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Impact of communities, health, and emotional-related factors on smoking use: comparison of joint modeling of mean and dispersion and Bayes’ hierarchical models on add health survey

机译:社区,健康和与情感有关的因素对吸烟的影响:均值和分散联合模型与贝叶斯分层模型在新增健康调查中的比较

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Background The analysis of correlated binary data is commonly addressed through the use of conditional models with random effects included in the systematic component as opposed to generalized estimating equations (GEE) models that addressed the random component. Since the joint distribution of the observations is usually unknown, the conditional distribution is a natural approach. Our objective was to compare the fit of different binary models for correlated data in Tabaco use. We advocate that the joint modeling of the mean and dispersion may be at times just as adequate. We assessed the ability of these models to account for the intraclass correlation. In so doing, we concentrated on fitting logistic regression models to address smoking behaviors. Methods Frequentist and Bayes’ hierarchical models were used to predict conditional probabilities, and the joint modeling (GLM and GAM) models were used to predict marginal probabilities. These models were fitted to National Longitudinal Study of Adolescent to Adult Health (Add Health) data for Tabaco use. Results We found that people were less likely to smoke if they had higher income, high school or higher education and religious. Individuals were more likely to smoke if they had abused drug or alcohol, spent more time on TV and video games, and been arrested. Moreover, individuals who drank alcohol early in life were more likely to be a regular smoker. Children who experienced mistreatment from their parents were more likely to use Tabaco regularly. Conclusions The joint modeling of the mean and dispersion models offered a flexible and meaningful method of addressing the intraclass correlation. They do not require one to identify random effects nor distinguish from one level of the hierarchy to the other. Moreover, once one can identify the significant random effects, one can obtain similar results to the random coefficient models. We found that the set of marginal models accounting for extravariation through the additional dispersion submodel produced similar results with regards to inferences and predictions. Moreover, both marginal and conditional models demonstrated similar predictive power.
机译:背景技术通常通过使用条件模型来解决相关二进制数据的分析,该条件模型具有包含在系统组件中的随机效应,这与解决随机分量的广义估计方程(GEE)模型相反。由于观测值的联合分布通常是未知的,因此条件分布是自然的方法。我们的目标是比较Tabaco中使用的相关数据的不同二进制模型的拟合度。我们主张均值和离散度的联合建模有时可能是足够的。我们评估了这些模型解释类内相关性的能力。在此过程中,我们专注于拟合逻辑回归模型以解决吸烟行为。方法使用Frequentist和Bayes的层次模型来预测条件概率,并使用联合模型(GLM和GAM)模型来预测边际概率。这些模型适合使用Tabaco进行的“青少年对成人健康的国家纵向研究(添加健康)”数据。结果我们发现,如果人们的收入较高,高中或高等教育程度高且有宗教信仰,他们吸烟的可能性就会降低。如果个人滥用毒品或酒精,在电视和视频游戏上花费更多时间并被捕,则他们更容易吸烟。此外,早年喝酒的人更有可能成为经常吸烟的人。遭受父母虐待的儿童更有可能定期使用Tabaco。结论均值和分散模型的联合建模为解决类内相关提供了灵活而有意义的方法。它们不需要一个就可以识别随机效应,也不需要从层次结构的一个层次区分到另一个层次。而且,一旦可以识别出明显的随机效应,就可以获得与随机系数模型相似的结果。我们发现,通过附加色散子模型解释了额外变化的边际模型集在推论和预测方面产生了相似的结果。此外,边际模型和条件模型都显示出相似的预测能力。

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