首页|基于重启策略的快速迭代收缩阈值算法的荧光分子断层成像重建

基于重启策略的快速迭代收缩阈值算法的荧光分子断层成像重建

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提出一种改进的快速迭代收缩阈值算法(FISTA)来求解荧光分子断层成像(FMT)目标函数,并采用重启策略搜索步长,在迭代中提供合适的Lipschitz常数,从而加快FISTA的收敛速度.数值仿真实验和真实小鼠实验结果表明,与经典的FISTA对比,基于重启策略的快速迭代收缩阈值算法(R-FISTA)能够在保证FMT重建精度的同时加快重建速度.
Reconstruction for Fluorescence Molecular Tomography Using Fast Iterative Shrinkage Thresholding Algorithm Based on Restart Strategy
Objective Fluorescence molecular tomography(FMT)is a non-invasive technique that enables quantitative analysis of pathological processes at the cellular and molecular levels in vivo.The reconstruction of FMT is an ill-posed inverse problem,making it challenging to achieve fast and accurate reconstruction.Regularization methods,such as Tikhonov regularization and sparsity regularization,are typically used to address this issue.Given that tumors are small and sparse compared to the entire imaging domain,sparsity regularization is usually beneficial.The fast iterative shrinkage thresholding algorithm(FISTA)is proposed for the L1-norm regularization problem and has shown good performance.Classical FISTA employs a linearly increasing search strategy to determine the Lipschitz constant.However,if the proximal gradient condition is satisfied during the initial stages of algorithm iteration,the Lipschitz constant remains unchanged,hindering the convergence of the algorithm.To address this issue,we propose a step-size search method based on a restart strategy,which can provide appropriate Lipschitz constants during the iterations to accelerate the convergence speed of FISTA.Methods In this study,an adaptive Lipschitz constant is provided at each iteration.The Lipschitz constant is increased by a growth factor containing gradient information.When the Lipschitz constant remains unchanged between two iterations,it may be too large,resulting in a small step size and slow convergence.Therefore,a truncation restart strategy is employed.The initial Lipschitz constant is selected as the current Lipschitz constant.We call this method restart fast iterative shrinkage thresholding algorithm(R-FISTA).Results and Discussions To test the performance of R-FISTA,numerical simulation experiments and in vivo experiments are conducted with both classical FISTA and R-FISTA.In the simulation experiments with different numbers of excitation points,R-FISTA takes less time compared to FISTA(Table 2 and Fig.2).In addition,different levels(5%,10%,15%,20%,25%)of noises are considered to test the stability of the method.We find that R-FISTA provides better results according to location error(LE)compared to FISTA(Fig.3 and Fig.4).Notably,R-FISTA consumes less reconstruction time compared to FISTA.The real mouse experiment further shows that R-FISTA has a faster convergence speed compared to FISTA,consistent with the simulations(Fig.2 and Fig.4).These results demonstrate that R-FISTA accelerates the convergence speed of FISTA.Conclusions In this study,we propose a fast reconstruction algorithm for FMT based on FISTA,named R-FISTA.A restart strategy is proposed to search for the step size,providing appropriate Lipschitz constants during the iterations,thereby accelerating the convergence speed of FISTA.Numerical simulation experiments and in vivo experiments have shown that compared with classical FISTA,the R-FISTA algorithm effectively accelerates the reconstruction speed while ensuring high accuracy of FMT reconstruction.This fast reconstruction algorithm makes real-time 3D reconstruction possible.Deep learning has been a hot topic in recent years and has been applied to FMT,such as 3D deep encoder-decoder networks and stacked autoencoder neural networks.However,the explanation and generalization of deep learning methods need further study.Our future work will focus on combining the model with the network to solve the ill-posedness of FMT.

bio-opticsfluorescence molecular tomographyfast iterative shrinkage thresholding algorithmimage reconstructionrestart strategy

高家琛、钟升、谢琼、袁娅婷、易黄建

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西北大学信息科学与技术学院,陕西西安 710127

湖南中医药大学第一附属医院,湖南长沙 410007

生物光学 荧光分子断层成像 快速迭代收缩阈值算法 图像重建 重启策略

2024

光学学报
中国光学学会 中国科学院上海光学精密机械研究所

光学学报

CSTPCD北大核心
影响因子:1.931
ISSN:0253-2239
年,卷(期):2024.44(16)