Screening for dental pain using an automated face coding (AFC) software
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Objectives: This observational study evaluated the effectiveness of an Automated Face Coding (AFC) software in
identifying facial expressions related to dental pain.
Methods: Fifty-seven participants (49.8 ± 17.1 years) with symptoms of dental pain were recruited. Participants
self-reported their pain using a Visual Analog Scale (VAS) score and their faces were filmed using a smartphone.
The video clips were exported to an AFC software, which analyzed the facial expressions. The analysis focused on
detecting changes in facial expressions and emotional states. The analysis was performed at two timepoints, at
baseline (on the first visit), and at post treatment recall when pain was alleviated (self-reported). Non-parametric
tests were used for statistical analysis (p < 0.05).
Results: Significant reduction in pain levels was observed between the first visit and at the post treatment recall
visit (mean VAS: baseline = 5.65 ± 2.08, recall = 0.40 ± 0.80; p < 0.001). No significant gender differences were
observed in pain scores (p > 0.05). Significant differences in facial expressions between the two time points was
not detected by the software (p > 0.05). Emotional parameters remained stable.
Conclusion: The findings of this study concluded that the current capability of the AFC software to detect changes
in facial expressions specific to pain alleviation is limited, even though it can provide detailed analysis of facial
muscle movements. Further research is needed to enhance the software’s sensitivity to pain-related expressions
and explore its integration with other diagnostic tools for improved patient care and treatment outcomes.
Clinical Significance Statement: The study explored the potential of AFC software in analyzing facial expressions
for applications in screening and diagnosis of dental problems especially in non-communicative geriatric patients. While effective in monitoring facial movements, the software’s current limitations in detecting painspecific changes underscore the need for further advancements
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STILLHART, Angela et al. Screening for dental pain using an automated face coding (AFC) software. Journal of Dentistry, Kidlington, v. 155, e105647, 2025. DOI: 10.1016/j.jdent.2025.105647. Disponível em: https://www.sciencedirect.com/science/article/pii/S0300571225000922?via%3Dihub. Acesso em: 8 jan. 2026.