Defective lung function following influenza virus is due to prolonged, reversible hyaluronan synthesis

Thomas J. Bell(University of Manchester), Stephan Brand(University of Manchester), David J. Morgan(University of Manchester), Samira Salek‐Ardakani(University of Manchester), Christopher Jagger(University of Manchester), Toshifumi Fujimori(University of Manchester), Lauren Cholewa(University of Manchester), Viranga Tilakaratna(Manchester Academic Health Science Centre), Jörgen Östling(AstraZeneca (Sweden)), Matt Thomas(AstraZeneca (Sweden)), Anthony J. Day(Manchester Academic Health Science Centre), Robert J. Snelgrove(Imperial College London), Tracy Hussell(University of Manchester)
Matrix Biology
June 20, 2018
Cited by 135Open Access
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Abstract

Little is known about the impact of viral infections on lung matrix despite its important contribution to mechanical stability and structural support. The composition of matrix also indirectly controls inflammation by influencing cell adhesion, migration, survival, proliferation and differentiation. Hyaluronan is a significant component of the lung extracellular matrix and production and degradation must be carefully balanced. We have discovered an imbalance in hyaluronan production following resolution of a severe lung influenza virus infection, driven by hyaluronan synthase 2 from epithelial cells, endothelial cells and fibroblasts. Furthermore hyaluronan is complexed with inter-α-inhibitor heavy chains due to elevated TNF-stimulated gene 6 expression and sequesters CD44-expressing macrophages. We show that intranasal administration of exogenous hyaluronidase is sufficient to release inter-α-inhibitor heavy chains, reduce lung hyaluronan content and restore lung function. Hyaluronidase is already used to facilitate dispersion of co-injected materials in the clinic. It is therefore feasible that fibrotic changes following severe lung infection and inflammation could be overcome by targeting abnormal matrix production.


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