Linking microarray data to the literature

  title={Linking microarray data to the literature},
  author={Daniel R. Masys},
  journal={Nature Genetics},
  • D. Masys
  • Published 1 May 2001
  • Psychology
  • Nature Genetics
The availability in computerized form of the published literature on genes is a potentially rich source of information for the interpretation of microarray data. Automated text processing confronts substantial challenges due to variability in the language used by authors, but even incomplete linking of gene clusters to the literature can reveal functional information that is useful in explaining gene expression patterns. 
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