European Journal of Medical Research (Mar 2022)

Identification of differentially expressed genes and signaling pathways with Candida infection by bioinformatics analysis

  • Guo-Dong Zhu,
  • Li-Min Xie,
  • Jian-Wen Su,
  • Xun-Jie Cao,
  • Xin Yin,
  • Ya-Ping Li,
  • Yuan-Mei Gao,
  • Xu-Guang Guo

DOI
https://doi.org/10.1186/s40001-022-00651-w
Journal volume & issue
Vol. 27, no. 1
pp. 1 – 11

Abstract

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Abstract Background Opportunistic Candida species causes severe infections when the human immune system is weakened, leading to high mortality. Methods In our study, bioinformatics analysis was used to study the high-throughput sequencing data of samples infected with four kinds of Candida species. And the hub genes were obtained by statistical analysis. Results A total of 547, 422, 415 and 405 differentially expressed genes (DEGs) of Candida albicans, Candida glabrata, Candida parapsilosis and Candida tropicalis groups were obtained, respectively. A total of 216 DEGs were obtained after taking intersections of DEGs from the four groups. A protein–protein interaction (PPI) network was established using these 216 genes. The top 10 hub genes (FOSB, EGR1, JUNB, ATF3, EGR2, NR4A1, NR4A2, DUSP1, BTG2, and EGR3) were acquired through calculation by the cytoHubba plug-in in Cytoscape software. Validated by the sequencing data of peripheral blood, JUNB, ATF3 and EGR2 genes were significant statistical significance. Conclusions In conclusion, our study demonstrated the potential pathogenic genes in Candida species and their underlying mechanisms by bioinformatic analysis methods. Further, after statistical validation, JUNB, ATF3 and EGR2 genes were attained, which may be used as potential biomarkers with Candida species infection.

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