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1.
Med Image Comput Comput Assist Interv ; 15(Pt 1): 528-36, 2012.
Article in English | MEDLINE | ID: mdl-23285592

ABSTRACT

The automatic delineation of the boundaries of organs and other anatomical structures is a key component of many medical image processing systems. In this paper we present a generic learning approach based on a novel space of segmentation features, which can be trained to predict the overlap error and Dice coefficient of an arbitrary organ segmentation without knowing the ground truth delineation. We show the regressor to be much stronger a predictor of these error metrics than the responses of probabilistic boosting classifiers trained on the segmentation boundary. The presented approach not only allows us to build reliable confidence measures and fidelity checks, but also to rank several segmentation hypotheses against each other during online usage of the segmentation algorithm in clinical practice.


Subject(s)
Lung/pathology , Algorithms , Computer Simulation , False Positive Reactions , Humans , Image Processing, Computer-Assisted , Models, Statistical , Pattern Recognition, Automated/methods , Probability , Reproducibility of Results
2.
Neuroimage ; 17(1): 223-30, 2002 Sep.
Article in English | MEDLINE | ID: mdl-12482079

ABSTRACT

Conventional analysis of electroencephalography (EEG) and magnetoencephalography (MEG) often relies on averaging over multiple trials to extract statistically relevant differences between two or more experimental conditions. In this article we demonstrate single-trial detection by linearly integrating information over multiple spatially distributed sensors within a predefined time window. We report an average, single-trial discrimination performance of Az approximately 0.80 and faction correct between 0.70 and 0.80, across three distinct encephalographic data sets. We restrict our approach to linear integration, as it allows the computation of a spatial distribution of the discriminating component activity. In the present set of experiments the resulting component activity distributions are shown to correspond to the functional neuroanatomy consistent with the task (e.g., contralateral sensorymotor cortex and anterior cingulate). Our work demonstrates how a purely data-driven method for learning an optimal spatial weighting of encephalographic activity can be validated against the functional neuroanatomy.


Subject(s)
Electroencephalography/methods , Magnetoencephalography/methods , Algorithms , Artificial Intelligence , Data Interpretation, Statistical , Functional Laterality/physiology , Humans , Imagination/physiology , Linear Models , Models, Neurological , Motor Activity/physiology , Movement/physiology , Psychomotor Performance/physiology
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