Author/Authors :
Geryes, Maroun Universite Francois Rabelais de Tours - UMR Imagerie et Cerveau Inserm U930 - Tours, France , Ménigot, Sebastien Universite Francois Rabelais de Tours - UMR Imagerie et Cerveau Inserm U930 - Tours, France , Hassan, Walid Clarivate Analytics - Dubai, UAE , Mcheick, Ali Department of Physics and Electronics - Faculty of Sciences I - Lebanese University - Beirut, Lebanon , Charara, Jamal Clarivate Analytics - Dubai, UAE , Girault, Jean-Marc Universite Francois Rabelais de Tours - UMR Imagerie et Cerveau Inserm U930 - Tours, France
Abstract :
Robust detection of the smallest circulating cerebral microemboli is an efficient way of preventing strokes, which is second cause
of mortality worldwide. Transcranial Doppler ultrasound is widely considered the most convenient system for the detection of
microemboli. The most common standard detection is achieved through the Doppler energy signal and depends on an empirically
set constant threshold. On the other hand, in the past few years, higher order statistics have been an extensive field of research as
they represent descriptive statistics that can be used to detect signal outliers. In this study, we propose new types of microembolic
detectors based on the windowed calculation of the third moment skewness and fourth moment kurtosis of the energy signal.
During energy embolus-free periods the distribution of the energy is not altered and the skewness and kurtosis signals do not
exhibit any peak values. In the presence of emboli, the energy distribution is distorted and the skewness and kurtosis signals exhibit
peaks, corresponding to the latter emboli. Applied on real signals, the detection of microemboli through the skewness and kurtosis
signals outperformed the detection through standard methods. The sensitivities and specificities reached 78% and 91% and 80%
and 90% for the skewness and kurtosis detectors, respectively.