Institute of Neuroscience and Medicine (INM-1, INM-2, INM-4), Research Centre Jülich, Germany.
Neuroimage. 2012 Jan 16;59(2):1338-47. doi: 10.1016/j.neuroimage.2011.08.030. Epub 2011 Aug 18.
Polarized light imaging (PLI) enables the visualization of fiber tracts with high spatial resolution in microtome sections of postmortem brains. Vectors of the fiber orientation defined by inclination and direction angles can directly be derived from the optical signals employed by PLI analysis. The polarization state of light propagating through a rotating polarimeter is varied in such a way that the detected signal of each spatial unit describes a sinusoidal signal. Noise, light scatter and filter inhomogeneities, however, interfere with the original sinusoidal PLI signals, which in turn have direct impact on the accuracy of subsequent fiber tracking. Recently we showed that the primary sinusoidal signals can effectively be restored after noise and artifact rejection utilizing independent component analysis (ICA). In particular, regions with weak intensities are greatly enhanced after ICA based artifact rejection and signal restoration. Here, we propose a user independent way of identifying the components of interest after decomposition; i.e., components that are related to gray and white matter. Depending on the size of the postmortem brain and the section thickness, the number of independent component maps can easily be in the range of a few ten thousand components for one brain. Therefore, we developed an automatic and, more importantly, user independent way of extracting the signal of interest. The automatic identification of gray and white matter components is based on the evaluation of the statistical properties of the so-called feature vectors of each individual component map, which, in the ideal case, shows a sinusoidal waveform. Our method enables large-scale analysis (i.e., the analysis of thousands of whole brain sections) of nerve fiber orientations in the human brain using polarized light imaging.
偏光成像(PLI)可实现对死后大脑切片中具有高空间分辨率的纤维束进行可视化。通过 PLI 分析所采用的光学信号,可以直接得出纤维方向定义的倾斜角和方向角的矢量。当光线穿过旋转偏光镜时,其偏振状态会发生变化,从而使得每个空间单元的检测信号都描述出一个正弦信号。然而,噪声、光散射和滤波器不均匀性会干扰原始的正弦 PLI 信号,从而直接影响后续纤维追踪的准确性。最近我们表明,利用独立成分分析(ICA)进行噪声和伪影去除后,可以有效地恢复原始的正弦信号。特别是,经过 ICA 去除伪影和信号恢复后,弱强度区域的信号得到了极大的增强。在这里,我们提出了一种用户独立的方法来识别分解后的感兴趣成分,即与灰质和白质相关的成分。根据死后大脑的大小和切片厚度,每个大脑的独立成分图的数量很容易达到数万张。因此,我们开发了一种自动的、更重要的是用户独立的方法来提取感兴趣的信号。灰质和白质成分的自动识别基于对每个单独成分图的所谓特征向量的统计特性的评估,在理想情况下,这些特征向量呈现正弦波形。我们的方法可用于使用偏光成像对人类大脑中的神经纤维方向进行大规模分析(即对数千个全脑切片进行分析)。