Scientific Reports (Jan 2024)

Idiopathic pulmonary fibrosis-specific Bayesian network integrating extracellular vesicle proteome and clinical information

  • Mei Tomoto,
  • Yohei Mineharu,
  • Noriaki Sato,
  • Yoshinori Tamada,
  • Mari Nogami-Itoh,
  • Masataka Kuroda,
  • Jun Adachi,
  • Yoshito Takeda,
  • Kenji Mizuguchi,
  • Atsushi Kumanogoh,
  • Yayoi Natsume-Kitatani,
  • Yasushi Okuno

DOI
https://doi.org/10.1038/s41598-023-50905-8
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 12

Abstract

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Abstract Idiopathic pulmonary fibrosis (IPF) is a progressive disease characterized by severe lung fibrosis and a poor prognosis. Although the biomolecules related to IPF have been extensively studied, molecular mechanisms of the pathogenesis and their association with serum biomarkers and clinical findings have not been fully elucidated. We constructed a Bayesian network using multimodal data consisting of a proteome dataset from serum extracellular vesicles, laboratory examinations, and clinical findings from 206 patients with IPF and 36 controls. Differential protein expression analysis was also performed by edgeR and incorporated into the constructed network. We have successfully visualized the relationship between biomolecules and clinical findings with this approach. The IPF-specific network included modules associated with TGF-β signaling (TGFB1 and LRC32), fibrosis-related (A2MG and PZP), myofibroblast and inflammation (LRP1 and ITIH4), complement-related (SAA1 and SAA2), as well as serum markers, and clinical symptoms (KL-6, SP-D and fine crackles). Notably, it identified SAA2 associated with lymphocyte counts and PSPB connected with the serum markers KL-6 and SP-D, along with fine crackles as clinical manifestations. These results contribute to the elucidation of the pathogenesis of IPF and potential therapeutic targets.