AbstractAccurate classification and quantification of brain tissues is important for monitoring disease progression, measurement of atrophy, and correlating magnetic resonance (MR) measures with clinical disability. Classification of MR brain images in the presence of lesions, such as multiple sclerosis (MS), is particularly challenging. Images obtained with lower resolution often suffer from partial volume averaging leading to false classifications. While partial volume averaging can be reduced by acquiring volumetric images at high resolution, image segmentation and quantification can be technically challenging. In this study, we integrated the brain anatomical knowledge with non-parametric and parametric statistical classifiers for autom...
Quantitative analysis of MR images is becoming increasingly important as a surrogate marker in clini...
Jain S., Smeets D., Sima D., Van Hecke W., Loeckx D., Van Huffel S., Maes F., ''Multiple sclerosis b...
L'objectiu principal d'aquesta tesi és el desenvolupament d'un nou mètode de segmentació totalment a...
AbstractAccurate classification and quantification of brain tissues is important for monitoring dise...
ABSTRACT BACKGROUND AND PURPOSE A pipeline for fully automated segmentation of 3T brain MRI scans in...
White-matter lesion count and volume estimation are key to the diagnosis and monitoring of multiple ...
Purpose.: To automatically segment multiple sclerosis (MS) lesions into three subtypes (i.e., enhanc...
Jain S., Sima D.M., Ribbens A., Cambron M., Maertens A., Van Hecke W., De Mey J., Barkhof F., Steenw...
Background: Conventional magnetic resonance imaging (MRI) techniques are highly sensitive to detect ...
AbstractThe location and extent of white matter lesions on magnetic resonance imaging (MRI) are impo...
International audienceWe present a new automatic method for segmentation of multiple sclerosis (MS) ...
Magnetic Resonance Imaging (MRI) is extensively used in the study of brain. Segmentation of MR brai...
Manual segmentation is used in the diagnosis, management and evaluation of clinical trials for Multi...
BACKGROUND AND PURPOSE: The automatic segmentation of MS lesions could reduce time required for imag...
Quantitative analysis of MR images is becoming increasingly important in assessing the progression o...
Quantitative analysis of MR images is becoming increasingly important as a surrogate marker in clini...
Jain S., Smeets D., Sima D., Van Hecke W., Loeckx D., Van Huffel S., Maes F., ''Multiple sclerosis b...
L'objectiu principal d'aquesta tesi és el desenvolupament d'un nou mètode de segmentació totalment a...
AbstractAccurate classification and quantification of brain tissues is important for monitoring dise...
ABSTRACT BACKGROUND AND PURPOSE A pipeline for fully automated segmentation of 3T brain MRI scans in...
White-matter lesion count and volume estimation are key to the diagnosis and monitoring of multiple ...
Purpose.: To automatically segment multiple sclerosis (MS) lesions into three subtypes (i.e., enhanc...
Jain S., Sima D.M., Ribbens A., Cambron M., Maertens A., Van Hecke W., De Mey J., Barkhof F., Steenw...
Background: Conventional magnetic resonance imaging (MRI) techniques are highly sensitive to detect ...
AbstractThe location and extent of white matter lesions on magnetic resonance imaging (MRI) are impo...
International audienceWe present a new automatic method for segmentation of multiple sclerosis (MS) ...
Magnetic Resonance Imaging (MRI) is extensively used in the study of brain. Segmentation of MR brai...
Manual segmentation is used in the diagnosis, management and evaluation of clinical trials for Multi...
BACKGROUND AND PURPOSE: The automatic segmentation of MS lesions could reduce time required for imag...
Quantitative analysis of MR images is becoming increasingly important in assessing the progression o...
Quantitative analysis of MR images is becoming increasingly important as a surrogate marker in clini...
Jain S., Smeets D., Sima D., Van Hecke W., Loeckx D., Van Huffel S., Maes F., ''Multiple sclerosis b...
L'objectiu principal d'aquesta tesi és el desenvolupament d'un nou mètode de segmentació totalment a...