IEEE Trans Neural Syst Rehabil Eng. 2024;32:548-558. doi: 10.1109/TNSRE.2024.3357059. Epub 2024 Jan 29.
Predicting individual behavior from brain imaging data using machine learning is a rapidly growing field in neuroscience. Functional connectivity (FC), which captures interactions between different brain regions, contains valuable information about the organization of the brain and is considered a crucial feature for modeling human behavior. Graph convolutional networks (GCN) have proven to be a powerful tool for extracting graph structure features and have shown promising results in various FC-based classification tasks, such as disease classification and prognosis prediction. Despite this success, few behavior prediction models currently exist based on GCN, and their performance is not satisfactory. To address this gap, a new model called the Multi-Scale FC-based Multi-Order GCN (MSFC-MO-GCN) was proposed in this paper. The model considers the hierarchical structure of the brain system and utilizes FCs inferred from multiple spatial scales as input to comprehensively characterize individual brain organization. To enhance the feature learning ability of GCN, a multi-order graph convolutional layer is incorporated, which uses multi-order neighbors to guide message passing and learns high-order graph information of nodal connections. Additionally, an inter-subject contrast constraint is designed to control the potential information redundancy of FCs among different spatial scales during the feature learning process. Experimental evaluation were conducted on the publicly available dataset from human connectome project. A total of 805 healthy subjects were included and 5 representative behavior metrics were used. The experimental results show that our proposed method outperforms the existing behavior prediction models in all behavior prediction tasks.
使用机器学习从脑成像数据中预测个体行为是神经科学中一个快速发展的领域。功能连接(FC)捕捉了不同大脑区域之间的相互作用,包含了有关大脑组织的有价值信息,被认为是建模人类行为的关键特征。图卷积网络(GCN)已被证明是提取图结构特征的有力工具,并在各种基于 FC 的分类任务中取得了有希望的结果,例如疾病分类和预后预测。尽管取得了这些成功,但目前基于 GCN 的行为预测模型很少,并且它们的性能并不令人满意。为了解决这一差距,本文提出了一种名为基于多尺度 FC 的多阶 GCN(MSFC-MO-GCN)的新模型。该模型考虑了大脑系统的层次结构,并利用从多个空间尺度推断出的 FC 作为输入,全面描述个体大脑组织。为了增强 GCN 的特征学习能力,引入了多阶图卷积层,该层使用多阶邻居来指导消息传递,并学习节点连接的高阶图信息。此外,设计了一种跨主体对比约束,以在特征学习过程中控制不同空间尺度之间 FC 的潜在信息冗余。在来自人类连接组计划的公开数据集上进行了实验评估。共纳入 805 名健康受试者,并使用了 5 种代表性行为指标。实验结果表明,我们提出的方法在所有行为预测任务中均优于现有的行为预测模型。