在存在多个混杂因素时估计风险比的回归方法的模拟研究。

IF 3.6 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Kanako Fuyama, Yasuhiro Hagiwara, Yutaka Matsuyama
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引用次数: 1

摘要

背景:风险比是流行病学研究中常用的效果度量。虽然先前的研究表明,当事件数量较少且存在多个混杂因素时,逻辑回归可能提供有偏的比值比估计,但在存在多个混杂因素时,风险比估计的性能尚未得到检验。方法:我们进行了模拟研究,以评估三种估计风险比的回归方法的统计性能:(1)logistic回归系数的风险比解释,(2)修正泊松回归,(3)logistic回归的回归标准化。我们模拟了270种情况,系统地改变了样本量、二元混杂因素的数量、暴露比例、风险比和结果比例。性能评估基于收敛比例、偏差、标准误差估计和置信区间覆盖。结果:在样本量为2500,结果比例为1%的情况下,逻辑回归和修正泊松回归有时都不能收敛,三种方法存在较大偏倚。随着结果比例或样本量的增加,修正泊松回归和回归标准化产生无偏风险比估计值,具有适当的置信区间,而不考虑混杂因素的数量。相比之下,随着结果比例的增加,logistic回归系数的风险比解释变得明显偏倚。结论:当事件数量较少时,应谨慎使用回归方法估计风险比。有了足够数量的事件,通过修正泊松回归和回归标准化有效地估计风险比,而不考虑混杂因素的数量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A simulation study of regression approaches for estimating risk ratios in the presence of multiple confounders.

A simulation study of regression approaches for estimating risk ratios in the presence of multiple confounders.

A simulation study of regression approaches for estimating risk ratios in the presence of multiple confounders.

A simulation study of regression approaches for estimating risk ratios in the presence of multiple confounders.

Background: Risk ratio is a popular effect measure in epidemiological research. Although previous research has suggested that logistic regression may provide biased odds ratio estimates when the number of events is small and there are multiple confounders, the performance of risk ratio estimation has yet to be examined in the presence of multiple confounders.

Methods: We conducted a simulation study to evaluate the statistical performance of three regression approaches for estimating risk ratios: (1) risk ratio interpretation of logistic regression coefficients, (2) modified Poisson regression, and (3) regression standardization using logistic regression. We simulated 270 scenarios with systematically varied sample size, the number of binary confounders, exposure proportion, risk ratio, and outcome proportion. Performance evaluation was based on convergence proportion, bias, standard error estimation, and confidence interval coverage.

Results: With a sample size of 2500 and an outcome proportion of 1%, both logistic regression and modified Poisson regression at times failed to converge, and the three approaches were comparably biased. As the outcome proportion or sample size increased, modified Poisson regression and regression standardization yielded unbiased risk ratio estimates with appropriate confidence intervals irrespective of the number of confounders. The risk ratio interpretation of logistic regression coefficients, by contrast, became substantially biased as the outcome proportion increased.

Conclusions: Regression approaches for estimating risk ratios should be cautiously used when the number of events is small. With an adequate number of events, risk ratios are validly estimated by modified Poisson regression and regression standardization, irrespective of the number of confounders.

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来源期刊
Emerging Themes in Epidemiology
Emerging Themes in Epidemiology Medicine-Epidemiology
CiteScore
4.40
自引率
4.30%
发文量
9
审稿时长
28 weeks
期刊介绍: Emerging Themes in Epidemiology is an open access, peer-reviewed, online journal that aims to promote debate and discussion on practical and theoretical aspects of epidemiology. Combining statistical approaches with an understanding of the biology of disease, epidemiologists seek to elucidate the social, environmental and host factors related to adverse health outcomes. Although research findings from epidemiologic studies abound in traditional public health journals, little publication space is devoted to discussion of the practical and theoretical concepts that underpin them. Because of its immediate impact on public health, an openly accessible forum is needed in the field of epidemiology to foster such discussion.
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