TY - JOUR
T1 - Optimized symbolic dynamics approach for the analysis of the respiratory pattern
AU - Caminal, P.
AU - Vallverdú, M.
AU - Giraldo, B.
AU - Benito, S.
AU - Vázquez, G.
AU - Voss, A.
PY - 2005/11/1
Y1 - 2005/11/1
N2 - Traditional time domain techniques of data analysis are often not sufficient to characterize the complex dynamics of respiration. In this paper, the respiratory pattern variability is analyzed using symbolic dynamics. A group of 20 patients on weaning trials from mechanical ventilation are studied at two different pressure support ventilation levels, in order to obtain respiratory volume signals with different variability. Time series of inspiratory time, expiratory time, breathing duration, fractional inspiratory time, tidal volume and mean inspiratory flow are analyzed. Two different symbol alphabets, with three and four symbols, are considered to characterize the respiratory pattern variability. Assessment of the method is made using the 40 respiratory volume signals classified using clinical criteria into two classes: low variability (LV) or high variability (HV). A discriminant analysis using single indexes from symbolic dynamics has been able to classify the respiratory volume signals with an out-of-sample accuracy of 100%. © 2005 IEEE.
AB - Traditional time domain techniques of data analysis are often not sufficient to characterize the complex dynamics of respiration. In this paper, the respiratory pattern variability is analyzed using symbolic dynamics. A group of 20 patients on weaning trials from mechanical ventilation are studied at two different pressure support ventilation levels, in order to obtain respiratory volume signals with different variability. Time series of inspiratory time, expiratory time, breathing duration, fractional inspiratory time, tidal volume and mean inspiratory flow are analyzed. Two different symbol alphabets, with three and four symbols, are considered to characterize the respiratory pattern variability. Assessment of the method is made using the 40 respiratory volume signals classified using clinical criteria into two classes: low variability (LV) or high variability (HV). A discriminant analysis using single indexes from symbolic dynamics has been able to classify the respiratory volume signals with an out-of-sample accuracy of 100%. © 2005 IEEE.
KW - Data classification
KW - Dynamical nonlinearities analysis
KW - Respiratory pattern variability
KW - Symbolic dynamics
UR - https://www.scopus.com/pages/publications/27644521491
U2 - 10.1109/TBME.2005.856293
DO - 10.1109/TBME.2005.856293
M3 - Article
SN - 0018-9294
VL - 52
SP - 1832
EP - 1839
JO - IEEE Transactions on Biomedical Engineering
JF - IEEE Transactions on Biomedical Engineering
IS - 11
ER -