Title of article :
A Novel Fusion Framework Based on Adaptive PCNN in NSCT Domain for Whole-Body PET and CT Images
Author/Authors :
Song, Zhiying Northeastern University - Shenyang, China , Jiang, Huiyan Northeastern University - Shenyang, China , Li, Siqi Northeastern University - Shenyang, China
Abstract :
The PET and CT fusion images, combining the anatomical and functional information, have important clinical meaning. This
paper proposes a novel fusion framework based on adaptive pulse-coupled neural networks (PCNNs) in nonsubsampled contourlet
transform (NSCT) domain for fusing whole-body PET and CT images. Firstly, the gradient average of each pixel is chosen as the
linking strength of PCNN model to implement self-adaptability. Secondly, to improve the fusion performance, the novel summodified Laplacian (NSML) and energy of edge (EOE) are extracted as the external inputs of the PCNN models for low- and
high-pass subbands, respectively. Lastly, the rule of max region energy is adopted as the fusion rule and different energy templates
are employed in the low- and high-pass subbands. The experimental results on whole-body PET and CT data (239 slices contained
by each modality) show that the proposed framework outperforms the other six methods in terms of the seven commonly used
fusion performance metrics.
Keywords :
NSCT , PCNN , PET , Whole-Body
Journal title :
Computational and Mathematical Methods in Medicine