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Statistical modeling of volume of alcohol exposure for epidemiological studies of population health: the US example

机译:用于人群健康的流行病学研究的酒精暴露量的统计模型:美国的例子

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Background Alcohol consumption is a major risk factor in the global burden of disease, with overall volume of exposure as the principal underlying dimension. Two main sources of data on volume of alcohol exposure are available: surveys and per capita consumption derived from routine statistics such as taxation. As both sources have significant problems, this paper presents an approach that triangulates information from both sources into disaggregated estimates in line with the overall level of per capita consumption. Methods A modeling approach was applied to the US using data from a large and representative survey, the National Epidemiologic Survey on Alcohol and Related Conditions. Different distributions (log-normal, gamma, Weibull) were used to model consumption among drinkers in subgroups defined by sex, age, and ethnicity. The gamma distribution was used to shift the fitted distributions in line with the overall volume as derived from per capita estimates. Implications for alcohol-attributable fractions were presented, using liver cirrhosis as an example. Results The triangulation of survey data with aggregated per capita consumption data proved feasible and allowed for modeling of alcohol exposure disaggregated by sex, age, and ethnicity. These models can be used in combination with risk relations for burden of disease calculations. Sensitivity analyses showed that the gamma distribution chosen yielded very similar results in terms of fit and alcohol-attributable mortality as the other tested distributions. Conclusions Modeling alcohol consumption via the gamma distribution was feasible. To further refine this approach, research should focus on the main assumptions underlying the approach to explore differences between volume estimates derived from surveys and per capita consumption figures.
机译:背景技术饮酒是全球疾病负担中的主要危险因素,其总体暴露量是主要的潜在方面。可获得有关酒精暴露量的两个主要数据来源:调查和从常规统计数据(例如税收)中得出的人均消费量。由于两种来源都存在重大问题,因此本文提出了一种方法,将两种来源的信息分成三部分,以与人均消费的总体水平相符。方法使用来自大型且具有代表性的调查(美国国家酒精与相关疾病流行病学调查)的数据,将建模方法应用于美国。使用不同的分布(对数正态分布,伽玛,威布尔)对饮酒者中的性别,年龄和种族分组的饮酒进行建模。伽玛分布用于使拟合的分布与人均估算得出的总体积一致。以肝硬化为例,介绍了酒精引起的分数的含义。结果调查数据与人均消费数据的三角剖分被证明是可行的,并允许对按性别,年龄和种族分类的酒精暴露进行建模。这些模型可以与风险关系结合使用以计算疾病负担。敏感性分析表明,就适应性和酒精引起的死亡率而言,所选的伽玛分布与其他测试分布产生非常相似的结果。结论通过伽马分布对酒精消耗进行建模是可行的。为了进一步完善此方法,研究应集中于该方法所依据的主要假设,以探索从调查得出的数量估计与人均消费数据之间的差异。

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