Jian Bing, Vemuri Baba C, Ozarslan Evren, Carney Paul R, Mareci Thomas H
Department of Computer and Information Science and Engineering, University of Florida, P.O. Box 116120, Gainesville, FL 32611, USA.
Neuroimage. 2007 Aug 1;37(1):164-76. doi: 10.1016/j.neuroimage.2007.03.074. Epub 2007 May 3.
Diffusion MRI is a non-invasive imaging technique that allows the measurement of water molecule diffusion through tissue in vivo. The directional features of water diffusion allow one to infer the connectivity patterns prevalent in tissue and possibly track changes in this connectivity over time for various clinical applications. In this paper, we present a novel statistical model for diffusion-weighted MR signal attenuation which postulates that the water molecule diffusion can be characterized by a continuous mixture of diffusion tensors. An interesting observation is that this continuous mixture and the MR signal attenuation are related through the Laplace transform of a probability distribution over symmetric positive definite matrices. We then show that when the mixing distribution is a Wishart distribution, the resulting closed form of the Laplace transform leads to a Rigaut-type asymptotic fractal expression, which has been phenomenologically used in the past to explain the MR signal decay but never with a rigorous mathematical justification until now. Our model not only includes the traditional diffusion tensor model as a special instance in the limiting case, but also can be adjusted to describe complex tissue structure involving multiple fiber populations. Using this new model in conjunction with a spherical deconvolution approach, we present an efficient scheme for estimating the water molecule displacement probability functions on a voxel-by-voxel basis. Experimental results on both simulations and real data are presented to demonstrate the robustness and accuracy of the proposed algorithms.
扩散磁共振成像(Diffusion MRI)是一种非侵入性成像技术,可在体内测量水分子在组织中的扩散情况。水扩散的方向性特征使人们能够推断组织中普遍存在的连接模式,并可能跟踪这种连接随时间的变化,以用于各种临床应用。在本文中,我们提出了一种用于扩散加权磁共振信号衰减的新型统计模型,该模型假设水分子扩散可以用扩散张量的连续混合来表征。一个有趣的发现是,这种连续混合与磁共振信号衰减通过对称正定矩阵上概率分布的拉普拉斯变换相关。然后我们表明,当混合分布是威沙特分布时,所得拉普拉斯变换的封闭形式会导致一个里高特型渐近分形表达式,过去曾从现象学角度用它来解释磁共振信号衰减,但直到现在才给出严格的数学证明。我们的模型不仅在极限情况下将传统扩散张量模型作为一个特殊实例包含在内,而且还可以进行调整以描述涉及多个纤维群的复杂组织结构。结合球面反卷积方法使用这个新模型,我们提出了一种在逐个体素基础上估计水分子位移概率函数的有效方案。给出了模拟数据和真实数据的实验结果,以证明所提算法的稳健性和准确性。