Chinese Journal of Oral Implantology ›› 2025, Vol. 30 ›› Issue (5): 429-439.DOI: 10.12337/zgkqzzxzz.2025.10.002

• Basic Research • Previous Articles     Next Articles

Application research of YOLOv5s_CBCT model in measuring alveolar bone height and width in CBCT images of missing teeth

Liu Wenqi1, Wei Wenquan2, Mo Hongbing1,3, Shen Xiaorong4, Zang Yixin1,3   

  1. 1Stomatology College of Jiamusi University, Jiamusi 154002, Heilongjiang, China;
    2College of Intelligent Systems Science and Engineering, Harbin Engineering University, Harbin 150001, Heilongjiang, China;
    3Affiliated Stomatological Hospital of Jiamusi University, Jiamusi 154002, Heilongjiang, China;
    4School of Automation Science and Electrical Engineering, Beihang University, Beijing 100191, China
  • Received:2025-05-08 Published:2025-10-30
  • Contact: Mo Hongbing, Email: mhbys@163.com, Tel: 0086-454-8625875
  • Supported by:
    Talent Cultivation of Basic Research Operating Expenses of Heilongjiang Provincial Department of Education (2023-KYYWF-0613)

Abstract: Objective To explore the measurement value of the artificial intelligence model based on YOLOv5s (YOLOv5s_CBCT) for the height and width of alveolar bone at the location of missing teeth, and to provide a precise quantitative tool for preoperative planning of oral implants. Methods Based on the faster implementation of CSP bottleneck with 2 convolutions (C2f), and large selective kernel (LSK) modules, the C2f_CBCT and LSK_CBCT modules were constructed. Using modules and structures such as space-to-depth (SPD), ghost convolution (GhostConv), C3 with ghost convolution (C3Ghost) and bidirectional feature pyramid network (BiFPN), the YOLOv5s_CBCT model was proposed, and the test images were input into the YOLOv5s_CBCT model after training. The predicted average values of alveolar bone height and width for the four implant areas by the model were respectively obtained and error analysis was conducted. Bidirectional analysis of variance was used to explore the significant factors influencing the measurement results, and Bland-Altman consistency analysis and Tukey test were further adopted to strengthen and improve the conclusions of bidirectional analysis of variance. Results (1) Model comparison experiments showed that the proposed model achieved higher detection accuracy with fewer parameters and lower computational complexity. (2) The maximum average error of alveolar bone height detection in the four implant regions was 0.15 mm, and the minimum was 0.03 mm. The maximum average error of width detection was 0.26 mm, and the minimum was 0.10 mm. (3) The results of the two-way ANOVA indicated that the detection results of alveolar bone height and width were significantly affected by the implant region, but not by the measurement method. (4) Bland-Altman consistency analysis further demonstrated good agreement between manual measurements and model prediction. (5) The Tukey test identified the grouping of implant regions that had a significant impact on the measurement results. Conclusion The overall experimental results demonstrated that the measurement errors of the model were all within an acceptable range. The measurement results have high clinical reference value, and the proposed YOLOv5s_CBCT model can be conveniently deployed on medical instruments.

Key words: Dental implants, Alveolar bone, Cone beam computed tomography, Artificial intelligence, YOLOv5s