Connectome Analysis Unit, RIKEN Center for Brain Science, Saitama 351-0198, Japan
Graduate School of Human Health Sciences, Tokyo Metropolitan University, Arakawa-ku 116-0012, Japan.
J Neurosci. 2024 Nov 6;44(45):e0389242024. doi: 10.1523/JNEUROSCI.0389-24.2024.
Estimating the direction of functional connectivity (FC) can help further elucidate complex brain function. However, the estimation of directed FC at the voxel level in fMRI data, and evaluating its performance, has yet to be done. We therefore developed a novel directed seed-based connectivity analysis (SCA) method based on normalized pairwise Granger causality that provides greater detail and accuracy over ROI-based methods. We evaluated its performance against 145 cortical retrograde tracer injections in male and female marmosets that were used as ground truth cellular connectivity on a voxel-by-voxel basis. The receiver operating characteristic (ROC) curve was calculated for each injection, and we achieved area under the ROC curve of 0.95 for undirected and 0.942 for directed SCA in the case of high cell count threshold. This indicates that SCA can reliably estimate the strong cellular connections between voxels in fMRI data. We then used our directed SCA method to analyze the human default mode network (DMN) and found that dlPFC (dorsolateral prefrontal cortex) and temporal lobe were separated from other DMN regions, forming part of the language-network that works together with the core DMN regions. We also found that the cerebellum (Crus I-II) was strongly targeted by the posterior parietal cortices and dlPFC, but reciprocal connections were not observed. Thus, the cerebellum may not be a part of, but instead a target of, the DMN and language-network. Summarily, our novel directed SCA method, visualized with a new functional flat mapping technique, opens a new paradigm for whole-brain functional analysis.
估计功能连接(FC)的方向有助于进一步阐明复杂的大脑功能。然而,在 fMRI 数据中对体素水平的有向 FC 的估计及其性能评估尚未完成。因此,我们开发了一种新的基于归一化成对 Granger 因果关系的有向种子连接分析(SCA)方法,该方法比基于 ROI 的方法提供了更详细和准确的信息。我们将其性能与雄性和雌性狨猴的 145 个皮质逆行示踪剂注射进行了比较,这些示踪剂作为基于体素的细胞连接的ground truth。为每个注射计算了接收器操作特征(ROC)曲线,并且在高细胞计数阈值的情况下,我们获得了未定向 SCA 的 ROC 曲线下面积为 0.95,定向 SCA 的 ROC 曲线下面积为 0.942。这表明 SCA 可以可靠地估计 fMRI 数据中体素之间的强细胞连接。然后,我们使用我们的有向 SCA 方法来分析人类默认模式网络(DMN),发现 dlPFC(背外侧前额叶皮层)和颞叶与其他 DMN 区域分离,形成与核心 DMN 区域一起工作的语言网络的一部分。我们还发现小脑(Crus I-II)强烈地被顶叶后皮质和 dlPFC 靶向,但没有观察到反向连接。因此,小脑可能不是 DMN 和语言网络的一部分,而是其靶点。总之,我们的新型有向 SCA 方法,通过一种新的功能平面映射技术进行可视化,为全脑功能分析开辟了一个新的范例。