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Medical Image Computing and Computer-Assisted Intervention - MICCAI 2000, m. 2 Buch
Third International Conference Pittsburgh, PA, USA, October 11-14, 2000 Proceedings

Inglese · Tascabile

Spedizione di solito entro 4 a 7 giorni lavorativi

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In previous work [6], we presented a novel information theoretic approach for calculating fMRI activation maps. The information-theoretic approach is - pealing in that it is a principled methodology requiring few assumptions about the structure of the fMRI signal. In that approach, activation was quanti?ed by measuring the mutual information (MI) between the protocol signal and the fMRI time-series at a givenvoxel.This measureis capable of detecting unknown nonlinear and higher-order statistical dependencies. Furthermore, it is relatively straightforward to implement. In practice,activation decisions at eachvoxelareindependent of neighboring voxels. Spurious responses are then removed by ad hoc techniques (e.g. morp- logicaloperators).Inthispaper,wedescribeanautomaticmaximumaposteriori (MAP) detection method where the well-known Ising model is used as a spatial prior.The Isingspatialpriordoes not assumethat the time-seriesofneighboring voxelsareindependentofeachother.Furthermore,removalofspuriousresponses is an implicit component of the detection formulation. In order to formulate the calculation of the activation map using this technique we ?rst demonstrate that the information-theoretic approach has a natural interpretation in the hypo- esis testing framework and that, speci?cally, our estimate of MI approximates the log-likelihood ratio of that hypothesis test. Consequently, the MAP det- tion problem using the Ising model can be formulated and solved exactly in polynomial time using the Ford and Fulkerson method [4]. We compare the results of our approach with and without spatial priors to an approachbased on the general linear model (GLM) popularized by Fristonet al [3]. We present results from three fMRI data sets. The data sets test motor, auditory, and visual cortex activation, respectively.

Dettagli sul prodotto

Con la collaborazione di Anthon M DiGoia (Editore), Anthony M DiGoia (Editore), Scott L. Delp (Editore), Anthony M. Digoia (Editore), Branislav Jaramaz (Editore)
Editore Springer, Berlin
 
Contenuto Libro
Forma del prodotto Tascabile
Data pubblicazione 29.01.2013
Categoria Scienze naturali, medicina, informatica, tecnica > Medicina > Branche cliniche
Scienze naturali, medicina, informatica, tecnica > Medicina > Branche non cliniche
 
EAN 9783540411895
ISBN 978-3-540-41189-5
Numero di pagine 1’254
Illustrazioni L, 1254 p. 703 illus., 28 illus. in color. In 2 volumes, not available separately.
Dimensioni (della confezione) 15.5 x 23.5 x 4.8 cm
Peso (della confezione) 1’570 g
 
Serie Lecture Notes in Computer Science > Vol.1935
Lecture Notes in Computer Science > 1935
Categorie Tumor, Chirurgie, neuroimaging, Mustererkennung, Bildgebende Verfahren, datamining, Maschinelles Sehen, Bildverstehen, Computeranwendungen in Industrie und Technologie, Classification, Computervision, imageanalysis, computedtomography(CT), MedicalImaging, Imageregistration, MedicalRobotics, MarkovRandomField, Computer-assistedSurgery, MedicalProcessing, Computer-AssistedIntervention, Cardiacimageanalysis
 

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