Espino Carrasco Danicsa Karina, Palomino Alcántara María Del Rosario, Arbulú Pérez Vargas Carmen Graciela, Santa Cruz Espino Briseidy Massiel, Dávila Valdera Luis Jhonny, Vargas Cabrera Cindy, Espino Carrasco Madeleine, Dávila Valdera Anny, Agurto Córdova Luz Mirella
School of Nursing, Faculty of Health Sciences, Universidad César Vallejo, Chiclayo 14000, Peru.
School of Nursing, Faculty of Health Sciences, Universidad Particular de Chiclayo, Chiclayo 14000, Peru.
Int J Environ Res Public Health. 2025 Sep 4;22(9):1382. doi: 10.3390/ijerph22091382.
This systematic review examines the role of artificial intelligence (AI) in the development of sustainable mental health interventions through a comprehensive analysis of literature published between 2020 and 2025. In accordance with the PRISMA guidelines, 62 studies were selected from 1652 initially identified records across four major databases. The results revealed four dimensions critical for sustainability: ethical considerations (privacy, informed consent, bias, and human oversight), personalization approaches (federated learning and AI-enhanced therapeutic interventions), risk mitigation strategies (data security, algorithmic bias, and clinical efficacy), and implementation challenges (technical infrastructure, cultural adaptation, and resource allocation). The findings demonstrate that long-term sustainability depends on ethics-driven approaches, resource-efficient techniques such as federated learning, culturally adaptive systems, and appropriate human-AI integration. The study concludes that sustainable mental health AI requires addressing both technical efficacy and ethical integrity while ensuring equitable access across diverse contexts. Future research should focus on longitudinal studies examining the long-term effectiveness and cultural adaptability of AI interventions in resource-limited settings.
本系统综述通过对2020年至2025年间发表的文献进行全面分析,探讨了人工智能(AI)在可持续心理健康干预发展中的作用。根据PRISMA指南,从四个主要数据库中最初识别的1652条记录中筛选出62项研究。结果揭示了对可持续性至关重要的四个维度:伦理考量(隐私、知情同意、偏差和人为监督)、个性化方法(联邦学习和人工智能增强的治疗干预)、风险缓解策略(数据安全、算法偏差和临床疗效)以及实施挑战(技术基础设施、文化适应和资源分配)。研究结果表明,长期可持续性取决于以伦理为导向的方法、诸如联邦学习等资源高效技术、文化适应性系统以及适当的人机整合。该研究得出结论,可持续的心理健康人工智能需要在确保不同环境下公平获取的同时,兼顾技术效能和伦理完整性。未来的研究应侧重于纵向研究,考察人工智能干预在资源有限环境中的长期有效性和文化适应性。