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首页> 外文期刊>Statistical methods in medical research >Correcting for non-participation bias in health surveys using record-linkage, synthetic observations and pattern mixture modelling
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Correcting for non-participation bias in health surveys using record-linkage, synthetic observations and pattern mixture modelling

机译:使用记录连杆,合成观察和模式混合建模纠正健康调查中的非参与偏差

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摘要

Surveys are key means of obtaining policy-relevant information not available from routine sources. Bias arising from non-participation is typically handled by applying weights derived from limited socio-demographic characteristics. This approach neither captures nor adjusts for differences in health and related behaviours between participants and non-participants within categories. We addressed non-participation bias in alcohol consumption estimates using novel methodology applied to 2003 Scottish Health Survey responses record-linked to prospective administrative data. Differences were identified in socio-demographic characteristics, alcohol-related harm (hospitalisation or mortality) and all-cause mortality between survey participants and, from unlinked administrative sources, the contemporaneous general population of Scotland. These were used to infer the number of non-participants within each subgroup defined by socio-demographics and health outcomes. Synthetic observations for non-participants were then generated, missing only alcohol consumption. Weekly alcohol consumption values among synthetic non-participants were multiply imputed under missing at random and missing not at random assumptions. Relative to estimates adjusted using previously derived weights, the obtained mean weekly alcohol intake estimates were up to 59% higher among men and 16% higher among women, depending on the assumptions imposed. This work demonstrates the universal value of multiple imputation-based methodological advancement incorporating administrative health data over routine weighting procedures.
机译:调查是获取从常规来源提供的策略相关信息的关键手段。非参与产生的偏差通常通过应用来自有限的社会人口特征的权重。这种方法既不捕获也没有调整参与者和非参与者之间的健康状况和相关行为的差异。我们根据2003年苏格兰健康调查答复的新型方法处理了新的方法论与预期行政数据的批准额外的饮酒估算中的非参与偏见。在社会人口统计特征中确定了差异,有关的酗酒危害(住院或死亡率)以及调查参与者之间的所有导致死亡率,来自苏格兰的同期普通人口。这些用于推断社会人口统计数据和健康结果所定义的每个子组内的非参与者的数量。然后产生非参与者的合成观察,仅缺少饮酒。合成非参与者之间的每周酒精消费价值在随机缺失下繁殖并且不受随机假设的差异。相对于使用先前衍生的重量调整的估计,所获得的平均每周酒精摄入估计在男性中高达59%,而女性在女性中高达59%,具体取决于施加的假设。本作品展示了基于多重撤销的方法进步的普遍价值,其在常规加权程序上包含行政健康数据。

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