Phyo T Htoo, Jessie K Edwards, Mugdha Gokhale, Virginia Pate, John B Buse, Michele Jonsson-Funk, Til Stürmer
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引用次数: 0
摘要
在药物流行病学中采用工具变量(IV)方法的一个障碍是它们依赖于强烈的、无法验证的假设。我们可以利用因果结构来证伪 IV 假设,从而加强或反驳其合理性,提高效应估计的有效性。我们举例说明了在估算噻唑烷二酮类药物对住院心衰的已知效应时评估日历时间 IV 假设的系统方法。我们将美国食品和药物管理局于 2010 年 9 月发布安全通报之前和之后的队列入组时间作为拟议的 IV,利用医疗保险数据(2008-2014 年)估算了 IV 和倾向得分加权的 2 年风险差异 (RD)。我们(i)进行了不等式检验,(ii)使用因果假设确定了负对照 IV/结果,(iii)在缩小日历时间范围并排除可能与未测量混杂因素相关的患者后估算了 RDs,(iv)得出了 RDs 的界限,(v)估算了遵从者的比例及其特征。研究结果表明,IV 假设遭到了违反,RDs 达到了极值,但在缩小日历时间范围并通过排除流行性心力衰竭(结果的最强测量预测因子)限制队列后,IV 假设变得更加合理。系统地评估IV假设有助于发现IV估计值的偏差并提高其有效性。
A systematic approach to evaluating instrumental variable assumptions: applied example of glucose-lowering medications and risk for hospitalized heart failure in older adults.
One obstacle to adopting instrumental variable (IV) methods in pharmacoepidemiology is their reliance on strong, unverifiable assumptions. We can falsify IV assumptions by leveraging the causal structure, which can strengthen or refute their plausibility and increase the validity of effect estimates. We illustrate a systematic approach to evaluate calendar-time IV assumptions in estimating the known effect of thiazolidinediones on hospitalized heart failure. Using cohort entry time before and after September 2010, when the US Food and Drug Administration issued a safety communication, as a proposed IV, we estimated IV and propensity score-weighted 2-year risk differences (RDs) using Medicare data (2008-2014). We (1) performed inequality tests, (2) identified the negative control IV/outcome using causal assumptions, (3) estimated RDs after narrowing the calendar time range and excluding patients likely associated with unmeasured confounding, (4) derived bounds for RDs, and (5) estimated the proportion of compliers and their characteristics. The findings revealed that IV assumptions were violated and RDs were extreme, but the assumptions became more plausible upon narrowing the calendar time range and restricting the cohort by excluding prevalent heart failure (the strongest measured predictor of outcome). Systematically evaluating IV assumptions could help detect bias in IV estimators and increase their validity. This article is part of a Special Collection on Pharmacoepidemiology.
期刊介绍:
The American Journal of Epidemiology is the oldest and one of the premier epidemiologic journals devoted to the publication of empirical research findings, opinion pieces, and methodological developments in the field of epidemiologic research.
It is a peer-reviewed journal aimed at both fellow epidemiologists and those who use epidemiologic data, including public health workers and clinicians.