Artificial Intelligence in Orofacial Pain: Diagnostic and Predictive Performance Across Machine Learning and Deep Learning Models
Abstract
1. Introduction
2. Materials and Methods
2.1. Study Design
2.2. Search Strategy
2.3. Eligibility Criteria
- Studies involving humans with OFP, regardless of etiology.
- Studies employing at least one AI method (including ML, DL, or CNN) for the diagnosis, classification, assessment, or prognosis of OFP.
- Studies reporting at least two diagnostic performance metrics, such as sensitivity, specificity, area under the curve (AUC), precision, recall, or F1 score, or studies reporting overall diagnostic accuracy as a standalone performance indicator
- Original full-text studies published in English, including retrospective and prospective designs, diagnostic accuracy studies, cohort studies, and experimental studies.
- Studies involving pediatric or neonatal patients.
- Studies focusing on AI applications in non-stomatognathic pain conditions (e.g., low back pain, visceral pain, or general postoperative pain without an orofacial component).
- Studies that did not employ an actual AI model (e.g., purely theoretical discussions, editorials, letters to the editor, conference abstracts, or study protocols).
- Studies lacking quantifiable AI performance metrics, which were considered only for narrative discussion if applicable.
- Reviews, meta-analyses, and narrative review articles.
2.4. Study Selection
3. Results and Discussion
3.1. Odontogenic Pain
3.2. Non-Odontogenic Pain
- Musculoskeletal pain
- Neuropathic pain
- Neurovascular pain
3.3. Summary of Findings
4. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| Acc | Accuracy |
| AFP | Atypical facial pain |
| AI | Artificial intelligence |
| AR | Augmented reality |
| AdaBoost | Adaptive boosting |
| ANNs | Artificial neural networks |
| AUC | Area under the curve |
| AFC | Automated face coding |
| CBCT | Cone–beam computed tomography |
| CNNs | Convolutional neural networks |
| CDE | Computer-based diagnostic engine |
| CISS | Constructive Interference in Steady State |
| CTN | Conventional trigeminal neuralgia |
| DL | Deep learning |
| DTI | Diffusion tensor imaging |
| DC/TMD | Diagnostic Criteria for Temporomandibular Disorders |
| DT | Decision tree |
| DNN | Deep neural network |
| EDA | Electrodermal activity |
| EMG | Electromyography |
| EEG | Electroencephalography |
| EHRs | Electronic health records |
| ECG | Electrocardiography |
| FIESTA | Fast imaging employing steady-state acquisition |
| fMRI | Functional magnetic resonance imaging |
| fNIRS | Functional near-infrared spectroscopy |
| GB | Gradient boosting |
| GPN | Glossopharyngeal neuralgia |
| F1 | F1 score |
| HFV | High frequency value |
| HRV | Heart rate variability |
| ICOP | International Classification of Orofacial Pain |
| ICHD-3 | International Classification of Head Disorders |
| KNN | K-nearest neighbors |
| LDF | Laser Doppler flowmetry |
| LSTM | Long short-term memory |
| LR | Logistic regression |
| ML | Machine learning |
| MLP | Multilayer perceptron |
| MMD | Masticatory muscle disorders |
| MARS | Multivariate adaptive regression splines |
| MRN | Magnetic resonance neurography |
| MRI | Magnetic resonance images |
| MRA | Magnetic resonance angiography |
| NB | Naive Bayes |
| NIN | Nervus Intermedius Neuralgia |
| NRS | Numerical rating scale |
| NLP | Natural language processing |
| NN | Neural network |
| NSRetx | Nonsurgical root canal retreatment |
| NVOP | Neurovascular orofacial pain |
| PHN | Postherpetic neuralgia |
| PO | Pulse oximetry |
| Pre | Precision |
| PR | Precision recall |
| PPG | Photo plethysmogram |
| OFP | Orofacial pain |
| RF | Random Forest |
| ROC | Receiver operating characteristic |
| RDC/TMD | Research Diagnostic Criteria for Temporomandibular Disorders |
| RNNs | Recurrent neural networks |
| Se | Sensitivity |
| Sp | Specificity |
| SQL | Structured query language |
| SVM | Support vector machine |
| SCL-90-R | Symptom checklist-90-revised |
| SMOTE | Synthetic minority oversampling technique |
| TMJ | Temporomandibular joint |
| TNP | Trigeminal neuropathic pain |
| TMJD | Temporomandibular joint disorders |
| TN | Trigeminal neuralgia |
| TDP | Trigeminal deafferentation pain |
| VAS | Visual analog scale |
| VRS | Verbal rating scale |
| QST | Quantitative sensory testing |
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| Component | Specification |
|---|---|
| Databases | PubMed/MEDLINE, Scopus, Web of Science |
| Timeframe | January 2016–March 2026 |
| Design | Standardized keyword search across databases |
| Search framework | AI concepts combined with orofacial pain domain terms |
| AI concept block | ML, DL, CNN, radiomics, computer vision, predictive/diagnostic/classification approaches |
| Clinical domain block | Spectrum of OFP conditions (odontogenic, and non-odontogenic, TMJD, neuropathic, neurovascular, and related entities) |
| Coverage strategy | Broad inclusion of etiologies and pain subtypes |
| Supplementary search | Reference list screening of included studies and systematic reviews |
| Author, Year | Type of Data | Algorithm(s) | Diagnostic Criteria | Dataset Size | Features for Training | Performance |
|---|---|---|---|---|---|---|
| Odontogenic Pain | ||||||
| Teichmann et al., 2020 [60] | Medical records | SVM, ANN, RF | PPG amplitude, wavelet level energies for ECG | 47 | Self-reported pain during periodontal probing | AUC: 0.811; Se: 71%; Sp: 70%; Acc: 70% |
| Hu et al., 2019 [62] | fNIRS; AR-based visualization | CNN | Hypersensitive teeth | 21 | Pain during thermal stimulation | Acc: 73.2%; Se: 54%; Sp: 78.2% |
| Teichmann et al., 2018 [65] | Medical records | RF | Ramfjord teeth and incisors without crowns | 20 | Pain during periodontal probing | AUC: 0.828; Se: 87%; Sp: 63% |
| Haddad et al., 2022 [63] | Medical records | ANN | Vascular dynamics in inflammatory tooth using infrared thermography | 76 | Painful symptoms vs. asymptomatic | Acc: 96.63%; Se: 98.69%; Pre: 95.87% |
| Nosrat et al., 2023 [59] | Clinical data | RF | NSRetx | 3666 | Moderate-severe pain ± swelling 14 days post-NSRetx | Acc: 82%; Se: 49%; Sp: 83%; Pre: 13% |
| Freitas et al., 2026 [58] | Clinical data | LR, SVM, GB, RF, DT, KNN, AdaBoost, MLP | Pain after endodontic treatment at 24 h and 72 h | 354 | Positive cold test response; persistent discomfort after stimulus removal | 24 h: AUC 74%, Pre 81%; 72 h: AUC 81%, Pre 88% |
| Non-Odontogenic Pain | ||||||
| Musculoskeletal Pain | ||||||
| McCartney et al., 2013 [88] | Online questionnaire data | ANN | Classification scheme for facial pain syndromes; binomial questionnaire | 607 | Responses to updated online facial pain questionnaire | TN1: Se 92.4%, Sp 62.5%; TN2: Se 87.8%, Sp 96.4%; TNP: Se 86.7%, Sp 95.2%; TDP: Se 0%, Sp 100%; Symptomatic TN: Se 100%; PHN: Se 100%; NIN: Se 50%, Sp 99%; AFP: Se 0%, Sp 99%; GPN: Se 0%, Sp 100%; TMJ: Se 0%, Sp 99% |
| Nam et al., 2018 [90] | Medical records | NLP | RDC/TMD | 260 | Maximum mouth opening | Acc: 96.6%; Se: 69%; Sp: 99.3% |
| Nocera et al., 2021 [91] | Medical records | HFV Algorithm | TMJD Pain Screener questionnaire | 451 | Large datasets for ML models and data augmentation | Acc: 95.55%; Se: 95% |
| Yildiz et al., 2024 [93] | Medical records | MARS | Shapiro–Wilk test; Levene’s test | 228 | Maximum mouth opening; TMJ lateral excursion | Acc: 89.66%; AUC: 93%; F1: 90.32% |
| Zatt et al., 2024 [94] | Clinical records | DT | Joint or muscle disorders | 122 | Clicking; mouth opening; temporal muscle palpation pain | Joint disorders: Acc 84%, F1 85%; Myofascial disorders: Acc 78%, F1 76% |
| De Araujo et al., 2024 [95] | Self-reported symptoms | NLP | TMJD Pain Screener questionnaire | 50 | Identification and differentiation of pain source | Acc: 86% |
| Lee et al., 2025 [96] | Self-reported symptoms | myTMJ mobile app | TMJD Pain Screener questionnaire | 110 | Jaw pain; headache; clicking jaw; facial pain | Acc: 95.5% |
| Neuropathic Pain | ||||||
| Mulford et al., 2022 [102] | Medical records | CNN | ICHD-3 criteria | 134 | Texture and morphological features from MRI related to TN | AUC: 0.83; Acc: 78%; Se: 82%; Sp: 76% |
| Latypov et al., 2023 [103] | Medical records | RF, LR | MRI images | 479 | Gray and white matter-based predictive metrics related to TN | RF: Acc 86%; LR: Acc 95% |
| Han et al., 2025 [104] | Clinical data | CNN | X-ray skull images | 664 (166 TN; 498 controls) | TN vs. unruptured intracranial aneurysms | Acc: 87.2%; Se: 72%; Sp: 91% |
| Neurovascular Pain | ||||||
| Garcia-Chimeno et al., 2017 [122] | Medical records | SVM, AdaBoost, NB | MRI changes in white and gray matter; questionnaires for migraine detection | 52 | Large datasets for ML models and data augmentation | SVM: Acc 95%, Pre 93%, F1 92%; AdaBoost: Acc 94%, Pre 96%, F1 92%; NB: Acc 93%, Pre 90%, F1 92% |
| Hindiyeh et al., 2022 [123] | Medical records | NLP, SQL | Migraine model scores | 2006 | Symptoms | Acc: 82.2%; Sp: 72%; F1: 92% |
| Cowan et al., 2022 [124] | Medical records | CDE | ICHD-3 criteria | 266 | Web-based expert questionnaire and analytics | Acc: 91.6%; Se: 89%; Sp: 97% |
| Khan et al., 2024 [125] | Medical records | DNN, SVM, KNN, RF, DT | Python-based Migraine classification framework | 400 | Large datasets for ML models and data augmentation | DNN: 99.66%; SVM: 94.60%; KNN: 97.10%; DT: 88.20%; RF: 98.50% |
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Iosif, L.; Imre, M.; Wagner, A.G.; Țâncu, A.M.C.; Didilescu, A.C.; Brand, H.S.; Cîmpean, A.-A.-M.; Ilinca, R.; Ciocan, L.T.; Vasilescu, V.G. Artificial Intelligence in Orofacial Pain: Diagnostic and Predictive Performance Across Machine Learning and Deep Learning Models. Diagnostics 2026, 16, 1801. https://doi.org/10.3390/diagnostics16121801
Iosif L, Imre M, Wagner AG, Țâncu AMC, Didilescu AC, Brand HS, Cîmpean A-A-M, Ilinca R, Ciocan LT, Vasilescu VG. Artificial Intelligence in Orofacial Pain: Diagnostic and Predictive Performance Across Machine Learning and Deep Learning Models. Diagnostics. 2026; 16(12):1801. https://doi.org/10.3390/diagnostics16121801
Chicago/Turabian StyleIosif, Laura, Marina Imre, Andreea Gabriela Wagner, Ana Maria Cristina Țâncu, Andreea Cristiana Didilescu, Hendrik Simon Brand, Andra-Ana-Maria Cîmpean, Radu Ilinca, Lucian Toma Ciocan, and Vlad Gabriel Vasilescu. 2026. "Artificial Intelligence in Orofacial Pain: Diagnostic and Predictive Performance Across Machine Learning and Deep Learning Models" Diagnostics 16, no. 12: 1801. https://doi.org/10.3390/diagnostics16121801
APA StyleIosif, L., Imre, M., Wagner, A. G., Țâncu, A. M. C., Didilescu, A. C., Brand, H. S., Cîmpean, A.-A.-M., Ilinca, R., Ciocan, L. T., & Vasilescu, V. G. (2026). Artificial Intelligence in Orofacial Pain: Diagnostic and Predictive Performance Across Machine Learning and Deep Learning Models. Diagnostics, 16(12), 1801. https://doi.org/10.3390/diagnostics16121801

