Main Content
- GX-ray (Radiographic information alone)
- GX-ray+clinical data (Radiographic and clinical data)
- GX-ray+AI (Radiographic information with AI prediction)
- GX-ray+clinical data+AI (Radiographic and clinical data with AI prediction)
The results of the study were noteworthy. The AI model outperformed dental students in all groups, achieving an F1-score of 0.71 (P < 0.001). Notably, the F1-scores of students in GX-ray+AI and GX-ray+clinical data+AI (0.61 for both) were slightly higher than the F1-scores in the GX-ray and GX-ray+clinical data groups (0.58 and 0.59, respectively), with a borderline statistical significance of P = 0.054. In conclusion, the study demonstrates that AI technology has the potential to significantly enhance the predictive abilities of dental students in assessing pulp exposure based on radiographic information. The AI model outperformed human predictions in all scenarios, showcasing its promise as an educational tool in the dental field. However, the study also highlights the need for more explainable AI predictions and the importance of a learning curve for dental students to harness the full potential of AI in their practice. As technology continues to advance, the integration of AI in dental education and practice may become increasingly valuable. Dental professionals and educators must continue to explore how AI can be leveraged to improve patient care and students’ learning experiences, all while ensuring that AI-driven solutions remain explainable and accessible. Source: ScienceDirect.com

