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

Table 9.

AI outcomes in oral and maxillofacial surgery.

Target AI Model Sample Results Study
Lower-third-molar treatment-planning decisions Neural networks Data from 119 patients Sensitivity of 0.78, which was slightly lower than the oral surgeon’s (0.88), but the difference was not significant, and a specificity of 0.98, which was lower than the oral surgeon’s (0.99) (p = NS). Brickley and Shepherd (1996) [192]
To predict postoperative facial swelling following impacted mandibular third molar extraction ANN Data from 400 patients This AI-based algorithm was 98% reliable in forecasting facial swelling after extraction of impacted third molar teeth. Zhang et al., (2018) [193]
Ameloblastoma and keratocystic odontogenic tumor diagnosis CNN 400/100 panoramic X-rays The CNN had 81.8% sensitivity, 83.3% specificity, 83.0% accuracy, and a diagnostic time of 38 s, respectively. Poedjiastoeti and Suebnukarn (2018) [194]
Evaluation of maxillary sinusitis on panoramic radiography CNN Panoramic X-rays from 400 maxillary sinusitis patients/400 healthy subjects Accuracy of 87.5%, sensitivity of 86.7%, specificity of 88.3%, and area under the curve of 0.875 were obtained by the model. Murata et al., (2019) [195]
Periapical disease detection ANN 2902 panoramic X-rays The deep learning method outperformed 14 of the 24 surgeons in the sample, with an average accuracy of 0.60 (0.04). Endres et al., (2020) [196]
Automated detection of cyst and tumors of the jaw CNN 1602 lesions on panoramic X-rays Comparable with expert dentists. Yang et al., (2020) [197]

AI, artificial intelligence; ANN, artificial neural network; CNN, convolutional neural network; NS, non-significant.