Abstract. Multi-atlas registration-based segmentation has recently become a popular technique in medical imaging. Since the quality of individual atlas segmentations affect the quality of the results, atlas selection and atlas fusion have become important areas of research for multi-atlas segmentation. In this paper, we present an automatic technique that approximately calculates the quality of registration. We applied our method to multi-atlas segmentation and find that our measure correlates strongly ( = 0.79) with the ground truth DICE similarity index. When applied to atlas fusion using a majority vote technique weighted by our measure of registration quality, our algorithm performs statistically better than both an un-weighted majori...
Multi-atlas segmentation has become a frequently used tool for medical image segmentation due to its...
Label fusion based multi-atlas segmentation has proven to be one of the most competitive techniques ...
Multi-atlas segmentation is an effective approach for automatically labeling objects of interest in ...
Background and purpose: Multi-atlas segmentation can yield better results than single atlas segmenta...
Multi-atlas segmentation provides a general purpose, fully-automated approach for transferring spati...
In a multi-atlas based segmentation procedure, propagated atlas segmentations must be combined in a ...
Purpose: Automatic, atlas-based segmentation of medical images benefits from using multiple atlases,...
Multi-atlas segmentation has been proved to perform well in segmenting sub-cortical structures from ...
Multi-atlas segmentation has become a frequently used tool for medical image segmentation due to its...
Registration is a key component in multi-atlas approaches to medical image segmentation. Current sta...
1361-8423 (Electronic) 1361-8415 (Linking) Journal Article Research Support, Non-U.S. Gov'tIn this p...
Abstract. Registration is a key component in multi-atlas approaches to medical image segmentation. C...
Abstract. Segmentation is critical to understanding the complex relationships between biological str...
Registration is a key component in multi-atlas approaches to medical image segmentation. Current sta...
Multi-atlas segmentation has been widely applied in medical image analysis. With deformable registra...
Multi-atlas segmentation has become a frequently used tool for medical image segmentation due to its...
Label fusion based multi-atlas segmentation has proven to be one of the most competitive techniques ...
Multi-atlas segmentation is an effective approach for automatically labeling objects of interest in ...
Background and purpose: Multi-atlas segmentation can yield better results than single atlas segmenta...
Multi-atlas segmentation provides a general purpose, fully-automated approach for transferring spati...
In a multi-atlas based segmentation procedure, propagated atlas segmentations must be combined in a ...
Purpose: Automatic, atlas-based segmentation of medical images benefits from using multiple atlases,...
Multi-atlas segmentation has been proved to perform well in segmenting sub-cortical structures from ...
Multi-atlas segmentation has become a frequently used tool for medical image segmentation due to its...
Registration is a key component in multi-atlas approaches to medical image segmentation. Current sta...
1361-8423 (Electronic) 1361-8415 (Linking) Journal Article Research Support, Non-U.S. Gov'tIn this p...
Abstract. Registration is a key component in multi-atlas approaches to medical image segmentation. C...
Abstract. Segmentation is critical to understanding the complex relationships between biological str...
Registration is a key component in multi-atlas approaches to medical image segmentation. Current sta...
Multi-atlas segmentation has been widely applied in medical image analysis. With deformable registra...
Multi-atlas segmentation has become a frequently used tool for medical image segmentation due to its...
Label fusion based multi-atlas segmentation has proven to be one of the most competitive techniques ...
Multi-atlas segmentation is an effective approach for automatically labeling objects of interest in ...