Multi-atlas segmentation provides a general purpose, fully-automated approach for transferring spatial information from an existing dataset (“atlases”) to a previously unseen context (“target”) through image registration. The method to resolve voxelwise label conflicts between the registered atlases (“label fusion”) has a substantial impact on segmentation quality. Ideally, statistical fusion algorithms (e.g., STAPLE) would result in accurate segmentations as they provide a framework to elegantly integrate models of rater performance. The accuracy of statistical fusion hinges upon accurately modeling the underlying process of how raters err. Despite success on human raters, current approaches inaccurately model multi-atlas behavior as they ...
Label fusion is a critical step in many image segmentation frameworks (e.g., multi-atlas segmentatio...
Multi-atlas segmentation is an effective approach for automatically labeling objects of interest in ...
Purpose: Automated segmentation is required for radiotherapy treatment planning, and multi-atlas met...
Abstract. Segmentation of medical images has become critical to building understanding of biological...
Abstract. Multi-atlas segmentation provides a general purpose, fully automated class of techniques f...
Abstract. Segmentation is critical to understanding the complex relationships between biological str...
Background and purpose: Multi-atlas segmentation can yield better results than single atlas segmenta...
Multi-atlas based segmentation is a popular method to automatically segment a target image, in which...
In multi-atlas based segmentation, a target image is segmented by registering multiple atlas images ...
Multi-atlas segmentation has been widely applied in medical image analysis. With deformable registra...
Label fusion based multi-atlas segmentation has proven to be one of the most competitive techniques ...
Abstract. Multi-atlas registration-based segmentation has recently become a popular technique in med...
In a multi-atlas based segmentation procedure, propagated atlas segmentations must be combined in a ...
Label fusion is a critical step in many image segmentation frameworks (e.g., multi-atlas segmentatio...
Multi-atlas segmentation is an effective approach for automatically labeling objects of interest in ...
Purpose: Automated segmentation is required for radiotherapy treatment planning, and multi-atlas met...
Abstract. Segmentation of medical images has become critical to building understanding of biological...
Abstract. Multi-atlas segmentation provides a general purpose, fully automated class of techniques f...
Abstract. Segmentation is critical to understanding the complex relationships between biological str...
Background and purpose: Multi-atlas segmentation can yield better results than single atlas segmenta...
Multi-atlas based segmentation is a popular method to automatically segment a target image, in which...
In multi-atlas based segmentation, a target image is segmented by registering multiple atlas images ...
Multi-atlas segmentation has been widely applied in medical image analysis. With deformable registra...
Label fusion based multi-atlas segmentation has proven to be one of the most competitive techniques ...
Abstract. Multi-atlas registration-based segmentation has recently become a popular technique in med...
In a multi-atlas based segmentation procedure, propagated atlas segmentations must be combined in a ...
Label fusion is a critical step in many image segmentation frameworks (e.g., multi-atlas segmentatio...
Multi-atlas segmentation is an effective approach for automatically labeling objects of interest in ...
Purpose: Automated segmentation is required for radiotherapy treatment planning, and multi-atlas met...