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Published:2025/12/16 8:54:28

ソーシャルメディアでうつ病を早期発見✨

超要約: SNSの投稿から、うつ病のサインを見つけるAIだよ! 早期発見でみんなハッピー💖

● SNSの文章から、うつ病っぽい言葉や、いつからそんな感じか を分析するんだって! ● AIが「なんでそう思ったか」を説明してくれるから、安心安全🎶 ● データが少ない状態でも、ちゃんと結果が出せるのがスゴイ!

詳細解説いくよー!

背景: 最近、SNSでのメンタルヘルス(心の健康)に関する悩み、増えてるじゃん?😢 でも、早期に気づくのって難しいよね…。 そこで、AIを使って、SNSの投稿から「もしかして、うつ病かも?」ってサインを見つけよう!って研究だよ。

続きは「らくらく論文」アプリで

Decoding Emotional Trajectories: A Temporal-Semantic Network Approach for Latent Depression Assessment in Social Media

Junwei Kuang / Jiaheng Xie / Zhijun Yan

The early identification and intervention of latent depression are of significant societal importance for mental health governance. While current automated detection methods based on social media have shown progress, their decision-making processes often lack a clinically interpretable framework, particularly in capturing the duration and dynamic evolution of depressive symptoms. To address this, this study introduces a semantic parsing network integrated with multi-scale temporal prototype learning. The model detects depressive states by capturing temporal patterns and semantic prototypes in users' emotional expression, providing a duration-aware interpretation of underlying symptoms. Validated on a large-scale social media dataset, the model outperforms existing state-of-the-art methods. Analytical results indicate that the model can identify emotional expression patterns not systematically documented in traditional survey-based approaches, such as sustained narratives expressing admiration for an "alternative life." Further user evaluation demonstrates the model's superior interpretability compared to baseline methods. This research contributes a structurally transparent, clinically aligned framework for depression detection in social media to the information systems literature. In practice, the model can generate dynamic emotional profiles for social platform users, assisting in the targeted allocation of mental health support resources.

cs / q-bio.QM / cs.AI / cs.CY / cs.LG