Decentralized collaborative multi-institutional PET attenuation and scatter correction using federated deep learning.
Isaac ShiriAlireza Vafaei SadrAzadeh AkhavanYazdan SalimiAmirhossein SanaatMehdi AminiBehrooz RazeghiAbdollah SaberiHossein ArabiSohrab FerdowsiSlava VoloshynovskiyDeniz GündüzArman RahmimHabib ZaidiPublished in: European journal of nuclear medicine and molecular imaging (2022)
Deep learning-based models provide promising results toward quantitative PET image reconstruction. Specifically, we developed two FL models and compared their performance with center-based and centralized models. The proposed FL-based models achieved higher performance compared to center-based models, comparable with centralized models. Our work provided strong empirical evidence that the FL framework can fully benefit from the generalizability and robustness of DL models used for AC/SC in PET, while obviating the need for the direct sharing of datasets between clinical imaging centers.