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Optimizing phase variability threshold for automated synchrogram analysis of cardiorespiratory interactions in amateur cyclists.

Beatrice CairoRaphael Martins de AbreuVlasta BariFrancesca GelpiBeatrice De MariaPatrícia Rehder-SantosCamila Akemi SakaguchiClaudio Donisete da SilvaÉtore De Favari SigniniAparecida Maria CataiAlberto Porta
Published in: Philosophical transactions. Series A, Mathematical, physical, and engineering sciences (2021)
We propose a procedure suitable for automated synchrogram analysis for setting the threshold below which phase variability between two marker event series is of such a negligible amount that the null hypothesis of phase desynchronization can be rejected. The procedure exploits the principle of maximizing the likelihood of detecting phase synchronization epochs and it is grounded on a surrogate data approach testing the null hypothesis of phase uncoupling. The approach was applied to assess cardiorespiratory phase interactions between heartbeat and inspiratory onset in amateur cyclists before and after 11-week inspiratory muscle training (IMT) at different intensities and compared to a more traditional approach to set phase variability threshold. The proposed procedure was able to detect the decrease in cardiorespiratory phase locking strength during vagal withdrawal induced by the modification of posture from supine to standing. IMT had very limited effects on cardiorespiratory phase synchronization strength and this result held regardless of the training intensity. In amateur athletes training, the inspiratory muscles did not limit the decrease in cardiorespiratory phase synchronization observed in the upright position as a likely consequence of the modest impact of this respiratory exercise, regardless of its intensity, on cardiac vagal control. This article is part of the theme issue 'Advanced computation in cardiovascular physiology: new challenges and opportunities'.
Keyphrases
  • high intensity
  • body composition
  • machine learning
  • randomized controlled trial
  • minimally invasive
  • deep learning
  • clinical trial
  • nitric oxide
  • resistance training
  • artificial intelligence
  • data analysis