TY - JOUR
T1 - Development of a peak insertion torque prediction model for parallel-walled dental implants
AU - Alsheghri, Ammar A.
AU - Abdalla, Ali N.
AU - Mokahhal, Basel
AU - Cortes, Arthur R.G.
AU - Garcia-Denche, Jesús Torres
AU - Celemin, Alicia
AU - Cascos, Rocio
AU - Song, Jun
AU - Tamimi, Faleh
N1 - Publisher Copyright:
© 2025 IPEM
PY - 2025/4
Y1 - 2025/4
N2 - Implant peak insertion torque is a commonly used indication of primary stability that dentists rely on to make clinical decisions. The aim of this manuscript is to model the peak torque required for dental implant insertion based on clinical data such as bone properties, implant properties, and drilling procedure. A total of 116 parallel-walled Sweden and Martina dental implants were included in this study. Parameters such as age, sex, bone quality (derived from radiographs), applied peak insertion torque, implant location, implant length, final drill diameter, and implant diameter were recorded. Six data-driven regression models were trained and tested using different combinations of the clinical data to predict the peak torque. A physics-based model was also derived for the peak torque and compared with the data-driven models. The neural network model with early stopping achieved the best accuracy in predicting the clinically measured torque (R2 = 0.7692, MSE = 0.08815). Within the limitations of this study, the results suggest that it is possible to predict the peak torque required for implant placement based on the patient's radiographs, implant's properties, and drill diameter. The findings of this study can serve as a reference for dentists in choosing drilling parameters for dental implant surgeries.
AB - Implant peak insertion torque is a commonly used indication of primary stability that dentists rely on to make clinical decisions. The aim of this manuscript is to model the peak torque required for dental implant insertion based on clinical data such as bone properties, implant properties, and drilling procedure. A total of 116 parallel-walled Sweden and Martina dental implants were included in this study. Parameters such as age, sex, bone quality (derived from radiographs), applied peak insertion torque, implant location, implant length, final drill diameter, and implant diameter were recorded. Six data-driven regression models were trained and tested using different combinations of the clinical data to predict the peak torque. A physics-based model was also derived for the peak torque and compared with the data-driven models. The neural network model with early stopping achieved the best accuracy in predicting the clinically measured torque (R2 = 0.7692, MSE = 0.08815). Within the limitations of this study, the results suggest that it is possible to predict the peak torque required for implant placement based on the patient's radiographs, implant's properties, and drill diameter. The findings of this study can serve as a reference for dentists in choosing drilling parameters for dental implant surgeries.
KW - Biomechanics
KW - Dental implant
KW - Machine learning
KW - Peak insertion torque
KW - Primary stability
KW - Torque prediction
UR - https://www.scopus.com/pages/publications/85219495928
U2 - 10.1016/j.medengphy.2025.104318
DO - 10.1016/j.medengphy.2025.104318
M3 - Article
AN - SCOPUS:85219495928
SN - 1350-4533
VL - 138
JO - Medical Engineering and Physics
JF - Medical Engineering and Physics
M1 - 104318
ER -