Time-series gene expression patterns and their characteristics of Beauveria bassiana in the process of infecting pest insects

J Basic Microbiol. 2022 Oct;62(10):1274-1286. doi: 10.1002/jobm.202200155. Epub 2022 Jul 4.

Abstract

Beauveria bassiana has been widely used as an important biological control fungus for agricultural and forest pests, and clarifying the interaction mechanism between B. bassiana and its host will help to better exert the efficacy of the mycoinsecticide. Here, we proposed a novel pattern analysis (PA) method for analyzing time-series data and applied it to a transcriptomic data set of B. bassiana infecting Galleria mellonella. We screened out 14 patterns including 868 genes, which had some characteristics that were not inferior to differentially expressed genes (DEGs). Compared with the previous analysis of this data set, we had three novel discoveries during B. bassiana infection, including overall downregulation of gene expression, the more critical first 24 h, and enrichment of regulatory functions of downregulated genes. Our new PA method promises to be an important complement to DEGs analysis for time-series transcriptomic data, and our findings enrich our knowledge of molecular mechanisms of fungal-host interactions.

Keywords: Beauveria bassiana; gene expression pattern; gene function; infection process; network topology.

MeSH terms

  • Animals
  • Beauveria* / genetics
  • Beauveria* / metabolism
  • Host-Pathogen Interactions / genetics
  • Insecta
  • Moths* / genetics
  • Moths* / microbiology
  • Transcriptome