Stochastic Finite Element Method for torso conductivity uncertainties quantification in electrocardiography inverse problem
Language
en
Article de revue
This item was published in
Mathematical Modelling of Natural Phenomena. 2016, vol. 11, n° 2, p. 1-19
EDP Sciences
English Abstract
The purpose of this paper is to study the influence of errors and uncertainties of the input data, like the conductivity, on the electrocardiography imaging (ECGI) solution. In order to do that, we propose a new stochastic ...Read more >
The purpose of this paper is to study the influence of errors and uncertainties of the input data, like the conductivity, on the electrocardiography imaging (ECGI) solution. In order to do that, we propose a new stochastic optimal control formulation, permitting to calculate the distribution of the electric potentiel on the heart from the measurement on the body surface. The discretization is done using stochastic Galerkin method allowing to separate random and deterministic variables. Then, the problem is discretized, in spatial part, using the finite element method and the polynomial chaos expansion in the stochastic part of the problem. The considered problem is solved using a conjugate gradient method where the gradient of the cost function is computed with an adjoint technique. The efficiency of this approach to solve the inverse problem and the usability to quantify the effect of conductivity uncertainties in the torso are demonstrated through a number of numerical simulations on a 2D analytical geometry and on a 2D cross section of a real torso.Read less <
English Keywords
and phrases: electrocardiography forward problem
electrocardiography inverse problem
stochastic finite elements
chaos polynomial
uncertainty quantification
stochastic processes
stochastic Galerkin method Mathematics Subject Classification: 35Q53
34B20
35G31
Origin
Hal imported