DocumentCode :
1238396
Title :
Estimating Kinetic Parameter Maps From Dynamic Contrast-Enhanced MRI Using Spatial Prior Knowledge
Author :
Kelm, Bernd Michael ; Menze, Bjoern H. ; Nix, Oliver ; Zechmann, Christian M. ; Hamprecht, Fred A.
Author_Institution :
Interdiscipl. Center for Sci. Comput., Univ. of Heidelberg, Heidelberg, Germany
Volume :
28
Issue :
10
fYear :
2009
Firstpage :
1534
Lastpage :
1547
Abstract :
Dynamic contrast-enhanced magnetic resonance (DCE-MR) imaging can be used to study microvascular structure in vivo by monitoring the abundance of an injected diffusible contrast agent over time. The resulting spatially resolved intensity-time curves are usually interpreted in terms of kinetic parameters obtained by fitting a pharmacokinetic model to the observed data. Least squares estimates of the highly nonlinear model parameters, however, can exhibit high variance and can be severely biased. As a remedy, we bring to bear spatial prior knowledge by means of a generalized Gaussian Markov random field (GGMRF). By using information from neighboring voxels and computing the maximum a posteriori solution for entire parameter maps at once, both bias and variance of the parameter estimates can be reduced thus leading to smaller root mean square error (RMSE). Since the number of variables gets very big for common image resolutions, sparse solvers have to be employed. To this end, we propose a generalized iterated conditional modes (ICM) algorithm operating on blocks instead of sites which is shown to converge considerably faster than the conventional ICM algorithm. Results on simulated DCE-MR images show a clear reduction of RMSE and variance as well as, in some cases, reduced estimation bias. The mean residual bias (MRB) is reduced on the simulated data as well as for all 37 patients of a prostate DCE-MRI dataset. Using the proposed algorithm, average computation times only increase by a factor of 1.18 (871 ms per voxel) for a Gaussian prior and 1.51 (1.12 s per voxel) for an edge-preserving prior compared to the single voxel approach (740 ms per voxel).
Keywords :
Gaussian processes; Markov processes; biomedical MRI; medical image processing; parameter estimation; Gaussian Markov random field; dynamic contrast-enhanced MRI; edge-preserving prior; iterated conditional modes; kinetic parameter map estimation; least squares estimates; magnetic resonance imaging; mean residual bias; microvascular structure; pharmacokinetic model; prostate; root mean square error; spatial prior knowledge; Computational modeling; Curve fitting; In vivo; Kinetic theory; Least squares approximation; Magnetic resonance; Magnetic resonance imaging; Monitoring; Parameter estimation; Spatial resolution; Block iterated conditional modes; Markov random field; dynamic contrast-enhanced imaging; kinetic parameter maps; nonlinear least squares; Algorithms; Computer Simulation; Humans; Kinetics; Least-Squares Analysis; Magnetic Resonance Imaging; Male; Markov Chains; Microvessels; Models, Statistical; Monte Carlo Method; Nonlinear Dynamics; Normal Distribution; Prostate;
fLanguage :
English
Journal_Title :
Medical Imaging, IEEE Transactions on
Publisher :
ieee
ISSN :
0278-0062
Type :
jour
DOI :
10.1109/TMI.2009.2019957
Filename :
4814678
Link To Document :
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