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A Prediction Model for External Root Resorption of the Second Molars Associated with Third Molars

Zhengwei Kou,Wuyang Zhang,Chen Li, Yu Zhang, Zijian Song,Yuzhen Zou, Haijing Wang, Zhenghua Liu, Bahetibieke Huerman,Tiange Deng,Kaijin Hu,Yang Xue,Ping Ji

INTERNATIONAL DENTAL JOURNAL(2025)

Fourth Mil Med Univ | Shenzhen Univ | Xian Med Univ | Chongqing Med Univ

Cited 0|Views6
Abstract
OBJECTIVES:The aim of this study is to investigate risk factors for external root resorption (ERR) of second molars (M2) associated with impacted third molars (M3), and to develop a prediction model that can offer dentists a reliable and efficient tool for predicting the likelihood of ERR. METHODS:A total of 798 patients with 2156 impacted third molars were collected from three centres between 1 December 2018 and 15 December 2018. ERR was identified by cone beam computed tomography examinations. The effects of different risk factors on the presence/absence of ERR and its severity were analysed using Chi-square or Fisher test. Multivariate logistic regressive analysis with stepwise variable selection methods was performed to identify factors which were significant predictors for ERR and its severity. Subsequently, a prediction model was developed, and the model performance was validated internally and externally. RESULTS:The overall incidence of ERR of second molars was 16.05%. The prediction model was established using six factors including position (upper/lower jaw), impact type, impact depth (PG: A-B-C), contact position, root number of M3, and age. In terms of internal validation, the prediction model demonstrated satisfactory performance, achieving an area under curve of 0.961 and a prediction accuracy of 0.907. As for external validation, the area under curve remained high at 0.953, with a prediction accuracy of 0.892. CONCLUSION:A risk prediction model for ERR was established in the present study. Position (upper or lower jaw), impact type, impact depth (PG: A-B-C), contact position, root number of M3, and age were identified as influencing variables which were significant predictors in the development of this predictive model. The prediction model showed great discrimination and calibration. CLINICAL RELEVANCE:This prediction model has the potential to aid dentists and patients in making clinical decisions regarding the necessity of M3 extraction.
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Third molar,External root resorption,Risk factor,Prediction model
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要点】:本研究旨在探究与阻生第三磨牙相关的第二磨牙外部根吸收的风险因素,并建立了一个预测模型,以帮助牙医高效可靠地预测外部根吸收的可能性。

方法】:使用锥形束计算机断层扫描确定外部根吸收情况,并通过卡方或费舍尔检验分析不同风险因素的影响,采用多元逻辑回归分析筛选预测外部根吸收及其严重程度的关键因素,进而建立预测模型,并进行内外部验证。

实验】:共收集了798名患者的2156颗阻生第三磨牙数据,外部根吸收的总发生率为16.05%。所建立的预测模型使用了六个因素:位置(上颌/下颌)、阻生类型、阻生深度(PG: A-B-C)、接触位置、第三磨牙的根数和年龄。内部验证显示模型的曲线下面积为0.961,预测准确度为0.907;外部验证的曲线下面积为0.953,预测准确度为0.892。