TITLE

Editorial: The future of publishing microarray data

AUTHOR(S)
Spellman, Paul T.
PUB. DATE
December 2001
SOURCE
Briefings in Bioinformatics;Dec2001, Vol. 2 Issue 4, p4
SOURCE TYPE
Academic Journal
DOC. TYPE
Editorial
ABSTRACT
Editorial. Introduces a series of articles on bioinformatics, particularly on the potential of microarray data.
ACCESSION #
6876608

 

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