Liu Ye, Zheng Jiashuo, Zeng Yang, Luo Fang, Tian Xuetao
School of Future Technology, South China University of Technology, Guangzhou, China.
Faculty of Psychology, Beijing Normal University, Beijing, China.
Front Psychiatry. 2025 Jul 18;16:1617650. doi: 10.3389/fpsyt.2025.1617650. eCollection 2025.
Adolescent suicide is a critical public health concern worldwide, necessitating effective methods for early detection of high suicidal ideation. Traditional detection methods, such as self-report scales, suffer from limited accuracy and are susceptible to personal concealment. Automatic methods based on artificial intelligence techniques are more accurate, while they often lack scalability due to strict data requirements. In order to achieve a balance between accuracy and scalability, this paper introduces the Tree-Drawing Test (TDT) as an effective tool for suicidal ideation detection, and proposes a novel graph learning approach to enable its automatic application.
The proposed method first constructs a semantic graph based on psychological features annotated automatically from tree-drawing images, and leverages a Graph Convolutional Network (GCN) model to realize individual suicidal ideation detection. To evaluate this method, a real dataset of 806 students from primary and secondary school in Shaanxi Province, China, is collected, and some metrics including macro-F1, G-mean, and false positive rate are used.
The results demonstrate that the proposed method significantly outperforms traditional machine learning and convolution neural network approaches. The ablation study demonstrates the effectiveness of feature "leaves and fruits" in detecting suicidal ideation. Further experiments demonstrate that the proposed method remains stable even when the model is disturbed, such as when a tree-drawing image cannot be fully represented.
The proposed method highlights its effectiveness in large-scale suicidal ideation screening, as it not only achieves high detection performance but also maintains model stability while remaining flexible and adaptable.
青少年自杀是全球范围内一个至关重要的公共卫生问题,因此需要有效的方法来早期检测出有高度自杀意念的情况。传统的检测方法,如自我报告量表,准确性有限且容易受到个人隐瞒的影响。基于人工智能技术的自动方法更准确,但由于严格的数据要求,它们往往缺乏可扩展性。为了在准确性和可扩展性之间取得平衡,本文引入树绘测试(TDT)作为自杀意念检测的有效工具,并提出一种新颖的图学习方法以实现其自动应用。
所提出的方法首先基于从树绘图像中自动标注的心理特征构建语义图,并利用图卷积网络(GCN)模型实现个体自杀意念检测。为了评估该方法,收集了来自中国陕西省806名中小学生的真实数据集,并使用了包括宏F1、G均值和误报率等一些指标。
结果表明,所提出的方法显著优于传统机器学习和卷积神经网络方法。消融研究证明了特征“树叶和果实”在检测自杀意念方面的有效性。进一步的实验表明,即使在模型受到干扰时,如树绘图像无法完全呈现时,所提出的方法仍保持稳定。
所提出的方法在大规模自杀意念筛查中凸显了其有效性,因为它不仅实现了高检测性能,还在保持灵活性和适应性的同时维持了模型稳定性。