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Knowledge-based Automated Reconstruction of Human Brain White Matter Tracts Using a Path-Finding Approach with Dynamic Programming

机译:基于路径的动态编程方法基于知识的人脑白质运动自动重建

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摘要

It has been shown that the anatomy of major white matter tracts can be delineated using diffusion tensor imaging (DTI) data. Tract reconstruction, however, often suffers from a large number of false-negative results when a simple line propagation algorithm is used. This limits the application of this technique to only the core of prominent white matter tracts. By employing probabilistic path-generation algorithms, connectivity between a larger number of anatomical regions can be studied, but an increase in the number of false-positive results is inevitable. One of the causes of the inaccuracy is the complex axonal anatomy within a voxel; however, high-angular resolution (HAR) methods have been proposed to ameliorate this limitation. However, HAR data are relatively rare due to the long scan times required and the low signal-to-noise ratio. In this study, we tested a probabilistic path-finding method in which two anatomical regions with known connectivity were pre-defined and a path that maximized agreement with the DTI data was searched. To increase the accuracy of the trajectories, knowledge-based anatomical constraints were applied. The reconstruction protocols were tested using DTI data from 19 normal subjects to examine test-retest reproducibility and cross-subject variability. Fifty-two tracts were found to be reliably reconstructed using this approach, which can be viewed on our website.
机译:已经显示,可以使用扩散张量成像(DTI)数据来描绘主要白质束的解剖结构。然而,当使用简单的线传播算法时,道重构常常遭受大量的假阴性结果。这将这种技术的应用仅限于突出的白质区域的核心。通过采用概率路径生成算法,可以研究大量解剖区域之间的连通性,但是不可避免地会增加假阳性结果的数量。错误的原因之一是体素内的复杂轴突解剖。但是,已经提出了高角度分辨率(HAR)方法来改善此限制。但是,由于所需的扫描时间长且信噪比低,因此HAR数据相对较少。在这项研究中,我们测试了一种概率寻路方法,其中预先定义了两个具有已知连通性的解剖区域,并搜索了与DTI数据最大程度吻合的路径。为了提高轨迹的准确性,应用了基于知识的解剖约束。使用来自19名正常受试者的DTI数据对重建方案进行了测试,以检验重测的重现性和跨学科变异性。发现使用这种方法可以可靠地重建52条道,可以在我们的网站上查看。

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