胡纯严,胡良平.合理进行多重Logistic回归分析——结合平均处理效应分析[J].四川精神卫生杂志,2022,35(6):512-517.Hu Chunyan,Hu Liangping,Reasonably conduct the multiple Logistic regression analysis combined with the average treatment effect analysis[J].SICHUAN MENTAL HEALTH,2022,35(6):512-517 |
合理进行多重Logistic回归分析——结合平均处理效应分析 |
Reasonably conduct the multiple Logistic regression analysis combined with the average treatment effect analysis |
投稿时间:2022-11-13 |
DOI:10.11886/scjsws20221113005 |
中文关键词: 逆概率权重 潜在结果均值 平均处理效应 Logistic回归模型 倾向性评分模型 |
英文关键词:Inverse probability weight Potential outcome mean Average treatment effect Logistic regression model Propensity score model |
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中文摘要: |
本文目的是介绍如何结合平均处理效应分析,合理地进行多重Logistic回归分析的方法。第一,介绍了与平均处理效应分析有关的4个基本概念。第二,介绍了平均处理效应分析中的核心内容,即6种估算方法。第三,通过一个假设的药物临床试验实例,介绍了如何用SAS软件进行分析的全过程,内容如下:①采用传统的多重Logistic回归分析;②采用倾向性评分模型计算逆概率权重;③分别采用6种估算方法估计潜在结果均值和平均处理效应。 |
英文摘要: |
The purpose of the paper was to introduce how to reasonably carry out multiple Logistic regression analysis combined with the average treatment effect analysis. Firstly, it introduced 4 basic concepts related to the average treatment effect analysis. Secondly, it presented the core contents in the average treatment effect analysis, that was, six estimation methods. Thirdly, through a hypothetical drug clinical trial example, it gave the whole process of how to use SAS software for the analysis. The contests were as follows: ① the traditional multiple Logistic regression model was used for the analysis; ② the propensity score model was used to calculate the inverse probability weights; ③ six estimation methods were used to estimate the potential outcome mean and the average treatment effect. |
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