Automated gray matter segmentation of magnetic resonance imaging data is essential for morphometric analyses of the brain, particularly when large sample sizes are investigated. However, although detection of small structural brain differences may fundamentally depend on the method used, both accuracy and reliability of different automated segmentation algorithms have rarely been compared. Here, performance of the segmentation algorithms provided by SPM8, VBM8, FSL and FreeSurfer was quantified on simulated and real magnetic resonance imaging data. First, accuracy was assessed by comparing segmentations of twenty simulated and 18 real T1 images with corresponding ground truth images. Second, reliability was determined in ten T1 images from ...
Purpose: The lack of inter-method agreement can produce inconsistent results in neuroimaging studies...
Medical image segmentation is one of the most important research areas of clinical diagnosis. Especi...
Accurate, efficient processing of magnetic resonance images (MRI) offers potential value for both ba...
Automated gray matter segmentation of magnetic resonance imaging data is essential for morphometric ...
ac.ir Background: Accurate brain tissue segmentation from magnetic resonance (MR) images is an impor...
Background: Accurate brain tissue segmentation from magnetic resonance (MR) images is an important ...
International audienceWe compare three widely used brain volumetry methods available in the software...
The ability to study changes in brain morphometry in longitudinal studies majorly depends on the acc...
We evaluated and compared the performance of two popular neuroimaging processing platforms: Statisti...
Within neuroimaging research, a number of recent studies have discussed the impact of between-study ...
Background: Automatic segmentation of the brain into cerebrospinal fluid (CSF), grey matter (GM), an...
International audienceThe selection of an appropriate segmentation tool is a challenge facing any re...
To assess the inter session reproducibility of automatic segmented MRI-derived measures by FreeSurfe...
<p>In total we processed fifty data sets: (i) twenty simulated brains of the Simulated Brain Databas...
International audienceWe present a new consensus atlas of deep grey nuclei obtained by shape-based a...
Purpose: The lack of inter-method agreement can produce inconsistent results in neuroimaging studies...
Medical image segmentation is one of the most important research areas of clinical diagnosis. Especi...
Accurate, efficient processing of magnetic resonance images (MRI) offers potential value for both ba...
Automated gray matter segmentation of magnetic resonance imaging data is essential for morphometric ...
ac.ir Background: Accurate brain tissue segmentation from magnetic resonance (MR) images is an impor...
Background: Accurate brain tissue segmentation from magnetic resonance (MR) images is an important ...
International audienceWe compare three widely used brain volumetry methods available in the software...
The ability to study changes in brain morphometry in longitudinal studies majorly depends on the acc...
We evaluated and compared the performance of two popular neuroimaging processing platforms: Statisti...
Within neuroimaging research, a number of recent studies have discussed the impact of between-study ...
Background: Automatic segmentation of the brain into cerebrospinal fluid (CSF), grey matter (GM), an...
International audienceThe selection of an appropriate segmentation tool is a challenge facing any re...
To assess the inter session reproducibility of automatic segmented MRI-derived measures by FreeSurfe...
<p>In total we processed fifty data sets: (i) twenty simulated brains of the Simulated Brain Databas...
International audienceWe present a new consensus atlas of deep grey nuclei obtained by shape-based a...
Purpose: The lack of inter-method agreement can produce inconsistent results in neuroimaging studies...
Medical image segmentation is one of the most important research areas of clinical diagnosis. Especi...
Accurate, efficient processing of magnetic resonance images (MRI) offers potential value for both ba...