Independent Clinical Evaluation of General-Purpose LLM Responses to Signals of Suicide Risk

Authors

  • Nick Judd UL Research Institutes, Digital Safety, Evanston, IL, USA
  • Alexandre Vaz Sentio University, Torrance, CA, USA
  • Kevin Paeth UL Research Institutes, Digital Safety, Evanston, IL, USA
  • Layla Inés Davis Sentio University, Torrance, CA, USA
  • Milena Esherick Sentio University, Torrance, CA, USA
  • Jason Brand Sentio University, Torrance, CA, USA
  • Inês Amaro Sentio University, Torrance, CA, USA
  • Tony Rousmaniere Sentio University, Torrance, CA, USA

Abstract

We introduce findings and methods to facilitate evidence-based discussion about how large language models (LLMs) should behave in response to user signals of risk of suicidal thoughts and behaviors (STB). People are already using LLMs as mental health resources, and several recent incidents implicate LLMs in mental health crises. Despite growing attention, few studies have been able to effectively generalize clinical guidelines to LLM use cases, and fewer still have proposed methodologies that can be iteratively applied as knowledge improves about the elements of human-AI interaction most in need of study. We introduce an assessment of LLM alignment with guidelines for ethical communication, adapted from clinical principles and applied to expressions of risk factors for STB in multi-turn conversations. Using a codebook created and validated by clinicians, mobilizing the volunteer participation of practicing therapists and trainees (N=43) based in the U.S., and using generalized linear mixed-effects models for statistical analysis, we assess a single fully open-source LLM, OLMo-2-32b. We show how to assess when a model deviates from clinically informed guidelines in a way that may pose a hazard and (thanks to its open nature) facilitates future investigation as to why. We find that contrary to clinical best practice, OLMo-2-32b, and, possibly by extension, other LLMs, will become less likely to invite continued dialog as users send more signals of STB risk in multi-turn settings. We also show that OLMo-2-32b responds differently depending on the risk factor expressed. This empirical evidence highlights that chatbots may discourage help-seeking or cause feelings of dismissal or abandonment by withdrawing from conversations when STB risk is expressed.

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Published

2026-07-15

How to Cite

Judd, N., Vaz, A., Paeth, K., Inés Davis, L., Esherick, M., Brand, J., … Rousmaniere, T. (2026). Independent Clinical Evaluation of General-Purpose LLM Responses to Signals of Suicide Risk. Proceedings of IASEAI Conference, 2(1), 279–292. Retrieved from https://ojs.aaai.org/index.php/IASEAI/article/view/43031