文章摘要
拓嘉怡,毕京浩,李卓颖,沈秋明,谭玉婷,李泓澜,袁蕙芸,项永兵.病例队列研究设计中相对危险度的估计及其应用[J].中华流行病学杂志,2022,43(3):392-396
病例队列研究设计中相对危险度的估计及其应用
Statistical methods for relative risk estimation and applications in case-cohort study
收稿日期:2021-08-12  出版日期:2022-03-21
DOI:10.3760/cma.j.cn112338-20210812-00638
中文关键词: 队列研究  病例队列设计  生存分析
英文关键词: Cohort study  Case-cohort design  Survival analysis
基金项目:国家重点研发计划(2021YFC2500404,2016YFC1302503)
作者单位E-mail
拓嘉怡 上海交通大学医学院公共卫生学院, 上海 200025
上海交通大学医学院附属仁济医院, 癌基因及相关基因国家重点实验室, 上海 200032
上海市肿瘤研究所流行病学研究室, 上海 200032 
 
毕京浩 上海交通大学医学院公共卫生学院, 上海 200025
上海交通大学医学院附属仁济医院, 癌基因及相关基因国家重点实验室, 上海 200032
上海市肿瘤研究所流行病学研究室, 上海 200032 
 
李卓颖 上海交通大学医学院附属仁济医院, 癌基因及相关基因国家重点实验室, 上海 200032
上海市肿瘤研究所流行病学研究室, 上海 200032 
 
沈秋明 上海交通大学医学院公共卫生学院, 上海 200025
上海交通大学医学院附属仁济医院, 癌基因及相关基因国家重点实验室, 上海 200032
上海市肿瘤研究所流行病学研究室, 上海 200032 
 
谭玉婷 上海交通大学医学院附属仁济医院, 癌基因及相关基因国家重点实验室, 上海 200032
上海市肿瘤研究所流行病学研究室, 上海 200032 
 
李泓澜 上海交通大学医学院附属仁济医院, 癌基因及相关基因国家重点实验室, 上海 200032
上海市肿瘤研究所流行病学研究室, 上海 200032 
 
袁蕙芸 上海交通大学医学院附属仁济医院, 上海 200127  
项永兵 上海交通大学医学院公共卫生学院, 上海 200025
上海交通大学医学院附属仁济医院, 癌基因及相关基因国家重点实验室, 上海 200032
上海市肿瘤研究所流行病学研究室, 上海 200032
上海交通大学医学院附属仁济医院, 上海 200127 
ybxiang@shsci.org 
摘要点击次数: 2657
全文下载次数: 1501
中文摘要:
      目的 系统介绍病例队列研究设计的基本原理,以及风险比(HR)的常用估计方法及其应用。方法 首先,介绍病例队列研究设计的基本原理;其次,对Prentice法、Self-Prentice法和Barlow法加权Cox比例风险回归模型进行描述和说明;最后,以上海市女性健康队列研究为例,分析全队列数据与病例队列样本中肥胖与肝癌发病的关联,并进一步比较两者在各种模型中参数估计的结果。结果 在全队列数据和病例队列样本中,发现肥胖与女性肝癌发病的关联均有统计学意义。在Cox比例风险回归模型中,全队列数据和病例队列样本的回归系数(β)随着协变量调整有所波动,但是两者的HR值较为接近;两者β的标准误存在差异,即病例队列样本β的标准误大于全队列的参数估计值,HR值的95%CI更宽。在加权Cox比例风险回归模型中,Prentice法相比Self-Prentice法和Barlow法的β的标准误更接近全队列的参数估计值,HR值的95%CI更靠近全队列的结果。结论 病例队列研究设计通过收集和分析子队列成员和发病者的资料,可以获得接近全队列的参数结果,同时能够节约样本量和提高研究效率。此外,在病例队列设计中可以优先选择Prentice法。
英文摘要:
      Objective To systematically introduce the design of case-cohort study and the statistical methods of relative risk estimation and their application in the design. Methods First, we introduced the basic principles of case-cohort study design. Secondly, Prentice's method, Self-Prentice method and Barlow method were described in the weighted Cox proportional hazard regression models in detail, finally, the data from the Shanghai Women's Health Study were used as an example to analyze the association between obesity and liver cancer incidence in the full cohort and case-cohort sample, and the results of parameters from each method were compared. Results Significant association was observed between obesity and risk for liver cancer incidence in women in both the full cohort and the case-cohort sample. In the Cox proportional hazard regression model, the partial regression coefficients of the full cohort and the case-cohort sample fluctuated with the adjustment of confounding factors, but the hazard ratio estimates of them were close. There was a difference in the standard error of the partial regression coefficient between the full cohort and the case-cohort sample. The standard error of the partial regression coefficient of the case-cohort sample was larger than that of the full cohort, resulting in a wider 95% confidence interval of the relative risk. In the weighted Cox proportional hazard regression model, the standard error of the partial regression coefficient of Prentice's method was closer to the parameter estimates from full cohort than Self-Prentice method and Barlow method, and the 95% confidence interval of hazard ratio was closer to that of the full cohort. Conclusions Case-cohort design could yield parameter results closer to the full cohort by collecting and analyzing data from sub-cohort members and patients with the disease, and reduce sample size and improve research efficiency. The results suggested that Prentice's method would be preferred in case-cohort design.
查看全文   Html全文     查看/发表评论  下载PDF阅读器
关闭