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Logistic回归中误调整工具变量对因果效应估计的影响

苏萍 王停停 于媛媛 孙晓茹 李洪凯 薛付忠

苏萍, 王停停, 于媛媛, 孙晓茹, 李洪凯, 薛付忠. Logistic回归中误调整工具变量对因果效应估计的影响[J]. 中华疾病控制杂志, 2021, 25(6): 656-662. doi: 10.16462/j.cnki.zhjbkz.2021.06.007
引用本文: 苏萍, 王停停, 于媛媛, 孙晓茹, 李洪凯, 薛付忠. Logistic回归中误调整工具变量对因果效应估计的影响[J]. 中华疾病控制杂志, 2021, 25(6): 656-662. doi: 10.16462/j.cnki.zhjbkz.2021.06.007
SU Ping, WANG Ting-ting, YU Yuan-yuan, SUN Xiao-ru, LI Hong-kai, XUE Fu-zhong. The effect of mis-adjusting instrumental variables on the estimation of causal effect in Logistic regression analysis model[J]. CHINESE JOURNAL OF DISEASE CONTROL & PREVENTION, 2021, 25(6): 656-662. doi: 10.16462/j.cnki.zhjbkz.2021.06.007
Citation: SU Ping, WANG Ting-ting, YU Yuan-yuan, SUN Xiao-ru, LI Hong-kai, XUE Fu-zhong. The effect of mis-adjusting instrumental variables on the estimation of causal effect in Logistic regression analysis model[J]. CHINESE JOURNAL OF DISEASE CONTROL & PREVENTION, 2021, 25(6): 656-662. doi: 10.16462/j.cnki.zhjbkz.2021.06.007

Logistic回归中误调整工具变量对因果效应估计的影响

doi: 10.16462/j.cnki.zhjbkz.2021.06.007
基金项目: 

国家重点研发计划 2020YFC2003500

国家自然科学基金 81773547

国家自然科学基金 82003557

山东省自然科学基金 ZR2019ZD02

山东省自然科学基金 ZR2019PH041

详细信息
    通讯作者:

    李洪凯,E-mail:lihongkaiyouxiang@163.com

    薛付忠,E-mail:xuefzh@sdu.edu.cn

  • 中图分类号: R181.2;R195.1

The effect of mis-adjusting instrumental variables on the estimation of causal effect in Logistic regression analysis model

Funds: 

National Key Research and Development Program 2020YFC2003500

National Natural Science Foundation of China 81773547

National Natural Science Foundation of China 82003557

National Natural Science Foundation of Shandong Province ZR2019ZD02

National Natural Science Foundation of Shandong Province ZR2019PH041

More Information
  • 摘要:   目的  通过统计模拟和实例数据分析,探索当存在不可观测的混杂因素时,Logistic回归分析模型中调整工具变量(instrumental variable, Ⅳ)对估计因果效应的影响。  方法  设定变量均服从二项分布,在Logistic回归分析模型中依次使用不同的参数进行统计模拟,以因果效应估计值的偏倚和标准误作为评价指标;实例数据分析是基于山东省多家医院健康体检中心的体检随访数据,以高血压为目标结局,构建纵向观察队列,筛选单核苷酸多态性(single nucleotide polymorphism, SNP)位点rs12149832作为Ⅳ,在Logistic回归分析模型中,采用不同策略(纳入/不纳入rs12149832协变量)来分析BMI与患高血压风险之间的关系。  结果  统计模拟结果显示在以Logistic回归分析模型估计暴露与结局间的效应时,协变量集中纳入Ⅳ会增大效应估计的偏倚和标准误,但增大程度较小;实例分析中,高血压队列共纳入1 240名女性,基线年龄为(37.7±10.5)岁,BMI为(22.1±3.1)kg/m2。纳入Ⅳ的模型所得的效应估计值为0.225(P<0.001),略小于不包含Ⅳ的回归模型所得的效应估计值(0.228, P<0.001),基本验证了关于纳入Ⅳ进行调整的统计模拟结果。  结论  观察性流行病学研究中,Logistic回归分析模型误纳入Ⅳ对效应估计值的偏倚和标准误均有影响。
  • 图  1  Ⅳ假设条件示意图

    Figure  1.  Schematic diagram of Ⅳ assumptions

    图  2  Ⅳ因果图模型

    Figure  2.  Causal diagram of Ⅳ

    图  3  变化变量间OR值、Z生成概率及样本量时估计值的偏倚和标准误

    Figure  3.  Bias and standard error of the estimators with traversing the OR value of parameters, the generation probability of Z and the sample size

    表  1  SNP位点与BMI的关联性

    Table  1.   The association between SNP and BMI

    SNP位点 β sx t P
    rs12149832 0.433 0.196 2.208 0.027
    下载: 导出CSV

    表  2  三种策略下BMI对高血压的效应估计

    Table  2.   Estimation of the effect of BMI on hypertension under three strategies

    模型 方法/自变量 估计值 sx OR(95% CI)值 Z P
    MR TSLS 1.066 0.433 2.904(1.212~6.656) 2.462 0.013
    Logistic模型1 BMI 0.228 0.029 1.256(1.186~1.331) 7.764 <0.001
    Logistic模型2 BMI+rs12149832 0.225 0.029 1.252(1.183~1.327) 7.653 <0.001
    下载: 导出CSV
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  • 收稿日期:  2021-04-26
  • 修回日期:  2021-05-18
  • 刊出日期:  2021-06-10

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