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首页> 外文期刊>BMC Oral Health >How combining different caries lesions characteristics may be helpful in short-term caries progression?prediction: model development on occlusal surfaces of primary teeth
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How combining different caries lesions characteristics may be helpful in short-term caries progression?prediction: model development on occlusal surfaces of primary teeth

机译:如何结合不同的龋病病变特征可能有助于短期龋齿进展?预测:原发性牙齿咬合表面的模型开发

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Few studies have addressed the clinical parameters' predictive power related to caries lesion associated with their progression. This study assessed the predictive validity and proposed simplified models to predict short-term caries progression using clinical parameters related to caries lesion activity status. The occlusal surfaces of primary molars, presenting no frank cavitation, were examined according to the following clinical predictors: colour, luster, cavitation, texture, and clinical depth. After one year, children were re-evaluated using the International Caries Detection and Assessment System to assess caries lesion progression. Progression was set as the outcome to be predicted. Univariate multilevel Poisson models were fitted to test each of the independent variables (clinical features) as predictors of short-term caries progression. The multimodel inference was made based on the Akaike Information Criteria and C statistic. Afterwards, plausible interactions among some of the variables were tested in the models to evaluate the benefit of combining these variables when assessing caries lesions. 205 children (750 surfaces) presented no frank cavitations at the baseline. After one year, 147 children were reassessed (70%). Finally, 128 children (733 surfaces) presented complete baseline data and had included primary teeth to be reassessed. Approximately 9% of the reassessed surfaces showed caries progression. Among the univariate models created with each one of these variables, the model containing the surface integrity as a predictor had the lowest AIC (364.5). Univariate predictive models tended to present better goodness-of-fit (AICs??388) and discrimination (C:0.959–0.966) than those combining parameters (AIC:365–393, C:0.958–0.961). When only non-cavitated surfaces were considered, roughness compounded the model that better predicted the lesions' progression (AIC?=?217.7, C:0.91). Univariate model fitted considering the presence of cavitation show the best predictive goodness-of-fit and discrimination. For non-cavitated lesions, the simplest way to predict those lesions that tend to progress is by assessing enamel roughness. In general, the evaluation of other conjoint parameters seems unnecessary for all non-frankly cavitated lesions.
机译:很少有研究已经解决了与其进展相关的龋病病变相关的临床参数的预测力。本研究评估的预测效度和提出的简化模型来预测使用与龋损活动状态的临床参数短期龋病发展。咬合面乳磨牙,呈现无坦率空化,根据以下临床预测进行了检查:颜色,光泽,空化,纹理和临床深度。一年后,使用国际龋病检测和评估系统重新评估儿童,以评估龋病病变进展。进展被设定为要预测的结果。单变量多泊松模型拟合测试每个独立变量(临床特点)作为短期龋病发展的预测因子。基于Akaike信息标准和C统计来进行多模推动。随后,其中的一些变量的合理互动的模型进行了测试,以评估评估龋齿损害时,结合这些变量的好处。 205名儿童(750个表面)在基线上没有坦率的空腔。一年后,重新评估了147名儿童(70%)。最后,128名儿童(733个表面)呈现完整的基线数据,并包括重新评估主要牙齿。大约9%的重新评估表面显示出龋齿进展。其中与这些变量中的每一个创建的单变量模型中,含有表面完整性作为一个预测模型具有最低AIC(364.5)。单变量预测模型倾向于呈现更好的合适的(AIC?& 388)和歧视(C:0.959-0.966),而不是那些组合参数(AIC:365-393,C:0.958-0.961)。当唯一的非空化表面被认为是,粗糙度配混的模型更好的预测病变进展(AIC = 217.7,C:0.91)。单因素模型拟合考虑气蚀的存在证明和歧视的最佳预测拟合优度。对于非空化的病变,预测那些倾向于进步病变最简单的方法是通过评估牙釉质粗糙。通常,对所有非坦率空气的病变对其他联合参数的评估似乎是不必要的。

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