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在就诊人群中建立根龋预测模型

Development of a Root Caries Prediction Model in a Population of Dental Attenders.

作者信息

Fee Patrick A, Cassie Heather, Clarkson Jan E, Hall Andrew F, Ricketts David, Walsh Tanya, Goulão Beatriz

机构信息

Dundee Dental School, University of Dundee, Dundee, UK.

Division of Dentistry, School of Medical Sciences, Faculty of Biology, Medicine and Health, University of Manchester, Manchester, UK.

出版信息

Caries Res. 2022;56(4):429-446. doi: 10.1159/000526797. Epub 2022 Aug 31.

Abstract

Root caries prevalence is increasing as populations age and retain more of their natural dentition. However, there is generally no accepted practice to identify individuals at risk of disease. There is a need for the development of a root caries prediction model to support clinicians to guide targeted prevention strategies. The aim of this study was to develop a prediction model for root caries in a population of regular dental attenders. Clinical and patient-reported predictors were collected at baseline by routine clinical examination and patient questionnaires. Clinical examinations were conducted at the 4-year timepoint by trained outcome assessors blind to baseline data to record root caries data at two thresholds - root caries present on any teeth (RC > 0) and root caries present on three or more teeth (RC ≥ 3). Multiple logistic regression analyses were performed with the number of participants with root caries at each outcome threshold utilized as the outcome and baseline predictors as the candidate predictors. An automatic backwards elimination process was conducted to select predictors for the final model at each threshold. The sensitivity, specificity, and c-statistic of each model's performance was assessed. A total of 1,432 patient participants were included within this prediction model, with 324 (22.6%) presenting with at least one root caries lesion, and 97 (6.8%) with lesions on three or more teeth. The final prediction model at the RC >0 threshold included increasing age, having ≥9 restored teeth at baseline, smoking, lack of knowledge of spitting toothpaste without rinsing following toothbrushing, decreasing dental anxiety, and worsening OHRQoL. The model sensitivity was 71.4%, specificity 69.5%, and c-statistic 0.79 (95% CI: 0.76, 0.81). The predictors included in the final prediction model at the RC ≥ 3 threshold included increasing age, smoking, and lack of knowledge of spitting toothpaste without rinsing following toothbrushing. The model sensitivity was 76.5%, specificity 73.6%, and c-statistic 0.81 (95% CI: 0.77, 0.86). To the authors' knowledge, this is the largest published root caries prediction model, with statistics indicating good model fit and providing confidence in its robustness. The performance of the risk model indicates that adults at risk of developing root caries can be accurately identified, with superior performance in the identification of adults at risk of multiple lesions.

摘要

随着人口老龄化以及人们保留的天然牙列增多,根龋患病率正在上升。然而,目前普遍没有公认的方法来识别有患病风险的个体。因此,需要开发一种根龋预测模型,以支持临床医生制定有针对性的预防策略。本研究的目的是为定期就诊的人群开发一种根龋预测模型。在基线时,通过常规临床检查和患者问卷收集临床及患者报告的预测因素。在4年时间点,由对基线数据不知情的经过培训的结果评估人员进行临床检查,以记录两个阈值下的根龋数据——任何牙齿出现根龋(RC>0)以及三颗或更多牙齿出现根龋(RC≥3)。以每个结果阈值下有根龋的参与者数量作为结果,以基线预测因素作为候选预测因素,进行多元逻辑回归分析。在每个阈值下,采用自动向后消除法来选择最终模型的预测因素。评估了每个模型的敏感性、特异性和c统计量。共有1432名患者参与了该预测模型,其中324名(22.6%)至少有一处根龋病变,97名(6.8%)有三颗或更多牙齿出现病变。RC>0阈值下的最终预测模型包括年龄增加、基线时修复牙齿≥9颗、吸烟、不知道刷牙后不漱口吐出牙膏、牙科焦虑降低以及口腔健康相关生活质量恶化。该模型的敏感性为71.4%,特异性为69.5%,c统计量为0.79(95%CI:0.76,0.81)。RC≥3阈值下最终预测模型中的预测因素包括年龄增加、吸烟以及不知道刷牙后不漱口吐出牙膏。该模型的敏感性为76.5%,特异性为73.6%,c统计量为0.81(95%CI:0.77,0.86)。据作者所知,这是已发表的最大的根龋预测模型,统计数据表明模型拟合良好,并对其稳健性有信心。风险模型的表现表明,可以准确识别有发生根龋风险的成年人,在识别有多处病变风险的成年人方面表现更优。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d7dd/9808706/fcb3f835e14e/cre-0056-0429-g01.jpg

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