Department of Radiology and Biomedical Research Imaging Center (BRIC), University of North Carolina, Chapel Hill, NC 27599, USA.
IEEE Trans Med Imaging. 2011 Oct;30(10):1829-40. doi: 10.1109/TMI.2011.2154385. Epub 2011 May 12.
White matter fiber tractography plays a key role in the in vivo understanding of brain circuitry. For tract-based comparison of a population of images, a common approach is to first generate an atlas by averaging, after spatial normalization, all images in the population, and then perform tractography using the constructed atlas. The reconstructed fiber trajectories form a common geometry onto which diffusion properties of each individual subject can be projected based on the corresponding locations in the subject native space. However, in the case of high angular resolution diffusion imaging (HARDI), where modeling fiber crossings is an important goal, the above-mentioned averaging method for generating an atlas results in significant error in the estimation of local fiber orientations and causes a major loss of fiber crossings. These limitatitons have significant impact on the accuracy of the reconstructed fiber trajectories and jeopardize subsequent tract-based analysis. As a remedy, we present in this paper a more effective means of performing tractography at a population level. Our method entails determining a bipolar Watson distribution at each voxel location based on information given by all images in the population, giving us not only the local principal orientations of the fiber pathways, but also confidence levels of how reliable these orientations are across subjects. The distribution field is then fed as an input to a probabilistic tractography framework for reconstructing a set of fiber trajectories that are consistent across all images in the population. We observe that the proposed method, called PopTract, results in significantly better preservation of fiber crossings, and hence yields better trajectory reconstruction in the atlas space.
白质纤维束追踪在活体大脑回路理解中起着关键作用。对于基于束的人群图像比较,一种常见的方法是首先通过对人群中的所有图像进行平均化,在空间归一化后生成图谱,然后使用构建的图谱进行纤维追踪。重建的纤维轨迹形成一个共同的几何形状,每个个体的扩散属性可以根据在主体固有空间中的对应位置投影到该共同几何形状上。然而,在高角度分辨率扩散成像(HARDI)的情况下,建模纤维交叉是一个重要目标,上述生成图谱的平均化方法会导致局部纤维方向的估计出现显著误差,并导致纤维交叉的大量丢失。这些限制对重建纤维轨迹的准确性有重大影响,并危及随后的基于束的分析。作为一种补救措施,我们在本文中提出了一种在人群水平上进行纤维追踪的更有效方法。我们的方法需要基于人群中所有图像的信息,在每个体素位置确定双极 Watson 分布,这不仅为我们提供了纤维通路的局部主要方向,还提供了这些方向在不同个体之间的可靠性置信度。然后,将分布场作为输入提供给概率纤维追踪框架,以重建一组在人群中的所有图像中都一致的纤维轨迹。我们观察到,该方法名为 PopTract,可显著更好地保留纤维交叉,从而在图谱空间中产生更好的轨迹重建。