Incorporation of wavelet-based denoising in iterative deconvolution for partial volume correction in whole-body PET imaging.

Eur J Nucl Med Mol Imaging

INSERM, U650, Laboratoire de Traitement de l'Information Médicale CHU MORVAN, Bat 2bis (I3S), 5 avenue Foch, Brest, 29609, France.

Published: July 2009

Purpose: Partial volume effects (PVEs) are consequences of the limited resolution of emission tomography. The aim of the present study was to compare two new voxel-wise PVE correction algorithms based on deconvolution and wavelet-based denoising.

Materials And Methods: Deconvolution was performed using the Lucy-Richardson and the Van-Cittert algorithms. Both of these methods were tested using simulated and real FDG PET images. Wavelet-based denoising was incorporated into the process in order to eliminate the noise observed in classical deconvolution methods.

Results: Both deconvolution approaches led to significant intensity recovery, but the Van-Cittert algorithm provided images of inferior qualitative appearance. Furthermore, this method added massive levels of noise, even with the associated use of wavelet-denoising. On the other hand, the Lucy-Richardson algorithm combined with the same denoising process gave the best compromise between intensity recovery, noise attenuation and qualitative aspect of the images.

Conclusion: The appropriate combination of deconvolution and wavelet-based denoising is an efficient method for reducing PVEs in emission tomography.

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Source
http://dx.doi.org/10.1007/s00259-009-1065-5DOI Listing

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