DocumentCode :
3687861
Title :
3D+t segmentation of PET images using spectral clustering
Author :
Hiba Zbib;Salam Kdouh;Sandrine Mouysset;Simon Stute;Jean-Marc Girault;Jamal Charara;Mohammad Nassereddme;Ali Mcheik;Irène Buvat;Clovis Tauber
Author_Institution :
Laboratoire Signaux et Images, Université
fYear :
2015
Firstpage :
49
Lastpage :
52
Abstract :
Segmentation of dynamic PET images is often needed to extract the time activity curve (TAC) of regions. While clustering methods have been proposed to segment the PET sequence, they are generally either sensitive to initial conditions or favor convex shaped clusters. Recently, we have proposed a deterministic and automatic spectral clustering method (AD-KSC) of PET images. It has the advantage of handling clusters with arbitrary shape in the space in which they are identified. While improved results were obtained with AD-KSC compared to other methods, its use for clinical applications is constrained to 2D+t PET data due to its computational complexity. In this paper, we propose an extension of AD-KSC to make it applicable to 3D+t PET data. First, a preprocessing step based on a recursive principle component analysis and a Global K-means approach is used to generate many small seed clusters. AD-KSC is then applied on the generated clusters to obtain the final partition of the data. We validated the method with GATE Monte Carlo simulations of Zubal head phantom. The proposed approach improved the region of interest (ROI) definition and outperformed the K-means algorithm.
Keywords :
"Positron emission tomography","Image segmentation","Three-dimensional displays","Clustering algorithms","Convergence","Head","Heuristic algorithms"
Publisher :
ieee
Conference_Titel :
Advances in Biomedical Engineering (ICABME), 2015 International Conference on
ISSN :
2377-5688
Electronic_ISBN :
2377-5696
Type :
conf
DOI :
10.1109/ICABME.2015.7323248
Filename :
7323248
Link To Document :
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