NSSI-Net: Multi-Concept Generative Adversarial Network for Non-Suicidal Self-Injury Detection Using High-Dimensional EEG Signals in a Semi-Supervised Learning Framework
Non-suicidal self-injury (NSSI) is a serious threat to the physical and mental health of adolescents, significantly increasing the risk of suicide and attracting widespread public concern. Electroencephalography (EEG), as an objective tool for identifying brain disorders, holds great promise. Howeve...
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Zusammenfassung: | Non-suicidal self-injury (NSSI) is a serious threat to the physical and
mental health of adolescents, significantly increasing the risk of suicide and
attracting widespread public concern. Electroencephalography (EEG), as an
objective tool for identifying brain disorders, holds great promise. However,
extracting meaningful and reliable features from high-dimensional EEG data,
especially by integrating spatiotemporal brain dynamics into informative
representations, remains a major challenge. In this study, we introduce an
advanced semi-supervised adversarial network, NSSI-Net, to effectively model
EEG features related to NSSI. NSSI-Net consists of two key modules: a
spatial-temporal feature extraction module and a multi-concept discriminator.
In the spatial-temporal feature extraction module, an integrated 2D
convolutional neural network (2D-CNN) and a bi-directional Gated Recurrent Unit
(BiGRU) are used to capture both spatial and temporal dynamics in EEG data. In
the multi-concept discriminator, signal, gender, domain, and disease levels are
fully explored to extract meaningful EEG features, considering individual,
demographic, disease variations across a diverse population. Based on
self-collected NSSI data (n=114), the model's effectiveness and reliability are
demonstrated, with a 7.44% improvement in performance compared to existing
machine learning and deep learning methods. This study advances the
understanding and early diagnosis of NSSI in adolescents with depression,
enabling timely intervention. The source code is available at
https://github.com/Vesan-yws/NSSINet. |
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DOI: | 10.48550/arxiv.2410.12159 |