DocumentCode
612347
Title
Hierarchical structure of human gas exchange models to improve parameter identification
Author
Riedlinger, A. ; Kretschmer, Jan ; Moller, Katharina
Author_Institution
Inst. af Tech. Med., Furtwangen Univ., Villingen-Schwenningen, Germany
fYear
2013
fDate
25-28 May 2013
Firstpage
103
Lastpage
108
Abstract
Mathematical models can be used to simulate a patient´s respiratory system and thus predict the outcome of a change in therapy settings. Therefore, mathematical models might be exploited to support therapeutic decision making in mechanical ventilation. In interaction with models of respiratory mechanics and cardiovascular dynamics, gas exchange models may help to find optimal ventilator settings achieving sufficient oxygenation of the patient along with avoiding further lung damage due to high peak inspiratory pressures. Considering the risk of oxygen toxicity, gas exchange models may calculate optimal inspired oxygen fraction (Fi, 02) to achieve a desired goal for blood gas oxygenation (Pa, 02). In general, physiological models should be kept as simple as possible to reduce the number of model parameters that have to be identified for adaptation to the individual patient. However, in case of severe lung disease simple gas exchange models often are not able to simulate patient physiology adequately. More complex models are necessary and identification may be intractable due to a higher number of model parameters. Thus, depending on the complexity of the employed model a different amount of information is required for identification. A hierarchical structure of different gas exchange models is presented that might be exploited to simplify parameter identification of complex models. A stepwise identification of the model parameters may lead to an accelerated and robust identification process as shown in a retrospective analysis of patient data.
Keywords
biochemistry; blood; optimisation; patient treatment; physiological models; blood gas oxygenation; cardiovascular dynamics; hierarchical structure; high peak inspiratory pressure; human gas exchange model; mathematical models; mechanical ventilation; model parameters; optimal inspired oxygen fraction; optimal ventilator settings; oxygen toxicity risk; patient oxygenation; patient respiratory system; physiological model complexity; respiratory mechanics; severe lung disease; stepwise model parameter identification; therapeutic decision making; therapy setting changes; Adaptation models; Carbon dioxide; Fitting; Mathematical model; Parameter estimation; Pressure measurement; Ventilation; gas exchange; hierarchical model structure; model identification;
fLanguage
English
Publisher
ieee
Conference_Titel
Complex Medical Engineering (CME), 2013 ICME International Conference on
Conference_Location
Beijing
Print_ISBN
978-1-4673-2970-5
Type
conf
DOI
10.1109/ICCME.2013.6548220
Filename
6548220
Link To Document