IEEE Trans Med Imaging. 2024 Apr;43(4):1400-1411. doi: 10.1109/TMI.2023.3337362. Epub 2024 Apr 3.
Deep learning models based on resting-state functional magnetic resonance imaging (rs-fMRI) have been widely used to diagnose brain diseases, particularly autism spectrum disorder (ASD). Existing studies have leveraged the functional connectivity (FC) of rs-fMRI, achieving notable classification performance. However, they have significant limitations, including the lack of adequate information while using linear low-order FC as inputs to the model, not considering individual characteristics (i.e., different symptoms or varying stages of severity) among patients with ASD, and the non-explainability of the decision process. To cover these limitations, we propose a novel explainability-guided region of interest (ROI) selection (EAG-RS) framework that identifies non-linear high-order functional associations among brain regions by leveraging an explainable artificial intelligence technique and selects class-discriminative regions for brain disease identification. The proposed framework includes three steps: (i) inter-regional relation learning to estimate non-linear relations through random seed-based network masking, (ii) explainable connection-wise relevance score estimation to explore high-order relations between functional connections, and (iii) non-linear high-order FC-based diagnosis-informative ROI selection and classifier learning to identify ASD. We validated the effectiveness of our proposed method by conducting experiments using the Autism Brain Imaging Database Exchange (ABIDE) dataset, demonstrating that the proposed method outperforms other comparative methods in terms of various evaluation metrics. Furthermore, we qualitatively analyzed the selected ROIs and identified ASD subtypes linked to previous neuroscientific studies.
基于静息态功能磁共振成像(rs-fMRI)的深度学习模型已被广泛用于诊断脑部疾病,尤其是自闭症谱系障碍(ASD)。现有研究利用 rs-fMRI 的功能连接(FC),取得了显著的分类性能。然而,它们存在显著的局限性,包括在将线性低阶 FC 作为模型输入时缺乏足够的信息,不考虑 ASD 患者的个体特征(即不同的症状或严重程度的不同阶段),以及决策过程的不可解释性。为了弥补这些局限性,我们提出了一种新的基于可解释性引导的感兴趣区(ROI)选择(EAG-RS)框架,该框架通过利用可解释的人工智能技术来识别大脑区域之间的非线性高阶功能关联,并选择具有分类判别力的区域进行脑疾病识别。该框架包括三个步骤:(i)区域间关系学习,通过基于随机种子的网络掩蔽来估计非线性关系;(ii)可解释的连接相关得分估计,用于探索功能连接之间的高阶关系;(iii)基于非线性高阶 FC 的诊断信息 ROI 选择和分类器学习,用于识别 ASD。我们使用 Autism Brain Imaging Database Exchange (ABIDE)数据集进行实验,验证了我们提出的方法的有效性,结果表明,与其他比较方法相比,我们提出的方法在各种评估指标上都表现更好。此外,我们对所选的 ROI 进行了定性分析,并确定了与先前神经科学研究相关的 ASD 亚型。