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Supra-Threshold Fiber Cluster Statistics for Data-Driven Whole Brain Tractography Analysis

机译:超阈值纤维簇统计用于数据驱动的全脑行迹分析

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This work presents a supra-threshold fiber cluster (STFC) analysis that leverages the whole brain fiber geometry to enhance statistical group difference analysis. The proposed method consists of (1) a study-specific data-driven tractography parcellation to obtain white matter (WM) tract parcels according to the WM anatomy and (2) a nonparametric permutation-based STFC test to identify significant differences between study populations (e.g. disease and healthy). The basic idea of our method is that a WM parcel's neighborhood (parcels with similar WM anatomy) can support the parcel's statistical significance when correcting for multiple comparisons. The method is demonstrated by application to a multi-shell diffusion MRI dataset from 59 individuals, including 30 attention deficit hyperactivity disorder (ADHD) patients and 29 healthy controls (HCs). Evaluations are conducted using both synthetic and real data. The results indicate that our STFC method gives greater sensitivity in finding group differences in WM tract parcels compared to several traditional multiple comparison correction methods.
机译:这项工作提出了一个超阈值纤维簇(STFC)分析,该分析利用了整个大脑纤维的几何形状来增强统计组差异分析。拟议的方法包括(1)根据WM解剖结构的特定研究数据驱动的tractography分割,以获取白质(WM)道包裹;(2)基于非参数排列的STFC检验,以识别研究人群之间的显着差异(例如疾病和健康)。我们方法的基本思想是,在校正多个比较时,WM宗地的邻域(具有类似WM解剖结构的宗地)可以支持宗地的统计意义。该方法通过应用到来自59个个体的多壳体扩散MRI数据集而得到证实,其中包括30个注意力缺陷多动障碍(ADHD)患者和29个健康对照(HCs)。使用综合数据和真实数据进行评估。结果表明,与几种传统的多重比较校正方法相比,我们的STFC方法在发现WM地块中的群体差异方面具有更高的灵敏度。

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