Atrial arrhythmias are frequently treated using catheter ablation during electrophysiological (EP) studies. However, success rates are only moderate and could be improved with the help of personalized simulation models of the atria. In this work, we present a workflow to generate and validate personalized EP simulation models based on routine clinical computed tomography (CT) scans and intracardiac electrograms. From four patient data sets, we created anatomical models from angiographic CT data with an automatic segmentation algorithm. From clinical intracardiac catheter recordings, individual conduction velocities were calculated. In these subject-specific EP models, we simulated different pacing maneuvers and measurements with circular mapping catheters that were applied in the respective patients. This way, normal sinus rhythm and pacing from a coronary sinus catheter were simulated. Wave directions and conduction velocities were quantitatively analyzed in both clinical measurements and simulated data and were compared. On average, the overall difference of wave directions was 15° (8%), and the difference of conduction velocities was 16 cm/s (17%). The method is based on routine clinical measurements and is thus easy to integrate into clinical practice. In the long run, such personalized simulations could therefore assist treatment planning and increase success rates for atrial arrhythmias.
Conference Contributions (2)
C. Schilling, A. Luik, M. W. Keller, C. Schmitt, and O. Dössel. Characterizing continuous activity with high fractionation during atrial fibrillation. In Proc. 7th International Workshop on Biosignal Interpretation, pp. 49-52, 2012
A. Luik, C. Schilling, M. Merkel, K. Schmidt, O. Dössel, and C. Schmitt. Impact of energy and CFAE classification in patients with persistent atrial fibrillation - analysis by a newly developed automatic algorithm (fuzzy decision tree). In Clinical Research in Cardiology, vol. 101(s1) , 2012
Dissertations (1)
C. Schilling. Analysis of atrial electrogram. KIT Scientific Publishing. Dissertation. 2012
Abstract:
This work provides methods to measure and analyze features of atrial electrograms - especially complex fractionated atrial electrograms (CFAEs) - mathematically. Automated classification of CFAEs into clinical meaningful classes is applied and the newly gained electrogram information is visualized on patient specific 3D models of the atria. Clinical applications of the presented methods showed that quantitative measures of CFAEs reveal beneficial information about the underlying arrhythmia.