Malcolm James G, Shenton Martha E, Rathi Yogesh
Psychiatry Neuroimaging Laboratory, Brigham and Women's Hospital, Harvard Medical School, Boston, MA, USA.
Med Image Comput Comput Assist Interv. 2009;12(Pt 1):894-902. doi: 10.1007/978-3-642-04268-3_110.
We describe a technique to simultaneously estimate a weighted, positive-definite multi-tensor fiber model and perform tractography. Existing techniques estimate the local fiber orientation at each voxel independently so there is no running knowledge of confidence in the estimated fiber model. We formulate fiber tracking as recursive estimation: at each step of tracing the fiber, the current estimate is guided by the previous. To do this we model the signal as a weighted mixture of Gaussian tensors and perform tractography within a filter framework. Starting from a seed point, each fiber is traced to its termination using an unscented Kalman filter to simultaneously fit the local model and propagate in the most consistent direction. Further, we modify the Kalman filter to enforce model constraints, i.e. positive eigenvalues and convex weights. Despite the presence of noise and uncertainty, this provides a causal estimate of the local structure at each point along the fiber. Synthetic experiments demonstrate that this approach significantly improves the angular resolution at crossings and branchings while consistently estimating the mixture weights. In vivo experiments confirm the ability to trace out fibers in areas known to contain such crossing and branching while providing inherent path regularization.
我们描述了一种同时估计加权正定多张量纤维模型并进行纤维束成像的技术。现有技术独立估计每个体素处的局部纤维方向,因此对估计的纤维模型没有连续的置信度认知。我们将纤维追踪公式化为递归估计:在追踪纤维的每一步,当前估计都以前一步为指导。为此,我们将信号建模为高斯张量的加权混合,并在滤波器框架内进行纤维束成像。从种子点开始,使用无迹卡尔曼滤波器将每根纤维追踪到其终点,以同时拟合局部模型并沿最一致的方向传播。此外,我们修改卡尔曼滤波器以强制执行模型约束,即正特征值和凸权重。尽管存在噪声和不确定性,但这为沿纤维的每个点处的局部结构提供了因果估计。合成实验表明,这种方法显著提高了交叉点和分支点处的角度分辨率,同时一致地估计混合权重。体内实验证实了在已知包含此类交叉和分支的区域追踪纤维的能力,同时提供固有的路径正则化。