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Resting state fMRI-guided fiber clustering: Methods and applications

机译:静止状态fMRI引导的纤维簇:方法和应用

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Clustering streamline fibers derived from diffusion tensor imaging (DTI) data into functionally meaningful bundles with group-wise correspondences across individuals and populations has been a fundamental step for tract-based analysis of white matter integrity and brain connectivity modeling. Many approaches of fiber clustering reported in the literature so far used geometric and/or anatomic information derived from structural MRI and/or DTI data only. In this paper, we take a novel, alternative multimodal approach of combining resting state fMRI (rsfMRI) and DTI data, and propose to use functional coherence as the criterion to guide the clustering of fibers derived from DTI tractography. Specifically, the functional coherence between two streamline fibers is defined as their rsfMRI time series' correlations, and the affinity propagation (AP) algorithm is used to cluster DTI-derived streamline fibers into bundles. Currently, we use the corpus callosum (CC) fibers, which are the largest fiber bundle in the brain, as a test-bed for methodology development and validation. Our experimental results have shown that the proposed rsfMRI-guided fiber clustering method can achieve functionally homogeneous bundles that are reasonably consistent across individuals and populations, suggesting the close relationship between structural connectivity and brain function. The clustered fiber bundles were evaluated and validated via the benchmark data provided by task-based fMRI, via reproducibility studies, and via comparison with other methods. Finally, we have applied the proposed framework on a multimodal rsfMRI/DTI dataset of schizophrenia (SZ) and reproducible results were obtained.
机译:将来自扩散张量成像(DTI)数据的流线型纤维聚集成功能有意义的束,并在个体和人群之间进行逐组对应,这已成为基于管道的白质完整性和大脑连接性建模分析的基本步骤。迄今为止,文献中报道的许多纤维聚类方法仅使用了从结构MRI和/或DTI数据得出的几何和/或解剖学信息。在本文中,我们采用一种新颖的,可替代的多模态方法,将静息状态功能磁共振成像(rsfMRI)与DTI数据相结合,并提出以功能相干性为准则来指导DTI纤维束成像所衍生的纤维的聚类。具体来说,将两条流线光纤之间的功能相干定义为它们的rsfMRI时间序列的相关性,并使用亲和传播(AP)算法将DTI衍生的流线光纤聚集成束。当前,我们使用the体(CC)纤维(是大脑中最大的纤维束)作为方法开发和验证的试验台。我们的实验结果表明,所提出的rsfMRI引导的纤维聚类方法可以实现功能均匀的束,这些束在个体和人群之间是合理一致的,表明结构连接性和脑功能之间存在密切的关系。通过基于任务的功能磁共振成像提供的基准数据,可重复性研究以及与其他方法的比较,对成簇的纤维束进行了评估和验证。最后,我们将所提出的框架应用于精神分裂症(SZ)的多模式rsfMRI / DTI数据集,并获得了可重复的结果。

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