AIM: To construct predictive models of periodontitis progression by applying Machine Learning (ML) to baseline data from a study of periodontitis progression. MATERIALS AND METHODS: Logistic regression (LR), multi-layer perceptron (MLP) and probabilistic graphic model (PGM) were utilised on data from a multi-centre longitudinal study in which periodontally healthy (nâ=â113) and periodontitis participants (nâ=â302) were examined bi-monthly for 12âmonths without treatment. Periodontal examination was performed, and salivary levels of 10 analytes were determined. Clinical and demographic parameters and analytes levels were input into the model. The performance of 14 models was compared using the area under the receiver operating characteristic curve (AUROC), and feature importance was assessed using SHapley Additive exPlanations (SHAP). RESULTS: The PGM model (Clinical measures, saliva IL-1β, age, sex) demonstrated the best overall performance (AUROCâ=â0.88), compared to LR (AUROCâ=â0.72) and MLP (AUROCâ=â0.58). Although MLP had a lower Brier score (0.12), its sensitivity was 0, limiting its clinical utility. In contrast, PGM achieved a balanced sensitivity (0.55) and specificity (0.81). Feature importance analyses highlighted the number of deep periodontal pockets as a key driver of model predictions in both PGM and MLP. CONCLUSIONS: ML models can predict periodontitis progression, supporting early detection strategies. Our integrative approach, combining clinical data with salivary biomarkers such as IL-1β, improved predictive accuracy.
Developing Predictive Models for Periodontitis Progression Using Artificial Intelligence: A Longitudinal Cohort Study.
利用人工智能开发牙周炎进展预测模型:一项纵向队列研究
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作者:Furquim Camila Pinheiro, Caruth Lannawill, Chandrasekaran Ganesh, Cucchiara Andrew, Kallan Michael J, Martin Lynn, Feres Magda, Bittinger Kyle, Divaris Kimon, Glessner Joseph, Kantarci Alpdogan, Giannobile William, Verma Shefali Setia, Teles Flavia
| 期刊: | Journal of Clinical Periodontology | 影响因子: | 0.000 |
| 时间: | 2025 | 起止号: | 2025 Oct;52(10):1478-1490 |
| doi: | 10.1111/jcpe.14194 | 研究方向: | 人工智能 |
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