Favoreto Michael Willian, Matos Thalita de Paris, da Cruz Kaliane Rodrigues, Ferraz Aline Xavier, Carneiro Taynara de Souza, Reis Alessandra, Loguercio Alessandro D, de Araujo Cristiano Miranda
Department of Restorative Dentistry, Tuiuti University of Parana, Padre Ladislau Kula, 395, Santo Inácio, Curitiba, Paraná 82010-210, Brazil; Department of Restorative Dentistry, State University of Ponta Grossa, Avenida Carlos Cavalcanti, 4748, Bloco M, Sala 04, Ponta Grossa, Paraná 84030-900, Brazil.
Department of Restorative Dentistry, Tuiuti University of Parana, Padre Ladislau Kula, 395, Santo Inácio, Curitiba, Paraná 82010-210, Brazil.
J Dent. 2025 Feb;153:105517. doi: 10.1016/j.jdent.2024.105517. Epub 2024 Dec 5.
To develop a supervised machine learning model to predict the occurrence and intensity of tooth sensitivity (TS) in patients undergoing in-office dental bleaching testing various algorithm models.
Retrospective data from 458 patients were analyzed, including variables such as the occurrence and intensity of TS, basal tooth color, bleaching material characteristics (concentration and pH), intervention details (number and duration of applications), and patient age. Classification and regression models were evaluated using 5-fold cross-validation and assessed based on various performance parameters.
For the predictive classification task (occurrence of TS), the developed models achieved a maximum area under the receiver operating characteristic curve (AUC) of 0.76 [0.62-0.88] on the test data, with an F1-score of 0.80 [0.71-0.87]. In cross-validation, the highest AUC reached 0.86 [0.84-0.88], and the highest F1-score was 0.78 [0.75-0.83]. For predicting TS intensity, the regression models demonstrated a minimum mean absolute error (MAE) of 1.76 [1.45-2.06] and a root mean square error (RMSE) of 2.38 [2.06-2.69] on the test set. During cross-validation, the lowest MAE was 1.84 [1.67-2.03], with an RMSE of 2.39 [2.20-2.58].
The supervised machine learning model for estimating the occurrence and intensity of TS in patients undergoing in-office bleaching demonstrated good predictive power. The Gradient Boosting Classifier and Support Vector Machine Regressor algorithms stood out as having the greatest predictive power among those tested.
These models can serve as valuable tools for anticipating tooth sensitivity in this patient population, facilitating better post-treatment management and control.
开发一种监督式机器学习模型,以预测接受诊室牙齿美白治疗的患者牙齿敏感(TS)的发生情况和严重程度,并测试各种算法模型。
分析了458例患者的回顾性数据,包括TS的发生情况和严重程度、基础牙齿颜色、美白材料特性(浓度和pH值)、干预细节(应用次数和持续时间)以及患者年龄等变量。使用五折交叉验证评估分类和回归模型,并根据各种性能参数进行评估。
对于预测分类任务(TS的发生情况),开发的模型在测试数据上的受试者操作特征曲线下面积(AUC)最大值为0.76 [0.62 - 0.88],F1分数为0.80 [0.71 - 0.87]。在交叉验证中,最高AUC达到0.86 [0.84 - 0.88],最高F1分数为0.78 [0.75 - 0.83]。对于预测TS严重程度,回归模型在测试集上的最小平均绝对误差(MAE)为1.76 [1.45 - 2.06],均方根误差(RMSE)为2.38 [2.06 - 2.69]。在交叉验证期间,最低MAE为1.84 [1.67 - 2.03],RMSE为2.39 [2.20 - 2.58]。
用于估计接受诊室美白治疗患者TS发生情况和严重程度的监督式机器学习模型具有良好的预测能力。在测试的算法中,梯度提升分类器和支持向量机回归算法的预测能力最强。
这些模型可作为预测该患者群体牙齿敏感情况的有价值工具,有助于更好地进行治疗后管理和控制。