M₂DC: A Meta-Learning Framework for Generalizable Diagnostic Classification of Major Depressive Disorder

Jianpo Su;Bo Wang;Zhipeng Fan;Yifan Zhang;Ling-Li Zeng;Hui Shen;Dewen Hu
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Abstract

Psychiatric diseases are bringing heavy burdens for both individual health and social stability. The accurate and timely diagnosis of the diseases is essential for effective treatment and intervention. Thanks to the rapid development of brain imaging technology and machine learning algorithms, diagnostic classification of psychiatric diseases can be achieved based on brain images. However, due to divergences in scanning machines or parameters, the generalization capability of diagnostic classification models has always been an issue. We propose Meta-learning with Meta batch normalization and Distance Constraint (M2DC) for training diagnostic classification models. The framework can simulate the train-test domain shift situation and promote intra-class cohesion, as well as inter-class separation, which can lead to clearer classification margins and more generalizable models. To better encode dynamic brain graphs, we propose a concatenated spatiotemporal attention graph isomorphism network (CSTAGIN) as the backbone. The network is trained for the diagnostic classification of major depressive disorder (MDD) based on multi-site brain graphs. Extensive experiments on brain images from over 3261 subjects show that models trained by M2DC achieve the best performance on cross-site diagnostic classification tasks compared to various contemporary domain generalization methods and SOTA studies. The proposed M2DC is by far the first framework for multi-source closed-set domain generalizable training of diagnostic classification models for MDD and the trained models can be applied to reliable auxiliary diagnosis on novel data.
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M2DC:重度抑郁障碍通用诊断分类的元学习框架
精神疾病给个人健康和社会稳定带来了沉重的负担。准确、及时的诊断对有效的治疗和干预至关重要。由于脑成像技术和机器学习算法的快速发展,基于脑图像可以实现精神疾病的诊断分类。然而,由于扫描机器或参数的差异,诊断分类模型的泛化能力一直是一个问题。我们提出了使用元批归一化和距离约束(M2DC)的元学习来训练诊断分类模型。该框架可以模拟训练-测试领域转移的情况,促进类内聚和类间分离,从而使分类边界更清晰,模型更具泛化性。为了更好地编码动态脑图,我们提出了一个串联的时空注意图同构网络(CSTAGIN)作为主干。该网络被训练用于基于多位点脑图的重度抑郁症(MDD)诊断分类。对3261个被试的脑图像进行的大量实验表明,与当前各种领域泛化方法和SOTA研究相比,M2DC训练的模型在跨站点诊断分类任务上取得了最好的表现。本文提出的M2DC是迄今为止第一个多源闭集域广义训练MDD诊断分类模型的框架,训练后的模型可用于对新数据进行可靠的辅助诊断。
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