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研究自我选择机制的工具变量法:以流感疫苗接种为例。

The instrumental variable method to study self-selection mechanism: a case of influenza vaccination.

作者信息

Yoo Byung-Kwang, Frick Kevin D

机构信息

Center for Health Policy, Stanford University, Stanford, CA, USA.

出版信息

Value Health. 2006 Mar-Apr;9(2):114-22. doi: 10.1111/j.1524-4733.2006.00089.x.

Abstract

OBJECTIVE

To assess whether estimates of the effectiveness of influenza vaccination in reducing rates of hospitalizations and all-cause mortality derived from cross-sectional data could be improved by applying the instrumental variable (IV) method to data representing the community-dwelling elderly population in the United States in order to adjust for self-selection bias.

METHODS

Secondary data analysis, using the 1996-97 Medicare Current Beneficiary Survey data. First, using single-equation probit regressions this study analyzed influenza-related hospitalization and death due to all causes predicted by vaccination status, which was measured by claims or survey data. Second, to adjust for potential self-selection of the vaccine receipt, for example, higher vaccination rates among high-risk individuals, bivariate probit (BVP) models and two-stage least squares (2SLS) models were employed. The IV was having either arthritis or gout.

RESULTS

In single-equation probit models, vaccination appeared to be ineffective or even to increase the probability of adverse outcomes. Based on BVP and 2SLS models, vaccination was demonstrated to be effective in reducing influenza-related hospitalization by at least 31%. The BVP model results implied significant self-selection in the single-equation probit models.

CONCLUSIONS

Adjusting for self-selection, BVP analyses yielded vaccine effectiveness estimates for a nationally representative cross-sectional sample of the community-dwelling elderly population that are consistent with previous estimates based on randomized controlled trials, prospective cohort studies, and meta-analyses. This result suggests that analyses with 2SLS and BVP in particular may be useful for the analysis of observational data regarding prevention in which self-selection is an important potential source of bias.

摘要

目的

评估通过将工具变量(IV)方法应用于代表美国社区居住老年人群的数据,以调整自我选择偏倚,是否能够改善从横断面数据得出的流感疫苗接种在降低住院率和全因死亡率方面有效性的估计。

方法

使用1996 - 97年医疗保险当前受益人调查数据进行二次数据分析。首先,本研究使用单方程概率回归分析了由疫苗接种状况预测的流感相关住院和全因死亡情况,疫苗接种状况通过索赔或调查数据来衡量;其次,为了调整疫苗接种可能存在的自我选择情况,例如高危个体中较高的疫苗接种率,采用了双变量概率(BVP)模型和两阶段最小二乘法(2SLS)模型。工具变量为患有关节炎或痛风。

结果

在单方程概率模型中,疫苗接种似乎无效,甚至增加了不良结局的概率。基于BVP和2SLS模型,证明疫苗接种在降低流感相关住院率方面至少有效31%。BVP模型结果表明单方程概率模型中存在显著的自我选择情况。

结论

调整自我选择因素后,BVP分析得出的针对社区居住老年人群具有全国代表性横断面样本的疫苗有效性估计,与先前基于随机对照试验、前瞻性队列研究和荟萃分析得出的估计一致。这一结果表明,特别是2SLS和BVP分析可能有助于分析存在自我选择这一重要潜在偏倚来源的预防方面的观察性数据。

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