Zheng Kaizhong, Yu Shujian, Li Baojuan, Jenssen Robert, Chen Badong
IEEE Trans Neural Netw Learn Syst. 2024 Sep 13;PP. doi: 10.1109/TNNLS.2024.3449419.
Developing new diagnostic models based on the underlying biological mechanisms rather than subjective symptoms for psychiatric disorders is an emerging consensus. Recently, machine learning (ML)-based classifiers using functional connectivity (FC) for psychiatric disorders and healthy controls (HCs) are developed to identify brain markers. However, existing ML-based diagnostic models are prone to overfitting (due to insufficient training samples) and perform poorly in new test environments. Furthermore, it is difficult to obtain explainable and reliable brain biomarkers elucidating the underlying diagnostic decisions. These issues hinder their possible clinical applications. In this work, we propose BrainIB, a new graph neural network (GNN) framework to analyze functional magnetic resonance images (fMRI), by leveraging the famed information bottleneck (IB) principle. BrainIB is able to identify the most informative edges in the brain (i.e., subgraph) and generalizes well to unseen data. We evaluate the performance of BrainIB against three baselines and seven state-of-the-art (SOTA) brain network classification methods on three psychiatric datasets and observe that our BrainIB always achieves the highest diagnosis accuracy. It also discovers the subgraph biomarkers that are consistent with clinical and neuroimaging findings. The source code and implementation details of BrainIB are freely available at the GitHub repository (https://github.com/SJYuCNEL/brain-and-Information-Bottleneck).
基于潜在生物学机制而非主观症状来开发针对精神疾病的新诊断模型已成为一种新的共识。最近,基于机器学习(ML)的分类器利用功能连接(FC)来区分精神疾病患者和健康对照(HC),以识别脑标记物。然而,现有的基于ML的诊断模型容易出现过拟合(由于训练样本不足),并且在新的测试环境中表现不佳。此外,很难获得能够解释潜在诊断决策的可解释且可靠的脑生物标志物。这些问题阻碍了它们在临床上的应用。在这项工作中,我们提出了BrainIB,这是一种新的图神经网络(GNN)框架,通过利用著名的信息瓶颈(IB)原理来分析功能磁共振成像(fMRI)。BrainIB能够识别大脑中最具信息性的边(即子图),并能很好地推广到未见数据。我们在三个精神疾病数据集上,将BrainIB的性能与三个基线和七种最新的(SOTA)脑网络分类方法进行了评估,发现我们的BrainIB始终能达到最高的诊断准确率。它还发现了与临床和神经影像学发现一致的子图表征。BrainIB的源代码和实现细节可在GitHub仓库(https://github.com/SJYuCNEL/brain-and-Information-Bottleneck)上免费获取。