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AIME
2009
Springer

Prediction of Mechanical Lung Parameters Using Gaussian Process Models

13 years 11 months ago
Prediction of Mechanical Lung Parameters Using Gaussian Process Models
Abstract. Mechanical ventilation can cause severe lung damage by inadequate adjustment of the ventilator. We introduce a Machine Learning approach to predict the pressure-dependent, non-linear lung compliance, a crucial parameter to estimate lung protective ventilation settings. Features were extracted by fitting a generally accepted lumped parameter model to time series data obtained from ARDS (adult respiratory distress syndrome) patients. Numerical prediction was performed by use of Gaussian processes, a probabilistic, non-parametric modeling approach for non-linear functions. 1 Medical Background and Clinical Purpose Under the condition of mechanical ventilation a high volume distensibility – or compliance C – of the lung is assumed to reduce the mechanical stress to the lung tissue and hence irreversible damage to the respiratory system. A common technique to determine the maximal compliance Cmax inflates the lung with almost zero flow (so-called ’static’ conditions) ov...
Steven Ganzert, Stefan Kramer, Knut Möller, D
Added 23 Jul 2010
Updated 23 Jul 2010
Type Conference
Year 2009
Where AIME
Authors Steven Ganzert, Stefan Kramer, Knut Möller, Daniel Steinmann, Josef Guttmann
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