TY  - JOUR
T1  - E-DANN
T2  - An Enhanced Domain Adaptation Network for Audio-EEG Feature Decoupling in Explainable Depression Recognition
AU  - Zhao, Qinglin
AU  - Jiang, Hua
AU  - Wu, Zhongqing
AU  - Zhang, Lixin
AU  - Cui, Kunbo
AU  - Zheng, Kai
AU  - Liu, Jingyu
AU  - Cai, Ran
AU  - Zhao, Mingqi
AU  - Tian, Fuze
AU  - Hu, Bin
N1  - Publisher Copyright:
© 2001-2011 IEEE.
PY  - 2025
Y1  - 2025
N2  - Given the significant global health burden caused by depression, numerous studies have utilized artificial intelligence techniques to objectively and automatically detect depression. However, existing research primarily focuses on improving the accuracy of depression recognition while overlooking the explainability of detection models and the evaluation of feature importance. In this paper, we propose a novel framework named Enhanced Domain Adversarial Neural Network (E-DANN) for depression detection. First, we extract joint features that combine audio-specific physical properties and electroencephalogram (EEG) responses to construct a multimodal feature space, which facilitates the understanding of how EEG signals dynamically respond to the physical properties of audio. Next, we employ the feature decoupling framework of E-DANN, which separates the extracted feature space into shared features and private features through adversarial training. The decoupled private features are then utilized for the binary classification of depression. Our experimental results validate the effectiveness of the proposed framework, which achieves accurate classification of normal controls and individuals with depression (Formula presented). Furthermore, we employ an Explainable Artificial Intelligence (XAI) approach to hierarchically visualize feature importance and elucidate complex feature interaction patterns. In summary, this study provides a theoretical foundation for developing explainable diagnostic tools for depression and contributes to improving the clinical trustworthiness of AI-assisted diagnostic systems.
AB  - Given the significant global health burden caused by depression, numerous studies have utilized artificial intelligence techniques to objectively and automatically detect depression. However, existing research primarily focuses on improving the accuracy of depression recognition while overlooking the explainability of detection models and the evaluation of feature importance. In this paper, we propose a novel framework named Enhanced Domain Adversarial Neural Network (E-DANN) for depression detection. First, we extract joint features that combine audio-specific physical properties and electroencephalogram (EEG) responses to construct a multimodal feature space, which facilitates the understanding of how EEG signals dynamically respond to the physical properties of audio. Next, we employ the feature decoupling framework of E-DANN, which separates the extracted feature space into shared features and private features through adversarial training. The decoupled private features are then utilized for the binary classification of depression. Our experimental results validate the effectiveness of the proposed framework, which achieves accurate classification of normal controls and individuals with depression (Formula presented). Furthermore, we employ an Explainable Artificial Intelligence (XAI) approach to hierarchically visualize feature importance and elucidate complex feature interaction patterns. In summary, this study provides a theoretical foundation for developing explainable diagnostic tools for depression and contributes to improving the clinical trustworthiness of AI-assisted diagnostic systems.
KW  - Depression recognition
KW  - electroencephalogram (EEG)
KW  - enhanced domain adversarial neural network
KW  - explainable artificial intelligence
KW  - feature decoupling
UR  - http://www.scopus.com/pages/publications/105015755345
U2  - 10.1109/TNSRE.2025.3608181
DO  - 10.1109/TNSRE.2025.3608181
M3  - Article
C2  - 40928923
AN  - SCOPUS:105015755345
SN  - 1534-4320
VL  - 33
SP  - 3647
EP  - 3661
JO  - IEEE Transactions on Neural Systems and Rehabilitation Engineering
JF  - IEEE Transactions on Neural Systems and Rehabilitation Engineering
ER  -