Manifold learning techniques have been widely used to produce low-dimensional representations of patient brain magnetic resonance (MR) images. Diagnosis classifiers trained on these coordinates attempt to separate healthy, mild cognitive impairment and Alzheimer's disease patients. The performance of such classifiers can be improved by incorporating clinical data available in most large-scale clinical studies. However, the standard non-linear dimensionality reduction algorithms cannot be applied directly to imaging and clinical data. In this paper, we introduce a novel extension of Laplacian Eigenmaps that allow the computation of manifolds while combining imaging and clinical data. This method is a distance-based extension that suits bette...
Abstract—MRI diffusion imaging of the human brain provides neuron fiber trajectories that can be gro...
ABSTRACT: The purpose of this study is introduction of new and efficient applications of manifold le...
This thesis deals with the rigorous application of nonlinear dimension reduc-tion and data organizat...
Recent work suggests that the space of brain magnetic resonance (MR) images can be described by a no...
We propose a framework for the extraction of biomarkers from low-dimensional manifolds representing ...
In medicine, large scale population analysis aim to obtain statistical information in order to under...
International audienceCharacterizing the variations in anatomy and tissue properties in large popula...
Alzheimer’s disease (AD) is currently ranked as the sixth leading cause of death in the United State...
In the current work, linear and non-linear manifold learning techniques, specifically Principle Comp...
Computer aided diagnosis is often confronted with processing and analyzing high dimensional data. On...
The diagnostic classification of human brain tumours on the basis of magnetic resonance spectra is a...
Manifold learning theory has seen a surge of interest in the modeling of large and extensive dataset...
Manifold learning models attempt to parsimoniously describe multivariate data through a low-dimensio...
This paper presents a generalized incremental Laplacian Eigenmaps (GENILE), a novel online version o...
Multi-atlas segmentation has been widely used to segment various anatomical structures. The success ...
Abstract—MRI diffusion imaging of the human brain provides neuron fiber trajectories that can be gro...
ABSTRACT: The purpose of this study is introduction of new and efficient applications of manifold le...
This thesis deals with the rigorous application of nonlinear dimension reduc-tion and data organizat...
Recent work suggests that the space of brain magnetic resonance (MR) images can be described by a no...
We propose a framework for the extraction of biomarkers from low-dimensional manifolds representing ...
In medicine, large scale population analysis aim to obtain statistical information in order to under...
International audienceCharacterizing the variations in anatomy and tissue properties in large popula...
Alzheimer’s disease (AD) is currently ranked as the sixth leading cause of death in the United State...
In the current work, linear and non-linear manifold learning techniques, specifically Principle Comp...
Computer aided diagnosis is often confronted with processing and analyzing high dimensional data. On...
The diagnostic classification of human brain tumours on the basis of magnetic resonance spectra is a...
Manifold learning theory has seen a surge of interest in the modeling of large and extensive dataset...
Manifold learning models attempt to parsimoniously describe multivariate data through a low-dimensio...
This paper presents a generalized incremental Laplacian Eigenmaps (GENILE), a novel online version o...
Multi-atlas segmentation has been widely used to segment various anatomical structures. The success ...
Abstract—MRI diffusion imaging of the human brain provides neuron fiber trajectories that can be gro...
ABSTRACT: The purpose of this study is introduction of new and efficient applications of manifold le...
This thesis deals with the rigorous application of nonlinear dimension reduc-tion and data organizat...