The combination of an Artificial Neural Network classifier, a feature selection process, and a novel linear dimensionality reduction technique that provides a data projection for visualization and which preserves completely the class discrimination achieved by the classifier, is applied in this study to the analysis of an international, multi-centre 1H-MRS database of brain tumors. This combination yields results that are both intuitively interpretable and very accurate. The method as a whole remains simple enough as to allow its easy integration in existing medical decision support systems.Peer Reviewe
To improve the performance of brain tumor diagnosis, numerous automatic brain tumor diagnosis system...
The following paper describes a new approach for the automatic segmentation and tissue classificatio...
ct—Brain cancer has remained one of the key causes of deaths in people of all ages. One way to survi...
A Feature Selection process with Single-Layer Perceptrons is shown to provide optimum discrimination...
The diagnostic classification of human brain tumours on the basis of magnetic resonance spectra is a...
1 volumeFor many decades the attempts have been made to apply computer technology to biomedical prob...
Peer-reviewedWe are developing a decision support tool, based on a large \training" database of spec...
The iso, hypo or hyper intensity, similarity of shape, size and location complicates the identificat...
Neuro-oncologists must ultimately rely on their acquired knowledge and accumulated experience to und...
MRI (Magnetic resonance Imaging) brain neoplasm pictures Classification may be a troublesome tasks d...
The purpose of this thesis is to investigate whether an automated medical decision support system th...
Abstract. Machine learning is a powerful paradigm within which to analyze 1H-MRS spectral data for t...
In vivo Magnetic Resonance Imaging (MRI) represents one of the major breakthroughs in medicine and b...
The use of digital image processing has become very demanding in various areas including medical app...
Non-invasive techniques such asMagnetic Resonance Imaging (MRI) and Magnetic Resonance Spectroscopy ...
To improve the performance of brain tumor diagnosis, numerous automatic brain tumor diagnosis system...
The following paper describes a new approach for the automatic segmentation and tissue classificatio...
ct—Brain cancer has remained one of the key causes of deaths in people of all ages. One way to survi...
A Feature Selection process with Single-Layer Perceptrons is shown to provide optimum discrimination...
The diagnostic classification of human brain tumours on the basis of magnetic resonance spectra is a...
1 volumeFor many decades the attempts have been made to apply computer technology to biomedical prob...
Peer-reviewedWe are developing a decision support tool, based on a large \training" database of spec...
The iso, hypo or hyper intensity, similarity of shape, size and location complicates the identificat...
Neuro-oncologists must ultimately rely on their acquired knowledge and accumulated experience to und...
MRI (Magnetic resonance Imaging) brain neoplasm pictures Classification may be a troublesome tasks d...
The purpose of this thesis is to investigate whether an automated medical decision support system th...
Abstract. Machine learning is a powerful paradigm within which to analyze 1H-MRS spectral data for t...
In vivo Magnetic Resonance Imaging (MRI) represents one of the major breakthroughs in medicine and b...
The use of digital image processing has become very demanding in various areas including medical app...
Non-invasive techniques such asMagnetic Resonance Imaging (MRI) and Magnetic Resonance Spectroscopy ...
To improve the performance of brain tumor diagnosis, numerous automatic brain tumor diagnosis system...
The following paper describes a new approach for the automatic segmentation and tissue classificatio...
ct—Brain cancer has remained one of the key causes of deaths in people of all ages. One way to survi...