Genome-Wide
Transcription Profiles Reveal Genotype-Dependent
Responses of Biological Pathways and Gene-Families in Daphnia Exposed
to Single and Mixed Stressors
posted on 2015-12-17, 01:02authored byDieter I. M. De Coninck, Jana Asselman, Stephen Glaholt, Colin
R. Janssen, John K. Colbourne, Joseph R. Shaw, Karel A. C. De
Schamphelaere
The
present study investigated the possibilities and limitations
of implementing a genome-wide transcription-based approach that takes
into account genetic and environmental variation to better understand
the response of natural populations to stressors. When exposing two
different Daphnia pulex genotypes (a cadmium-sensitive
and a cadmium-tolerant one) to cadmium, the toxic cyanobacteria Microcystis aeruginosa, and their mixture, we found that
observations at the transcriptomic level do not always explain observations
at a higher level (growth, reproduction). For example, although cadmium
elicited an adverse effect at the organismal level, almost no genes
were differentially expressed after cadmium exposure. In addition,
we identified oxidative stress and polyunsaturated fatty acid metabolism-related
pathways, as well as trypsin and neurexin IV gene-families as candidates
for the underlying causes of genotypic differences in tolerance to Microcystis. Furthermore, the whole-genome transcriptomic
data of a stressor mixture allowed a better understanding of mixture
responses by evaluating interactions between two stressors at the
gene-expression level against the independent action baseline model.
This approach has indicated that ubiquinone pathway and the MAPK serine-threonine
protein kinase and collagens gene-families were enriched with genes
showing an interactive effect in expression response to exposure to
the mixture of the stressors, while transcription and translation-related
pathways and gene-families were mostly related with genotypic differences
in interactive responses to this mixture. Collectively, our results
indicate that the methods we employed may improve further characterization
of the possibilities and limitations of transcriptomics approaches
in the adverse outcome pathway framework and in predictions of multistressor
effects on natural populations.