TY - JOUR
T1 - Cardiac function estimation from MRI using a heart model and data assimilation: Advances and difficulties
AU - Sermesant, M
AU - Moireau, P
AU - Camara, O
AU - Sainte-Marie, J
AU - Andriantsimiavona, R
AU - Cimrman, R
AU - Hill, D.L.G.
AU - Chapelle, D
AU - Razavi, R
PY - 2006/8
Y1 - 2006/8
N2 - In this paper, we present a framework to estimate local ventricular myocardium contractility using clinical MRI, a heart model and data assimilation. First, we build a generic anatomical model of the ventricles including muscle fibre orientations and anatomical subdivisions. Then, this model is deformed to fit a clinical MRI, using a semi-automatic fuzzy segmentation, an affine registration method and a local deformable biomechanical model. An electromechanical model of the heart is then presented and simulated. Finally, a data assimilation procedure is described, and applied to this model. Data assimilation makes it possible to estimate local contractility from given displacements. Presented results on fitting to patient-specific anatomy and assimilation with simulated data are very promising. Current work on model calibration and estimation of patient parameters opens up possibilities to apply this framework in a clinical environment.
AB - In this paper, we present a framework to estimate local ventricular myocardium contractility using clinical MRI, a heart model and data assimilation. First, we build a generic anatomical model of the ventricles including muscle fibre orientations and anatomical subdivisions. Then, this model is deformed to fit a clinical MRI, using a semi-automatic fuzzy segmentation, an affine registration method and a local deformable biomechanical model. An electromechanical model of the heart is then presented and simulated. Finally, a data assimilation procedure is described, and applied to this model. Data assimilation makes it possible to estimate local contractility from given displacements. Presented results on fitting to patient-specific anatomy and assimilation with simulated data are very promising. Current work on model calibration and estimation of patient parameters opens up possibilities to apply this framework in a clinical environment.
U2 - 10.1016/j.media.2006.04.002
DO - 10.1016/j.media.2006.04.002
M3 - Article
SN - 1361-8423
VL - 10
SP - 642
EP - 656
JO - Medical Image Analysis
JF - Medical Image Analysis
IS - 4
ER -