Department of Radiology and BRIC, University of North Carolina at Chapel Hill, Chapel Hill, North Carolina, USA.
Departments of Psychiatry and Behavioral Sciences, Duke University Medical Center, Durham, North Carolina, USA.
Hum Brain Mapp. 2023 Aug 1;44(11):4256-4271. doi: 10.1002/hbm.26343. Epub 2023 May 25.
Several studies employ multi-site rs-fMRI data for major depressive disorder (MDD) identification, with a specific site as the to-be-analyzed target domain and other site(s) as the source domain. But they usually suffer from significant inter-site heterogeneity caused by the use of different scanners and/or scanning protocols and fail to build generalizable models that can well adapt to multiple target domains. In this article, we propose a dual-expert fMRI harmonization (DFH) framework for automated MDD diagnosis. Our DFH is designed to simultaneously exploit data from a single labeled source domain/site and two unlabeled target domains for mitigating data distribution differences across domains. Specifically, the DFH consists of a domain-generic student model and two domain-specific teacher/expert models that are jointly trained to perform knowledge distillation through a deep collaborative learning module. A student model with strong generalizability is finally derived, which can be well adapted to unseen target domains and analysis of other brain diseases. To the best of our knowledge, this is among the first attempts to investigate multi-target fMRI harmonization for MDD diagnosis. Comprehensive experiments on 836 subjects with rs-fMRI data from 3 different sites show the superiority of our method. The discriminative brain functional connectivities identified by our method could be regarded as potential biomarkers for fMRI-related MDD diagnosis.
多项研究采用多站点 rs-fMRI 数据来识别重度抑郁症(MDD),以特定站点作为待分析的目标域,其他站点作为源域。但是,它们通常受到不同扫描仪和/或扫描协议使用导致的站点间显著异质性的影响,无法构建能够很好地适应多个目标域的可推广模型。在本文中,我们提出了一种用于自动 MDD 诊断的双专家 fMRI 协调(DFH)框架。我们的 DFH 旨在同时利用来自单个标记源域/站点和两个未标记目标域的数据,以减轻跨域的数据分布差异。具体来说,DFH 由一个域通用的学生模型和两个域特定的教师/专家模型组成,它们通过深度协作学习模块联合进行知识蒸馏训练。最终得到一个具有很强泛化能力的学生模型,可以很好地适应未见过的目标域和其他脑部疾病的分析。据我们所知,这是首次尝试研究用于 MDD 诊断的多目标 fMRI 协调。在来自 3 个不同站点的 rs-fMRI 数据上对 836 名受试者进行的综合实验表明了我们方法的优越性。我们方法识别出的具有区分性的脑功能连接可以被视为 fMRI 相关 MDD 诊断的潜在生物标志物。