Background and Purpose: Although structural disconnection represents the hallmark of multiple sclerosis (MS) pathophysiology, classification attempts based on structural connectivity have achieved low accuracy levels. Here, we set out to fill this gap, exploring the performance of supervised classifiers on features derived from microstructure informed tractography and selected applying a novel robust approach. Methods: Using microstructure informed tractography with diffusion MRI data, we created quantitative connectomes of 55 MS patients and 24 healthy controls. We then used a robust approach—based on two classical methods of feature selection— to select relevant features from three network representations (whole connectivity matrices, nod...
BACKGROUND: Brain disconnection plays a major role in determining cognitive disabilities in multiple...
Multiple sclerosis (MS) is a brain network disconnection syndrome. Although the brain network topolo...
Objective: Here, we use pattern-classification to investigate diagnostic information for multiple sc...
Background and Purpose: Although structural disconnection represents the hallmark of multiple sclero...
International audiencePurpose: In this work, we introduce a method to classify Multiple Sclerosis (M...
Multiple Sclerosis patients' clinical symptoms do not correlate strongly with structural assessment ...
Focal demyelinated lesions, diffuse white matter (WM) damage, and gray matter (GM) atrophy influence...
International audienceMultiple sclerosis (MS) is the most frequent disabling neurological disease in...
Multiple sclerosis (MS), a variable and diffuse disease affecting white and gray matter, is known to...
Graph theory and network modelling have been previously applied to characterize motor network struct...
The translational potential of MR-based connectivity modelling is limited by the need for advanced d...
Funding Information: This study was partially supported by FISM with a research grant (FISM2018/R/5)...
Objective: Abnormalities in segregative and integrative properties of brain networks have been obser...
BACKGROUND: Brain disconnection plays a major role in determining cognitive disabilities in multiple...
Multiple sclerosis (MS) is a brain network disconnection syndrome. Although the brain network topolo...
Objective: Here, we use pattern-classification to investigate diagnostic information for multiple sc...
Background and Purpose: Although structural disconnection represents the hallmark of multiple sclero...
International audiencePurpose: In this work, we introduce a method to classify Multiple Sclerosis (M...
Multiple Sclerosis patients' clinical symptoms do not correlate strongly with structural assessment ...
Focal demyelinated lesions, diffuse white matter (WM) damage, and gray matter (GM) atrophy influence...
International audienceMultiple sclerosis (MS) is the most frequent disabling neurological disease in...
Multiple sclerosis (MS), a variable and diffuse disease affecting white and gray matter, is known to...
Graph theory and network modelling have been previously applied to characterize motor network struct...
The translational potential of MR-based connectivity modelling is limited by the need for advanced d...
Funding Information: This study was partially supported by FISM with a research grant (FISM2018/R/5)...
Objective: Abnormalities in segregative and integrative properties of brain networks have been obser...
BACKGROUND: Brain disconnection plays a major role in determining cognitive disabilities in multiple...
Multiple sclerosis (MS) is a brain network disconnection syndrome. Although the brain network topolo...
Objective: Here, we use pattern-classification to investigate diagnostic information for multiple sc...