Deep learning based bilateral filtering for edge-preserving denoising of respiratory-gated PET.
Jens MausPavel NikulinFrank HofheinzJan PetrAnja BrauneJörg KotzerkeJörg van den HoffPublished in: EJNMMI physics (2024)
Our results show that a neural network based denoising can reproduce the results of a case by case optimized BF in a fully automated way. Apart from rare cases it led to images of practically identical quality regarding noise level, edge preservation, and signal recovery. We believe such a network might proof especially useful in the context of improved motion correction of respiratory-gated PET studies but could also help to establish BF-equivalent edge-preserving CNN filtering in clinical PET since it obviates time consuming manual BF parameter tuning.