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利用动态贝叶斯 DAG 学习发现大脑的有效连接组。

Discovering the effective connectome of the brain with dynamic Bayesian DAG learning.

机构信息

School of Electrical and Computer Engineering, University of Tehran, College of Engineering, Tehran, Iran.

School of Electrical and Computer Engineering, University of Tehran, College of Engineering, Tehran, Iran.

出版信息

Neuroimage. 2024 Aug 15;297:120684. doi: 10.1016/j.neuroimage.2024.120684. Epub 2024 Jun 14.

Abstract

Understanding the complex mechanisms of the brain can be unraveled by extracting the Dynamic Effective Connectome (DEC). Recently, score-based Directed Acyclic Graph (DAG) discovery methods have shown significant improvements in extracting the causal structure and inferring effective connectivity. However, learning DEC through these methods still faces two main challenges: one with the fundamental impotence of high-dimensional dynamic DAG discovery methods and the other with the low quality of fMRI data. In this paper, we introduce Bayesian Dynamic DAG learning with M-matrices Acyclicity characterization (BDyMA) method to address the challenges in discovering DEC. The presented dynamic DAG enables us to discover direct feedback loop edges as well. Leveraging an unconstrained framework in the BDyMA method leads to more accurate results in detecting high-dimensional networks, achieving sparser outcomes, making it particularly suitable for extracting DEC. Additionally, the score function of the BDyMA method allows the incorporation of prior knowledge into the process of dynamic causal discovery which further enhances the accuracy of results. Comprehensive simulations on synthetic data and experiments on Human Connectome Project (HCP) data demonstrate that our method can handle both of the two main challenges, yielding more accurate and reliable DEC compared to state-of-the-art and traditional methods. Additionally, we investigate the trustworthiness of DTI data as prior knowledge for DEC discovery and show the improvements in DEC discovery when the DTI data is incorporated into the process.

摘要

理解大脑的复杂机制可以通过提取动态有效连接图(DEC)来实现。最近,基于得分的有向无环图(DAG)发现方法在提取因果结构和推断有效连接方面显示出了显著的改进。然而,通过这些方法学习 DEC 仍然面临两个主要挑战:一个是高维动态 DAG 发现方法的基本无效性,另一个是 fMRI 数据的低质量。在本文中,我们引入了基于 M 矩阵无圈性刻画的贝叶斯动态 DAG 学习(BDyMA)方法来解决 DEC 发现中的挑战。所提出的动态 DAG 使我们能够发现直接反馈环边缘。在 BDyMA 方法中利用无约束框架导致在检测高维网络时获得更准确的结果,实现更稀疏的结果,使其特别适合提取 DEC。此外,BDyMA 方法的得分函数允许将先验知识纳入动态因果发现过程中,从而进一步提高结果的准确性。对合成数据的综合仿真和对人类连接组计划(HCP)数据的实验表明,我们的方法可以处理这两个主要挑战,与最先进的和传统的方法相比,产生更准确和可靠的 DEC。此外,我们研究了 DTI 数据作为 DEC 发现先验知识的可信度,并展示了当将 DTI 数据纳入过程时,DEC 发现的改进。

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