Frontiers in Immunology (Mar 2014)

Definition of a family of tissue-protective cytokines using functional cluster analysis: a proof-of-concept study

  • Manuela eMengozzi,
  • Peter eErmilov,
  • Alexander eAnnenkov,
  • Pietro eGhezzi,
  • Frances ePearl

DOI
https://doi.org/10.3389/fimmu.2014.00115
Journal volume & issue
Vol. 5

Abstract

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The discovery of the tissue-protective activities of erythropoietin (EPO) has underlined the importance of some cytokines in tissue protection, repair and remodeling. As such activities have been reported for other cytokines, we asked whether we could define a class of tissue-protective cytokines. We therefore explored a novel approach based on functional clustering. In this pilot study, we started by analyzing a small number of cytokines (30). We functionally classified the 30 cytokines according to their interactions by using the bioinformatics tool STRING (Search Tool for the Retrieval of Interacting Genes), followed by hierarchical cluster analysis. The results of this functional clustering were different from those obtained by clustering cytokines simply according to their sequence. We previously reported that the protective activity of EPO in a model of cerebral ischemia was paralleled by an upregulation of synaptic plasticity genes, particularly early growth response 2 (EGR2). To assess the predictivity of functional clustering, we tested some of the cytokines clustering close to EPO (interleukin-11, IL-11; kit ligand, KITLG; leukemia inhibitory factor, LIF; thrombopoietin, THPO) in an in vitro model of human neuronal cells for their ability to induce EGR2. Two of these, LIF and IL-11, induced EGR2 expression. Although these data would need to be extended to a larger number of cytokines and the biological validation should be done using more robust in vivo models, rather then just one cell line, this study shows the feasibility of this approach. This type of functional cluster analysis could be extended to other fields of cytokine research and help design biological experiments.

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