Scientific Reports (Jun 2022)

Integrative analysis to explore the biological association between environmental skin diseases and ambient particulate matter

  • Hyun Soo Kim,
  • Hye-Won Na,
  • Yujin Jang,
  • Su Ji Kim,
  • Nam Gook Kee,
  • Dong Yeop Shin,
  • Hyunjung Choi,
  • Hyoung-June Kim,
  • Young Rok Seo

DOI
https://doi.org/10.1038/s41598-022-13001-x
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 16

Abstract

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Abstract Although numerous experimental studies have suggested a significant association between ambient particulate matter (PM) and respiratory damage, the etiological relationship between ambient PM and environmental skin diseases is not clearly understood. Here, we aimed to explore the association between PM and skin diseases through biological big data analysis. Differential gene expression profiles associated with PM and environmental skin diseases were retrieved from public genome databases. The co-expression among them was analyzed using a text-mining-based network analysis software. Activation/inhibition patterns from RNA-sequencing data performed with PM2.5-treated normal human epidermal keratinocytes (NHEK) were overlapped to select key regulators of the analyzed pathways. We explored the adverse effects of PM on the skin and attempted to elucidate their relationships using public genome data. We found that changes in upstream regulators and inflammatory signaling networks mediated by MMP-1, MMP-9, PLAU, S100A9, IL-6, and S100A8 were predicted as the key pathways underlying PM-induced skin diseases. Our integrative approach using a literature-based co-expression analysis and experimental validation not only improves the reliability of prediction but also provides assistance to clarify underlying mechanisms of ambient PM-induced dermal toxicity that can be applied to screen the relationship between other chemicals and adverse effects.