Prediction of extubation readiness in extreme preterm infants based on measures of cardiorespiratory variability

The majority of extreme preterm infants require endotracheal intubation and mechanical ventilation (ETT-MV) during the first days of life to survive. Unfortunately this therapy is associated with adverse clinical outcomes and consequently, it is desirable to remove ETT-MV as quickly as possible. How...

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Veröffentlicht in:2012 Annual International Conference of the IEEE Engineering in Medicine and Biology Society 2012-01, Vol.2012, p.5630-5633
Hauptverfasser: Precup, D., Robles-Rubio, C. A., Brown, K. A., Kanbar, L., Kaczmarek, J., Chawla, S., Sant'Anna, G. M., Kearney, R. E.
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Sprache:eng
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Zusammenfassung:The majority of extreme preterm infants require endotracheal intubation and mechanical ventilation (ETT-MV) during the first days of life to survive. Unfortunately this therapy is associated with adverse clinical outcomes and consequently, it is desirable to remove ETT-MV as quickly as possible. However, about 25% of extubated infants will fail and require re-intubation which is also associated with a 5-fold increase in mortality and a longer stay in the intensive care unit. Therefore, the ultimate goal is to determine the optimal time for extubation that will minimize the duration of MV and maximize the chances of success. This paper presents a new objective predictor to assist clinicians in making this decision. The predictor uses a modern machine learning method (Support Vector Machines) to determine the combination of measures of cardiorespiratory variability, computed automatically, that best predicts extubation readiness. Our results demonstrate that this predictor accurately classified infants who would fail extubation.
ISSN:1094-687X
1557-170X
1558-4615
DOI:10.1109/EMBC.2012.6347271