Effect of PET-MR Inconsistency in the Kernel Image Reconstruction Method.

TitleEffect of PET-MR Inconsistency in the Kernel Image Reconstruction Method.
Publication TypeJournal Article
Year of Publication2019
AuthorsDeidda D, Karakatsanis N, Robson PM, Efthimiou N, Fayad ZA, Aykroyd RG, Tsoumpas C
JournalIEEE Trans Radiat Plasma Med Sci
Volume3
Issue4
Pagination400-409
Date Published2019 Jul
ISSN2469-7311
Abstract

Anatomically-driven image reconstruction algorithms have become very popular in positron emission tomography (PET) where they have demonstrated improved image resolution and quantification. This work, consider the effect of spatial inconsistency between MR and PET images in hot and cold regions of the PET image. We investigate these effects on the kernel method from machine learning, in particular, the hybrid kernelized expectation maximization (HKEM). These were applied to Jaszczak phantom and patient data acquired with the Biograph Siemens mMR. The results show that even a small shift can cause a significant change in activity concentration. In general, the PET-MR inconsistencies can induce the partial volume effect, more specifically the 'spill-in' of the affected cold regions and the 'spill-out' from the hot regions. The maximum change was about 100% for the cold region and 10% for the hot lesion using KEM, against the 37% and 8% obtained with HKEM. The findings of this work suggest that including PET information in the kernel enhances the flexibility of the reconstruction in case of spatial inconsistency. Nevertheless, accurate registration and choice of the appropriate MR image for the creation of the kernel is essential to avoid artifacts, blurring, and bias.

DOI10.1109/trpms.2018.2884176
Alternate JournalIEEE Trans Radiat Plasma Med Sci
PubMed ID33134651
PubMed Central IDPMC7596768
Grant ListR01 HL071021 / HL / NHLBI NIH HHS / United States

Weill Cornell Medicine
Department of Radiology
525 East 68th Street New York, NY 10065