Bias in odds ratios from logistic regression methods with sparse data sets (vol 33, pg 265, 2023)

被引:1
作者
Gosho, Masahiko [1 ]
Ohigashi, Tomohiro [2 ,3 ]
Nagashima, Kengo [4 ]
Ito, Yuri [5 ]
Maruo, Kazushi [1 ]
机构
[1] Univ Tsukuba, Fac Med, Dept Biostat, Ibaraki, Japan
[2] Univ Tsukuba, Grad Sch Comprehens Human Sci, Ibaraki, Japan
[3] Univ Tsukuba, Dept Biostat, Tsukuba Clin Res & Dev Org, Ibaraki, Japan
[4] Inst Stat Math, Res Ctr Med & Hlth Data Sci, Tokyo, Japan
[5] Osaka Med Coll, Res & Dev Ctr, Dept Med Stat, Osaka, Japan
关键词
Bayesian methods; exact logistic regression method; Firth’s penalization; ɡ-prior;
D O I
10.2188/jea.JE20220044
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
Background: Logistic regression models are widely used to evaluate the association between a binary outcome and a set of covariates. However, when there are few study participants at the outcome and covariate levels, the models lead to bias of the odds ratio (OR) estimated using the maximum likelihood (ML) method. This bias is known as sparse data bias, and the estimated OR can yield impossibly large values because of data sparsity. However, this bias has been ignored in most epidemiological studies. Methods: We review several methods for reducing sparse data bias in logistic regression. The primary aim is to evaluate the Bayesian methods in comparison with the classical methods, such as the ML, Firth’s, and exact methods using a simulation study. We also apply these methods to a real data set. Results: Our simulation results indicate that the bias of the OR from the ML, Firth’s, and exact methods is considerable. Furthermore, the Bayesian methods with hyper-ɡ prior modeling of the prior covariance matrix for regression coefficients reduced the bias under the null hypothesis, whereas the Bayesian methods with log F-type priors reduced the bias under the alternative hypothesis. Conclusion: The Bayesian methods using log F-type priors and hyper-ɡ prior are superior to the ML, Firth’s, and exact methods when fitting logistic models to sparse data sets. The choice of a preferable method depends on the null and alternative hypothesis. Sensitivity analysis is important to understand the robustness of the results in sparse data analysis. © 2022 Masahiko Gosho et al.
引用
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页码:332 / 332
页数:1
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Gosho M, 2023, J EPIDEMIOL, V33, P265