IEEE Trans Med Imaging. 2018 Oct;37(10):2176-2184. doi: 10.1109/TMI.2018.2825102. Epub 2018 Apr 9.
Fluorescence molecular tomography (FMT), as a promising imaging modality in preclinical research, can obtain the three-dimensional (3-D) position information of the stem cell in mice. However, because of the ill-posed nature and sensitivity to noise of the inverse problem, it is a challenge to develop a robust reconstruction method, which can accurately locate the stem cells and define the distribution. In this paper, we proposed a sparsity adaptive correntropy matching pursuit (SACMP) method. SACMP method is independent on the noise distribution of measurements and it assigns small weights on severely corrupted entries of data and large weights on clean ones adaptively. These properties make it more suitable for in vivo experiment. To analyze the performance in terms of robustness and practicability of SACMP, we conducted numerical simulation and in vivo mice experiments. The results demonstrated that the SACMP method obtained the highest robustness and accuracy in locating stem cells and depicting stem cell distribution compared with stagewise orthogonal matching pursuit and sparsity adaptive subspace pursuit reconstruction methods. To the best of our knowledge, this is the first study that acquired such accurate and robust FMT distribution reconstruction for stem cell tracking in mice brain. This promotes the application of FMT in locating stem cell and distribution reconstruction in practical mice brain injury models.
荧光分子断层成像(FMT)作为一种有前途的临床前研究成像方式,可以获得小鼠中干细胞的三维(3-D)位置信息。然而,由于反问题的不适定性和对噪声的敏感性,开发一种能够准确定位干细胞并定义其分布的稳健重建方法是一项挑战。在本文中,我们提出了一种稀疏自适应相关匹配追踪(SACMP)方法。SACMP 方法独立于测量的噪声分布,它自适应地为数据中严重损坏的条目分配较小的权重,而为清洁的条目分配较大的权重。这些特性使其更适合体内实验。为了分析 SACMP 在稳健性和实用性方面的性能,我们进行了数值模拟和体内小鼠实验。结果表明,与分阶段正交匹配追踪和稀疏自适应子空间追踪重建方法相比,SACMP 方法在定位干细胞和描绘干细胞分布方面具有最高的稳健性和准确性。据我们所知,这是首次在小鼠大脑中进行如此精确和稳健的 FMT 分布重建以跟踪干细胞。这促进了 FMT 在实际小鼠脑损伤模型中定位干细胞和分布重建中的应用。