Machine learning is a powerful paradigm within which to analyze 1HMRS spectral data for the classification of tumour pathologies. An important characteristic of this task is the high dimensionality of the involved data sets. In this work we apply specific feature selection methods in order to reduce the complexity of the problem on two types of 1H-MRS spectral data: long-echo and short-echo time, which present considerable differences in the spectrum for the same cases. The experimental findings show that the feature selection methods enhance the classification performance of the models induced by several off-the-shelf classifiers and are able to offer very attractive solutions both in terms of prediction accuracy and number of involved s...
[EN] This study presents a novel method for the direct classification of H-1 single-voxel MR brain t...
Hydrogen-1 magnetic resonance spectroscopy (1H-MRS) allows noninvasive in vivo quantification of met...
BACKGROUND: The clinical investigation of human brain tumors often starts with a non-invasive imagin...
Machine learning is a powerful paradigm within which to analyze 1HMRS spectral data for the classifi...
Abstract. Machine learning is a powerful paradigm within which to analyze 1H-MRS spectral data for t...
Machine learning is a powerful paradigm to analyze Proton Magnetic Resonance Spectroscopy (1H-MRS) s...
In cancer diagnosis, classification of the different tumor types is of great importance. An accurate...
In cancer diagnosis, classification of the different tumor types is of great importance. An accurate...
This study examines the effect of feature extraction methods prior to automated pattern recognition ...
[EN] This study examines the effect of feature extraction methods prior to automated pattern recogni...
Abstract. 1H-MRS is a technique that uses response of protons under certain magnetic conditions to r...
H-MRS is a technique that uses response of protons under certain magnetic conditions to reveal the b...
[EN] H-1 MRS is becoming an accurate, non-invasive technique for initial examination of brain masses...
Recent studies have shown that MRS can substantially improve the non-invasive categorization of huma...
In neuro oncology, the accurate diagnostic identification and characterization of tumours is paramou...
[EN] This study presents a novel method for the direct classification of H-1 single-voxel MR brain t...
Hydrogen-1 magnetic resonance spectroscopy (1H-MRS) allows noninvasive in vivo quantification of met...
BACKGROUND: The clinical investigation of human brain tumors often starts with a non-invasive imagin...
Machine learning is a powerful paradigm within which to analyze 1HMRS spectral data for the classifi...
Abstract. Machine learning is a powerful paradigm within which to analyze 1H-MRS spectral data for t...
Machine learning is a powerful paradigm to analyze Proton Magnetic Resonance Spectroscopy (1H-MRS) s...
In cancer diagnosis, classification of the different tumor types is of great importance. An accurate...
In cancer diagnosis, classification of the different tumor types is of great importance. An accurate...
This study examines the effect of feature extraction methods prior to automated pattern recognition ...
[EN] This study examines the effect of feature extraction methods prior to automated pattern recogni...
Abstract. 1H-MRS is a technique that uses response of protons under certain magnetic conditions to r...
H-MRS is a technique that uses response of protons under certain magnetic conditions to reveal the b...
[EN] H-1 MRS is becoming an accurate, non-invasive technique for initial examination of brain masses...
Recent studies have shown that MRS can substantially improve the non-invasive categorization of huma...
In neuro oncology, the accurate diagnostic identification and characterization of tumours is paramou...
[EN] This study presents a novel method for the direct classification of H-1 single-voxel MR brain t...
Hydrogen-1 magnetic resonance spectroscopy (1H-MRS) allows noninvasive in vivo quantification of met...
BACKGROUND: The clinical investigation of human brain tumors often starts with a non-invasive imagin...