Kaden Enrico, Knösche Thomas R, Anwander Alfred
Max Planck Institute for Human Cognitive and Brain Sciences, Stephanstr. 1a, 04103 Leipzig, Germany.
Neuroimage. 2007 Aug 15;37(2):474-88. doi: 10.1016/j.neuroimage.2007.05.012. Epub 2007 May 18.
The human brain forms a complex neural network with a connectional architecture that is still far from being known in full detail, even at the macroscopic level. The advent of diffusion MR imaging has enabled the exploration of the structural properties of white matter in vivo. In this article we propose a new forward model that maps the microscopic geometry of nervous tissue onto the water diffusion process and further onto the measured MR signals. Our spherical deconvolution approach completely parameterizes the fiber orientation density by a finite mixture of Bingham distributions. In addition, we define the term anatomical connectivity, taking the underlying image modality into account. This neurophysiological metric may represent the proportion of the nerve fibers originating in the source area which intersect a given target region. The specified inverse problem is solved by Bayesian statistics. Posterior probability maps denote the probability that the connectivity value exceeds a chosen threshold, conditional upon the noisy observations. These maps allow us to draw inferences about the structural organization of the cerebral cortex. Moreover, we will demonstrate the proposed approach with diffusion-weighted data sets featuring high angular resolution.
人类大脑形成了一个复杂的神经网络,其连接架构即使在宏观层面上也远未被完全了解。扩散磁共振成像的出现使得在活体中探索白质的结构特性成为可能。在本文中,我们提出了一种新的正向模型,该模型将神经组织的微观几何结构映射到水扩散过程,并进一步映射到测量的磁共振信号上。我们的球形去卷积方法通过有限混合的宾汉分布完全参数化纤维方向密度。此外,我们考虑到基础图像模态来定义解剖连接性这一术语。这种神经生理学指标可能代表起源于源区域并与给定目标区域相交的神经纤维的比例。通过贝叶斯统计解决指定的逆问题。后验概率图表示在有噪声观测条件下连接性值超过选定阈值的概率。这些图使我们能够对大脑皮层的结构组织进行推断。此外,我们将用具有高角分辨率的扩散加权数据集来演示所提出的方法。