Individuals’ Acoustic Features and Heart Rate Patterns Reveal Team Differences in High-Stakes Collaborative Learning
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Date
2025
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Publisher
Saudi Digital Library
Abstract
Effective collaboration in high-stakes learning environments, such as nursing simulations, relies not only on verbal communication but
also on internal states (e.g., stress and engagement), often reflected in both speech and physiological data. However, the relationship
between acoustic speech features and physiological arousal remains underexplored in authentic, team-based scenarios. This study
investigates how speech acoustics correlate with heart rate relative to baseline (HRrelative) during simulation-based learning in
healthcare education. We analysed speech and physiological data from 50 team sessions (173 students), extracting GeMAPS features
and aligning them with utterance-level HR data. Correlation and predictive models were applied across simulation phases and
team performance levels. Results reveal that high-performing teams modulated speech features—such as pitch, articulation, and
loudness—more consistently across phases, suggesting adaptive regulation under pressure. On the contrary, low-performing teams
showed similar shifts, but with less structure and at later phases. These findings demonstrate the potential of multimodal data to
reveal hidden patterns in teamwork. Speech–physiology dynamics could inform targeted feedback during debriefing, supporting
communication and leadership training in healthcare education.
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Keywords
collaborative learning, embodied collaboration, multimodal learning analytics, healthcare simulation, speech acoustics