Wei Shaolong, Gao Zhen, Yao Hongcheng, Qi Xiaoyu, Wang Mingliang, Huang Jiashuang
School of Artificial Intelligence and Computer Science, Nantong University, Nantong, China.
Affiliated Hospital 2 of Nantong University, Nantong, China.
Sci Rep. 2025 Mar 12;15(1):8524. doi: 10.1038/s41598-025-92316-x.
Convergent evidence has suggested that the disruption of either structural connectivity (SC) or functional connectivity (FC) in the brain can lead to various neuropsychiatric disorders. Since changes in SC-FC coupling may be more sensitive than a single modality to detect subtle brain connectivity abnormalities, a few learning-based methods have been proposed to explore the relationship between SC and FC. However, these existing methods still fail to explain the relationship between altered SC-FC coupling and brain disorders. Therefore, in this paper, we explore three types of tree-based ensemble models (i.e., Decision Tree, Random Forest, and Adaptive Boosting) toward counterfactual explanations for SC-FC coupling. Specifically, we first construct SC and FC matrices from preprocessed diffusion-weighted DTI and resting-state functional fMRI data. Then, we quantify the SC-FC coupling strength of each region and convert it into feature vectors. Subsequently, we select SC-FC coupling features that can reflect disease-related information and trained three tree-based models to analyze the predictive role of these coupling features for diseases. Finally, we design a tree ensemble counterfactual explanation model to generate a set of counterfactual examples for patients, thereby assisting the diagnosis of brain diseases by fine-tuning the patient's abnormal SC-FC coupling feature vector. Experimental results on two independent datasets (i.e., epilepsy and schizophrenia) validate the effectiveness of the proposed method. The identified discriminative brain regions and generated counterfactual examples provide new insights for brain disease analysis.
越来越多的证据表明,大脑中结构连接性(SC)或功能连接性(FC)的破坏会导致各种神经精神疾病。由于SC-FC耦合的变化可能比单一模态更敏感,能够检测到细微的大脑连接异常,因此已经提出了一些基于学习的方法来探索SC和FC之间的关系。然而,这些现有方法仍然无法解释改变的SC-FC耦合与脑部疾病之间的关系。因此,在本文中,我们探索了三种基于树的集成模型(即决策树、随机森林和自适应提升),以对SC-FC耦合进行反事实解释。具体来说,我们首先从预处理的扩散加权DTI和静息态功能fMRI数据中构建SC和FC矩阵。然后,我们量化每个区域的SC-FC耦合强度,并将其转换为特征向量。随后,我们选择能够反映疾病相关信息的SC-FC耦合特征,并训练三个基于树的模型来分析这些耦合特征对疾病的预测作用。最后,我们设计了一个树集成反事实解释模型,为患者生成一组反事实示例,从而通过微调患者异常的SC-FC耦合特征向量来辅助脑部疾病的诊断。在两个独立数据集(即癫痫和精神分裂症)上的实验结果验证了所提方法的有效性。识别出的具有判别力的脑区和生成的反事实示例为脑部疾病分析提供了新的见解。