Deep Guess acceleration for explainable image reconstruction in sparse-view CT
Journal:
arXiv
Published Date:
Dec 2, 2024
Abstract
Sparse-view Computed Tomography (CT) is an emerging protocol designed to
reduce X-ray dose radiation in medical imaging. Traditional Filtered Back
Projection algorithm reconstructions suffer from severe artifacts due to sparse
data. In contrast, Model-Based Iterative Reconstruction (MBIR) algorithms,
though better at mitigating noise through regularization, are too
computationally costly for clinical use. This paper introduces a novel
technique, denoted as the Deep Guess acceleration scheme, using a trained
neural network both to quicken the regularized MBIR and to enhance the
reconstruction accuracy. We integrate state-of-the-art deep learning tools to
initialize a clever starting guess for a proximal algorithm solving a
non-convex model and thus computing an interpretable solution image in a few
iterations. Experimental results on real CT images demonstrate the Deep Guess
effectiveness in (very) sparse tomographic protocols, where it overcomes its
mere variational counterpart and many data-driven approaches at the state of
the art. We also consider a ground truth-free implementation and test the
robustness of the proposed framework to noise.