Image labeling is essential for analyzing morphometric features in medical imaging data. Labels can be obtained by either human interaction or automated segmentation algorithms, both of which suffer from errors. The Simultaneous Truth and Performance Level Estimation (STAPLE) algorithm for both discrete-valued and continuous-valued labels has been proposed to find the consensus fusion while simultaneously estimating rater performance. In this paper, we first show that the previously reported continuous STAPLE in which bias and variance are used to represent rater performance yields a maximum likelihood solution in which bias is indeterminate. We then analyze the major cause of the deficiency and evaluate two classes of auxiliary bias estima...
Label fusion is used in medical image segmentation to combine several different labels of the same e...
Abstract. The evaluation of the quality of segmentations of an image, and the assessment of intra- a...
Uncertainty estimation methods are expected to improve the understanding and quality of computer-ass...
Image labeling is essential for analyzing morphometric features in medical imaging data. Labels can ...
Image labeling is an essential task for evaluating and analyzing morphometric features in medical im...
Image labeling is an essential task for evaluating and analyzing morphometric features in medical im...
Image labeling and parcellation are critical tasks for the assessment of volumetric and morphometric...
Evaluating the performance of either human raters or automated image segmentation algorithms has lon...
Segmentation plays a critical role in exposing connections between biological structure and function...
International audienceIn order to evaluate the quality of segmentations of an image and assess intra...
International audienceThe fusion of probability maps is required when trying to analyse a collection...
Expert labelling is the gold standard for diagnosing patient-specific diseases from medical data. H...
Labeling or parcellation of structures of interest on magnetic resonance imaging (MRI) is essential ...
In the field of medical imaging, ground truth is often gathered from groups of experts, whose output...
Label fusion is a critical step in many image segmentation frameworks (e.g., multi-atlas segmentatio...
Label fusion is used in medical image segmentation to combine several different labels of the same e...
Abstract. The evaluation of the quality of segmentations of an image, and the assessment of intra- a...
Uncertainty estimation methods are expected to improve the understanding and quality of computer-ass...
Image labeling is essential for analyzing morphometric features in medical imaging data. Labels can ...
Image labeling is an essential task for evaluating and analyzing morphometric features in medical im...
Image labeling is an essential task for evaluating and analyzing morphometric features in medical im...
Image labeling and parcellation are critical tasks for the assessment of volumetric and morphometric...
Evaluating the performance of either human raters or automated image segmentation algorithms has lon...
Segmentation plays a critical role in exposing connections between biological structure and function...
International audienceIn order to evaluate the quality of segmentations of an image and assess intra...
International audienceThe fusion of probability maps is required when trying to analyse a collection...
Expert labelling is the gold standard for diagnosing patient-specific diseases from medical data. H...
Labeling or parcellation of structures of interest on magnetic resonance imaging (MRI) is essential ...
In the field of medical imaging, ground truth is often gathered from groups of experts, whose output...
Label fusion is a critical step in many image segmentation frameworks (e.g., multi-atlas segmentatio...
Label fusion is used in medical image segmentation to combine several different labels of the same e...
Abstract. The evaluation of the quality of segmentations of an image, and the assessment of intra- a...
Uncertainty estimation methods are expected to improve the understanding and quality of computer-ass...