A2 Vertaisarvioitu katsausartikkeli tieteellisessä lehdessä

The performance of machine learning approaches for attenuation correction of PET in neuroimaging: A meta-analysis




TekijätRaymond Confidence, Jurkiewicz Michael T., Orunmuyi Akintunde, Liu Linshan, Dada Michael O., Ladefoged Claes N., Teuho Jarmo, Anazodo Udunna C.

KustantajaElsevier Masson s.r.l.

Julkaisuvuosi2023

JournalJournal de Neuroradiologie / Journal of Neuroradiology

Tietokannassa oleva lehden nimiJournal of Neuroradiology

DOIhttps://doi.org/10.1016/j.neurad.2023.01.157

Verkko-osoitehttps://doi.org/10.1016/j.neurad.2023.01.157


Tiivistelmä

Purpose
This systematic review provides a consensus on the clinical feasibility of machine learning (ML) methods for brain PET attenuation correction (AC). Performance of ML-AC were compared to clinical standards.

Methods
Two hundred and eighty studies were identified through electronic searches of brain PET studies published between January 1, 2008, and August 1, 2022. Reported outcomes for image quality, tissue classification performance, regional and global bias were extracted to evaluate ML-AC performance. Methodological quality of included studies and the quality of evidence of analysed outcomes were assessed using QUADAS-2 and GRADE, respectively.

Results
A total of 19 studies (2371 participants) met the inclusion criteria. Overall, the global bias of ML methods was 0.76 ± 1.2%. For image quality, the relative mean square error (RMSE) was 0.20 ± 0.4 while for tissues classification, the Dice similarity coefficient (DSC) for bone/soft tissue/air were 0.82 ± 0.1 / 0.95 ± 0.03 / 0.85 ± 0.14.

Conclusions
In general, ML-AC performance is within acceptable limits for clinical PET imaging. The sparse information on ML-AC robustness and its limited qualitative clinical evaluation may hinder clinical implementation in neuroimaging, especially for PET/MRI or emerging brain PET systems where standard AC approaches are not readily available.



Last updated on 2025-27-03 at 21:49