聊天机器人
心理干预
心理健康
医学
认证
人工智能
通用人工智能
新颖性
标杆管理
医疗保健
梅德林
形势意识
数据科学
计算机科学
知识管理
健康信息学
循证医学
社会技术系统
心理学
临床试验
人工智能应用
临床决策支持系统
术语
介绍(产科)
系统回顾
医学教育
主题专家
应用心理学
生成语法
工程伦理学
鉴定(生物学)
管理科学
作者
Yining Hua,Steve Siddals,Zilin Ma,Isaac R. Galatzer‐Levy,Winna Xia,Christine Hau,Hongbin Na,Matthew Flathers,Jake Linardon,Cyrus Ayubcha,John Torous
摘要
The rapid evolution of artificial intelligence (AI) chatbots in mental health care presents a fragmented landscape with variable clinical evidence and evaluation rigor. This systematic review of 160 studies (2020-2024) classifies chatbot architectures - rule-based, machine learning-based, and large language model (LLM)-based - and proposes a three-tier evaluation framework: foundational bench testing (technical validation), pilot feasibility testing (user engagement), and clinical efficacy testing (symptom reduction). While rule-based systems dominated until 2023, LLM-based chatbots surged to 45% of new studies in 2024. However, only 16% of LLM studies underwent clinical efficacy testing, with most (77%) still in early validation. Overall, only 47% of studies focused on clinical efficacy testing, exposing a critical gap in robust validation of therapeutic benefit. Discrepancies emerged between marketed claims ("AI-powered") and actual AI architectures, with many interventions relying on simple rule-based scripts. LLM-based chatbots are increasingly studied for emotional support and psychoeducation, yet they pose unique ethical concerns, including incorrect responses, privacy risks, and unverified therapeutic effects. Despite their generative capabilities, LLMs remain largely untested in high-stakes mental health contexts. This paper emphasizes the need for standardized evaluation and benchmarking aligned with medical AI certification to ensure safe, transparent and ethical deployment. The proposed framework enables clearer distinctions between technical novelty and clinical efficacy, offering clinicians, researchers and regulators ordered steps to guide future standards and benchmarks. To ensure that AI chatbots enhance mental health care, future research must prioritize rigorous clinical efficacy trials, transparent architecture reporting, and evaluations that reflect real-world impact rather than the well-known potential.
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