Total Cost
$230,408
Indirect Cost
Name
British Columbia Cancer Agency
Department
Type
DUNS #
209137736
City
Vancouver
State
BC
Country
Canada
Zip Code
V5 1-L3
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