Towards Privacy-aware Mental Health AI Models: Advances, Challenges, and Opportunities
Journal:
arXiv
Published Date:
Feb 1, 2025
Abstract
Mental illness is a widespread and debilitating condition with substantial
societal and personal costs. Traditional diagnostic and treatment approaches,
such as self-reported questionnaires and psychotherapy sessions, often impose
significant burdens on both patients and clinicians, limiting accessibility and
efficiency. Recent advances in Artificial Intelligence (AI), particularly in
Natural Language Processing and multimodal techniques, hold great potential for
recognizing and addressing conditions such as depression, anxiety, bipolar
disorder, schizophrenia, and post-traumatic stress disorder. However, privacy
concerns, including the risk of sensitive data leakage from datasets and
trained models, remain a critical barrier to deploying these AI systems in
real-world clinical settings. These challenges are amplified in multimodal
methods, where personal identifiers such as voice and facial data can be
misused. This paper presents a critical and comprehensive study of the privacy
challenges associated with developing and deploying AI models for mental
health. We further prescribe potential solutions, including data anonymization,
synthetic data generation, and privacy-preserving model training, to strengthen
privacy safeguards in practical applications. Additionally, we discuss
evaluation frameworks to assess the privacy-utility trade-offs in these
approaches. By addressing these challenges, our work aims to advance the
development of reliable, privacy-aware AI tools to support clinical
decision-making and improve mental health outcomes.