Noninvasive Reconstruction of Transmural Transmembrane Potential With Simultaneous Estimation of Prior Model Error
Author(s) -
Sandesh Ghimire,
John L. Sapp,
B. Milan Horáček,
Linwei Wang
Publication year - 2019
Publication title -
ieee transactions on medical imaging
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.322
H-Index - 224
eISSN - 1558-254X
pISSN - 0278-0062
DOI - 10.1109/tmi.2019.2906600
Subject(s) - inverse problem , a priori and a posteriori , prior probability , computer science , algorithm , gaussian , bayesian probability , inverse , estimation theory , synthetic data , artificial intelligence , mathematics , physics , mathematical analysis , philosophy , geometry , epistemology , quantum mechanics
To reconstruct electrical activity in the heart from body-surface electrocardiograms (ECGs) is an ill-posed inverse problem. Electrophysiological models have been found effective in regularizing these inverse problems by incorporating a priori knowledge about how the electrical potential in the heart propagates over time. However, these models suffer from model errors arising from, for example, parameters associated with tissue properties and the earliest sites of excitation. We present a Bayesian approach to simultaneously estimate transmembrane potential (TMP) signals and prior model errors, exploiting sparsity of the error in the gradient domain in the form of a novel sparse prior based on variational lower bound of the generalized Gaussian distribution. In synthetic and real-data experiments, we demonstrate the improvement of accuracy in TMP reconstruction brought by simultaneous model error estimation. We further provide theoretical and empirical justifications for the change of performances in the presented method at the presence of different model errors.
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