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Unconditional or Conditional Logistic Regression Model for Age-Matched Case–Control Data?

机译:年龄匹配的病例对照数据的无条件或有条件逻辑回归模型?

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摘要

Matching on demographic variables is commonly used in case–control studies to adjust for confounding at the design stage. There is a presumption that matched data need to be analyzed by matched methods. Conditional logistic regression has become a standard for matched case–control data to tackle the sparse data problem. The sparse data problem, however, may not be a concern for loose-matching data when the matching between cases and controls is not unique, and one case can be matched to other controls without substantially changing the association. Data matched on a few demographic variables are clearly loose-matching data, and we hypothesize that unconditional logistic regression is a proper method to perform. To address the hypothesis, we compare unconditional and conditional logistic regression models by precision in estimates and hypothesis testing using simulated matched case–control data. Our results support our hypothesis; however, the unconditional model is not as robust as the conditional model to the matching distortion that the matching process not only makes cases and controls similar for matching variables but also for the exposure status. When the study design involves other complex features or the computational burden is high, matching in loose-matching data can be ignored for negligible loss in testing and estimation if the distributions of matching variables are not extremely different between cases and controls.
机译:病例对照研究中通常使用人口统计变量的匹配来调整设计阶段的混淆。假定需要通过匹配的方法分析匹配的数据。条件逻辑回归已经成为匹配病例控制数据的标准,以解决稀疏数据问题。但是,当案例和控件之间的匹配不是唯一的,并且一个案例可以与其他控件进行匹配而不会实质性地改变关联时,稀疏数据问题就不会成为松散匹配数据的问题。在一些人口统计学变量上匹配的数据显然是松散匹配的数据,我们假设无条件逻辑回归是一种合适的执行方法。为了解决这个假设,我们使用模拟的匹配病例对照数据,通过估计和假设检验中的精度比较无条件和条件逻辑回归模型。我们的结果支持我们的假设;但是,无条件模型对匹配失真的适应性不如条件模型强,因为匹配过程不仅使匹配变量的案例和控件相似,而且使曝光状态相似。当研究设计涉及其他复杂特征或计算量很大时,如果案例和对照之间的匹配变量的分布差异不大,则忽略了松散匹配数据中的匹配,从而在测试和估计中的损失可忽略不计。

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