配对队列研究中比例风险模型的风险比估计。

IF 3.6 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Emerging Themes in Epidemiology Pub Date : 2017-06-05 eCollection Date: 2017-01-01 DOI:10.1186/s12982-017-0060-8
Tomohiro Shinozaki, Mohammad Ali Mansournia, Yutaka Matsuyama
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引用次数: 19

摘要

背景:在具有审查事件的配对队列研究中,风险比(HR)可能是主要的兴趣。然而,在流行病学文献中鲜为人知的是,以匹配对为条件的常见HR的部分极大似然估计量是用一种简单的形式写成的,即两种配对类型的数量之比。此外,由于人力资源是一个不可折叠的度量,并且其在匹配对之间的恒定性是一个限制性假设,因此在分析中,边际人力资源作为“平均”人力资源可能比条件人力资源更有针对性。方法:基于其简单的表达式,我们提供了一种替代的解释,将常见的HR估计量作为c统计量的匹配对模拟的几率,用于删除时间到事件的数据。通过在匹配对中假设比例风险的模拟,评估了不同的审查模式对非分层和分层比例风险模型的边际和共同人力资源估计量的影响。这些方法应用于鹿特丹原发性乳腺癌肿瘤库的真实倾向评分匹配数据集。结果:我们发现分层模型无偏地估计了匹配对中比例风险下的共同HR。然而,具有稳健方差估计量的边际HR估计量缺乏作为“平均”边际HR的解释,即使审查是无条件独立于事件的,除非没有审查发生或没有暴露效应存在。此外,与暴露相关的审查使边际人力资源估计器偏离条件人力资源和“平均”边际人力资源,而不管暴露效应是否存在。从匹配的鹿特丹数据集中,我们估计了没有化疗和有化疗的无复发生存的HR;普通HR的估计值(95%置信区间)为1.47(1.18-1.83),边际HR的估计值为1.33(1.13-1.57)。结论:与边际HR估计量相比,普通HR估计量的简单表达式可以很好地概括暴露效应,对审查模式的敏感性较低。共同的和边际的人力资源估计,都依赖于不同的假设和解释,是相互补充的选择。
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On hazard ratio estimators by proportional hazards models in matched-pair cohort studies.

Background: In matched-pair cohort studies with censored events, the hazard ratio (HR) may be of main interest. However, it is lesser known in epidemiologic literature that the partial maximum likelihood estimator of a common HR conditional on matched pairs is written in a simple form, namely, the ratio of the numbers of two pair-types. Moreover, because HR is a noncollapsible measure and its constancy across matched pairs is a restrictive assumption, marginal HR as "average" HR may be targeted more than conditional HR in analysis.

Methods: Based on its simple expression, we provided an alternative interpretation of the common HR estimator as the odds of the matched-pair analog of C-statistic for censored time-to-event data. Through simulations assuming proportional hazards within matched pairs, the influence of various censoring patterns on the marginal and common HR estimators of unstratified and stratified proportional hazards models, respectively, was evaluated. The methods were applied to a real propensity-score matched dataset from the Rotterdam tumor bank of primary breast cancer.

Results: We showed that stratified models unbiasedly estimated a common HR under the proportional hazards within matched pairs. However, the marginal HR estimator with robust variance estimator lacks interpretation as an "average" marginal HR even if censoring is unconditionally independent to event, unless no censoring occurs or no exposure effect is present. Furthermore, the exposure-dependent censoring biased the marginal HR estimator away from both conditional HR and an "average" marginal HR irrespective of whether exposure effect is present. From the matched Rotterdam dataset, we estimated HR for relapse-free survival of absence versus presence of chemotherapy; estimates (95% confidence interval) were 1.47 (1.18-1.83) for common HR and 1.33 (1.13-1.57) for marginal HR.

Conclusion: The simple expression of the common HR estimator would be a useful summary of exposure effect, which is less sensitive to censoring patterns than the marginal HR estimator. The common and the marginal HR estimators, both relying on distinct assumptions and interpretations, are complementary alternatives for each other.

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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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