• Corpus ID: 9799447

Biological Variability in cDNA Microarrays

@inproceedings{Pearson2003BiologicalVI,
  title={Biological Variability in cDNA Microarrays},
  author={Ronald K. Pearson and Ausra Milano and Egle Juskeviciute and Gregory E. Gonye and James S. Schwaber and Jan B. Hoek},
  year={2003},
  url={https://api.semanticscholar.org/CorpusID:9799447}
}
A brief but detailed examination of method-related phenomena that are of no biological interest from biologically significant responses are presented, based on an ongoing study of ethanol exposure effects on rats where important biological effects are expected to be subtle.

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