Abstract
In the past several years many linear models have been proposed for analyzing two-color microarray data. As presented in the literature, many of these models appear dramatically different. However, many of these models are reformulations of the same basic approach to analyzing microarray data. This paper demonstrates the equivalence of some of these models. Attention is directed at choices in microarray data analysis that have a larger impact on the results than the choice of linear model.
Disciplines
Microarrays | Statistical Models
Suggested Citation
Kerr, M. Kathleen, "Linear Models for Microarray Data Analysis: Hidden Similarities and Differences" (May 2003). UW Biostatistics Working Paper Series. Working Paper 190.
https://biostats.bepress.com/uwbiostat/paper190
Comments
This paper will appear in the Journal of Computational Biology.