The analysis of microarray data.

@article{Hariharan2003TheAO,
  title={The analysis of microarray data.},
  author={Ramesh Hariharan},
  journal={Pharmacogenomics},
  year={2003},
  volume={4 4},
  pages={
          477-97
        }
}
This article describes issues, techniques and algorithms for analyzing data from microarray experiments. Each such experiment generates a large amount of data, only a fraction of which comprises significant differentially expressed genes. The precise identification of these interesting genes is heavily dependent not only on the statistical data analysis techniques used but also on the accuracy of the previous oligonucleotide probe design and image analysis steps as well. Indeed, wrong decisions… CONTINUE READING

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