Big Data Research Center, Changhua Christian Hospital, Changhua, Taiwan.
Institute of Epidemiology and Prevention Medicine, College of Public Health, National Taiwan University, Taipei, Taiwan.
J Periodontol. 2017 Dec;88(12):1348-1355. doi: 10.1902/jop.2017.170138. Epub 2017 Jul 28.
The accuracy of a prediction model for periodontal disease using the community periodontal index (CPI) has been undertaken by using an area under a receiver operating characteristics (AUROC) curve. How the uncalibrated CPI, as measured by general dentists trained by periodontists in a large epidemiologic study, and affects the performance in a prediction model, has not been researched yet.
A two-stage design was conducted by first proposing a validation study to calibrate CPI between a senior periodontal specialist and trained general dentists who measured CPIs in the main study of a nationwide survey. A Bayesian hierarchical logistic regression model was applied to estimate the non-updated and updated clinical weights used for building up risk scores. How the calibrated CPI affected performance of the updated prediction model was quantified by comparing AUROC curves between the original and updated models.
Estimates regarding calibration of CPI obtained from the validation study were 66% and 85% for sensitivity and specificity, respectively. After updating, clinical weights of each predictor were inflated, and the risk score for the highest risk category was elevated from 434 to 630. Such an update improved the AUROC performance of the two corresponding prediction models from 62.6% (95% confidence interval [CI]: 61.7% to 63.6%) for the non-updated model to 68.9% (95% CI: 68.0% to 69.6%) for the updated one, reaching a statistically significant difference (P <0.05).
An improvement in the updated prediction model was demonstrated for periodontal disease as measured by the calibrated CPI derived from a large epidemiologic survey.
使用社区牙周指数(CPI)预测牙周病的准确性已经通过接受者操作特征(ROC)曲线下面积(AUROC)进行了评估。然而,尚未研究未经校准的 CPI 如何影响预测模型的性能,这些未经校准的 CPI 是由接受过牙周病学家培训的普通牙医在一项大型流行病学研究中测量的。
采用两阶段设计,首先提出一项验证研究,以校准高级牙周病专家与在全国性调查的主要研究中测量 CPI 的经过培训的普通牙医之间的 CPI。应用贝叶斯分层逻辑回归模型来估计用于构建风险评分的未经更新和更新的临床权重。通过比较原始和更新模型的 AUROC 曲线,来量化校准后的 CPI 如何影响更新后的预测模型的性能。
验证研究中获得的关于 CPI 校准的估计值分别为敏感性和特异性的 66%和 85%。更新后,每个预测因子的临床权重增加,最高风险类别下的风险评分从 434 升高至 630。这种更新提高了两个相应预测模型的 AUROC 性能,从未经更新模型的 62.6%(95%置信区间 [CI]:61.7%至 63.6%)提高到更新模型的 68.9%(95% CI:68.0%至 69.6%),差异具有统计学意义(P<0.05)。
使用大型流行病学调查得出的校准 CPI 改进了更新后的牙周病预测模型。