Increasing the efficiency of fuzzy logic-based gene expression data analysis.

@article{Ressom2003IncreasingTE,
  title={Increasing the efficiency of fuzzy logic-based gene expression data analysis.},
  author={Habtom W. Ressom and Robert Reynolds and Rency S. Varghese},
  journal={Physiological genomics},
  year={2003},
  volume={13 2},
  pages={
          107-17
        }
}
DNA microarray technology can accommodate a multifaceted analysis of the expression of genes in an organism. The wealth of spatiotemporal data generated by this technology allows researchers to potentially reverse engineer a particular genetic network. "Fuzzy logic" has been proposed as a method to analyze the relationships between genes and help decipher a genetic network. This method can identify interacting genes that fit a known "fuzzy" model of gene interaction by testing all combinations… 
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