Frequency Feature Fusion Graph Network For Depression Diagnosis Via fNIRS
Journal:
arXiv
Published Date:
Apr 29, 2025
Abstract
Data-driven approaches for depression diagnosis have emerged as a significant
research focus in neuromedicine, driven by the development of relevant
datasets. Recently, graph neural network (GNN)-based models have gained
widespread adoption due to their ability to capture brain channel functional
connectivity from both spatial and temporal perspectives. However, their
effectiveness is hindered by the absence of a robust temporal biomarker. In
this paper, we introduce a novel and effective biomarker for depression
diagnosis by leveraging the discrete Fourier transform (DFT) and propose a
customized graph network architecture based on Temporal Graph Convolutional
Network (TGCN). Our model was trained on a dataset comprising 1,086 subjects,
which is over 10 times larger than previous datasets in the field of depression
diagnosis. Furthermore, to align with medical requirements, we performed
propensity score matching (PSM) to create a refined subset, referred to as the
PSM dataset. Experimental results demonstrate that incorporating our newly
designed biomarker enhances the representation of temporal characteristics in
brain channels, leading to improved F1 scores in both the real-world dataset
and the PSM dataset. This advancement has the potential to contribute to the
development of more effective depression diagnostic tools. In addition, we used
SHapley Additive exPlaination (SHAP) to validate the interpretability of our
model, ensuring its practical applicability in medical settings.