Model-based estimation of AV-nodal refractory period and conduction delay trends from ECG
Artikel i vetenskaplig tidskrift, 2024
Methods: This study presents a novel methodology for estimating the refractory period (RP) and conduction delay (CD) trends, and their uncertainty in the two pathways of the AV node during 24 h using non-invasive data. This was achieved by utilizing a network model together with a problem-specific genetic algorithm and an approximate Bayesian computation algorithm. Diurnal variability in the estimated RP and CD was quantified by the difference between the daytime and nighttime estimates, and short-term variability was quantified by the Kolmogorov-Smirnov distance between adjacent 10-min segments in the 24-h trends. Additionally, the predictive value of the derived parameter trends regarding drug outcome was investigated using several machine learning tools.
Results: Holter electrocardiograms from 51 patients with permanent AF during baseline were analyzed, and the predictive power of variations in RP and CD on the resulting heart rate reduction after treatment with four rate control drugs was investigated. Diurnal variability yielded no correlation to treatment outcome, and no prediction of drug outcome was possible using the machine learning tools. However, a correlation between the short-term variability for the RP and CD in the fast pathway and resulting heart rate reduction during treatment with metoprolol (rho = 0.48, p < 0.005 in RP, rho = 0.35, p < 0.05 in CD) were found.
Discussion: The proposed methodology enables non-invasive estimation of the AV node properties during 24 h, which-indicated by the correlation between the short-term variability and heart rate reduction-may have the potential to assist in treatment selection.
rate control drugs
atrial fibrillation
AV node model
genetic algorithm
atrioventricular node
ECG
mathematical modeling
approximate Bayesian computation
Författare
Mattias Karlsson
Stiftelsen Fraunhofer-Chalmers Centrum för Industrimatematik
Polymerteknologi
Pyotr G. Platonov
Lunds universitet
Sara R. Ulimoen
Bærum sykehus
Frida Sandberg
Lunds universitet
Mikael Wallman
Stiftelsen Fraunhofer-Chalmers Centrum för Industrimatematik
FRONTIERS IN PHYSIOLOGY
1664-042X (eISSN)
Vol. 14 1287365Ämneskategorier
Kardiologi
DOI
10.3389/fphys.2023.1287365
PubMed
38283279