| Literature DB >> 24505642 |
Oliver Zettinig1, Tommaso Mansi1, Bogdan Georgescu1, Elham Kayvanpour2, Farbod Sedaghat-Hamedani2, Ali Amr2, Jan Haas2, Henning Steen2, Benjamin Meder2, Hugo Katus2, Nassir Navab3, Ali Kamen1, Dorin Comaniciul1.
Abstract
Recent advances in computational electrophysiology (EP) models make them attractive for clinical use. We propose a novel data-driven approach to calibrate an EP model from standard 12-lead electrocardiograms (ECG), which are in contrast to invasive or dense body surface measurements widely available in clinical routine. With focus on cardiac depolarization, we first propose an efficient forward model of ECG by coupling a mono-domain, Lattice-Boltzmann model of cardiac EP to a boundary element formulation of body surface potentials. We then estimate a polynomial regression to predict myocardium, left ventricle and right ventricle endocardium electrical diffusion from QRS duration and ECG electrical axis. Training was performed on 4,200 ECG simulations, calculated in aproximately 3 s each, using different diffusion parameters on 13 patient geometries. This allowed quantifying diffusion uncertainty for given ECG parameters due to the ill-posed nature of the ECG problem. We show that our method is able to predict myocardium diffusion within the uncertainty range, yielding a prediction error of less than 5 ms for QRS duration and 2 degree for electrical axis. Prediction results compared favorably with those obtained with a standard optimization procedure, while being 60 times faster. Our data-driven model can thus constitute an efficient preliminary step prior to more refined EP personalization.Entities:
Mesh:
Year: 2013 PMID: 24505642 DOI: 10.1007/978-3-642-40811-3_1
Source DB: PubMed Journal: Med Image Comput Comput Assist Interv