Segmentation of heterogeneous or small FDG PET positive tissue based on a 3D-locally adaptive random walk algorithm. - Archive ouverte HAL Accéder directement au contenu
Article Dans Une Revue Computerized Medical Imaging and Graphics Année : 2014

Segmentation of heterogeneous or small FDG PET positive tissue based on a 3D-locally adaptive random walk algorithm.

Résumé

A segmentation algorithm based on the random walk (RW) method, called 3D-LARW, has been developed to delineate small tumors or tumors with a heterogeneous distribution of FDG on PET images. Based on the original algorithm of RW [1], we propose an improved approach using new parameters depending on the Euclidean distance between two adjacent voxels instead of a fixed one and integrating probability densities of labels into the system of linear equations used in the RW. These improvements were evaluated and compared with the original RW method, a thresholding with a fixed value (40% of the maximum in the lesion), an adaptive thresholding algorithm on uniform spheres filled with FDG and FLAB method, on simulated heterogeneous spheres and on clinical data (14 patients). On these three different data, 3D-LARW has shown better segmentation results than the original RW algorithm and the three other methods. As expected, these improvements are more pronounced for the segmentation of small or tumors having heterogeneous FDG uptake.
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Dates et versions

hal-01117275 , version 1 (16-02-2015)

Identifiants

  • HAL Id : hal-01117275 , version 1
  • PUBMED : 25450759

Citer

D P Onoma, S Ruan, S Thureau, L Nkhali, R Modzelewski, et al.. Segmentation of heterogeneous or small FDG PET positive tissue based on a 3D-locally adaptive random walk algorithm.. Computerized Medical Imaging and Graphics, 2014, 38 (8), pp.753-63. ⟨hal-01117275⟩
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