使用关联代理结果数据的多重输入导致重要的偏差减少和效率提高:一项模拟研究。

IF 3.6 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Emerging Themes in Epidemiology Pub Date : 2017-12-19 eCollection Date: 2017-01-01 DOI:10.1186/s12982-017-0068-0
R P Cornish, J Macleod, J R Carpenter, K Tilling
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引用次数: 15

摘要

背景:当一个结果变量不是随机丢失时(MNAR:丢失的概率取决于结果值),对暴露对该结果的影响的估计往往是有偏差的。我们调查了这种偏差的程度,并检查了是否可以通过将通过与行政数据联系获得的代理结果作为多重imputation (MI)的辅助变量来减少偏差。方法:使用雅芳父母与儿童纵向研究(ALSPAC)的数据,我们估计母乳喂养与智商(连续结果)之间的关联,并将相关成就数据(智商的代理)作为MI模型的辅助变量。模拟研究探讨了不同缺失数据比例(从20%到80%)、结果与其代理之间的相关性(0.1-0.9)、缺失数据机制的强度以及代理变量不完整的影响。结果:将缺失结果的关联代理作为辅助变量,即使在80%的结果缺失的情况下,也可以在所有情况下减少偏差并提高效率。使用不完整的代理也同样有益。结果与其代理之间的高相关性(> 0.5)大大减少了缺失信息。与此一致,ALSPAC分析显示,纳入代理减少了偏倚,提高了效率。额外代理的收益是温和的。结论:在随访损失的纵向研究中,当研究结果为MNAR时,将通过与外部数据来源的联系获得的研究结果的代理作为MI模型中的辅助变量,可以减少实际重要的偏倚并提高效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Multiple imputation using linked proxy outcome data resulted in important bias reduction and efficiency gains: a simulation study.

Multiple imputation using linked proxy outcome data resulted in important bias reduction and efficiency gains: a simulation study.

Background: When an outcome variable is missing not at random (MNAR: probability of missingness depends on outcome values), estimates of the effect of an exposure on this outcome are often biased. We investigated the extent of this bias and examined whether the bias can be reduced through incorporating proxy outcomes obtained through linkage to administrative data as auxiliary variables in multiple imputation (MI).

Methods: Using data from the Avon Longitudinal Study of Parents and Children (ALSPAC) we estimated the association between breastfeeding and IQ (continuous outcome), incorporating linked attainment data (proxies for IQ) as auxiliary variables in MI models. Simulation studies explored the impact of varying the proportion of missing data (from 20 to 80%), the correlation between the outcome and its proxy (0.1-0.9), the strength of the missing data mechanism, and having a proxy variable that was incomplete.

Results: Incorporating a linked proxy for the missing outcome as an auxiliary variable reduced bias and increased efficiency in all scenarios, even when 80% of the outcome was missing. Using an incomplete proxy was similarly beneficial. High correlations (> 0.5) between the outcome and its proxy substantially reduced the missing information. Consistent with this, ALSPAC analysis showed inclusion of a proxy reduced bias and improved efficiency. Gains with additional proxies were modest.

Conclusions: In longitudinal studies with loss to follow-up, incorporating proxies for this study outcome obtained via linkage to external sources of data as auxiliary variables in MI models can give practically important bias reduction and efficiency gains when the study outcome is MNAR.

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来源期刊
Emerging Themes in Epidemiology
Emerging Themes in Epidemiology Medicine-Epidemiology
CiteScore
4.40
自引率
4.30%
发文量
9
审稿时长
28 weeks
期刊介绍: Emerging Themes in Epidemiology is an open access, peer-reviewed, online journal that aims to promote debate and discussion on practical and theoretical aspects of epidemiology. Combining statistical approaches with an understanding of the biology of disease, epidemiologists seek to elucidate the social, environmental and host factors related to adverse health outcomes. Although research findings from epidemiologic studies abound in traditional public health journals, little publication space is devoted to discussion of the practical and theoretical concepts that underpin them. Because of its immediate impact on public health, an openly accessible forum is needed in the field of epidemiology to foster such discussion.
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