| Literature DB >> 30215028 |
Sam Ellis1, Andrew Mallia2, Colm J McGinnity2, Gary J R Cook2, Andrew J Reader1.
Abstract
Multi-tracer positron emission tomography (PET) has the potential to enhance PET imaging by providing complementary information from different physiological processes. However, one or more of the images may present high levels of noise. Guided image reconstruction methods transfer information from a guide image into the PET image reconstruction to encourage edge-preserving noise reduction. In this work we aim to reduce noise in poorer quality PET datasets via guidance from higher quality ones by using a weighted quadratic penalty approach. In particular, we applied this methodology to [18F]fluorodeoxyglucose (FDG) and [11C]methionine imaging of gliomas. 3D simulation studies showed that guiding the reconstruction of methionine datasets using pre-existing FDG images reduced reconstruction errors across the whole-brain (-8%) and within a tumour (-36%) compared to maximum likelihood expectation-maximisation (MLEM). Furthermore, guided reconstruction outperformed a comparable non-local means filter, indicating that regularising during reconstruction is preferable to post-reconstruction approaches. Hyperparameters selected from the 3D simulation study were applied to real data, where it was observed that the proposed FDG-guided methionine reconstruction allows for better edge preservation and noise reduction than standard MLEM. Overall, the results in this work demonstrate that transferring information between datasets in multi-tracer PET studies improves image quality and quantification performance.Entities:
Keywords: PET image reconstruction; guided reconstruction; multi-tracer PET; positron emission tomography; regularisation
Year: 2018 PMID: 30215028 PMCID: PMC6130802 DOI: 10.1109/TRPMS.2018.2856581
Source DB: PubMed Journal: IEEE Trans Radiat Plasma Med Sci ISSN: 2469-7303