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Count Regression Models with Application to Caries Experience for Children Attending Lady Northey Dental Clinic in Nairobi

机译:计数回归模型及其在内罗毕诺思夫人牙科诊所就诊儿童的龋病经验中的应用

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Count regression models were developed to model data with integer outcome variables. These models can be employed to examine occurrence and frequency of occurrence. Four common types of count regression models are applied to caries data among children aged between three and six years attending Lady Northey Dental clinic between September, 2014 and November 2014. These models include Poisson, Negative Binomial (NB), Zero Inflated Poisson (ZIP) and Zero Inflated Negative Binomial (ZINB). The simplest count regression model, Poisson, was fitted first before considering other complex models. However, it did not perform better than its improved counterparts. The NB model proved to be the the simplest model that fits the data well according to Akaike Information Criterion (AIC), and was therefore employed to determine the important predictors of caries experience among the children. Model comparison was performed on the four models by use of AIC. Deviance values for various NB models were compared and the model with the least deviance value was considered to give a subset of best predictors of Early Childhood Caries (ECC). These predictors included age, gender, brushing frequency, feeding habit biscuits, feeding habit jam and highest education of the mother.
机译:开发了计数回归模型以对具有整数结果变量的数据进行建模。这些模型可用于检查发生情况和发生频率。在2014年9月至2014年11月间,在Northey夫人牙科诊所就诊的3至6岁儿童的龋齿数据中使用了四种常见的计数回归模型。这些模型包括泊松,负二项式(NB),零膨胀泊松(ZIP)和零膨胀负二项式(ZINB)。在考虑其他复杂模型之前,首先拟合了最简单的计数回归模型Poisson。但是,它并没有比改进后的同类产品更好。根据Akaike信息准则(AIC),NB模型被证明是最适合数据的最简单模型,因此被用来确定儿童龋齿经历的重要预测因子。使用AIC对四个模型进行了模型比较。比较了各种NB模型的偏差值,并认为偏差值最小的模型给出了早期儿童龋齿(ECC)的最佳预测子集。这些预测因素包括年龄,性别,刷牙频率,喂养习惯饼干,喂养习惯堵塞和母亲的最高学历。

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