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An empirical assessment of immeasurable time bias in the setting of nested case-control studies: Statins and all-cause mortality among patients with heart failure

机译:嵌套病例对照研究中不可估量的时间偏见的实证评估:心力衰竭患者的他汀类药物和全因死亡率

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Purpose Immeasurable time bias exaggerates drug benefits in pharmacoepidemiologic studies due to exposure misclassification that occurs due to the lack of inpatient drug data in many healthcare databases. Methods To estimate the magnitude of immeasurable time bias and assess potential approaches to minimize it, we conducted a nested case-control study of statin use and mortality among heart failure patients using the South Korean nationwide healthcare database, which contains both inpatient and outpatient medication data. Using both inpatient and outpatient medication data to define the gold standard exposure definition, we assessed 10 different analytical methods in which exposure was defined using outpatient medication data only. We compared different methodological approaches to reduce immeasurable time bias: restricting to nonhospitalized patients, adjusting for hospitalization, weighting by either measurable time (nonhospitalized time during 90-d period) or outpatient time, and computing the odds ratios (ORs) using 90-day cumulative probability of exposure produced by the Kaplan-Meier product-limit estimator for cases and controls. Results The three approaches that most closely approximated the gold standard (hazard ratio [HR] 1.20; 95% confidence interval [CI], 1.05-1.37) were weighting by either measurable (HR 1.09; 95% CI, 0.92-1.28) or outpatient time (HR 1.14; 95% CI, 0.96-1.34) in the unexposed or by estimating the 90-day exposure probability (HR 1.31; 95% CI, 1.11-1.51). Conclusion The use of one of these three methods may be suggested as an approach to minimize immeasurable time bias in nested case-control studies.
机译:目的无法估量的时间偏见由于在许多医疗保健数据库中缺乏住院药数据而发生的暴露错误分类,因此夸大药物血汗病理学研究。估计不可估量的时间偏差幅度和评估潜在方法以最小化其最小化的方法,我们在韩国全国医疗保健数据库中进行了心力衰竭患者的嵌套病例控制研究,该研究含有住院患者和门诊药物数据。使用Inpatient和门诊用药数据来定义黄金标准曝光定义,我们评估了10种不同的分析方法,其中仅使用门诊药物数据定义了暴露。我们比较了不同的方法论方法,以减少不可估量的时间偏差:限制非生长患者,调整住院治疗,通过可测量的时间(在90-D期间的非生物化时间)或门诊时间,并使用90天计算差距量值(或者) KAPLAN-MEIER产品限制估算器对案例和控制产生的累积概率。结果三种方法最近的金标准(危害比[HR] 1.20; 95%置信区间[CI],1.05-1.37)通过可测量的(HR 1.09; 95%CI,0.92-1.28)或门诊未曝光或估计90天暴露概率(HR 1.31; 95%CI,1.11-1.51)中的时间(HR 1.14; 95%CI,0.96-1.34)。结论,可以建议使用这三种方法中的一种,作为最小化嵌套病例对照研究中的无法估量的时间偏差的方法。

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