Department of Biomedical Engineering, Tulane University, New Orleans, LA 70118, USA.
New York State Psychiatry Institute and Department of Psychiatry, Columbia University, New York, NY 10032, USA.
Neuroimage. 2022 Oct 15;260:119451. doi: 10.1016/j.neuroimage.2022.119451. Epub 2022 Jul 14.
Functional connectivity (FC) between brain region has been widely studied and linked with cognition and behavior of an individual. FC is usually defined as the correlation or partial correlation of fMRI blood oxygen level-dependent (BOLD) signals between two brain regions. Although FC has been effective to understand brain organization, it cannot reveal the direction of interactions. Many directed acyclic graph (DAG) based methods have been applied to study the directed interactions but their performance was limited by the small sample size while high dimensionality of the available data. By enforcing group regularization and utilizing samples from both case and control groups, we propose a joint DAG model to estimate the directed FC. We first demonstrate that the proposed model is efficient and accurate through a series of simulation studies. We then apply it to the case-control study of schizophrenia (SZ) with data collected from the MIND Clinical Imaging Consortium (MCIC). We have successfully identified decreased functional integration, disrupted hub structures and characteristic edges (CtEs) in SZ patients. Those findings have been confirmed by previous studies with some identified to be potential markers for SZ patients. A comparison of the results between the directed FC and undirected FC showed substantial differences in the selected features. In addition, we used the identified features based on directed FC for the classification of SZ patients and achieved better accuracy than using undirected FC or raw features, demonstrating the advantage of using directed FC for brain network analysis.
功能连接(FC)在大脑区域之间的已经被广泛研究,并与个体的认知和行为联系在一起。FC 通常被定义为两个大脑区域之间的 fMRI 血氧水平依赖(BOLD)信号的相关性或偏相关性。尽管 FC 已经有效地用于理解大脑组织,但它不能揭示相互作用的方向。许多基于有向无环图(DAG)的方法已被应用于研究有向相互作用,但它们的性能受到可用数据的高维性和小样本量的限制。通过强制实施组正则化并利用病例组和对照组的样本,我们提出了一个联合 DAG 模型来估计有向 FC。我们首先通过一系列模拟研究证明了所提出的模型的效率和准确性。然后,我们将其应用于 MIND 临床成像联合会(MCIC)收集的精神分裂症(SZ)病例对照研究。我们已经成功地识别出 SZ 患者的功能整合减少、枢纽结构破坏和特征边缘(CtE)。这些发现已经被以前的研究证实,其中一些被确定为 SZ 患者的潜在标志物。有向 FC 和无向 FC 的结果比较显示,在所选特征上存在显著差异。此外,我们使用基于有向 FC 的识别特征对 SZ 患者进行分类,并且比使用无向 FC 或原始特征的分类精度更高,这证明了使用有向 FC 进行脑网络分析的优势。