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Division of Pulmonary and Critical Care Medicine, University of Massachusetts Medical Center, Worcester, Massachusetts 01655
Received 22 July 1996; accepted in final form 5 May 1997.
Sammon, Michel, and Frederick Curley. Nonlinear systems
identification: autocorrelation vs. autoskewness. J. Appl. Physiol. 83(3): 975-993, 1997.
Autocorrelation function
(C1) or
autoregressive model parameters are often estimated for temporal analysis of physiological measurements. However, statistical
approximations truncated at linear terms are unlikely to be of
sufficient accuracy for patients whose homeostatic control systems
cannot be presumed to be stable local to a single equilibrium. Thus a
quadratic variant of
C1
[autoskewness function
(C2)] is
introduced to detect nonlinearities in an output signal as a function
of time delays. By use of simulations of nonlinear autoregressive
models, C2 is
shown to identify only those nonlinearities that "break" the symmetry of a system, altering the mean and skewness of its outputs. Case studies of patients with cardiopulmonary dysfunction demonstrate a
range of ventilatory patterns seen in the clinical environment; whereas
testing of C1
reveals their breath-by-breath minute ventilation to be significantly autocorrelated, the
C2 test concludes
that the correlation is nonlinear and asymmetrically distributed.
Higher-order functionals [e.g., autokurtosis
(C3)] are
necessary for global analysis of metastable systems that continuously
"switch" between multiple equilibrium states and unstable systems
exhibiting nonequilibrium dynamics.
structural stability; metastability; symmetry breaking ; respiratory failure; congestive heart failure; nonlinear dynamics
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