Feher Balazs, de Souza Oliveira Eduardo H, Mendes Duarte Poliana, Werdich Andreas A, Giannobile William V, Feres Magda
Department of Oral Medicine, Infection, and Immunity, Harvard School of Dental Medicine, Boston, Massachusetts, USA.
Department of Oral Surgery, University Clinic of Dentistry, Medical University of Vienna, Vienna, Austria.
J Periodontol. 2025 Apr 20. doi: 10.1002/JPER.24-0737.
Periodontitis is among the most prevalent chronic inflammatory conditions globally, and is associated with bone resorption, tooth loss, and systemic complications. While its treatment is largely standardized, individual outcomes vary, with some patients experiencing further disease progression despite adherence.
We developed a machine learning (ML) approach to predict individual outcomes 1 year post-treatment using retrospectively assessed baseline parameters. We trained a Random Forest model on 18 demographic, clinical, microbiological, and treatment-related features of 414 patients from randomized clinical trials (RCTs) in South America. We subsequently performed internal testing, interpretability analysis, and external testing on a second dataset of 78 patients from previous RCTs in North America and Europe exhibiting less severe disease.
In internal testing, the ML model achieved an area under the receiver operator characteristics curve (AUROC) of 0.93, an area under the precision-recall curve (AUPRC) of 0.90, an F-score of 0.82, and an out-of-bag score of 0.71. Relative importances were 0.42 for clinical, 0.33 for treatment-related, 0.21 for microbiological, and 0.04 for demographic features. In external testing, the ML model achieved an AUROC of 0.76, an AUPRC of 0.69, and an F-score of 0.71.
Our study indicates that an ML-based approach can assist in predicting individual responses to periodontal treatment. Prospective validation is needed for clinical application.
Using comprehensive data from patients with periodontitis, an inflammatory condition of the tooth-supporting tissues, a machine learning model was trained to predict how well patients might respond to different treatments after 1 year. The model was externally tested in patient populations from 2 continents different from the training dataset. The results suggest that with further research and refinement, this tool could eventually become a valuable asset in personalizing treatment plans for improved patient outcomes.
牙周炎是全球最常见的慢性炎症性疾病之一,与骨吸收、牙齿脱落及全身并发症相关。尽管其治疗方法在很大程度上已标准化,但个体治疗结果存在差异,部分患者即便坚持治疗仍会出现疾病进一步进展的情况。
我们开发了一种机器学习(ML)方法,利用回顾性评估的基线参数预测治疗后1年的个体治疗结果。我们基于来自南美洲随机临床试验(RCT)的414例患者的18种人口统计学、临床、微生物学及治疗相关特征,训练了一个随机森林模型。随后,我们对来自北美和欧洲先前RCT的78例病情较轻的患者组成的第二个数据集进行了内部测试、可解释性分析及外部测试。
在内部测试中,ML模型的受试者工作特征曲线下面积(AUROC)为0.93,精确召回率曲线下面积(AUPRC)为0.90,F分数为0.82,袋外分数为0.71。临床特征的相对重要性为0.42,治疗相关特征为0.33,微生物学特征为0.21,人口统计学特征为0.04。在外部测试中,ML模型的AUROC为0.76,AUPRC为0.69,F分数为0.71。
我们的研究表明,基于ML的方法可辅助预测个体对牙周治疗的反应。临床应用需要进行前瞻性验证。
利用牙周炎(一种牙齿支持组织的炎症性疾病)患者的综合数据,训练了一个机器学习模型,以预测患者在1年后对不同治疗的反应情况。该模型在与训练数据集不同的两大洲的患者群体中进行了外部测试。结果表明,经过进一步研究和完善,该工具最终可能成为个性化治疗方案以改善患者治疗效果的宝贵资产。