School of Health and Related Research (ScHARR), University of Sheffield, Sheffield, UK.
Alcohol Alcohol. 2013 Mar-Apr;48(2):241-9. doi: 10.1093/alcalc/agt001. Epub 2013 Jan 22.
Large discrepancies are typically found between per capita alcohol consumption estimated via survey data compared with sales, excise or production figures. This may lead to significant inaccuracies when calculating levels of alcohol-attributable harms. Using British data, we demonstrate an approach to adjusting survey data to give more accurate estimates of per capita alcohol consumption.
First, sales and survey data are adjusted to account for potential biases (e.g. self-pouring, under-sampled populations) using evidence from external data sources. Secondly, survey and sales data are aligned using different implementations of Rehm et al.'s method [in (2010) Statistical modeling of volume of alcohol exposure for epidemiological studies of population health: the US example. Pop Health Metrics 8, 1-12]. Thirdly, the impact of our approaches is tested by using our revised survey dataset to calculate alcohol-attributable fractions (AAFs) for oral and pharyngeal cancers.
British sales data under-estimate per capita consumption by 8%, primarily due to illicit alcohol. Adjustments to survey data increase per capita consumption estimates by 35%, primarily due to under-sampling of dependent drinkers and under-estimation of home-poured spirits volumes. Before aligning sales and survey data, the revised survey estimate remains 22% lower than the revised sales estimate. Revised AAFs for oral and pharyngeal cancers are substantially larger with our preferred method for aligning data sources, yielding increases in an AAF from the original survey dataset of 0.47-0.60 (males) and 0.28-0.35 (females).
It is possible to use external data sources to adjust survey data to reduce the under-estimation of alcohol consumption and then account for residual under-estimation using a statistical calibration technique. These revisions lead to markedly higher estimated levels of alcohol-attributable harm.
通过调查数据估计的人均酒精消费量与销售、消费税或产量数据之间通常存在很大差异。这可能导致在计算酒精相关危害水平时出现重大误差。本文使用英国数据,展示了一种调整调查数据以更准确估计人均酒精消费量的方法。
首先,使用来自外部数据源的证据调整销售和调查数据以考虑潜在偏差(例如自斟自饮、抽样不足的人群)。其次,使用 Rehm 等人的方法[(2010 年)用于人群健康流行病学研究中酒精暴露量的统计建模:美国实例。人口健康指标 8,1-12]的不同实现来对齐调查和销售数据。最后,通过使用我们修订后的调查数据集计算口腔和咽癌的酒精归因分数(AAFs)来测试我们方法的影响。
英国销售数据低估了 8%的人均消费量,主要是由于非法酒精。对调查数据的调整将人均消费估计值提高了 35%,主要是由于对依赖饮酒者的抽样不足以及对自斟烈酒量的低估。在对齐销售和调查数据之前,修订后的调查估计值仍比修订后的销售估计值低 22%。使用我们首选的数据对齐方法,修订后的口腔和咽癌 AAF 要大得多,原始调查数据集中的 AAF 增加了 0.47-0.60(男性)和 0.28-0.35(女性)。
使用外部数据源调整调查数据以减少酒精消费的低估是可能的,然后使用统计校准技术来解释剩余的低估。这些修订导致了明显更高的酒精相关危害水平的估计。