Image labeling is an essential task for evaluating and analyzing morphometric features in medical imaging data. Labels can be obtained by either human interaction or automated segmentation algorithms. However, both approaches for labeling suffer from inevitable error due to noise and artifact in the acquired data. The Simultaneous Truth And Performance Level Estimation (STAPLE) algorithm was developed to combine multiple rater decisions and simultaneously estimate unobserved true labels as well as each rater’s level of performance (i.e., reliability). A generalization of STAPLE for the case of continuous-valued labels has also been proposed. In this paper, we first show that with the proposed Gaussian distribution assumption, this continuou...
International audienceIn order to evaluate the quality of segmentations of an image and assess intra...
Label fusion is a critical step in many image segmentation frameworks (e.g., multi-atlas segmentatio...
Objective: The fusion of multiple noisy labels for biomedical data (such as ECG annotations, which m...
Image labeling is an essential task for evaluating and analyzing morphometric features in medical im...
Image labeling is essential for analyzing morphometric features in medical imaging data. Labels can ...
Image labeling is essential for analyzing morphometric features in medical imaging data. Labels can ...
Image labeling and parcellation are critical tasks for the assessment of volumetric and morphometric...
With the rapid increase in volume of time series medical data available through wearable devices, th...
Expert labelling is the gold standard for diagnosing patient-specific diseases from medical data. H...
International audienceThis work aimed at combining different segmentation approaches to produce a ro...
This work aimed at combining different segmentation approaches to produce a robust and accurate segm...
Evaluating the performance of either human raters or automated image segmentation algorithms has lon...
Labeling or parcellation of structures of interest on magnetic resonance imaging (MRI) is essential ...
International audienceIn order to evaluate the quality of segmentations of an image and assess intra...
Label fusion is a critical step in many image segmentation frameworks (e.g., multi-atlas segmentatio...
Objective: The fusion of multiple noisy labels for biomedical data (such as ECG annotations, which m...
Image labeling is an essential task for evaluating and analyzing morphometric features in medical im...
Image labeling is essential for analyzing morphometric features in medical imaging data. Labels can ...
Image labeling is essential for analyzing morphometric features in medical imaging data. Labels can ...
Image labeling and parcellation are critical tasks for the assessment of volumetric and morphometric...
With the rapid increase in volume of time series medical data available through wearable devices, th...
Expert labelling is the gold standard for diagnosing patient-specific diseases from medical data. H...
International audienceThis work aimed at combining different segmentation approaches to produce a ro...
This work aimed at combining different segmentation approaches to produce a robust and accurate segm...
Evaluating the performance of either human raters or automated image segmentation algorithms has lon...
Labeling or parcellation of structures of interest on magnetic resonance imaging (MRI) is essential ...
International audienceIn order to evaluate the quality of segmentations of an image and assess intra...
Label fusion is a critical step in many image segmentation frameworks (e.g., multi-atlas segmentatio...
Objective: The fusion of multiple noisy labels for biomedical data (such as ECG annotations, which m...