Partitioned Hankel-based Diffusion Models for Few-shot Low-dose CT Reconstruction
Wenhao Zhang, Bin Huang, Shuyue Chen, Xiaoling Xu, Weiwen Wu, Qiegen, Liu

TL;DR
This paper introduces a novel few-shot low-dose CT reconstruction method using Partitioned Hankel-based Diffusion models, effectively reducing noise and artifacts while maintaining image quality with limited data.
Contribution
The proposed PHD model leverages partitioned Hankel matrices and diffusion models for efficient low-dose CT reconstruction with minimal training data.
Findings
Achieves near-normal dose image quality
Reduces artifacts and noise effectively
Requires limited training data
Abstract
Low-dose computed tomography (LDCT) plays a vital role in clinical applications by mitigating radiation risks. Nevertheless, reducing radiation doses significantly degrades image quality. Concurrently, common deep learning methods demand extensive data, posing concerns about privacy, cost, and time constraints. Consequently, we propose a few-shot low-dose CT reconstruction method using Partitioned Hankel-based Diffusion (PHD) models. During the prior learning stage, the projection data is first transformed into multiple partitioned Hankel matrices. Structured tensors are then extracted from these matrices to facilitate prior learning through multiple diffusion models. In the iterative reconstruction stage, an iterative stochastic differential equation solver is employed along with data consistency constraints to update the acquired projection data. Furthermore, penalized weighted…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Advanced X-ray and CT Imaging · Radiation Dose and Imaging
MethodsDiffusion
