TY - GEN
T1 - Heterogeneous Structured Federated Learning with Graph Convolutional Aggregation for MRI-Based Mental Disorder Diagnosis
AU - Hu, Yao
AU - Liu, Rui
AU - Zhang, Jiaqi
AU - Huang, Zhi-An
AU - Song, Linqi
AU - Tan, Kay Chen
PY - 2024
Y1 - 2024
N2 - To relieve the growing burden of mental disorders, deep learning techniques have emerged as a promising tool to aid clinicians by detecting abnormal patterns in neuroimaging data. However, the efficacy of such models is contingent upon access to vast pools of patient data, which is impractical for individual healthcare institutions. Moreover, the privacy-preserving policy regulations governing medical images further complicate the pooling of information necessary for training robust models. Federated Learning (FL) offers a solution to this dilemma by aggregating the local model updates without compromising patient privacy. However, current studies fail to adequately account for the need to personalize models according to the diverse structures of local data. In this work, an effective heterogeneous structured FL framework using graph convolutional aggregation dubbed GAHFL is proposed to diagnose mental disorders on functional magnetic resonance imaging data. In addition, we propose to perform the global model self-evaluation to enable the training to emphasize the samples that are difficult to classify. To solve the catastrophic forgetting problem, we build a historical logit pool to awaken the global model's recognition ability by performing a server knowledge self-distillation. Empirical evaluations demonstrate that the proposed framework achieves averaged diagnosis AUC values of 69.01% and 69.04% with different sizes of public datasets of ABIDE-I and ADHD-200 datasets, respectively. The ablation studies and robustness validation test further demonstrate the superior performance of our framework. © 2024 IEEE.
AB - To relieve the growing burden of mental disorders, deep learning techniques have emerged as a promising tool to aid clinicians by detecting abnormal patterns in neuroimaging data. However, the efficacy of such models is contingent upon access to vast pools of patient data, which is impractical for individual healthcare institutions. Moreover, the privacy-preserving policy regulations governing medical images further complicate the pooling of information necessary for training robust models. Federated Learning (FL) offers a solution to this dilemma by aggregating the local model updates without compromising patient privacy. However, current studies fail to adequately account for the need to personalize models according to the diverse structures of local data. In this work, an effective heterogeneous structured FL framework using graph convolutional aggregation dubbed GAHFL is proposed to diagnose mental disorders on functional magnetic resonance imaging data. In addition, we propose to perform the global model self-evaluation to enable the training to emphasize the samples that are difficult to classify. To solve the catastrophic forgetting problem, we build a historical logit pool to awaken the global model's recognition ability by performing a server knowledge self-distillation. Empirical evaluations demonstrate that the proposed framework achieves averaged diagnosis AUC values of 69.01% and 69.04% with different sizes of public datasets of ABIDE-I and ADHD-200 datasets, respectively. The ablation studies and robustness validation test further demonstrate the superior performance of our framework. © 2024 IEEE.
KW - attention deficit/hyperactivity disorder (ADHD)
KW - autism spectrum disorder (ASD)
KW - Federated learning
KW - functional magnetic resonance imaging (fMRI)
KW - graph convolutional network
KW - heterogeneous structured local model
UR - http://www.scopus.com/inward/record.url?scp=85205011003&partnerID=8YFLogxK
UR - https://www.scopus.com/record/pubmetrics.uri?eid=2-s2.0-85205011003&origin=recordpage
U2 - 10.1109/IJCNN60899.2024.10651026
DO - 10.1109/IJCNN60899.2024.10651026
M3 - RGC 32 - Refereed conference paper (with host publication)
T3 - Proceedings of the International Joint Conference on Neural Networks
BT - IJCNN 2024 Conference Proceedings
PB - IEEE
T2 - 2024 International Joint Conference on Neural Networks (IJCNN 2024)
Y2 - 30 June 2024 through 5 July 2024
ER -