Here, we review briefly the sources of experimental and biological variance that affect the interpretation of high-dimensional DNA microarray experiments. We discuss methods using a regularized t-test based on a Bayesian statistical framework that allow the identification of differentially regulated genes with a higher level of confidence than a simple t-test when only a few experimental replicates are available. We also describe a computational method for calculating the global false-positive and false-negative levels inherent in a DNA microarray data set. This method provides a probability of differential expression for each gene based on experiment-wide false-positive and -negative levels driven by experimental error and biological variance.
CITATION STYLE
Hatfield, G. W., Hung, S. P., & Baldi, P. (2003, February). Differential analysis of DNA microarray gene expression data. Molecular Microbiology. https://doi.org/10.1046/j.1365-2958.2003.03298.x
Mendeley helps you to discover research relevant for your work.