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In silico-driven analysis of the Glossina morsitans morsitans antennae transcriptome in response to repellent or attractant compounds
- Source :
- PeerJ, Vol 9, p e11691 (2021)
- Publication Year :
- 2021
- Publisher :
- PeerJ Inc., 2021.
-
Abstract
- Background High-throughput sequencing generates large volumes of biological data that must be interpreted to make meaningful inference on the biological function. Problems arise due to the large number of characteristics p (dimensions) that describe each record [n] in the database. Feature selection using a subset of variables extracted from the large datasets is one of the approaches towards solving this problem. Methodology In this study we analyzed the transcriptome of Glossina morsitans morsitans (Tsetsefly) antennae after exposure to either a repellant (δ-nonalactone) or an attractant (ε-nonalactone). We identified 308 genes that were upregulated or downregulated due to exposure to a repellant (δ-nonalactone) or an attractant (ε-nonalactone) respectively. Weighted gene coexpression network analysis was used to cluster the genes into 12 modules and filter unconnected genes. Discretized and association rule mining was used to find association between genes thereby predicting the putative function of unannotated genes. Results and discussion Among the significantly expressed chemosensory genes (FDR < 0.05) in response to Ɛ-nonalactone were gustatory receptors (GrIA and Gr28b), ionotrophic receptors (Ir41a and Ir75a), odorant binding proteins (Obp99b, Obp99d, Obp59a and Obp28a) and the odorant receptor (Or67d). Several non-chemosensory genes with no assigned function in the NCBI database were co-expressed with the chemosensory genes. Exposure to a repellent (δ-nonalactone) did not show any significant change between the treatment and control samples. We generated a coexpression network with 276 edges and 130 nodes. Genes CAH3, Ahcy, Ir64a, Or67c, Ir8a and Or67a had node degree values above 11 and therefore could be regarded as the top hub genes in the network. Association rule mining showed a relation between various genes based on their appearance in the same itemsets as consequent and antecedent.
- Subjects :
- 0301 basic medicine
Association rule learning
Odorant binding
In silico
Computational biology
Biology
In silico analysis
General Biochemistry, Genetics and Molecular Biology
Transcriptome
03 medical and health sciences
0302 clinical medicine
RNASeq data
Receptor
Gene
Association rule mining
Biological data
Co-expression network
General Neuroscience
General Medicine
030104 developmental biology
Medicine
General Agricultural and Biological Sciences
030217 neurology & neurosurgery
Function (biology)
Discretization
Subjects
Details
- Language :
- English
- ISSN :
- 21678359
- Volume :
- 9
- Database :
- OpenAIRE
- Journal :
- PeerJ
- Accession number :
- edsair.doi.dedup.....14df66f493b5eb4bfd472689692f2023