Neuroanatomical pattern classification using support vector machines (SVMs) has shown promising results in classifying Multiple Sclerosis (MS) patients based on individual structural magnetic resonance images (MRI). To determine whether pattern classification using SVMs facilitates predicting conversion to clinically definite multiple sclerosis (CDMS) from clinically isolated syndrome (CIS). We used baseline MRI data from 364 patients with CIS, randomised to interferon beta-1b or placebo. Non-linear SVMs and 10-fold cross-validation were applied to predict converters/non-converters (175/189) at two years follow-up based on clinical and demographic data, lesion-specific quantitative geometric features and grey-matter-to-whole-brain volume ra...
To explore the value of machine learning methods for predicting multiple sclerosis disease course.16...
A novel characterization of Clinically Isolated Syndrome (CIS) patients according to lesion patterns...
Objective: Here, we use pattern-classification to investigate diagnostic information for multiple sc...
Neuroanatomical pattern classification using support vector machines (SVMs) has shown promising resu...
Magnetic resonance imaging (MRI) scans play a pivotal role in the evaluation of patients presenting ...
We aim to determine if machine learning techniques, such as support vector machines (SVMs), can pred...
AbstractWe aim to determine if machine learning techniques, such as support vector machines (SVMs), ...
Machine learning classification is an attractive approach to automatically differentiate patients fr...
Univariate analyses have identified gray matter (GM) alterations in different groups of MS patients....
Abstract. This study investigates the application of classification methods for the prognosis of fut...
This study investigates the application of classification methods for the prognosis of future disabi...
International audienceOBJECTIVES: A novel characterization of Clinically Isolated Syndrome (CIS) pat...
To explore the value of machine learning methods for predicting multiple sclerosis disease course.16...
A novel characterization of Clinically Isolated Syndrome (CIS) patients according to lesion patterns...
Objective: Here, we use pattern-classification to investigate diagnostic information for multiple sc...
Neuroanatomical pattern classification using support vector machines (SVMs) has shown promising resu...
Magnetic resonance imaging (MRI) scans play a pivotal role in the evaluation of patients presenting ...
We aim to determine if machine learning techniques, such as support vector machines (SVMs), can pred...
AbstractWe aim to determine if machine learning techniques, such as support vector machines (SVMs), ...
Machine learning classification is an attractive approach to automatically differentiate patients fr...
Univariate analyses have identified gray matter (GM) alterations in different groups of MS patients....
Abstract. This study investigates the application of classification methods for the prognosis of fut...
This study investigates the application of classification methods for the prognosis of future disabi...
International audienceOBJECTIVES: A novel characterization of Clinically Isolated Syndrome (CIS) pat...
To explore the value of machine learning methods for predicting multiple sclerosis disease course.16...
A novel characterization of Clinically Isolated Syndrome (CIS) patients according to lesion patterns...
Objective: Here, we use pattern-classification to investigate diagnostic information for multiple sc...