Zhang Lizhi, Guo Hongbo, Li Jintao, Kang Dizhen, Zhang Diya, He Xiaowei, Zhao Yizhe, Wei De, Yu Jingjing
The Xi'an Key Laboratory of Radiomics and Intelligent Perception, Xi'an, China.
School of Information Sciences and Technology, Northwest University, Xi'an 710127, China.
Biomed Opt Express. 2023 Feb 16;14(3):1159-1177. doi: 10.1364/BOE.481348. eCollection 2023 Mar 1.
Fluorescence molecular tomography (FMT) is a promising molecular imaging technique for tumor detection in the early stage. High-precision multi-target reconstructions are necessary for quantitative analysis in practical FMT applications. The existing reconstruction methods perform well in retrieving a single fluorescent target but may fail in reconstructing a multi-target, which remains an obstacle to the wider application of FMT. In this paper, a novel multi-target reconstruction strategy based on blind source separation (BSS) of surface measurement signals was proposed, which transformed the multi-target reconstruction problem into multiple single-target reconstruction problems. Firstly, by multiple points excitation, multiple groups of superimposed measurement signals conforming to the conditions of BSS were constructed. Secondly, an efficient nonnegative least-correlated component analysis with iterative volume maximization (nLCA-IVM) algorithm was applied to construct the separation matrix, and the superimposed measurement signals were separated into the measurements of each target. Thirdly, the least squares fitting method was combined with BSS to determine the number of fluorophores indirectly. Lastly, each target was reconstructed based on the extracted surface measurement signals. Numerical simulations and in vivo experiments proved that it has the ability of multi-target resolution for FMT. The encouraging results demonstrate the significant effectiveness and potential of our method for practical FMT applications.
荧光分子断层成像(FMT)是一种很有前景的早期肿瘤检测分子成像技术。在实际的FMT应用中,高精度多靶点重建对于定量分析是必要的。现有的重建方法在检索单个荧光靶点方面表现良好,但在重建多靶点时可能会失败,这仍然是FMT更广泛应用的一个障碍。本文提出了一种基于表面测量信号盲源分离(BSS)的新型多靶点重建策略,将多靶点重建问题转化为多个单靶点重建问题。首先,通过多点激发,构建了多组符合BSS条件的叠加测量信号。其次,应用一种高效的带迭代体积最大化的非负最小相关分量分析(nLCA-IVM)算法来构建分离矩阵,并将叠加测量信号分离为每个靶点的测量值。第三,将最小二乘拟合方法与BSS相结合,间接确定荧光团的数量。最后,基于提取的表面测量信号对每个靶点进行重建。数值模拟和体内实验证明了它具有FMT多靶点分辨率的能力。令人鼓舞的结果表明了我们的方法在实际FMT应用中的显著有效性和潜力。