BMC Bioinformatics (Aug 2002)

Computational method for reducing variance with Affymetrix microarrays

  • Brooks Andrew I,
  • Welle Stephen,
  • Thornton Charles A

DOI
https://doi.org/10.1186/1471-2105-3-23
Journal volume & issue
Vol. 3, no. 1
p. 23

Abstract

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Abstract Background Affymetrix microarrays are used by many laboratories to generate gene expression profiles. Generally, only large differences (> 1.7-fold) between conditions have been reported. Computational methods to reduce inter-array variability might be of value when attempting to detect smaller differences. We examined whether inter-array variability could be reduced by using data based on the Affymetrix algorithm for pairwise comparisons between arrays (ratio method) rather than data based on the algorithm for analysis of individual arrays (signal method). Six HG-U95A arrays that probed mRNA from young (21–31 yr old) human muscle were compared with six arrays that probed mRNA from older (62–77 yr old) muscle. Results Differences in mean expression levels of young and old subjects were small, rarely > 1.5-fold. The mean within-group coefficient of variation for 4629 mRNAs expressed in muscle was 20% according to the ratio method and 25% according to the signal method. The ratio method yielded more differences according to t-tests (124 vs. 98 differences at P Conclusion The ratio method reduces inter-array variance and thereby enhances statistical power.