Roman C, Guevara M, Duclap D, Lebois A, Poupon C, Mangin J-F, Guevara P
Annu Int Conf IEEE Eng Med Biol Soc. 2016 Aug;2016:5545-5549. doi: 10.1109/EMBC.2016.7591983.
This paper is focused on the study of short brain association fibers. We present an automatic method to identify short bundles of the superficial white matter based on inter-subject hierarchical clustering. Our method finds clusters of similar fibers, belonging to the different subjects, according to a distance measure between fibers. First, the algorithm obtains representative bundles and subsequently we perform an automatic labeling based on the anatomy, of the most stable connections. The analysis was applied to two independent groups of 37 subjects. Results between the two groups were compared, in order to keep reproducible connections for the atlas creation. The method was applied using linear and non-linear registration, where the non-linear registration showed significantly better results. A final atlas with 35 bundles in the left hemisphere and 27 in the right hemisphere from the whole brain was obtained. Finally results were validated using the atlas to segment 26 new subjects from another HARDI database.
本文聚焦于短脑关联纤维的研究。我们提出了一种基于个体间层次聚类的自动方法来识别浅表白质的短束。我们的方法根据纤维之间的距离度量,找到属于不同个体的相似纤维簇。首先,该算法获得代表性束,随后我们基于最稳定连接的解剖结构进行自动标记。该分析应用于两组各37名受试者的独立样本。比较两组结果,以确保图谱创建的连接具有可重复性。该方法使用线性和非线性配准,其中非线性配准显示出显著更好的结果。最终获得了一个全脑图谱,左半球有35束,右半球有27束。最后,使用该图谱对来自另一个高分辨率扩散成像(HARDI)数据库的26名新受试者进行分割,以验证结果。