Microarray data quality analysis: lessons from the Arabidopsis functional genomics consortium
Microarray data quality analysis: lessons from the Arabidopsis functional genomics consortium
Genome-wide expression profiling with DNA microarrays has and will provide a great deal of data to the plant scientific community. However, reliability concerns have required the development data quality tests for common systematic biases. Fortunately, most large-scale systematic biases are detectable and some are correctable by normalization. Technical replication experiments and statistical surveys indicate that these biases vary widely in severity and appearance. As a result, no single normalization or correction method currently available is able to address all the issues. However, careful sequence selection, array design, experimental design and experimental annotation can substantially improve the quality and biological of microarray data. In this review, we discuss these issues with reference to examples from the Arabidopsis Functional Genomics Consortium (AFGC) microarray project.
119-131
Finkelstein, David
84a9199a-8530-40a6-a907-b1fe3e647303
Ewing, Rob
022c5b04-da20-4e55-8088-44d0dc9935ae
Gollub, Jeremy
eae59a84-4ded-4cb9-b3de-8149aeeb873c
Sterky, Fredrik
873f5898-896b-4da1-b59e-0872463a1601
Cherry, J. Michael
c7950bcc-92dc-4bf1-91b7-e441e4519c95
Somerville, Shauna
70be440a-2500-49e1-bda6-143be2528789
January 2002
Finkelstein, David
84a9199a-8530-40a6-a907-b1fe3e647303
Ewing, Rob
022c5b04-da20-4e55-8088-44d0dc9935ae
Gollub, Jeremy
eae59a84-4ded-4cb9-b3de-8149aeeb873c
Sterky, Fredrik
873f5898-896b-4da1-b59e-0872463a1601
Cherry, J. Michael
c7950bcc-92dc-4bf1-91b7-e441e4519c95
Somerville, Shauna
70be440a-2500-49e1-bda6-143be2528789
Finkelstein, David, Ewing, Rob, Gollub, Jeremy, Sterky, Fredrik, Cherry, J. Michael and Somerville, Shauna
(2002)
Microarray data quality analysis: lessons from the Arabidopsis functional genomics consortium.
Plant Molecular Biology, 48 (1-2), .
(doi:10.1023/A:1013765922672).
(PMID:11860205)
Abstract
Genome-wide expression profiling with DNA microarrays has and will provide a great deal of data to the plant scientific community. However, reliability concerns have required the development data quality tests for common systematic biases. Fortunately, most large-scale systematic biases are detectable and some are correctable by normalization. Technical replication experiments and statistical surveys indicate that these biases vary widely in severity and appearance. As a result, no single normalization or correction method currently available is able to address all the issues. However, careful sequence selection, array design, experimental design and experimental annotation can substantially improve the quality and biological of microarray data. In this review, we discuss these issues with reference to examples from the Arabidopsis Functional Genomics Consortium (AFGC) microarray project.
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Published date: January 2002
Organisations:
Molecular and Cellular
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Local EPrints ID: 355419
URI: http://eprints.soton.ac.uk/id/eprint/355419
ISSN: 0167-4412
PURE UUID: 6767ca83-53b3-4a08-b53e-a448d591682e
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Date deposited: 21 Nov 2013 13:42
Last modified: 15 Mar 2024 03:44
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Author:
David Finkelstein
Author:
Jeremy Gollub
Author:
Fredrik Sterky
Author:
J. Michael Cherry
Author:
Shauna Somerville
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