Risks from Language Models for Automated Mental Healthcare: Ethics and Structure for Implementation
Declan Grabb, Max Lamparth, Nina Vasan

TL;DR
This paper evaluates the risks of current language models in automated mental healthcare, highlighting their limitations, potential harms, and proposing an ethical framework and safety guidelines for responsible deployment.
Contribution
It introduces a structured ethical framework for AI in mental health and assesses fourteen language models against mental health questionnaires, revealing significant safety and performance issues.
Findings
Models often fail to match human nuance and context understanding.
Most models could cause harm in mental health emergencies.
Existing models lack necessary safeguards and can exacerbate symptoms.
Abstract
Amidst the growing interest in developing task-autonomous AI for automated mental health care, this paper addresses the ethical and practical challenges associated with the issue and proposes a structured framework that delineates levels of autonomy, outlines ethical requirements, and defines beneficial default behaviors for AI agents in the context of mental health support. We also evaluate fourteen state-of-the-art language models (ten off-the-shelf, four fine-tuned) using 16 mental health-related questionnaires designed to reflect various mental health conditions, such as psychosis, mania, depression, suicidal thoughts, and homicidal tendencies. The questionnaire design and response evaluations were conducted by mental health clinicians (M.D.s). We find that existing language models are insufficient to match the standard provided by human professionals who can navigate nuances and…
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Taxonomy
TopicsDigital Mental Health Interventions · Machine Learning in Healthcare · Artificial Intelligence in Healthcare and Education
