Infection and genotype remodel the entire soybean transcriptome
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Date
2009-01-26
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BioMed Central
Abstract
Background: High throughput methods, such as high density oligonucleotide microarray
measurements of mRNA levels, are popular and critical to genome scale analysis and systems
biology. However understanding the results of these analyses and in particular understanding the
very wide range of levels of transcriptional changes observed is still a significant challenge. Many
researchers still use an arbitrary cut off such as two-fold in order to identify changes that may be
biologically significant. We have used a very large-scale microarray experiment involving 72
biological replicates to analyze the response of soybean plants to infection by the pathogen
Phytophthora sojae and to analyze transcriptional modulation as a result of genotypic variation.
Results: With the unprecedented level of statistical sensitivity provided by the high degree of
replication, we show unambiguously that almost the entire plant genome (97 to 99% of all
detectable genes) undergoes transcriptional modulation in response to infection and genetic
variation. The majority of the transcriptional differences are less than two-fold in magnitude. We
show that low amplitude modulation of gene expression (less than two-fold changes) is highly
statistically significant and consistent across biological replicates, even for modulations of less than
20%. Our results are consistent through two different normalization methods and two different
statistical analysis procedures.
Conclusion: Our findings demonstrate that the entire plant genome undergoes transcriptional
modulation in response to infection and genetic variation. The pervasive low-magnitude remodeling
of the transcriptome may be an integral component of physiological adaptation in soybean, and in
all eukaryotes.
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Citation
Lecong Zhou et al, "Infection and genotype remodel the entire soybean transcriptome," BMC Genomics 10 (2009), doi:10.1186/1471-2164-10-49, http://www.biomedcentral.com/1471-2164/10/49