AI Article Synopsis

  • The study investigates two nonlinear methods, cross-sample entropy (CSampEn) and k-nearest-neighbor cross-predictability (KNNCP), for assessing the strength of connections between heart rate and respiration, as well as brain blood flow and arterial pressure.
  • Both methods were tested under different physiological conditions, revealing they can quantify associations but show varied statistical strength and distinct responses to stressors.
  • The research highlights that CSampEn and KNNCP should be used together for a more comprehensive evaluation of cardiorespiratory and cerebrovascular coupling, as they may yield different clinical insights.

Article Abstract

Quantification of the cardiorespiratory and cerebrovascular couplings is a relevant clinical issue given that their changes are considered signs of pathological status. The inherent nonlinearity of mechanisms underlying cardiorespiratory and cerebrovascular links requires nonlinear tools for their reliable evaluation. In the present study we compare two nonlinear methods for the assessment of coupling strength between two time series, namely cross-sample entropy (CSampEn) and k-nearest-neighbor cross-predictability (KNNCP). CSampEn uses a strategy that fixes the pattern length, while KNNCP optimizes the pattern length to maximize cross-predictability. CSampEn and KNNCP were applied to the beat-to-beat series of heart period (HP) and respiration (R) during a controlled breathing protocol with the aim at assessing cardiorespiratory coupling and to the beat-to-beat series of mean cerebral blood flow (MCBF) and mean arterial pressure (MAP) during an orthostatic stressor with the aim at evaluating cerebrovascular coupling. Although both the methods have the possibility to quantify the degree of HP-R and MCBF-MAP association, they exhibited different statistical power and even diverse trends in response to the considered physiological challenges. CSampEn and KNNCP are not interchangeable and should be utilized in association more than in alternative for the quantification of the HP-R and MCBF-MAP coupling strength. Clinical Relevance - This study proves that cross-entropy and cross-predictability might lead to different conclusions about cardiorespiratory and cerebrovascular couplings.

Download full-text PDF

Source
http://dx.doi.org/10.1109/EMBC48229.2022.9871239DOI Listing

Publication Analysis

Top Keywords

cardiorespiratory cerebrovascular
16
cross-sample entropy
8
k-nearest-neighbor cross-predictability
8
cerebrovascular couplings
8
coupling strength
8
pattern length
8
csampen knncp
8
beat-to-beat series
8
hp-r mcbf-map
8
cardiorespiratory
5

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!