Dynamic magnetic resonance imaging with contrast agent is a very promising technique for mammography. A temporal sequence of magnetic resonance images of the same slice are acquired following the injection of a contrast agent in the blood stream. The image intensity depends on the local concentration of the contrast agent so that tissue perfusion can be studied using the image sequence. A new statistical method of analyzing such sequences is presented. The method is developed within the Bayesian framework. A specific statistical model is used to take into account image degradation. In addition, a suitable Markov random field allows us to model some relevant ``a priori'' information on the quantities to be estimated. Inference is based on simulations from the posterior distribution obtained by means of Markov chain algorithms. The issue of hyper-parameter estimation is also addressed. Image classification is also performed by means of a new Bayesian method. Some results obtained from sequences of dynamic magnetic resonance images of human breasts will be illustrated.

Bayesian analysis of dynamic Magnetic Resonance breast images

Barone P;Sebastiani G;
2004

Abstract

Dynamic magnetic resonance imaging with contrast agent is a very promising technique for mammography. A temporal sequence of magnetic resonance images of the same slice are acquired following the injection of a contrast agent in the blood stream. The image intensity depends on the local concentration of the contrast agent so that tissue perfusion can be studied using the image sequence. A new statistical method of analyzing such sequences is presented. The method is developed within the Bayesian framework. A specific statistical model is used to take into account image degradation. In addition, a suitable Markov random field allows us to model some relevant ``a priori'' information on the quantities to be estimated. Inference is based on simulations from the posterior distribution obtained by means of Markov chain algorithms. The issue of hyper-parameter estimation is also addressed. Image classification is also performed by means of a new Bayesian method. Some results obtained from sequences of dynamic magnetic resonance images of human breasts will be illustrated.
2004
Istituto Applicazioni del Calcolo ''Mauro Picone''
Bayesian methods
Markov random fields
Markov chains
image analysis
Magnetic Resonance imaging
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/161709
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