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Who is the marginal patient? Understanding instrumental variables estimates of treatment effects.

机译:谁是边缘患者?了解工具变量对治疗效果的估计。

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摘要

OBJECTIVE: To clarify the issues of generalizability arising from the use of instrumental variable (IV) methods to estimate treatment effects in nonexperimental medical outcome studies. DATA SOURCE: We generate Monte Carlo data designed to resemble typical data sets where detailed health status information is unavailable and the treatment assignment process is unobserved. The model used to generate our data makes the realistic assumption that unobservable health status characteristics of patients influence the treatment assignment process and the effectiveness of treatment. STUDY DESIGN: We use Monte Carlo data to illustrate the circumstances where IV estimates generalize to an unobservable patient subpopulation and those where IV estimates generalize to the entire patient population represented by the sample used in the analysis. We also simulate the effect of two policy changes that affect practice patterns. Further, we show that IV estimates are useful for predicting the effect of these changes on treatment effectiveness when the subpopulation to which the IV estimate refers is the same or very similar to the population whose treatment status is affected by the policy change. CONCLUSIONS: Health services researchers cannot take for granted that IV estimates generalize to the same population represented by the sample used for analysis. Instead, researchers must rely on their knowledge of clinical practice and theory regarding the treatment assignment process in interpreting their results and in predicting the effect of changes in practice patterns.
机译:目的:阐明在非实验性医学结果研究中使用工具变量(IV)方法评估治疗效果所引起的普遍性问题。数据来源:我们生成的蒙特卡洛数据类似于典型的数据集,在这些数据集中无法获得详细的健康状态信息,而无法观察到治疗分配过程。用于生成数据的模型做出了一个现实的假设,即患者无法观察到的健康状况特征会影响治疗分配过程和治疗效果。研究设计:我们使用蒙特卡洛数据来说明IV估计普遍适用于无法观察的患者亚群以及IV估计普遍适用于分析所用样品代表的整个患者人群的情况。我们还模拟了两个影响实践模式的政策变化的影响。此外,我们显示,当IV估算所涉及的亚群与其治疗状况受政策变化影响的人群相同或非常相似时,IV估算可用于预测这些变化对治疗效果的影响。结论:卫生服务研究人员不能认为IV估计值可以推广到用于分析的样本所代表的同一人群。取而代之的是,研究人员在解释其结果和预测实践模式变化的影响时,必须依靠他们对治疗分配过程的临床实践和理论知识。

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