CLAICYHCLGMar 21, 2024

The opportunities and risks of large language models in mental health

arXiv:2403.14814v3191 citationsh-index: 7JMIR Mental Health
Originality Synthesis-oriented
AI Analysis

It addresses the global mental health crisis by exploring how LLMs can scale care, but it is incremental as it summarizes existing literature and calls for ethical strategies.

The paper reviews the application of large language models (LLMs) to mental health tasks such as education, assessment, and intervention, highlighting opportunities for positive impact while emphasizing the need to balance urgent support with responsible development to mitigate risks.

Global rates of mental health concerns are rising, and there is increasing realization that existing models of mental health care will not adequately expand to meet the demand. With the emergence of large language models (LLMs) has come great optimism regarding their promise to create novel, large-scale solutions to support mental health. Despite their nascence, LLMs have already been applied to mental health related tasks. In this paper, we summarize the extant literature on efforts to use LLMs to provide mental health education, assessment, and intervention and highlight key opportunities for positive impact in each area. We then highlight risks associated with LLMs' application to mental health and encourage the adoption of strategies to mitigate these risks. The urgent need for mental health support must be balanced with responsible development, testing, and deployment of mental health LLMs. It is especially critical to ensure that mental health LLMs are fine-tuned for mental health, enhance mental health equity, and adhere to ethical standards and that people, including those with lived experience with mental health concerns, are involved in all stages from development through deployment. Prioritizing these efforts will minimize potential harms to mental health and maximize the likelihood that LLMs will positively impact mental health globally.

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