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Studies with many covariates and few outcomes: Selecting covariates and implementing propensity-score-based confounding adjustments

机译:具有多个协变量且结果很少的研究:选择协变量并实施基于倾向得分的混杂调整

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BACKGROUND:: Propensity scores are useful for confounding adjustment in the commonly observed setting of many potential confounders, frequent exposure, and rare events. However, with few exposed outcomes to inform covariate selection and many candidate confounders, optimal approaches to construct and implement propensity-score-based confounding adjustment remain unclear. METHODS:: In a cohort study on the effect of anticonvulsant drugs on cardiovascular risk among adult patients from the HealthCore Integrated Research Database, we compared the performance for confounding control of various covariate-selection strategies for propensity-score estimation (expert knowledge only, expert knowledge informed by empirical covariate selection via high-dimensional propensity-score, and high-dimensional propensity-score empirical specification only) and propensity-score-based adjustment methods (propensity-score-matching and propensity-score-decile stratification). This article focuses on the first 90 days of follow-up because any treatment effect identified in this temporal window almost certainty originates from residual confounding rather than pharmacologic action. RESULTS:: We identified 166,031 new users and 564 ischemic cardiovascular events. Among those, 12,580 patients initiated anticonvulsants that strongly induce cytochrome P450 enzymes and experienced 68 events. The unadjusted hazard ratio was 1.72 (95% confidence interval = 1.34-2.22). Adjustment for investigator-identified covariates led to 41% to 59% reductions in the hazard ratio; adjustment for both investigator-identified and high-dimensional propensity-score empirically identified covariates led to larger reductions (54% to 72%). A selection strategy based on high-dimensional propensity-score empirical specification alone produced less-attenuated and more-volatile hazard ratio estimates. This volatility seemed to be slightly attenuated in a trimmed propensity-score-stratified analysis. CONCLUSIONS:: The high-dimensional propensity-score algorithm complements expert knowledge for confounding adjustment, but in settings with few exposed outcomes, its performance without investigator-specified covariates is less clear and may be associated with an increased likelihood of bias. In our example, investigator specification of variables combined with high-dimensional propensity-score empirical selection and the use of trimmed propensity-score-stratified analysis seem to improve effect estimation. Plotting the relation of effect estimates to the increasing number of empirical covariates is a useful diagnostic.
机译:背景:倾向评分对于在许多潜在的混杂因素,频繁暴露和罕见事件的通常观察到的环境中混杂调整有用。但是,由于很少有暴露的结果可以告知协变量选择,并且有许多候选混杂因素,因此尚不清楚构建和实施基于倾向得分的混杂调整的最佳方法。方法::在一项来自HealthCore综合研究数据库的成年患者中抗惊厥药物对心血管风险影响的队列研究中,我们比较了混杂评分选择的多种协变量选择策略的控制效果(仅专家知识,专家通过仅通过高维倾向得分和高维倾向得分经验规范进行经验协变量选择而获得的知识以及基于倾向得分的调整方法(倾向得分匹配和倾向得分十分位分层)。本文关注的是随访的前90天,因为在此时间窗口中确定的任何治疗效果几乎可以肯定都源自残留的混杂物而不是药理作用。结果::我们确定了166,031个新用户和564个缺血性心血管事件。在这些患者中,有12,580例患者开始使用抗惊厥药,这些药物可强烈诱导细胞色素P450酶并经历68次事件。未经调整的危险比为1.72(95%置信区间= 1.34-2.22)。对研究者确定的协变量进行调整后,风险比降低了41%至59%;研究者确定的和高维度倾向得分的经验确定的协变量的调整导致减少幅度更大(54%至72%)。仅基于高维倾向得分经验规范的选择策略就可以产生较小的衰减和较大的风险比估计。在修正的倾向评分分层分析中,这种波动性似乎有所减弱。结论:高维倾向得分算法补充了混杂调整的专业知识,但是在暴露结果很少的环境中,没有研究人员指定的协变量的情况下其性能尚不清楚,并且可能与偏倚可能性增加有关。在我们的示例中,研究人员对变量的说明与高维倾向得分经验选择以及调整后的倾向得分分层分析的结合似乎可以改善效果估计。绘制影响估计与经验协变量数量增加之间的关系是一种有用的诊断方法。

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