Liver injury monitoring using dynamic fluorescence molecular tomography based on a time-energy difference strategy

Author:

Zhao Yizhe12,Li Shuangchen12ORCID,He Xuelei12,Yu Jingjing3ORCID,Zhang Lizhi12,Zhang Heng12,Wei De12,Wang Beilei12,Li Jintao12,Guo Hongbo12ORCID,He Xiaowei12ORCID

Affiliation:

1. The Xi’an Key Laboratory of Radiomics and Intelligent Perception

2. Northwest University

3. Shaanxi Normal University

Abstract

Dynamic fluorescence molecular tomography (DFMT) is a promising molecular imaging technique that offers the potential to monitor fast kinetic behaviors within small animals in three dimensions. Early monitoring of liver disease requires the ability to distinguish and analyze normal and injured liver tissues. However, the inherent ill-posed nature of the problem and energy signal interference between the normal and injured liver regions limit the practical application of liver injury monitoring. In this study, we propose a novel strategy based on time and energy, leveraging the temporal correlation in fluorescence molecular imaging (FMI) sequences and the metabolic differences between normal and injured liver tissue. Additionally, considering fluorescence signal distribution disparity between the injured and normal regions, we designed a universal Golden Ratio Primal-Dual Algorithm (GRPDA) to reconstruct both the normal and injured liver regions. Numerical simulation and in vivo experiment results demonstrate that the proposed strategy can effectively avoid signal interference between liver and liver injury energy and lead to significant improvements in morphology recovery and positioning accuracy compared to existing approaches. Our research presents a new perspective on distinguishing normal and injured liver tissues for early liver injury monitoring.

Funder

National Natural Science Foundation of China

Publisher

Optica Publishing Group

Subject

Atomic and Molecular Physics, and Optics,Biotechnology

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