使用双样本孟德尔随机化调查收入对健康的因果影响。

Erik Igelström, Marcus R Munafò, Ben M Brumpton, Neil M Davies, George Davey Smith, Pekka Martikainen, Desmond Campbell, Peter Craig, Jim Lewsey, S Vittal Katikireddi
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引用次数: 0

摘要

背景:收入与许多健康结果相关,但目前尚不清楚这在多大程度上反映了因果关系。孟德尔随机化(MR)利用个体之间的遗传变异来调查因果关系,并可能克服许多观察性研究设计中固有的一些混淆问题。方法:我们使用非相关个体的双样本磁共振数据来估计对数职业收入对心理健康、身体健康和健康相关行为指标的影响。我们研究了多效性(基因型对结果的直接影响),使用了稳健的MR估计器、CAUSE和包括教育作为共暴露的多变量MR。我们还使用家族内分析调查了人口统计学因素和动态效应,并使用双向MR和Steiger滤波对主要表型进行了错误描述。结果:我们发现,收入增加10%可降低抑郁(OR 0.92 [95% CI 0.86-0.98])、死亡(OR 0.91[0.86-0.96])和吸烟(OR 0.91[0.86-0.96])的几率,并降低BMI (- 0.06 SD[- 0.11, - 0.003])。我们发现很少有证据表明酒精摄入(- 0.02 SD[- 0.01, 0.05])或主观幸福感(0.02 SD[- 0.003, 0.04])或两个阴性对照结果,儿童哮喘(or 0.99[0.87, 1.13])和出生体重(- 0.02 SD,[- 0.01, 0.05])有影响。家庭内部分析和包括教育和收入在内的多变量MR是不精确的,与收入和教育相关的基因型之间存在大量重叠:在与收入显著相关的36个遗传变异中,29个也与教育显著相关。结论:MR证据对收入对某些心理健康结果和健康行为的因果影响提供了一些有限的支持,但缺乏来自考虑家庭水平混杂和教育潜在多效效应的方法的可靠证据,这一结论值得注意。然而,核磁共振可能是对其他观察性研究设计的有益补充,因为它的假设和限制是完全不同的。进一步的研究需要使用更大的基于家庭的遗传队列,并调查收入和其他社会经济指标之间的重叠。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating causal effects of income on health using two-sample Mendelian randomisation.

Background: Income is associated with many health outcomes, but it is unclear how far this reflects a causal relationship. Mendelian randomisation (MR) uses genetic variation between individuals to investigate causal effects and may overcome some of the confounding issues inherent in many observational study designs.

Methods: We used two-sample MR using data from unrelated individuals to estimate the effect of log occupational income on indicators of mental health, physical health, and health-related behaviours. We investigated pleiotropy (direct effects of genotype on the outcome) using robust MR estimators, CAUSE, and multivariable MR including education as a co-exposure. We also investigated demographic factors and dynastic effects using within-family analyses, and misspecification of the primary phenotype using bidirectional MR and Steiger filtering.

Results: We found that a 10% increase in income lowered the odds of depression (OR 0.92 [95% CI 0.86-0.98]), death (0.91 [0.86-0.96]), and ever-smoking (OR 0.91 [0.86-0.96]), and reduced BMI (- 0.06 SD [- 0.11, - 0.003]). We found little evidence of an effect on alcohol consumption (- 0.02 SD [- 0.01, 0.05]) or subjective wellbeing (0.02 SD [- 0.003, 0.04]), or on two negative control outcomes, childhood asthma (OR 0.99 [0.87, 1.13]) and birth weight (- 0.02 SD, [- 0.01, 0.05]). Within-family analysis and multivariable MR including education and income were imprecise, and there was substantial overlap between the genotypes associated with income and education: out of 36 genetic variants significantly associated with income, 29 were also significantly associated with education.

Conclusions: MR evidence provides some limited support for causal effects of income on some mental health outcomes and health behaviours, but the lack of reliable evidence from approaches accounting for family-level confounding and potential pleiotropic effects of education places considerable caveats on this conclusion. MR may nevertheless be a useful complement to other observational study designs since its assumptions and limitations are radically different. Further research is needed using larger family-based genetic cohorts, and investigating the overlap between income and other socioeconomic measures.

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