Serroni Matteo, Ravidà Andrea, Santamaria Pasquale, Dias Debora R, Cheng Guo-Liang, Shaikh Samar, Natanzi Nima David, Saleh Muhammad H A, Nibali Luigi, Troiano Giuseppe
Periodontology Unit, Department of Innovative Technologies in Medicine & Dentistry, University 'G. D'Annunzio' of Chieti-Pescara, Chieti, Italy.
Department of Periodontics and Preventive Dentistry, University of Pittsburgh School of Dental Medicine, Pittsburgh, Pennsylvania, USA.
J Clin Periodontol. 2025 Jul;52(7):1044-1055. doi: 10.1111/jcpe.14143. Epub 2025 Mar 10.
To externally validate the potential applicability of the 2018 classification of periodontal diseases as a risk assessment tool, through the use of a nomogram built on a multivariate predictor model.
Data from 459 patients with periodontitis, across four cohorts (three in the United States, and one in the United Kingdom), were retrospectively analysed. After staging and grading periodontitis before active periodontal therapy (APT), patients were categorised by the model as having 'low tooth loss' (≤ 1 teeth lost due periodontal reasons [TLP]) or 'high tooth loss' (≥ 2 TLP) at a 10-year follow-up. Model discrimination was evaluated using the area under the receiver operating characteristic (AUC-ROC) curve. Calibration was assessed through calibration plots, calibration-in-the-large (CITL), calibration slope and the expected:observed (E:O) ratio. Recalibration methods, including Temperature Scaling, Isotonic Regression and Beta Calibration, were also tested.
The original nomogram yielded an aggregate AUC-ROC 0.72 but showed poor calibration. Isotonic recalibration improved the AUC-ROC to 0.77 and enhanced calibration metrics, achieving an E-statistic of 1.00, CITL of 0.00 and a calibration slope of 1.00.
A nomogram based on the components of the 2018 periodontal disease classification can serve as a prognostic tool with cross-site applicability across clinical settings in industrialised countries, accurately predicting the 10-year risk of tooth loss due to periodontitis from the initial assessment conducted before the start of APT.
通过使用基于多变量预测模型构建的列线图,对外验证2018年牙周疾病分类作为风险评估工具的潜在适用性。
回顾性分析来自四个队列(三个在美国,一个在英国)的459例牙周炎患者的数据。在进行积极牙周治疗(APT)前对牙周炎进行分期和分级后,根据该模型将患者在10年随访时分为“低牙齿丧失”(因牙周原因丧失牙齿数≤1颗[TLP])或“高牙齿丧失”(≥2颗TLP)。使用受试者工作特征曲线下面积(AUC-ROC)评估模型的辨别力。通过校准图、大样本校准(CITL)、校准斜率和预期:观察(E:O)比评估校准情况。还测试了重新校准方法,包括温度缩放、等距回归和贝塔校准。
原始列线图的汇总AUC-ROC为0.72,但校准效果较差。等距重新校准将AUC-ROC提高到0.77,并改善了校准指标,E统计量为1.00,CITL为0.00,校准斜率为1.00。
基于2018年牙周疾病分类组成部分的列线图可作为一种预后工具,在工业化国家的临床环境中具有跨站点适用性,能够从APT开始前进行的初始评估准确预测因牙周炎导致的10年牙齿丧失风险。