Personalized MR-Informed Diffusion Models for 3D PET Image Reconstruction
Journal:
arXiv
Published Date:
Jun 4, 2025
Abstract
Recent work has shown improved lesion detectability and flexibility to
reconstruction hyperparameters (e.g. scanner geometry or dose level) when PET
images are reconstructed by leveraging pre-trained diffusion models. Such
methods train a diffusion model (without sinogram data) on high-quality, but
still noisy, PET images. In this work, we propose a simple method for
generating subject-specific PET images from a dataset of multi-subject PET-MR
scans, synthesizing "pseudo-PET" images by transforming between different
patients' anatomy using image registration. The images we synthesize retain
information from the subject's MR scan, leading to higher resolution and the
retention of anatomical features compared to the original set of PET images.
With simulated and real [$^{18}$F]FDG datasets, we show that pre-training a
personalized diffusion model with subject-specific "pseudo-PET" images improves
reconstruction accuracy with low-count data. In particular, the method shows
promise in combining information from a guidance MR scan without overly
imposing anatomical features, demonstrating an improved trade-off between
reconstructing PET-unique image features versus features present in both PET
and MR. We believe this approach for generating and utilizing synthetic data
has further applications to medical imaging tasks, particularly because
patient-specific PET images can be generated without resorting to generative
deep learning or large training datasets.