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工具变量:应用与局限性

Instrumental variables: application and limitations.

作者信息

Martens Edwin P, Pestman Wiebe R, de Boer Anthonius, Belitser Svetlana V, Klungel Olaf H

机构信息

Department of Pharmacoepidemiology and Pharmacotherapy, Utrecht Institute of Pharmaceutical Sciences (UIPS), Utrecht University, Utrecht, The Netherlands.

出版信息

Epidemiology. 2006 May;17(3):260-7. doi: 10.1097/01.ede.0000215160.88317.cb.

Abstract

To correct for confounding, the method of instrumental variables (IV) has been proposed. Its use in medical literature is still rather limited because of unfamiliarity or inapplicability. By introducing the method in a nontechnical way, we show that IV in a linear model is quite easy to understand and easy to apply once an appropriate instrumental variable has been identified. We also point out some limitations of the IV estimator when the instrumental variable is only weakly correlated with the exposure. The IV estimator will be imprecise (large standard error), biased when sample size is small, and biased in large samples when one of the assumptions is only slightly violated. For these reasons, it is advised to use an IV that is strongly correlated with exposure. However, we further show that under the assumptions required for the validity of the method, this correlation between IV and exposure is limited. Its maximum is low when confounding is strong, such as in case of confounding by indication. Finally, we show that in a study in which strong confounding is to be expected and an IV has been used that is moderately or strongly related to exposure, it is likely that the assumptions of IV are violated, resulting in a biased effect estimate. We conclude that instrumental variables can be useful in case of moderate confounding but are less useful when strong confounding exists, because strong instruments cannot be found and assumptions will be easily violated.

摘要

为校正混杂因素,有人提出了工具变量(IV)法。由于不熟悉或不适用,其在医学文献中的应用仍然相当有限。通过以非技术性方式介绍该方法,我们表明,一旦确定了合适的工具变量,线性模型中的IV相当容易理解和应用。我们还指出,当工具变量与暴露因素仅存在弱相关性时,IV估计量存在一些局限性。IV估计量会不精确(标准误差大),在样本量较小时有偏差,而在大样本中当其中一个假设仅略有违背时也会有偏差。出于这些原因,建议使用与暴露因素高度相关的IV。然而,我们进一步表明,在该方法有效性所需的假设条件下,IV与暴露因素之间的这种相关性是有限的。当混杂因素很强时,比如存在指征性混杂时,其最大值很低。最后,我们表明,在预期存在强混杂因素且使用了与暴露因素中度或高度相关的IV的研究中,IV的假设很可能会被违背,从而导致效应估计有偏差。我们得出结论,工具变量在存在中度混杂时可能有用,但在存在强混杂时用处较小,因为找不到强工具变量且假设很容易被违背。

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