Title of article :
A new process for modeling heartbeat signals during exhaustive run with an adaptive estimator of its fractal parameters
Author/Authors :
Jean-Marc Bardet، نويسنده , , Imen Kammoun&Veronique Billat، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
This paper is devoted to a new study of the fractal behavior of heartbeats during a marathon. Such a case
is interesting since it allows the examination of heart behavior during a very long exercise in order to
reach reliable conclusions on the long-term properties of heartbeats. Three points of this study can be
highlighted. First, the whole race heartbeats of each runner are automatically divided into several stages
where the signal is nearly stationary and these stages are detected with an adaptive change points detection
method. Secondly, a new process called the locally fractional Gaussian noise (LFGN) is proposed to fit
such data. Finally, a wavelet-based method using a specific mother wavelet provides an adaptive procedure
for estimating low frequency and high frequency fractal parameters as well as the corresponding frequency
bandwidths. Such an estimator is theoretically proved to converge in the case of LFGNs, and simulations
confirm this consistency. Moreover, an adaptive chi-squared goodness-of-fit test is also built, using this
wavelet-based estimator. The application of this method to marathon heartbeat series indicates that the
LFGN fits well data at each stage and that the low frequency fractal parameter increases during the race.A
detection of a too large low frequency fractal parameter during the race could help prevent the too frequent
heart failures occurring during marathons.
Keywords :
heart rate time series , wavelet analysis , Fractional Gaussian noise , Hurstparameter , long-memory processes , self-similarity
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS