Palpation Alters Auditory Pain Expressions with Gender-Specific Variations in Robopatients
Journal:
arXiv
Published Date:
Jun 13, 2025
Abstract
Diagnostic errors remain a major cause of preventable deaths, particularly in
resource-limited regions. Medical training simulators, including robopatients,
play a vital role in reducing these errors by mimicking real patients for
procedural training such as palpation. However, generating multimodal feedback,
especially auditory pain expressions, remains challenging due to the complex
relationship between palpation behavior and sound. The high-dimensional nature
of pain sounds makes exploration challenging with conventional methods. This
study introduces a novel experimental paradigm for pain expressivity in
robopatients where they dynamically generate auditory pain expressions in
response to palpation force, by co-optimizing human feedback using machine
learning. Using Proximal Policy Optimization (PPO), a reinforcement learning
(RL) technique optimized for continuous adaptation, our robot iteratively
refines pain sounds based on real-time human feedback. This robot initializes
randomized pain responses to palpation forces, and the RL agent learns to
adjust these sounds to align with human preferences. The results demonstrated
that the system adapts to an individual's palpation forces and sound
preferences and captures a broad spectrum of pain intensity, from mild
discomfort to acute distress, through RL-guided exploration of the auditory
pain space. The study further showed that pain sound perception exhibits
saturation at lower forces with gender specific thresholds. These findings
highlight the system's potential to enhance abdominal palpation training by
offering a controllable and immersive simulation platform.