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教程:针对检测偏差的策略进行了审查和实施,以调查他汀类药物与糖尿病的关联。

Tutorial: strategies addressing detection bias were reviewed and implemented for investigating the statins-diabetes association.

机构信息

Department of Statistics and Quantitative Methods, Division of Biostatistics, Epidemiology and Public Health, Laboratory of Healthcare Research and Pharmacoepidemiology, University of Milano-Bicocca, Via Bicocca degli Arcimboldi, 8, Edificio U7, 20126 Milan, Italy.

Department of Statistics and Quantitative Methods, Division of Biostatistics, Epidemiology and Public Health, Laboratory of Healthcare Research and Pharmacoepidemiology, University of Milano-Bicocca, Via Bicocca degli Arcimboldi, 8, Edificio U7, 20126 Milan, Italy.

出版信息

J Clin Epidemiol. 2015 May;68(5):480-8. doi: 10.1016/j.jclinepi.2014.12.001. Epub 2014 Dec 4.

Abstract

OBJECTIVES

Literature on specific analytic methods for addressing detection bias is fragmented. We illustrate some analytic strategies to account for detection bias.

STUDY DESIGN AND SETTING

Several tools addressing detection bias are described, namely (1) sensitivity analysis, (2) conditioning on outcome detectability, and (3) use of negative controls. These tools are applied in a population-based cohort study on the association between adherence to statins and start of antidiabetic therapy (as proxy of type 2 diabetes mellitus onset).

RESULTS

Compared with patients on very low adherence to statins, those with high adherence had hazard ratio (HR) for diabetes of 1.53 (95% confidence interval: 1.44, 1.64). The observed association was potentially affected by detection bias because long-term exposure to statins implies a more regular use of primary care services, triggering the search for diabetes. Nevertheless, from the considered tools, (1) we showed that the HR for diabetes risk decreased to 1.28 if diabetes detection was assumed to be 20% more likely in highly adherent patients; (2) an increased risk of diabetes was found among patients with no specialist visits during the first year of follow-up; (3) no association was found between adherence to bisphosphonates (negative exposure) and diabetes nor between adherence to statins and initiation of antihypertensive pharmacotherapy (negative outcome).

CONCLUSION

Implementation of analytic strategies for addressing detection bias is advisable whenever this is suspected. As illustrated, several methods could be considered. Their implementation suggested that detection bias had a limited impact in our application.

摘要

目的

关于解决检测偏差的特定分析方法的文献较为分散。我们举例说明了一些分析策略,以解决检测偏差问题。

研究设计和设置

描述了几种解决检测偏差的工具,分别是(1)敏感性分析,(2)基于结果可检测性的调整,和(3)使用负性对照。这些工具应用于一项基于人群的队列研究中,研究他汀类药物的依从性与开始使用抗糖尿病药物(作为 2 型糖尿病发病的替代指标)之间的关联。

结果

与他汀类药物低依从性患者相比,高依从性患者发生糖尿病的风险比(HR)为 1.53(95%置信区间:1.44,1.64)。观察到的关联可能受到检测偏差的影响,因为长期使用他汀类药物意味着更频繁地使用初级保健服务,从而引发对糖尿病的筛查。然而,在所考虑的工具中,(1)我们表明,如果假定高依从性患者的糖尿病检测可能性增加 20%,则糖尿病风险的 HR 降至 1.28;(2)在随访的第一年没有专科就诊的患者中发现了糖尿病风险的增加;(3)未发现双膦酸盐(负性暴露)的依从性与糖尿病之间以及他汀类药物的依从性与开始使用降压药物治疗(负性结局)之间存在关联。

结论

在怀疑存在检测偏差时,建议实施分析策略来解决检测偏差问题。如所举例,可考虑多种方法。这些方法的实施表明,在我们的应用中,检测偏差的影响有限。

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