Scientific Reports (Oct 2021)

Identification of serum prognostic biomarkers of severe COVID-19 using a quantitative proteomic approach

  • Yayoi Kimura,
  • Yusuke Nakai,
  • Jihye Shin,
  • Miyui Hara,
  • Yuriko Takeda,
  • Sousuke Kubo,
  • Sundararaj Stanleyraj Jeremiah,
  • Yoko Ino,
  • Tomoko Akiyama,
  • Kayano Moriyama,
  • Kazuya Sakai,
  • Ryo Saji,
  • Mototsugu Nishii,
  • Hideya Kitamura,
  • Kota Murohashi,
  • Kouji Yamamoto,
  • Takeshi Kaneko,
  • Ichiro Takeuchi,
  • Eri Hagiwara,
  • Takashi Ogura,
  • Hideki Hasegawa,
  • Tomohiko Tamura,
  • Takeharu Yamanaka,
  • Akihide Ryo

DOI
https://doi.org/10.1038/s41598-021-98253-9
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 9

Abstract

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Abstract The COVID-19 pandemic is an unprecedented threat to humanity that has provoked global health concerns. Since the etiopathogenesis of this illness is not fully characterized, the prognostic factors enabling treatment decisions have not been well documented. Accurately predicting the progression of the disease would aid in appropriate patient categorization and thus help determine the best treatment option. Here, we have introduced a proteomic approach utilizing data-independent acquisition mass spectrometry (DIA-MS) to identify the serum proteins that are closely associated with COVID-19 prognosis. Twenty-seven proteins were differentially expressed between severely ill COVID-19 patients with an adverse or favorable prognosis. Ingenuity Pathway Analysis revealed that 15 of the 27 proteins might be regulated by cytokine signaling relevant to interleukin (IL)-1β, IL-6, and tumor necrosis factor (TNF), and their differential expression was implicated in the systemic inflammatory response and in cardiovascular disorders. We further evaluated practical predictors of the clinical prognosis of severe COVID-19 patients. Subsequent ELISA assays revealed that CHI3L1 and IGFALS may serve as highly sensitive prognostic markers. Our findings can help formulate a diagnostic approach for accurately identifying COVID-19 patients with severe disease and for providing appropriate treatment based on their predicted prognosis.