Literature DB >> 9457438

Ventilation mode recognition using artificial neural networks.

M A Leon1, F L Lorini.   

Abstract

This study investigated the capabilities of artificial neural networks to identify spontaneous and pressure support ventilation modes from gas flow and airway pressure signals. After receiving written informed consent, flow and pressure waveforms were recorded from 13 patients undergoing general anesthesia. During analysis, the inspiratory phase of each breath was extracted and normalized in amplitude and wavelength. Neural networks were configured to input flow, pressure, or both waveforms and to output the ventilatory mode. Neural network training was accomplished with data from 500 breaths obtained from 7 patients. Neural network performance was tested with 433 breaths from the remaining 6 patients. Networks using flow, pressure, and both waveforms recognized correctly 78% (337), 97% (423), and 100% (433) of the test waveforms, respectively. Results indicate that neural networks can be used effectively for breathing pattern recognition and encourage the application of neural networks in other types of respiratory pattern recognition problems.

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Year:  1997        PMID: 9457438     DOI: 10.1006/cbmr.1997.1452

Source DB:  PubMed          Journal:  Comput Biomed Res        ISSN: 0010-4809


  3 in total

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3.  Real time noninvasive estimation of work of breathing using facemask leak-corrected tidal volume during noninvasive pressure support: validation study.

Authors:  Michael J Banner; Carl G Tams; Neil R Euliano; Paul J Stephan; Trevor J Leavitt; A Daniel Martin; Nawar Al-Rawas; Andrea Gabrielli
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  3 in total

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