This paper presents a method for estimating uncertainty in MRI-based brain region delineations provided by fully-automated segmentation methods. In large data sets, the uncertainty estimates could be used to detect fully-automated method failures, identify low-quality imaging data, or endow downstream statistical analyses with per-subject uncertainty in derived morphometric measures. Region segmentation is formulated in a statistical inference framework; the probability that a given region-delineating surface accounts for observed image data is quantified by a distribution that takes into account a prior model of plausible region shape and a model of how the region appears in images. Region segmentation consists of finding the maximum a pos...
Convolutional neural networks have shown promising results in automated cardiac MRI segmentation. In...
The human brain is composed of a variety of structures, or regions of interest (ROIs), that are resp...
International audienceQuantifying the uncertainty attached to Deep Learning models predictions can h...
This paper presents a method for estimating uncertainty in MRI-based brain region delineations provi...
Abstract. This paper presents a method for estimating uncertainty in MRI-based brain region delineat...
Typical methods for image segmentation, or labeling, formulate and solve an optimization problem to ...
Despite the recent improvements in overall accuracy, deep learning systems still exhibit low levels ...
International audienceDeep neural networks have become the gold-standard approach for the automated ...
This is the challenge design document for the "Quantification of Uncertainties in Biomedical Image Q...
A preliminary study on inter-observer variability of manual contour delineation of structures was ca...
Accepted for publication to the journal Elsevier Medical Image AnalysisInternational audienceIn this...
Uncertainty estimates of modern neuronal networks provide additional information next to the compute...
Automatic segmentation of brain tumors has the potential to enable volumetric measures and high-thro...
Uncertainty measures of medical image analysis technologies, such as deep learning, are expected to ...
Probabilistic segmentation is concerned with handling imperfections of image segmentation algorithms...
Convolutional neural networks have shown promising results in automated cardiac MRI segmentation. In...
The human brain is composed of a variety of structures, or regions of interest (ROIs), that are resp...
International audienceQuantifying the uncertainty attached to Deep Learning models predictions can h...
This paper presents a method for estimating uncertainty in MRI-based brain region delineations provi...
Abstract. This paper presents a method for estimating uncertainty in MRI-based brain region delineat...
Typical methods for image segmentation, or labeling, formulate and solve an optimization problem to ...
Despite the recent improvements in overall accuracy, deep learning systems still exhibit low levels ...
International audienceDeep neural networks have become the gold-standard approach for the automated ...
This is the challenge design document for the "Quantification of Uncertainties in Biomedical Image Q...
A preliminary study on inter-observer variability of manual contour delineation of structures was ca...
Accepted for publication to the journal Elsevier Medical Image AnalysisInternational audienceIn this...
Uncertainty estimates of modern neuronal networks provide additional information next to the compute...
Automatic segmentation of brain tumors has the potential to enable volumetric measures and high-thro...
Uncertainty measures of medical image analysis technologies, such as deep learning, are expected to ...
Probabilistic segmentation is concerned with handling imperfections of image segmentation algorithms...
Convolutional neural networks have shown promising results in automated cardiac MRI segmentation. In...
The human brain is composed of a variety of structures, or regions of interest (ROIs), that are resp...
International audienceQuantifying the uncertainty attached to Deep Learning models predictions can h...