BMC Research Notes (Jun 2010)

A general framework for optimization of probes for gene expression microarray and its application to the fungus <it>Podospora anserina</it>

  • Bidard Frédérique,
  • Imbeaud Sandrine,
  • Reymond Nancie,
  • Lespinet Olivier,
  • Silar Philippe,
  • Clavé Corinne,
  • Delacroix Hervé,
  • Berteaux-Lecellier Véronique,
  • Debuchy Robert

DOI
https://doi.org/10.1186/1756-0500-3-171
Journal volume & issue
Vol. 3, no. 1
p. 171

Abstract

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Abstract Background The development of new microarray technologies makes custom long oligonucleotide arrays affordable for many experimental applications, notably gene expression analyses. Reliable results depend on probe design quality and selection. Probe design strategy should cope with the limited accuracy of de novo gene prediction programs, and annotation up-dating. We present a novel in silico procedure which addresses these issues and includes experimental screening, as an empirical approach is the best strategy to identify optimal probes in the in silico outcome. Findings We used four criteria for in silico probe selection: cross-hybridization, hairpin stability, probe location relative to coding sequence end and intron position. This latter criterion is critical when exon-intron gene structure predictions for intron-rich genes are inaccurate. For each coding sequence (CDS), we selected a sub-set of four probes. These probes were included in a test microarray, which was used to evaluate the hybridization behavior of each probe. The best probe for each CDS was selected according to three experimental criteria: signal-to-noise ratio, signal reproducibility, and representative signal intensities. This procedure was applied for the development of a gene expression Agilent platform for the filamentous fungus Podospora anserina and the selection of a single 60-mer probe for each of the 10,556 P. anserina CDS. Conclusions A reliable gene expression microarray version based on the Agilent 44K platform was developed with four spot replicates of each probe to increase statistical significance of analysis.