Joint compensation of motion and partial volume effects by iterative deconvolution incorporating wavelet-based denoising in oncologic PET/CT imaging

•The developed method to jointly compensate yielded improved PET quantification.•Incorporation of wavelet-based denoising improved coefficient of variance.•Higher contrast recovery and contrast-to-noise ratio were seen in compensated images. We aim to develop and rigorously evaluate an image-based d...

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Veröffentlicht in:Physica medica 2019-12, Vol.68, p.52-60
Hauptverfasser: Rezaei, Sahar, Ghafarian, Pardis, Jha, Abhinav K., Rahmim, Arman, Sarkar, Saeed, Ay, Mohammad Reza
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Sprache:eng
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Zusammenfassung:•The developed method to jointly compensate yielded improved PET quantification.•Incorporation of wavelet-based denoising improved coefficient of variance.•Higher contrast recovery and contrast-to-noise ratio were seen in compensated images. We aim to develop and rigorously evaluate an image-based deconvolution method to jointly compensate respiratory motion and partial volume effects (PVEs) for quantitative oncologic PET imaging, including studying the impact of various reconstruction algorithms on quantification performance. An image-based deconvolution method that incorporated wavelet-based denoising within the Lucy-Richardson algorithm was implemented and assessed. The method was evaluated using phantom studies with signal-to-background ratios (SBR) of 4 and 8, and clinical data of 10 patients with 42 lung lesions ≤30 mm in diameter. In each study, PET images were reconstructed using four different algorithms: OSEM-basic, PSF, TOF, and TOFPSF. The performance was quantified using contrast recovery (CR), coefficient of variation (COV) and contrast-to-noise-ratio (CNR) metrics. Further, in each study, variabilities arising due to the four different reconstruction algorithms were assessed. In phantom studies, incorporation of wavelet-based denoising improved COV in all cases. Processing images using proposed method yielded significantly higher CR and CNR particularly in small spheres, for all reconstruction algorithms and all SBRs (P 
ISSN:1120-1797
1724-191X
DOI:10.1016/j.ejmp.2019.10.031