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Download fileCombined Transcriptomics Analysis for Classification of Adverse Effects As a Potential End Point in Effect Based Screening
journal contribution
posted on 2015-12-15, 00:00 authored by Tjalf E. de Boer, Thierry K. S. Janssens, Juliette Legler, Nico M. van Straalen, Dick RoelofsEnvironmental risk
assessment relies on the use of bioassays to
assess the environmental impact of chemicals. Gene expression is gaining
acceptance as a valuable mechanistic end point in bioassays and effect-based
screening. Data analysis and its results, however, are complex and
often not directly applicable in risk assessment. Classifier analysis
is a promising method to turn complex gene expression analysis results
into answers suitable for risk assessment. We have assembled a large
gene expression data set assembled from multiple studies and experiments
in the springtail Folsomia candida, with the aim
of selecting a set of genes that can be trained to classify general
toxic stress. By performing differential expression analysis prior
to classifier training, we were able to select a set of 135 genes
which was enriched in stress related processes. Classifier models
from this set were used to classify two test sets comprised of chemical
spiked, polluted, and clean soils and compared to another, more traditional
classifier feature selection. The gene set presented here outperformed
the more traditionally selected gene set. This gene set has the potential
to be used as a biomarker to test for adverse effects caused by chemicals
in springtails to provide end points in environmental risk assessment.