Artificial Intelligence and Its Clinical Applications in Orthodontics: A Systematic Review
Abstract
:1. Introduction
2. Materials and Methods
2.1. Protocol and Registration
2.2. Search Processing
2.3. Inclusion Criteria
- Population: human subjects;
- Intervention: orthodontic diagnosis, treatment plan, and treatment monitoring;
- Comparison: groups with AI intervention and groups with manual intervention;
- Outcome: diagnosis, treatment plan, and pre- and post-treatment with AI evaluation.
2.4. Exclusion Criteria
2.5. Data Processing
2.6. Article Identification Procedure
2.7. Study Evaluation
2.8. Quality Assessment
3. Results
4. Discussion
4.1. Diagnosis
4.1.1. CA and AI
4.1.2. AI-Guided Assessment of Vertebral Maturation
4.2. AI-Guided Treatment Plan
4.3. Orthodontic Treatment Monitoring
4.4. Quality Assessment and Risk of Bias
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
AI | Artificial Intelligence |
ANB | Angle between point A, point B, and nasion |
ANS | Anterior Nasal Spine |
Art | Article |
Ba | Basion |
CA | Cephalometric Analysis |
CBCT | Cone Beam Computed Tomography |
CDSS | Clinical Decision Support System |
CL | Cephalometric Landmark |
CNN | Convolutional Neural Network |
CVM | Cervical vertebral maturation |
DCNN | Deep Convolutional Neural Network |
DFA | Deep Focus Approach |
DG | Digital Manual |
DL | Deep Learning |
DT | Decision Tree |
Go | Gonion |
ICC | Intraclass Correlation Coefficient |
ITMs | Integrated Tooth Models |
k-NN | k-Nearest Neighbors |
LR | Logistic Regression |
Me | Menton |
ML | Machine Learning |
Na | Nasion |
NB | Naive Bayes |
Or | Orbitale |
PNS | Posterior Nasal Spine |
Pg | Pogonion |
PRISMA | Preferred Reporting Items for Systematic Reviews and Meta-Analyses |
PROSPERO | The International Prospective Register of Systematic Reviews |
Pt | Pterigomaxillary fissure point |
RF | Random Forest |
ROI | Region of Interest |
SMV | Skeletal Maturity Indicators |
SVM | Support Vector Machines |
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Authors/Years | Type of Study | Type of AI | Materials and Methods | Results |
---|---|---|---|---|
R. Patcas et al., 2018 [32] | Observational study | ANN | Photographs of consecutive orthognathic patients were taken before and after treatment. | According to the algorithmic assessments, a significant majority of patients (66.4%) showed improvements in their appearance after treatment, resulting in an average perceived age that was nearly one year younger. |
Ye-Hyun Kim et al., 2021 [33] | Observational study | ANN (ResNet-18, ResNet-34, ResNet-50 and ResNet-101) | The study included individuals who needed non-surgical orthodontic therapy and surgical orthodontic treatment. | ResNet-18 is the best model for orthognathic surgery diagnosis, providing important insights into the ideal characteristics of an AI framework for medical image-based decision-making. |
Harim Kim et al., 2023 [34] | Observational study | AI-based automated assessment system | The dataset used for primary verification of the AI-based automated assessment system for Fishman’s SMI consisted of hand–wrist radiographs. | AI-based automated assessment system has proven to provide highly accurate SMI prediction with minimal errors. |
Tyler Wood et al., 2023 [35] | Retrospective study | ML | Cephalometric data with Class I Angle malocclusion were utilized to train several ML methods. ANOVA was used to analyze the differences. | All of the ML systems tested properly predicted postpubertal mandibular length and Y axis of growth. |
Ho Jin-Kim et al., 2022 [31] | Retrospective study | DCNN | A total of 1574 cephalometric pictures were included in the study. | The micro-average values of the DCNN-based AI model surpassed the automated tracing AI program in terms of performance. |
Authors/Years | Type of Study | Type of AI | Materials and Methods | Results |
---|---|---|---|---|
Galina Bulatova et al., 2021 [37] | Retrospective study | AI software Ceppro DDH Inc. (Seoul, Korea) | Lateral cephalograms were analyzed by a calibrated senior orthodontic resident using Dolphin Imaging® and the same images were uploaded to the AI software Ceppro DDH. | There was no statistical difference in manually analyzed CLs and those obtained by AI. |
Young Hyun Kim et al., 2021 [38] | Retrospective study | The developed DL model has a two-step structure. | Two examiners manually identified the 13 most important CLs to set as references. The landmarks were automatically measured using the proposed model in lateral cephalometric images. | The proposed DL model can perform fully automatic identification of CLs. |
Thaísa Pinheiro Silva et al., 2022 [39] | Retrospective study | CEFBOT (RadioMemory Ltd., Belo Horizonte, Brazil) | An expert and CEFBOT evaluated the 66 landmarks and 10 linear and angular measures featured in Arnett’s analysis on the radiograph. | CEFBOT (https://www.radiomemoryglobal.com/#h.r8d6r24868b accessed on 14 November 2023) software can be considered a promising tool. |
Felix Kunz et al., 2020 [5] | Retrospective study | A customized open-source CNN DL algorithm (Keras and Google TensorFlow) is directed toward analyzing visual imagery and has an input layer, multiple hidden layers, and an output layer. | Both AI and each examiner analyzed 12 orthodontic parameters based on cephalometric images. | No clinically relevant difference was noticed between the two analyses. |
Jaerong Kim et al., 2021 [40] | Retrospective study | A cascade network consisting of ROI detection and landmark prediction. | Two orthodontists evaluated 100 lateral cephalograms and the mean of these values was considered the gold standard. The DL model evaluated 3150 lateral cephalograms. | The overall automated detection error was 1.36 ± 0.98. The accuracy of CL recognition was comparable with that made by two orthodontists with more than 10 years of clinical experience. |
Sangmin Jeon et al., 2021 [41] | Retrospective study | CephX for the AI analysis. | The cephalograms were analyzed with V-ceph for the conventional CA and with CephX for the AI analysis. | Variations were found in saddle angle, linear measurements of maxillary incisor to NA line, and mandibular incisor to NB line. |
Mehmet Uğurlu et al., 2022 [42] | Retrospective study | AI system (CranioCatch, Eskisehir, Turkey). | A CNN-based AI algorithm for automatic CL detection was developed and used to detect CLs.Then, an orthodontist with 9 years of experience analyzed the CA of the AI. | There were no statistical differences between manual identification and AI groups in 11 out of 16 points. AI increased the efficiency of CL identification. |
Gökhan Çoban et al., 2022 [43] | Retrospective study | WebCeph was used for AI-based CA. | Differences between using the semi-automated software Dolphin® (v. 11.5, Chatsworth, CA, USA) and WebCeph (WEBCEPH™, Artificial Intelligence Orthodontic & Orthognathic Cloud Platform, South Korea, 2020) software for each CL. | It was determined that there was a noticeable change between SNB, ANB, and SN.PP, U1.SN, U1-NA, U1.NA, L1-APog, IMPA, L1-NB, and ULE. |
Ioannis A Tsolakis et al. [44] | Retrospective study | CS imaging V8 software was used for AI-based CA. | The difference between using semi-automated software Dolphin® 3D Imaging program (version 11.0) and CS imaging V8 software for each CL. | There were no significant differences between the two methods (p > 0.0027) for the SN-MP, U1-SN, SNA, SNB, ANB, L1-NB, SNPg, ANPg, SN/ANS-PNS, SN/GoGn, U1/ANS-PNS, L1-APg, U1-NA, and L1-GoGn landmarks. |
Britta Ristau et al., 2022 [46] | Retrospective study | AudaxCeph®’s automatic tracing software. | The difference between AudaxCeph®’s automatic tracing and a semi-automated approach by human examiners using the same software. | AudaxCeph® was a reliable resource for clinicians in analyzing orthodontic cases, even if there were unreliable points, such as Porion, Orbitale, U1 apex, and L1 apex. |
Mostafa El-Dawlatly et al., 2023 [47] | Retrospective study | WebCeph software and OnyxCeph software. | Lateral cephalometric radiographs were evaluated. | Fewer differences were obtained with the modified WebCeph software method than with the OnyxCeph method. |
Pamir Meriç et al., 2020 [49] | Retrospective study | Dolphin Imaging® 13.01, app-aided tracing using the CephNinja 3.51 app, and fully automated web-based tracing with CephX. | Three methods were used to execute cephalometric measurements: Dolphin Imaging® 13.01, app-aided tracing using the CephNinja 3.51 app, and fully automated web-based tracing with CephX. | Manual correction of CephX landmarks gave similar outcomes to digital tracings using CephNinja and Dolphin®. |
Authors/Years | Type of Study | Type of AI | Materials and Methods | Results |
---|---|---|---|---|
Salih Furkan Atici et al., 2023 [51] | Retrospective study | A DL network is shown, and a parallel structured DCNN with a preprocessing layer that uses X-ray pictures and age as input is proposed. | A custom CNN model with two sections, feature extraction and classification, was employed to categorize CVM into six maturation phases (CS1–CS6). AggregateNet was utilized in the model for feature extraction, while directional filters were employed as the preprocessing layer to improve the information. | AggregateNet, when combined with adjustable directional edge filters, outperformed other models with fully automated CVM stage determination. |
Akay et al., 2023 [59] | Retrospective study | DL-based CNN | Digital lateral cephalometric radiographs of patients between 8 and 22 years were evaluated. | The study demonstrated that the developed model achieved moderate success. |
Seo et al., 2022 [54] | Retrospective study | DeepLabv3, a semantic segmentation network for delimited cervical vertebral region, and Inception-ResNet-v2, a classification network converted to a regression model for age estimate, were used. | The study included 900 people between the ages of 4 and 18 who had a lateral cephalogram and a hand–wrist radiograph on the same day. First, the cervical vertebrae were segmented from the lateral cephalogram using DeepLabv3 architecture. Second, after isolating the region of interest from the segmented picture for preprocessing, bone age was estimated using transfer learning and an Inception-ResNet-v2 architecture-based regression model. | Using the gradient-weighted regression activation map methodology, key regions were visualized on cervical vertebral imaging to create a prediction. |
Seo et al., 2021 [54] | Retrospective observational study | CNN | 600 lateral cephalometric radiographs of patients aged 6–19 years; CNNs were used for CVM classification. | Achieved more than 90% accuracy in classifying CVM phases. |
Authors/Years | Type of Study | Type of AI | Materials and Methods | Results |
---|---|---|---|---|
Taylor Mason et al., 2023 [63] | Retrospective observational study | ML (LR, RF, SVMs, ANN) | 393 patients, a diverse population. Trained LR, RF, SVM, and ANN on 70% of data, and tested on 30%. Evaluated accuracy and precision for extraction decisions. | High accuracy in predicting tooth extraction decisions. |
Etemad et al., 2021 [64] | Retrospective observational study | ANN, RF | 838 orthodontic patient records. Split into extraction and non-extraction samples. Used 117 clinical and cephalometric variables for ML (RF and MLP) for tooth extraction prediction. | High accuracy in predicting tooth extraction therapy. |
Lee et al., 2022 [66] | Retrospective observational study | ML (RF, LR) | 196 skeletal class III patients, 136 training, 60 tests. Estimated neural network success rate. Binary classifier for surgical case prediction. | AI is useful for successfully classifying patients up to 90% of candidates for surgery. |
Chaiprasittikul et al., 2023 [67] | Retrospective observational study | ANN | Analysis of 538 cephalometric radiographs using Detectron2 and ANN. Developed neural network decision support system for orthognathic surgery prediction. | AI is useful for successfully classifying up to 90% of candidates for surgery. |
Prasad et al., 2022 [62] | Retrospective observational study | ML (extreme gradient boosting, RF, decision tree) | Analyzed 700 orthodontic cases with 33 inputs and 11 outputs. Developed ML models and compared their predictions with expert orthodontist decisions. | The overall accuracy of the models was 84%. |
Jung et al., 2016 [65] | Retrospective observational study | ANN | Analyzed 156 patients with 12 cephalometric variables, 6 indexes, and 3-bit extraction pattern diagnosis. Created and evaluated ANN. | Effectiveness in assisting professionals in decision-making with success rates of 84–93%. |
Authors Years | Type of Study | Type of AI | Materials and Methods | Results |
---|---|---|---|---|
Patcas et al., 2019 [32] | Observational study | AI to explain how orthodontic therapy affects facial beauty and apparent age. | Every photograph has patient-related information (patient age, sex, malocclusion, and surgeries performed) tagged on it. With specialized CNNs trained on >0.5 million photos for age estimation and with >17 million attractiveness ratings, face attractiveness (score: 0–100) and apparent age were determined for each image. | The algorithms discovered that the vast majority of patients’ looks improved following therapy (66.4%), leading to a roughly one-year younger appearance, especially after profile-altering surgery. Similar positive effects of orthognathic therapy on beauty were seen in 74.7% of cases, particularly following lower jaw surgery. |
Caruso et al., 2021 [68] | Case report | Correct biomechanics were guaranteed by the software’s analysis of the aligner’s fit and retention. | Depending on the chosen protocol, guided scanning will transmit 20–30 photos to the servers for processing, which may be broken down into four steps: Step 1: The system processes the raw photos. They are evaluated for quality to see if the patient requires another scan or not; Step 2: Using a prediction score (% of certainty), the algorithm can locate teeth and identify them. In some orthodontic extraction situations, the technology is so sophisticated that it can sometimes tell if a tooth is a first or second premolar. Additionally, the gingiva is shown; Step 3: Finding the various clinical parameters; Step 4: The AI will review the data and, using the selected strategy, will provide instructions to the patient and the team. | The patient demonstrated exceptional compliance with and confidence in the DM system on receiving nearly all “GO” signals during his therapy. Up to the completion of all clinical objectives, monitoring was activated. Therefore, it was just put on hold while awaiting the new aligners. |
Lee et al., 2022 [70] | Clinical Study | To compare the creation of integrated tooth models (ITMs) with the manual method and to assess the accuracy of DL-based ITMs by combining intraoral scans and CBCT scans for three-dimensional (3D) root position evaluation during orthodontic treatment. | 15 patients who underwent orthodontic treatment with premolar extraction had intraoral scans and related CBCT scans taken before and after treatment. | The procedure times taken to obtain the measurements were longer in the manual method than in the DL method. |
Ferlito et al., 2023 [72] | Prospective study | Clear aligner treatment has lately gained popularity due to the use of AI for remote monitoring. DL algorithms on a patient’s mobile smartphone were used to decide readiness to move to the next aligner (i.e., “GO” versus “NO-GO”) and detect places where the teeth do not match the clear aligners. | Thirty patients under treatment with clear aligners at an academic clinic were scanned twice using a remote smartphone monitoring software, and the results were compared. | A 44.7% gauge compatibility was observed. Between Scan 1 and 2, 83.3% of patient instructions agreed; however, 0% agreed on whether and/or how many teeth had tracking difficulties. In the mesiodistal, buccolingual, occlusogingival, tip, torque, and rotational dimensions, patients who received a “GO” instruction exhibited mean differences of 1.997 mm, 1.901 mm, 0.530 mm, 8.911, 7.827, and 7.049, respectively. These differences were not statistically significant when patients were given “NO-GO” instructions. |
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Dipalma, G.; Inchingolo, A.D.; Inchingolo, A.M.; Piras, F.; Carpentiere, V.; Garofoli, G.; Azzollini, D.; Campanelli, M.; Paduanelli, G.; Palermo, A.; et al. Artificial Intelligence and Its Clinical Applications in Orthodontics: A Systematic Review. Diagnostics 2023, 13, 3677. https://doi.org/10.3390/diagnostics13243677
Dipalma G, Inchingolo AD, Inchingolo AM, Piras F, Carpentiere V, Garofoli G, Azzollini D, Campanelli M, Paduanelli G, Palermo A, et al. Artificial Intelligence and Its Clinical Applications in Orthodontics: A Systematic Review. Diagnostics. 2023; 13(24):3677. https://doi.org/10.3390/diagnostics13243677
Chicago/Turabian StyleDipalma, Gianna, Alessio Danilo Inchingolo, Angelo Michele Inchingolo, Fabio Piras, Vincenzo Carpentiere, Grazia Garofoli, Daniela Azzollini, Merigrazia Campanelli, Gregorio Paduanelli, Andrea Palermo, and et al. 2023. "Artificial Intelligence and Its Clinical Applications in Orthodontics: A Systematic Review" Diagnostics 13, no. 24: 3677. https://doi.org/10.3390/diagnostics13243677
APA StyleDipalma, G., Inchingolo, A. D., Inchingolo, A. M., Piras, F., Carpentiere, V., Garofoli, G., Azzollini, D., Campanelli, M., Paduanelli, G., Palermo, A., & Inchingolo, F. (2023). Artificial Intelligence and Its Clinical Applications in Orthodontics: A Systematic Review. Diagnostics, 13(24), 3677. https://doi.org/10.3390/diagnostics13243677