| Literature DB >> 35329136 |
Agata Ossowska1, Aida Kusiak2, Dariusz Świetlik2.
Abstract
Nowadays, artificial intelligence (AI) is becoming more important in medicine and in dentistry. It can be helpful in many fields where the human may be assisted and helped by new technologies. Neural networks are a part of artificial intelligence, and are similar to the human brain in their work and can solve given problems and make fast decisions. This review shows that artificial intelligence and the use of neural networks has developed very rapidly in recent years, and it may be an ordinary tool in modern dentistry in the near future. The advantages of this process are better efficiency, accuracy, and time saving during the diagnosis and treatment planning. More research and improvements are needed in the use of neural networks in dentistry to put them into daily practice and to facilitate the work of the dentist.Entities:
Keywords: artificial intelligence; dentistry; neural networks
Mesh:
Year: 2022 PMID: 35329136 PMCID: PMC8950565 DOI: 10.3390/ijerph19063449
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Baseline characteristics of the studies included in the review by studying neural networks in restorative dentistry.
| Study [Ref.] | Year of Publication | Type of Data | Type of Neural Network | Number of Database | Accuracy of |
|---|---|---|---|---|---|
| Javed [ | 2019 | Primary molars | Artificial neural network (ANN) | 45 teeth | 99.03% |
| Geetha [ | 2020 | Periapical | Back -propagation neural network | 105 images | 97.7% |
| Abdalla-Aslan [ | 2020 | Panoramic | Cubic support vector machine | 83 images | 93.6% |
Baseline characteristics of the studies included in the review by studying neural networks in endodontics.
| Study [Ref.] | Year of Publication | Type of Data | Type of Neural Network | Number of Database | Accuracy of Neural Network |
|---|---|---|---|---|---|
| Saghiri [ | 2012 | Teeth | ANN | 50 teeth | 96% |
| Ekhert [ | 2019 | Panoramic radiographs | CNN | - | 87% (molars) |
| Setzer [ | 2020 | CBCT images | Deep Learning | 20 images | 93% |
| Orhan [ | 2020 | CBCT images | CNN | 153 images | 92.8% |
| Pauwels [ | 2021 | Periapical radiographs | CNN | - | 87% |
Baseline characteristics of the studies included in the review by studying neural networks in orthodontics.
| Study [Ref.] | Year of Publication | Type of Data | Type of Neural Network | Number of Database | Accuracy of Neural Network |
|---|---|---|---|---|---|
| Auconi [ | 2015 | Cephalometric records | Fuzzy clustering repartition | 54 cephalograms | 83.3% |
| Peilini [ | 2019 | Medical records | ANN | 302 patients | 94.0% (extraction pattens); 92.8 % (anchorage patterns) |
| Bianchi [ | 2020 | CBCT | Logistic Regression, Random Forest, LightGBM, XGBoost | 52 patients | 82.3% |
| Muraev [ | 2020 | Cephalometric records | ANN | 330 cephalograms | 99.9% |
| Kök [ | 2021 | Cephalometric and hand-wrist radiographs | ANN | 419 patients | 94.27% |
Baseline characteristics of the studies included in review by studying neural networks in dental surgery.
| Study [Ref.] | Year of Publication | Type of Data | Type of Neural Network | Number of Database | Accuracy of Neural Network |
|---|---|---|---|---|---|
| Chien-Hsun Lu [ | 2009 | Profile photographs | ANN | 30 patients | 84.5% |
| Patcas [ | 2018 | Photographs | CNN | 146 patients | - |
| Patcas [ | 2019 | Frontal and profile images | CNN | 20 patients | - |
| Byung Su [ | 2021 | Panoramic radiographs | CNN | 300 images | 82.7% |
| Liu [ | 2021 | Panoramic radiographs | CNN | 420 images | 90.36% |
| Bayrakdar [ | 2021 | CBCT | CNN (Diagnocat) | 75 images | 72.2% for canals detection; 66.4% for sinuses/fossae and 95.3% for missing tooth regions |
| Sukegawa [ | 2021 | Panoramic radiographs | CNN | 9767 images | 81.83% |
Baseline characteristics of the studies included in review by studying neural networks in periodontology.
| Study [Ref.] | Year of Publication | Type of Data | Type of Neural Network | Number of Database | Accuracy of Neural Network |
|---|---|---|---|---|---|
| Lee [ | 2018 | Periapical radiographs | CNN | 1044 images | 81.0% for premolars 76.7% for molars |
| Krois [ | 2019 | Panoramic radiographs | CNN | 353 images | 81% |
| Chang [ | 2020 | Panoramic radiographs | CNN | 340 images | 93% |
| Vadzyuk [ | 2021 | Survey (oral hygiene and nutrition) dental examination, psychological testing | ANN | 156 students | - |
| Jun-Young Cha [ | 2021 | Periapical radiographs | CNN | 708 images | 88.89% |