Application of entropy-based features to predict defibrillation outcome in cardiac arrest
Ikusi/ Ireki
Data
2016-08Egilea
Chicote Gutiérrez, Beatriz
Irusta Zarandona, Unai
Alcaraz, Raúl
Rieta, José Joaquín
Aramendi Ecenarro, Elisabete
Isasi Liñero, Iraia
Alonso, Daniel
Ibarguren Olalde, Karlos
Entropy 18(9) : (2016) // Article ID 313
Laburpena
Prediction of defibrillation success is of vital importance to guide therapy and improve the survival of patients suffering out-of-hospital cardiac arrest (OHCA). Currently, the most efficient methods to predict shock success are based on the analysis of the electrocardiogram (ECG) during ventricular fibrillation (VF), and recent studies suggest the efficacy of waveform indices that characterize the underlying non-linear dynamics of VF. In this study we introduce, adapt and fully characterize six entropy indices for VF shock outcome prediction, based on the classical definitions of entropy to measure the regularity and predictability of a time series. Data from 163 OHCA patients comprising 419 shocks (107 successful) were used, and the performance of the entropy indices was characterized in terms of embedding dimension (m) and matching tolerance (r). Six classical predictors were also assessed as baseline prediction values. The best prediction results were obtained for fuzzy entropy (FuzzEn) with m = 3 and an amplitude-dependent tolerance of r = 80 mu V. This resulted in a balanced sensitivity/specificity of 80.4%/76.9%, which improved by over five points the results obtained for the best classical predictor. These results suggest that a FuzzEn approach for a joint quantification of VF amplitude and its non-linear dynamics may be a promising tool to optimize OHCA treatment.
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Bestelakorik adierazi ezean, itemaren baimena horrela deskribatzen da:© 2016 by the authors; licensee MDPI, Basel, Switzerland. This article is an open access
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(CC-BY) license (http://creativecommons.org/licenses/by/4.0/).