A domain adaptation model transferring knowledge from simulation data improved the localization accuracy of ventricular activation origin compared to models trained without considering domain shift.
Does a domain adaptation model transferring knowledge from simulation to clinical data improve the localization accuracy of the origin of ventricular activation from 12-lead ECGs in PVC patients?
A novel domain adaptation approach combining simulation and clinical data improves the accuracy of localizing the origin of ventricular activation from 12-lead ECGs.
Building a data-driven model to localize the origin of ventricular activation from 12-lead electrocardiograms (ECG) requires addressing the challenge of large anatomical and physiological variations across individuals. The alternative of a patient-specific model is, however, difficult to implement in clinical practice because the training data must be obtained through invasive procedures. In this paper, we present a novel approach that overcomes this problem of the scarcity of clinical data by transferring the knowledge from a large set of patient-specific simulation data while utilizing domain adaptation to address the discrepancy between the simulation and clinical data. The method that we have developed quantifies non-uniformly distributed simulation errors, which are then incorporated into the process of domain adaptation in the context of both classification and regression. This yields a quantitative model that, with the addition of 12-lead ECG data from each patient, provides progressively improved patient-specific localizations of the origin of ventricular activation. We evaluated the performance of the presented method in localizing 75 pacing sites on three in-vivo premature ventricular contraction (PVC) patients. We found that the presented model showed an improvement in localization accuracy relative to a model trained on clinical ECG data alone or a model trained on combined simulation and clinical data without considering domain shift. Furthermore, we demonstrated the ability of the presented model to improve the real-time prediction of the origin of ventricular activation with each added clinical ECG data, progressively guiding the clinician towards the target site.
Alawad et al. (Fri,) conducted a other in Premature ventricular contraction (PVC) (n=3). Domain adaptation model transferring knowledge from simulation data vs. Model trained on clinical ECG data alone or combined data without domain shift was evaluated on Localization accuracy of the origin of ventricular activation. A domain adaptation model transferring knowledge from simulation data improved the localization accuracy of ventricular activation origin compared to models trained without considering domain shift.
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