通过基于扩散的图谱对比学习构建治疗脑部疾病的新型脑网络范例

Yongcheng Zong, Qiankun Zuo, Michael Kwok-Po Ng, Baiying Lei, Shuqiang Wang
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引用次数: 0

摘要

脑网络分析在研究大脑功能和探索疾病机理方面发挥着越来越重要的作用。然而,现有的脑网络构建工具存在一些局限性,包括对经验用户的依赖性、重复实验的一致性较弱以及过程耗时等。在这项工作中,设计了一种基于扩散的脑网络管道 DGCL,用于端到端的脑网络构建。首先,脑区感知模块(BRAM)通过扩散过程精确确定脑区的空间位置,避免了主观参数选择。随后,DGCL 采用图对比学习,通过消除与疾病无关的冗余连接的个体差异来优化脑连接,从而提高同组内脑网络的一致性。最后,节点图对比损失和分类损失共同约束模型的学习过程,得到重建的大脑网络,然后用于分析重要的大脑连接。在ADNI和ABIDE两个数据集上的验证表明,DGCL在预测疾病发展阶段方面超越了传统方法和其他深度学习模型。值得注意的是,所提出的模型提高了大脑网络构建的效率和泛化能力。总之,所提出的 DGCL 可以作为一种通用的脑网络构建方案,通过生成范式有效识别重要的脑连接,有望为神经科学研究提供疾病可解释性支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Brain Network Construction Paradigm for Brain Disorder Via Diffusion-Based Graph Contrastive Learning.

Brain network analysis plays an increasingly important role in studying brain function and the exploring of disease mechanisms. However, existing brain network construction tools have some limitations, including dependency on empirical users, weak consistency in repeated experiments and time-consuming processes. In this work, a diffusion-based brain network pipeline, DGCL is designed for end-to-end construction of brain networks. Initially, the brain region-aware module (BRAM) precisely determines the spatial locations of brain regions by the diffusion process, avoiding subjective parameter selection. Subsequently, DGCL employs graph contrastive learning to optimize brain connections by eliminating individual differences in redundant connections unrelated to diseases, thereby enhancing the consistency of brain networks within the same group. Finally, the node-graph contrastive loss and classification loss jointly constrain the learning process of the model to obtain the reconstructed brain network, which is then used to analyze important brain connections. Validation on two datasets, ADNI and ABIDE, demonstrates that DGCL surpasses traditional methods and other deep learning models in predicting disease development stages. Significantly, the proposed model improves the efficiency and generalization of brain network construction. In summary, the proposed DGCL can be served as a universal brain network construction scheme, which can effectively identify important brain connections through generative paradigms and has the potential to provide disease interpretability support for neuroscience research.

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