Separating the Wheat from the Chaff: The Use of Upstream Regulator Analysis to Identify True Differential Expression of Single Genes within Transcriptomic Datasets
Metadata
Show full item recordEditorial
MDPI
Materia
Transcriptomics Differential expression analysis Rare disease Drug repurposing
Date
2021Referencia bibliográfica
Hadwen, J.; Schock, S.; Farooq, F.; MacKenzie, A.; Plaza-Diaz, J. Separating the Wheat from the Chaff: The Use of Upstream Regulator Analysis to Identify True Differential Expression of Single Genes within Transcriptomic Datasets. Int. J. Mol. Sci. 2021, 22, 6295. https://doi.org/10.3390/ ijms22126295
Sponsorship
Care4Rare Canada Consortium funded by Genome Canada; Canadian Institutes of Health Research; Ontario Genomics Institute (OGI-049); Ontario Research Fund; Genome Quebec; Genome British Columbia; CHEO Foundation (3 July 2014)Abstract
The development of DNA microarray and RNA-sequencing technology has led to an
explosion in the generation of transcriptomic differential expression data under a wide range of
biologic systems including those recapitulating the monogenic muscular dystrophies. Data generation has increased exponentially due in large part to new platforms, improved cost-effectiveness,
and processing speed. However, reproducibility and thus reliability of data remain a central issue,
particularly when resource constraints limit experiments to single replicates. This was observed
firsthand in a recent rare disease drug repurposing project involving RNA-seq-based transcriptomic
profiling of primary cerebrocortical cultures incubated with clinic-ready blood–brain penetrant
drugs. Given the low validation rates obtained for single differential expression genes, alternative approaches to identify with greater confidence genes that were truly differentially expressed
in our dataset were explored. Here we outline a method for differential expression data analysis
in the context of drug repurposing for rare diseases that incorporates the statistical rigour of the
multigene analysis to bring greater predictive power in assessing individual gene modulation. Ingenuity Pathway Analysis upstream regulator analysis was applied to the differentially expressed
genes from the Care4Rare Neuron Drug Screen transcriptomic database to identify three distinct
signaling networks each perturbed by a different drug and involving a central upstream modulating protein: levothyroxine (DIO3), hydroxyurea (FOXM1), dexamethasone (PPARD). Differential
expression of upstream regulator network related genes was next assessed in in vitro and in vivo
systems by qPCR, revealing 5× and 10× increases in validation rates, respectively, when compared with our previous experience with individual genes in the dataset not associated with a
network. The Ingenuity Pathway Analysis based gene prioritization may increase the predictive
value of drug–gene interactions, especially in the context of assessing single-gene modulation in
single-replicate experiments.