Non-Invasive Characterization of Atrio-Ventricular Properties During Atrial Fibrillation

The atrio-ventricular (AV) node is the primary regulator of ventricular rhythm during atrial fibrillation (AF). Hence, ECG based characterization of AV node properties can be an important tool for monitoring and predicting the effect of rate control drugs. In this work we present a network model of the AV node, and an associated workflow for robust estimation of the model parameters from ECG. The model consists of interacting nodes with refractory periods and conduction delays determined by the stimulation history of each node. The nodes are organized in one fast pathway (FP) and one slow pathway (SP), interconnected at their last nodes. Model parameters are estimated using a genetic algorithm with a fitness function based on the Poincare plot of the RR interval series. The robustness of the parameter estimates was evaluated using simulated data based on ECG measurements. Results from this show that refractory period parameters $R_{min}^{SP}$ and $\Delta R^{SP}$ can be estimated with an error $(mean\pm std)$ of $10\pm 22\ ms\ and-12.6\pm 26\ ms$ respectively, and conduction delay parameters $D_{min,tot}^{SP}$ and $\Delta D_{tot}^{SP}$ with an error of $7\pm 35\ ms$ and $4\pm 36\ ms$. Corresponding results for the fast pathway are $31.7\pm 65\ ms, -0.3\pm 77\ ms$, and 1 $7\pm 29\ ms,43\pm 109\ ms$. This suggest that AV node properties can be assessed from ECG during AF with enough precision and robustness for monitoring the effect of rate control drugs.

[1]  D. Casavant,et al.  Permanent, direct His-bundle pacing: a novel approach to cardiac pacing in patients with normal His-Purkinje activation. , 2000, Circulation.

[2]  M R Boyett,et al.  One-dimensional mathematical model of the atrioventricular node including atrio-nodal, nodal, and nodal-his cells. , 2009, Biophysical journal.

[3]  Steve Enger,et al.  Comparison of four single-drug regimens on ventricular rate and arrhythmia-related symptoms in patients with permanent atrial fibrillation. , 2013, The American journal of cardiology.

[4]  Jeroen J. Bax,et al.  2020 ESC Guidelines for the diagnosis and management of atrial fibrillation developed in collaboration with the European Association of Cardio-Thoracic Surgery (EACTS). , 2020, European heart journal.

[5]  J Millet,et al.  Functional mathematical model of dual pathway AV nodal conduction. , 2011, American journal of physiology. Heart and circulatory physiology.

[6]  Frida Sandberg,et al.  Characterisation of human AV-nodal properties using a network model , 2018, Medical & Biological Engineering & Computing.

[7]  Valentina D. A. Corino,et al.  Atrioventricular nodal function during atrial fibrillation: Model building and robust estimation , 2013, Biomed. Signal Process. Control..

[8]  Vadim V Fedorov,et al.  Anatomy and Electrophysiology of the Human AV Node , 2010, Pacing and clinical electrophysiology : PACE.

[9]  Leif Sörnmo,et al.  Spatiotemporal QRST cancellation techniques for analysis of atrial fibrillation , 2001, IEEE Transactions on Biomedical Engineering.

[10]  Valentina D. A. Corino,et al.  An Atrioventricular Node Model for Analysis of the Ventricular Response During Atrial Fibrillation , 2011, IEEE Transactions on Biomedical Engineering.

[11]  Jie Lian,et al.  Computer modeling of ventricular rhythm during atrial fibrillation and ventricular pacing , 2006, IEEE Transactions on Biomedical Engineering.