Dynamic Magnetic Resonance Imaging is a non-invasive technique that provides an
image sequence based on dynamic information for locating lesions and investigating their
structures.
In this thesis we develop new methodology for analysing dynamic Magnetic Resonance
image sequences of the breast. This methodology comprises an image restoration step
that reduces random distortions affecting the data and an image classification step that
identifies normal, benign or malignant tumoral tissues.
In the first part of this thesis we present a non-parametric and a parametric
approach for image restoration and classification. Both methods are developed within
the Bayesian framework. A prior distribution modelling both spatial homogeneity and
temporal continuity between neighbouring image pixels is employed. Statistical inference
is performed by means of a Metropolis-Hastings algorithm with a specially chosen proposal
distribution that out-performs other algorithms of the same family. We also provide novel
procedures for estimating the hyper-parameters of the prior models and the normalizing
constant so making the Bayesian methodology automatic.
In the second part of this thesis we present new methodology for image classification
based on deformable templates of a prototype shape. Our approach uses higher level
knowledge about the tumour structure than the spatio-temporal prior distribution of our
Bayesian methodology. The prototype shape is deformed to identify the structure of the
malignant tumoral tissue by minimizing a novel objective function over the parameters of a
set of non-affine transformations. Since these transformations can destroy the connectivity
of the shape, we develop a new filter that restores connectivity without smoothing the
shape.
The restoration and classification results obtained from a small sample of image
sequences are very encouraging. In order to validate these results on a larger sample,
in the last part of the thesis we present a user friendly software package that implements
our methodology.
Date of Award | 2004 |
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Original language | English |
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Awarding Institution | |
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Analysis of Dynamic Magnetic Resonance Breast Images
de Pasquale, F. (Author). 2004
Student thesis: PhD