Title :
Power index of the inspiratory flow signal as a predictor of weaning in intensive care units
Author :
Chaparro, Javier A. ; Giraldo, Beatriz F.
Author_Institution :
Grupo de Investig. Ecitronica, Escuela Colombiana de Ing., Bogota, Colombia
Abstract :
Disconnection from mechanical ventilation, called the weaning process, is an additional difficulty in the management of patients in intensive care units (ICU). Unnecessary delays in the discontinuation process and a weaning trial that is undertaken too early are undesirable. In this study, we propose an extubation index based on the power of the respiratory flow signal (Pi). A total of 132 patients on weaning trials were studied: 94 patients with successful trials (group S) and 38 patients who failed to maintain spontaneous breathing and were reconnected (group F). The respiratory flow signals were processed considering the following three stages: a) zero crossing detection of the inspiratory phase, b) inflection point detection of the flow curve during the inspiratory phase, and c) calculation of the signal power on the time instant indicated by the inflection point. The zero crossing detection was performed using an algorithm based on thresholds. The inflection points were marked considering the zero crossing of the second derivative. Finally, the inspiratory power was calculated from the energy contained over the finite time interval (between the instant of zero crossing and the inflection point). The performance of this parameter was evaluated using the following classifiers: logistic regression, linear discriminant analysis, the classification and regression tree, Naive Bayes, and the support vector machine. The best results were obtained using the Bayesian classifier, which had an accuracy, sensitivity and specificity of 87%, 90% and 81% respectively.
Keywords :
Bayes methods; bioelectric potentials; health care; medical signal detection; medical signal processing; pneumodynamics; regression analysis; support vector machines; Bayesian classifier; inspiratory flow signal processing; inspiratory signal power index calculation; intensive care units; linear discriminant analysis; logistic regression; mechanical ventilation; patient management; regression tree; respiratory flow signal processing; spontaneous breathing; support vector machine; weaning predictor; zero crossing inspiratory phase detection; Accuracy; Indexes; Logistics; Niobium; Regression tree analysis; Support vector machines; Ventilation;
Conference_Titel :
Engineering in Medicine and Biology Society (EMBC), 2014 36th Annual International Conference of the IEEE
Conference_Location :
Chicago, IL
DOI :
10.1109/EMBC.2014.6943533