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首页> 外文期刊>Neuroinformatics >Information-Theoretic Approach for Automated White Matter Fiber Tracts Reconstruction
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Information-Theoretic Approach for Automated White Matter Fiber Tracts Reconstruction

机译:自动化白质纤维束重构的信息理论方法

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摘要

Fiber tracking is the most popular tech-nique for creating white matter connectivity maps from diffusion tensor imaging (DTI). This approach requires a seeding process which is challenging because it is not clear how and where the seeds have to be placed. On the other hand, to enhance the interpretation of fiber maps, segmentation and clustering techniques are applied to organize fibers into anatomical structures. In this paper, we propose a new approach to automat-ically obtain bundles of fibers grouped into anatomical regions. This method applies an information-theoretic split-and-merge algorithm that considers fractional anisotropy and fiber orientation information to auto-matically segment white matter into volumes of interest (VOIs) of similar FA and eigenvector orientation. For each VOI, a number of planes and seeds is automati-cally placed in order to create the fiber bundles. The proposed approach avoids the need for the user to define seeding or selection regions. The whole process requires less than a minute and minimal user interaction. The agreement between the automated and manual approaches has been measured for 10 tracts in a DTI brain atlas and found to be almost perfect (kappa > 0.8) and substantial (kappa > 0.6). This method has also been evaluated on real DTI data considering 5 tracts. Agreement was substantial (kappa > 0.6) in most of the cases.
机译:光纤跟踪是从扩散张量成像(DTI)创建白质连接图的最流行的技术。这种方法要求播种过程具有挑战性,因为不清楚如何以及在何处放置种子。另一方面,为了增强对纤维图的解释,采用了分段和聚类技术将纤维组织成解剖结构。在本文中,我们提出了一种新方法,可以自动获取分组为解剖区域的纤维束。这种方法应用了一种信息理论的拆分合并算法,该算法考虑了分数各向异性和纤维取向信息,可以自动将白质分割成具有相似FA和特征向量取向的感兴趣体积(VOI)。对于每种VOI,都会自动放置许多平面和种子,以创建纤维束。所提出的方法避免了用户定义种子或选择区域的需要。整个过程需要不到一分钟的时间,并且用户交互最少。在DTI脑图谱中已测量了10个区域的自动方法和手动方法之间的一致性,发现该协议几乎是完美的(kappa> 0.8)和足够的(kappa> 0.6)。还已经考虑了5个道的实际DTI数据对该方法进行了评估。在大多数情况下,一致性很高(kappa> 0.6)。

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