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Confounders and intermediaries in case-control study designs: a strategy for distinguishing between the two when measured using the same variable.

机译:病例对照研究设计中的混杂因素和中介:一种使用相同变量进行测量时区分两者的策略。

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PURPOSE: An intermediary falls within the exposure-outcome pathway and is distinct from a confounder. In case-control studies, it may be difficult to discern between the two when both are measured by the same variable. Using data from a study on the effects of antipsychotic initiation on risk of death among older adults, where hospital use is both a confounder and intermediary, we illustrate the bias introduced when this distinction is overlooked and propose a modified exposure classification strategy to mitigate this. METHODS: We identified 5391 cases and 25,937 controls. Three analyses were completed: traditional analytic adjustment including hospital use (full), traditional analytic adjustment excluding hospital use (reduced) and exposure classification incorporating hospital use prior to antipsychotic initiation (extended). RESULTS: The unadjusted odds ratio (OR) was 2.8 (95% confidence interval (CI) 2.1-3.8). Full and reduced analytic adjustment resulted in ORs of 0.8 (95% CI 0.6-1.2) and 1.4 (95% CI 1.0-1.9), respectively. The extended exposure classification strategy produced an OR of 1.4 (95% CI 0.9-2.1) among those without hospital use prior to antipsychotic initiation. CONCLUSIONS: Full analytic adjustment resulted in a biased estimate of effect. The extended exposure analysis differentiated between hospital use that occurred prior (confounder) and subsequent (intermediary) to antipsychotic initiation. This strategy may overcome the limitations of analytic adjustment alone.
机译:目的:中介物属于暴露-结果途径,与混杂因素不同。在病例对照研究中,当两者均由同一变量测量时,可能难以区分两者。使用一项关于抗精神病药物启动对老年人死亡风险的研究的数据,在这种情况下,医院的使用既是混杂因素又是中介因素,我们说明了忽略这种区别时引入的偏见,并提出了一种修改后的暴露分类策略来缓解这种情况。方法:我们确定了5391例病例和25,937例对照。完成了三项分析:包括医院使用情况的传统分析调整(全面),不包括医院使用情况的传统分析调整(减少)和在开始抗精神病药物之前纳入医院使用的暴露分类(扩展)。结果:未调整的优势比(OR)为2.8(95%置信区间(CI)为2.1-3.8)。完全和减少的分析调整导致OR分别为0.8(95%CI 0.6-1.2)和1.4(95%CI 1.0-1.9)。在开始抗精神病药物治疗之前没有住院的人群中,扩展暴露分类策略得出的OR值为1.4(95%CI 0.9-2.1)。结论:全面的分析调整导致效果的估计偏差。扩展暴露分析将在抗精神病药物启动之前(混杂因素)和随后(中间)发生的医院使用情况区分开来。该策略可以克服单独的分析调整的局限性。

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