A case study on choosing normalization methods and test statistics for two‐channel microarray data
Open Access
- 1 July 2004
- journal article
- website
- Published by Wiley in Comparative and Functional Genomics
- Vol. 5 (5) , 432-444
- https://doi.org/10.1002/cfg.416
Abstract
DNA microarray analysis is a biological technology which permits the whole genome to be monitored simultaneously on a single slide. Microarray technology not only opens an exciting research area for biologists, but also provides significant new challenges to statisticians. Two very common questions in the analysis of microarray data are, first, should we normalize arrays to remove potential systematic biases, and if so, what normalization method should we use? Second, how should we then implement tests of statistical significance? Straightforward and uniform answers to these questions remain elusive. In this paper, we use a real data example to illustrate a practical approach to addressing these questions. Our data is taken from a DNA–protein binding microarray experiment aimed at furthering our understanding of transcription regulation mechanisms, one of the most important issues in biology. For the purpose of preprocessing data, we suggest looking at descriptive plots first to decide whether we need preliminary normalization and, if so, how this should be accomplished. For subsequent comparative inference, we recommend use of an empirical Bayes method (the B statistic), since it performs much better than traditional methods, such as the sample mean (M statistic) and Student's t statistic, and it is also relatively easy to compute and explain compared to the others. The false discovery rate (FDR) is used to evaluate the different methods, and our comparative results lend support to our above suggestions.Keywords
Funding Information
- National Institutes of Health (HL65462, AI41966, GM066098, SES99-78238)
This publication has 25 references indexed in Scilit:
- A comparative review of statistical methods for discovering differentially expressed genes in replicated microarray experimentsBioinformatics, 2002
- Improved Background Correction for Spotted DNA MicroarraysJournal of Computational Biology, 2002
- Issues in cDNA microarray analysis: quality filtering, channel normalization, models of variations and assessment of gene effectsNucleic Acids Research, 2001
- A Bayesian framework for the analysis of microarray expression data: regularized t -test and statistical inferences of gene changesBioinformatics, 2001
- Significance analysis of microarrays applied to the ionizing radiation responseProceedings of the National Academy of Sciences, 2001
- On Differential Variability of Expression Ratios: Improving Statistical Inference about Gene Expression Changes from Microarray DataJournal of Computational Biology, 2001
- Genomic binding sites of the yeast cell-cycle transcription factors SBF and MBFNature, 2001
- Genome-Wide Location and Function of DNA Binding ProteinsScience, 2000
- Analysis of Variance for Gene Expression Microarray DataJournal of Computational Biology, 2000
- One-stop shop for microarray dataNature, 2000