In this work, we propose to estimate rule-based myocardial
fiber model (RBM) parameters from measured image data, with the goal
of personalizing the fiber architecture for cardiac simulations.We first describe
the RBM, which is based on a space-dependent angle distribution
on the heart surface and then extended to the whole domain through an
harmonic lifting of the fiber vectors. We then present a static Unscented
Kalman Filter which we use for estimating the degrees of freedom of the
fiber model. We illustrate the methodology using noisy synthetic data
on a real heart geometry, as well as real DT-MRI-derived fiber data. We
also show the impact of different fiber distributions on cardiac contraction
simulations.
«
In this work, we propose to estimate rule-based myocardial
fiber model (RBM) parameters from measured image data, with the goal
of personalizing the fiber architecture for cardiac simulations.We first describe
the RBM, which is based on a space-dependent angle distribution
on the heart surface and then extended to the whole domain through an
harmonic lifting of the fiber vectors. We then present a static Unscented
Kalman Filter which we use for estimating the degrees of freedom of the
fib...
»