Tomographic Foundation Model -- FORCE: Flow-Oriented Reconstruction Conditioning Engine
Journal:
arXiv
Published Date:
Jun 2, 2025
Abstract
Computed tomography (CT) is a major medical imaging modality. Clinical CT
scenarios, such as low-dose screening, sparse-view scanning, and metal
implants, often lead to severe noise and artifacts in reconstructed images,
requiring improved reconstruction techniques. The introduction of deep learning
has significantly advanced CT image reconstruction. However, obtaining paired
training data remains rather challenging due to patient motion and other
constraints. Although deep learning methods can still perform well with
approximately paired data, they inherently carry the risk of hallucination due
to data inconsistencies and model instability. In this paper, we integrate the
data fidelity with the state-of-the-art generative AI model, referred to as the
Poisson flow generative model (PFGM) with a generalized version PFGM++, and
propose a novel CT framework: Flow-Oriented Reconstruction Conditioning Engine
(FORCE). In our experiments, the proposed method shows superior performance in
various CT imaging tasks, outperforming existing unsupervised reconstruction
approaches.