Huang Shaosen, Zhao Yong, Qin Binjie
School of Biomedical Engineering, Shanghai Jiao Tong University, Dongchuan Road, Shanghai, China.
Biomed Eng Online. 2015 Dec 15;14:116. doi: 10.1186/s12938-015-0107-4.
Nonnegative matrix factorization (NMF) has been used in blind fluorescence unmixing for multispectral in-vivo fluorescence imaging, which decomposes a mixed source data into a set of constituent fluorescence spectra and corresponding concentrations. However, most classical NMF algorithms have ill convergence problems and they always fail to unmix multiple fluorescent targets from background autofluorescence for the sparse acquisition of multispectral fluorescence imaging, which introduces incomplete measurements and severe discontinuities in multispectral fluorescence emissions across the multiple spectral bands.
Observing the spatial distinction between the diffusive autofluorescence and the sparse fluorescent targets, we propose to separate the mixed sparse multispectral data into equality constrained two-hierarchical updating within NMF framework by dividing the concentration matrix of entire endmembers into two hierarchies: the fluorescence targets and the background autofluorescence. Specifically, when updating concentrations of multiple fluorescent targets in the two-hierarchical NMF, we assume that the concentration of autofluorescence is fixed and known, and vice versa. Furthermore, a sparsity constraint is imposed on the concentration matrix components of fluorescence targets only.
Synthetic data sets, in vivo fluorescence imaging data are employed to demonstrate and validate the performance of our approach. The proposed algorithm can achieve more satisfying results of spectral unmixing and autofluorescence removal compared to other state-of-the-art methods, especially for the sparse multispectral fluorescence imaging.
The proposed algorithm can successfully tackle the sparse acquisition and ill-posed problems in the NMF-based fluorescence unmixing through equality constraint along with partial sparsity constraint during two-hierarchical NMF optimization, at which fixing sparsity constrained target fluorescence can make the update of autofluorescence as accurate as possible and vice versa.
非负矩阵分解(NMF)已用于多光谱体内荧光成像的盲荧光解混,即将混合源数据分解为一组组成荧光光谱和相应浓度。然而,大多数经典的NMF算法存在收敛性差的问题,并且在多光谱荧光成像的稀疏采集过程中,它们总是无法从背景自发荧光中解混出多个荧光目标,这在多个光谱带的多光谱荧光发射中引入了不完整测量和严重的不连续性。
观察到扩散自发荧光和稀疏荧光目标之间的空间差异,我们建议在NMF框架内通过将整个端元的浓度矩阵分为两个层次:荧光目标和背景自发荧光,将混合的稀疏多光谱数据分离为等式约束的两级更新。具体而言,在两级NMF中更新多个荧光目标的浓度时,我们假设自发荧光的浓度是固定且已知的,反之亦然。此外,仅对荧光目标的浓度矩阵分量施加稀疏约束。
使用合成数据集、体内荧光成像数据来演示和验证我们方法的性能。与其他现有方法相比,所提出的算法可以实现更令人满意的光谱解混和自发荧光去除结果,特别是对于稀疏多光谱荧光成像。
所提出的算法可以通过在两级NMF优化过程中的等式约束以及部分稀疏约束,成功解决基于NMF的荧光解混中的稀疏采集和不适定问题,在该过程中固定受稀疏约束的目标荧光可以使自发荧光的更新尽可能准确反之亦然。