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A mechanical model lung for hydraulic testing of total liquid ventilation circuits
Authors:Bagnoli P  Vismara R  Fiore G B  Costantino M L
Institution:Department of Bioengineering, Politecnico di Milano, Milan and Department of Mechanical Engineering, Politecnico di Torino, Turin, Italy. paola.bagnoli@polimi.it
Abstract:A new model lung (ML), designed to reproduce the tracheal pressure vs. fluid flow relationship in animals undergoing total liquid ventilation (TLV) trials, was developed to be used as a mock bench test for neonatal TLV circuits. The ML is based on a linear inertance-resistance-compliance (LRC) lumped-parameter model of the respiratory system with different resistance values for inspiration (R insp ) or expiration (R exp ). The resistant element was set up using polypropylene hollow fibres packed inside a tube. A passive one-way valve was used to control the resistance cross-section area provided for the liquid to generate different values for R insp or R exp , each adjustable by regulating the active length of the respective fibre pack. The compliant element consists of a cylindrical column reservoir, in which bars of different diameter were inserted to adjust compliance (C). The inertial phenomena occurring in the central airways during TLV were reproduced by specifically dimensioned conduits into which the endotracheal tube connecting the TLV circuit to the ML was inserted. A number of elements with different inertances (L) were used to simulate different sized airways. A linear pressure drop-to-flow rate relationship was obtained for flow rates up to 5 l/min. The measured C (0.8 to 1.3 mL cmH2O (-1) kg(-1)), R insp (90 to 850 cmH2O s l(-1)), and R exp (50 to 400 cmH2O s l(-1)) were in agreement with the literature concerning animals weighing from 1 to 12 kg. Moreover, features observed in data acquired during in vivo TLV sessions, such as pressure oscillations due to fluid inertia in the upper airways, were similarly obtained in vitro thanks to the inertial element in the ML.
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