Novel approaches based on decomposition methods for detecting MRI patterns in the progression of Alzheimer's Disease
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Show full item recordAuthor
Khedher, LailaEditorial
Universidad de Granada
Departamento
Universidad de Granada. Departamento de Teoría de la Señal, Telemática y ComunicacionesMateria
Alzheimer, Enfermedad de Diagnóstico Diagnóstico por imagen Resonancia magnética Reconocimiento óptico de formas (Informática) Reconocimiento de formas (Informática) Procesado de imágenes Proceso óptico de datos
Materia UDC
61 32057
Date
2017Fecha lectura
2017-07-24Referencia bibliográfica
Khedher, L. Novel approaches based on decomposition methods for detecting MRI patterns in the progression of Alzheimer's Disease. Granada: Universidad de Granada, 2017. [http://hdl.handle.net/10481/47618]
Sponsorship
Tesis Univ. Granada. Programa Oficial de Doctorado en Tecnologías de la Información y la ComunicaciónAbstract
Image-based computer aided diagnosis (CAD) systems have significant potential
for screening and early detection of brain diseases. In this sense, this PhD work
is motivated by the development and the implementation of novel CAD systems
based on several pattern recognition/classification techniques for the early detection
of neurodegenerative diseases. In particular, the dissertation is focused on the
analysis of the most relevant one, the Alzheimer’s disease (AD), by the use of structural
magnetic resonance imaging (sMRI) techniques. The proposed CAD systems
are based on several processing steps including segmentation of brain tissues (gray
matter and white matter tissues), feature selection techniques such as t-test model,
feature extraction techniques such as; Partial least squares (PLS), Principal Component
Analysis (PCA), Independent component analysis (ICA) and Non-Negative
Matrix Factorization (NNMF) techniques, and an automatic classification technique,
such as the support vector machine (SVM). Most of these thesis contributions are
included within the feature extraction techniques and its application to the development
of automatic CAD systems for early detection of AD.
The first proposed CAD system is based on the PLS approach that extracts the relevant
features to characterize the AD pattern. This technique decomposes two sets of
variables into the product of two matrices called scores and loadings according to a
criterion of covariance maximization. In this work, these variables are those formed
by the structural magnetic resonance images under study and the labels of these
images. After the decomposition of these sets, the scores are used as feature vectors
for the classification step.
The second proposed CAD system for AD detection is based on the PCA approach,
as a feature extraction technique for sMRI brain images. This approach reduces
the original high-dimensional space of the brain images to a lower dimensional
subspace. PCA generates a set of orthonormal basis vectors, known as Principal
components (PCs), that maximizes the scatter of all the projected samples, which
is equivalent to diagonalize the covariance matrix through the eigenvalue of these
components.
The third CAD system is based on the Independent component analysis (ICA) approach.
At the beginning, a “template” image is computed as the average of healthy
subject images or as the difference between normal and pathological images. Then,
the ICA algorithm is applied to extract the maximally spatially independent components
(ICs) revealing patterns of variation that occur in the dataset under study.
The last method proposed is based on the NNMF approach, as a useful decomposition
technique of multivariate data that solves the problem of finding non-negative
matrices. These feature extraction techniques successfully solved the small sample
size problem by obtaining only the relevant information related to AD. This process
is known as a dimensionality reduction and it improves the prediction accuracy of
CAD systems, specifically, in the early stage of AD. In this way, considering the fact that an early diagnosis of AD is crucial, classification experiments were performed
not only to distinguish Normal Control (NC) and AD subjects but also to differentiate
NC from a transitional phase between being cognitively normal and having an
AD diagnosis. This later phase is called Mild Cognitive Impairment (MCI).
The proposed feature extraction methods have been combined with SVM classifiers
and the accuracy rates of the resulting CAD systems have been estimated by means
of a sMRI database from the Alzheimer disease neuroimaging initiative (ADNI).
Furthermore, a kfold-cross validation technique was applied to these systems in order
to tune the classifier parameters and to estimate its performance. The obtained
results demonstrate the effectiveness and the robustness of the proposed CAD systems
(with accuracy value around 90%) compared to previous approaches such as
the one based on Voxel-As-Features (VAF) technique.