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. 2023 Jun 7;13(12):1995. doi: 10.3390/diagnostics13121995

Table 8.

AI outcomes in orthodontics.

Target AI Model Sample Results Study
To decide if extractions are necessary prior to orthodontic treatment Backpropagation ANN Data from 180 patients Accuracy of 80% in predicting whether extraction or non-extraction treatments seemed appropriate for malocclusion patients aged 11 to 15 years. Xie et al., (2010) [183]
To decide if extractions are necessary prior to orthodontic treatment ANN In total, 12 cephalometric variables and 6 indexes from 156 patients Accuracy of 92% Jung and Kim (2016) [184]
Determination of growth and development by cervical vertebrae stages ANN Cephalometric radiographs from 300 subjects Mean accuracy of 77.2% Kök et al., (2019) [187]
Osteoarthritis of the temporomandibular joint diagnosis Logistic regression, random forest, LightGBM, XGBoost CBCT blood serum saliva clinical investigation Accuracy of 82.3% Bianchi et al., (2020) [188]
Determination of growth and development periods ANN Cephalometric and hand–wrist radiographs in 419 subjects Accuracy of 4.27% Kök et al., (2021) [189]

AI, artificial intelligence; ANN, artificial neural network; CBCT, cone-beam computed tomography.