IEEE J Biomed Health Inform. 2022 Jun;26(6):2714-2725. doi: 10.1109/JBHI.2022.3159031. Epub 2022 Jun 3.
Brain disease diagnosis is a new hotspot in the cross research of artificial intelligence and neuroscience. Quantitative analysis of functional magnetic resonance imaging (fMRI) data can provide valuable biomarkers that contributes to clinical diagnosis, and the analysis of functional connectivity (FC) has become the primary method. However, previous studies mainly focus on brain disease classification based on the low-order FC features, ignoring the potential role of high-order functional relationships among brain regions. To solve this problem, this study proposed a novel multi-level FC fusion classification framework (MFC) for brain disease diagnosis. We firstly designed a deep neural network (DNN) model to extract and learn abstract feature representations for the constructed low-order and high-order FC patterns. Both unsupervised and supervised learning steps were performed during the DNN model training, and the prototype learning was introduced in the supervised fine-tuning to improve the intra-class compactness and inter-class separability of the feature representation. Then, we combined the learned multi-level abstract FC features and trained an ensemble classifier with a hierarchical stacking learning strategy for the brain disease classification. Systematic experiments were conducted on two real large-scale fMRI datasets. Results showed that the proposed MFC model obtained robust classification performance for different preprocessing pipelines, different brain parcellations, and different cross-validation schemes, suggesting the effectiveness and generality of the proposed MFC model. Overall, this study provides a promising solution to combine the informative low-order and high-order FC patterns to further promote the classification of brain diseases.
脑疾病诊断是人工智能和神经科学交叉研究的新热点。功能磁共振成像(fMRI)数据的定量分析可以提供有价值的生物标志物,有助于临床诊断,而功能连接(FC)的分析已成为主要方法。然而,以前的研究主要集中在基于低阶 FC 特征的脑疾病分类上,忽略了脑区之间潜在的高阶功能关系的作用。为了解决这个问题,本研究提出了一种新的用于脑疾病诊断的多水平 FC 融合分类框架(MFC)。我们首先设计了一个深度神经网络(DNN)模型,用于提取和学习所构建的低阶和高阶 FC 模式的抽象特征表示。在 DNN 模型训练过程中同时进行无监督和监督学习步骤,并在监督微调中引入原型学习,以提高特征表示的类内紧致性和类间可分离性。然后,我们结合学习到的多层次抽象 FC 特征,并采用分层堆叠学习策略训练集成分类器,以进行脑疾病分类。在两个真实的大规模 fMRI 数据集上进行了系统实验。结果表明,所提出的 MFC 模型在不同的预处理流水线、不同的脑区划分和不同的交叉验证方案下都能获得稳健的分类性能,这表明了所提出的 MFC 模型的有效性和通用性。总的来说,本研究为结合有信息量的低阶和高阶 FC 模式提供了一种有前途的解决方案,以进一步促进脑疾病的分类。