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Automated computer-assisted quantitative analysis of intact murine lungs at the alveolar scale

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  • Goran Lovric
  • Ioannis Vogiatzis Oikonomidis
  • Rajmund Mokso
  • Marco Stampanoni
  • Matthias Roth-Kleiner
  • Johannes C Schittny

Abstract

Using state-of-the-art X-ray tomographic microscopy we can image lung tissue in three dimensions in intact animals down to a micrometer precision. The structural complexity and hierarchical branching scheme of the lung at this level of details, however, renders the extraction of biologically relevant quantities particularly challenging. We have developed a methodology for a detailed description of lung inflation patterns by measuring the size and the local curvature of the parenchymal airspaces. These quantitative tools for morphological and topological analyses were applied to high-resolution murine 3D lung image data, inflated at different pressure levels under immediate post mortem conditions. We show for the first time direct indications of heterogeneous intra-lobar and inter-lobar distension patterns at the alveolar level. Furthermore, we did not find any indication that a cyclic opening-and-collapse (recruitment) of a large number of alveoli takes place.

Suggested Citation

  • Goran Lovric & Ioannis Vogiatzis Oikonomidis & Rajmund Mokso & Marco Stampanoni & Matthias Roth-Kleiner & Johannes C Schittny, 2017. "Automated computer-assisted quantitative analysis of intact murine lungs at the alveolar scale," PLOS ONE, Public Library of Science, vol. 12(9), pages 1-23, September.
  • Handle: RePEc:plo:pone00:0183979
    DOI: 10.1371/journal.pone.0183979
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