Reverse engineering of oxygen transport in the lung: adaptation to changing demands and resources through space-filling networks.

The space-filling fractal network in the human lung creates a remarkable distribution system for gas exchange. Landmark studies have illuminated how the fractal network guarantees minimum energy dissipation, slows air down with minimum hardware, maximizes the gas- exchange surface area, and creates...

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Main Authors: Chen Hou, Stefan Gheorghiu, Virginia H Huxley, Peter Pfeifer
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2010-08-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC2928740?pdf=render
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spelling doaj-5de362e5cec24858982266b0474d2b4b2020-11-24T21:55:55ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582010-08-016810.1371/journal.pcbi.1000902Reverse engineering of oxygen transport in the lung: adaptation to changing demands and resources through space-filling networks.Chen HouStefan GheorghiuVirginia H HuxleyPeter PfeiferThe space-filling fractal network in the human lung creates a remarkable distribution system for gas exchange. Landmark studies have illuminated how the fractal network guarantees minimum energy dissipation, slows air down with minimum hardware, maximizes the gas- exchange surface area, and creates respiratory flexibility between rest and exercise. In this paper, we investigate how the fractal architecture affects oxygen transport and exchange under varying physiological conditions, with respect to performance metrics not previously studied.We present a renormalization treatment of the diffusion-reaction equation which describes how oxygen concentrations drop in the airways as oxygen crosses the alveolar membrane system. The treatment predicts oxygen currents across the lung at different levels of exercise which agree with measured values within a few percent. The results exhibit wide-ranging adaptation to changing process parameters, including maximum oxygen uptake rate at minimum alveolar membrane permeability, the ability to rapidly switch from a low oxygen uptake rate at rest to high rates at exercise, and the ability to maintain a constant oxygen uptake rate in the event of a change in permeability or surface area. We show that alternative, less than space-filling architectures perform sub-optimally and that optimal performance of the space-filling architecture results from a competition between underexploration and overexploration of the surface by oxygen molecules.http://europepmc.org/articles/PMC2928740?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Chen Hou
Stefan Gheorghiu
Virginia H Huxley
Peter Pfeifer
spellingShingle Chen Hou
Stefan Gheorghiu
Virginia H Huxley
Peter Pfeifer
Reverse engineering of oxygen transport in the lung: adaptation to changing demands and resources through space-filling networks.
PLoS Computational Biology
author_facet Chen Hou
Stefan Gheorghiu
Virginia H Huxley
Peter Pfeifer
author_sort Chen Hou
title Reverse engineering of oxygen transport in the lung: adaptation to changing demands and resources through space-filling networks.
title_short Reverse engineering of oxygen transport in the lung: adaptation to changing demands and resources through space-filling networks.
title_full Reverse engineering of oxygen transport in the lung: adaptation to changing demands and resources through space-filling networks.
title_fullStr Reverse engineering of oxygen transport in the lung: adaptation to changing demands and resources through space-filling networks.
title_full_unstemmed Reverse engineering of oxygen transport in the lung: adaptation to changing demands and resources through space-filling networks.
title_sort reverse engineering of oxygen transport in the lung: adaptation to changing demands and resources through space-filling networks.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2010-08-01
description The space-filling fractal network in the human lung creates a remarkable distribution system for gas exchange. Landmark studies have illuminated how the fractal network guarantees minimum energy dissipation, slows air down with minimum hardware, maximizes the gas- exchange surface area, and creates respiratory flexibility between rest and exercise. In this paper, we investigate how the fractal architecture affects oxygen transport and exchange under varying physiological conditions, with respect to performance metrics not previously studied.We present a renormalization treatment of the diffusion-reaction equation which describes how oxygen concentrations drop in the airways as oxygen crosses the alveolar membrane system. The treatment predicts oxygen currents across the lung at different levels of exercise which agree with measured values within a few percent. The results exhibit wide-ranging adaptation to changing process parameters, including maximum oxygen uptake rate at minimum alveolar membrane permeability, the ability to rapidly switch from a low oxygen uptake rate at rest to high rates at exercise, and the ability to maintain a constant oxygen uptake rate in the event of a change in permeability or surface area. We show that alternative, less than space-filling architectures perform sub-optimally and that optimal performance of the space-filling architecture results from a competition between underexploration and overexploration of the surface by oxygen molecules.
url http://europepmc.org/articles/PMC2928740?pdf=render
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AT virginiahhuxley reverseengineeringofoxygentransportinthelungadaptationtochangingdemandsandresourcesthroughspacefillingnetworks
AT peterpfeifer reverseengineeringofoxygentransportinthelungadaptationtochangingdemandsandresourcesthroughspacefillingnetworks
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