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Partitioned Hankel-based Diffusion Models for Few-shot Low-dose CT Reconstruction

Authors :
Zhang, Wenhao
Huang, Bin
Chen, Shuyue
Xu, Xiaoling
Wu, Weiwen
Liu, Qiegen
Publication Year :
2024

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 least-squares and total variation techniques are introduced to enhance the resulting image quality. The results approximate those of normal-dose counterparts, validating PHD model as an effective and practical model for reducing artifacts and noise while preserving image quality.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.17167
Document Type :
Working Paper