Arab Fahimeh, Ghassami AmirEmad, Jamalabadi Hamidreza, Peters Megan A K, Nozari Erfan
Department of Electrical and Computer Engineering, University of California, Riverside, CA, USA.
Department of Mathematics and Statistics, Boston University, MA, USA.
Netw Neurosci. 2025 Mar 20;9(1):392-420. doi: 10.1162/netn_a_00438. eCollection 2025.
Despite significant research, discovering causal relationships from fMRI remains a challenge. Popular methods such as Granger causality and dynamic causal modeling fall short in handling contemporaneous effects and latent common causes. Methods from causal structure learning literature can address these limitations but often scale poorly with network size and need acyclicity. In this study, we first provide a taxonomy of existing methods and compare their accuracy and efficiency on simulated fMRI from simple topologies. This analysis demonstrates a pressing need for more accurate and scalable methods, motivating the design of Causal discovery for Large-scale Low-resolution Time-series with Feedback (CaLLTiF). CaLLTiF is a constraint-based method that uses conditional independence between contemporaneous and lagged variables to extract causal relationships. On simulated fMRI from the macaque connectome, CaLLTiF achieves significantly higher accuracy and scalability than all tested alternatives. From resting-state human fMRI, CaLLTiF learns causal connectomes that are highly consistent across individuals, show clear top-down flow of causal effect from attention and default mode to sensorimotor networks, exhibit Euclidean distance dependence in causal interactions, and are highly dominated by contemporaneous effects. Overall, this work takes a major step in enhancing causal discovery from whole-brain fMRI and defines a new standard for future investigations.
尽管进行了大量研究,但从功能磁共振成像(fMRI)中发现因果关系仍然是一项挑战。诸如格兰杰因果关系和动态因果模型等常用方法在处理同期效应和潜在共同原因方面存在不足。因果结构学习文献中的方法可以解决这些局限性,但通常随着网络规模的增大而扩展性较差,并且需要无环性。在本研究中,我们首先对现有方法进行了分类,并在简单拓扑结构的模拟fMRI上比较了它们的准确性和效率。该分析表明迫切需要更准确且可扩展的方法,这促使我们设计了用于具有反馈的大规模低分辨率时间序列的因果发现方法(CaLLTiF)。CaLLTiF是一种基于约束的方法,它利用同期变量和滞后变量之间的条件独立性来提取因果关系。在猕猴连接组的模拟fMRI上,CaLLTiF比所有测试的替代方法都具有显著更高的准确性和可扩展性。从静息态人类fMRI中,CaLLTiF学习到的因果连接组在个体间高度一致,显示出从注意力和默认模式到感觉运动网络的明显自上而下的因果效应流,在因果相互作用中表现出欧几里得距离依赖性,并且高度受同期效应主导。总体而言,这项工作在增强从全脑fMRI中进行因果发现方面迈出了重要一步,并为未来的研究定义了一个新的标准。