通过人工智能社交媒体分析及早发现心理健康危机:前瞻性观察研究

Masab A. Mansoor, Dba, MD Kashif Ansari
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摘要

背景:早期发现心理健康危机对于及时干预和改善结果至关重要。本研究探讨了人工智能(AI)在分析社交媒体数据以识别心理健康危机早期迹象方面的潜力。研究方法我们开发了一种多模态深度学习模型,该模型集成了自然语言处理和时间分析技术。该模型在一个多样化的数据集上进行了训练,该数据集包含在 12 个月内从 Twitter、Reddit 和 Facebook 收集的多语种(英语、西班牙语、普通话和阿拉伯语)的 996,452 篇社交媒体帖子。使用标准指标对性能进行了评估,并根据精神病学专家的评估结果进行了验证。结果人工智能模型在检测心理健康危机的早期迹象方面表现出很高的准确率(89.3%),平均提前时间为 7.2 天。不同语言(F1 分数:0.827-0.872)和不同平台(F1 分数:0.839-0.863)的表现一致。关键的数字标记包括语言模式、行为变化和时间趋势。该模型对不同危机类型显示出不同的准确性:抑郁发作(91.2%)、躁狂发作(88.7%)、自杀意念(93.5%)和焦虑危机(87.3%)。结论人工智能驱动的社交媒体数据分析有望在不同语言和文化背景下早期发现心理健康危机。然而,包括隐私问题、潜在的污名化和文化偏见在内的伦理挑战需要仔细考虑。未来的研究应侧重于纵向结果研究、与现有心理健康服务的伦理整合,以及开发个性化、文化敏感型模型。关键词:人工智能、心理健康、危机检测、社交媒体分析、早期干预
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Early Detection of Mental Health Crises through AI-Powered Social Media Analysis: A Prospective Observational Study
Background: Early detection of mental health crises is crucial for timely intervention and improved outcomes. This study explores the potential of artificial intelligence (AI) in analyzing social media data to identify early signs of mental health crises. Methods: We developed a multi-modal deep learning model integrating natural language processing and temporal analysis techniques. The model was trained on a diverse dataset of 996,452 social media posts in multiple languages (English, Spanish, Mandarin, and Arabic) collected from Twitter, Reddit, and Facebook over a 12-month period. Performance was evaluated using standard metrics and validated against expert psychiatric assessment. Results: The AI model demonstrated high accuracy (89.3%) in detecting early signs of mental health crises, with an average lead time of 7.2 days before human expert identification. Performance was consistent across languages (F1 scores: 0.827-0.872) and platforms (F1 scores: 0.839-0.863). Key digital markers included linguistic patterns, behavioral changes, and temporal trends. The model showed varying accuracy for different crisis types: depressive episodes (91.2%), manic episodes (88.7%), suicidal ideation (93.5%), and anxiety crises (87.3%). Conclusions: AI-powered analysis of social media data shows promise for early detection of mental health crises across diverse linguistic and cultural contexts. However, ethical challenges including privacy concerns, potential stigmatization, and cultural biases need careful consideration. Future research should focus on longitudinal outcome studies, ethical integration with existing mental health services, and development of personalized, culturally-sensitive models. Keywords: artificial intelligence, mental health, crisis detection, social media analysis, early intervention
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