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超越逻辑回归:二元变量的结构方程建模及其在调查未观察到的混杂因素中的应用。

Beyond logistic regression: structural equations modelling for binary variables and its application to investigating unobserved confounders.

作者信息

Kupek Emil

机构信息

National Perinatal Epidemiology Unit, Institute of Health Sciences, University of Oxford, UK.

出版信息

BMC Med Res Methodol. 2006 Mar 15;6:13. doi: 10.1186/1471-2288-6-13.

Abstract

BACKGROUND

Structural equation modelling (SEM) has been increasingly used in medical statistics for solving a system of related regression equations. However, a great obstacle for its wider use has been its difficulty in handling categorical variables within the framework of generalised linear models.

METHODS

A large data set with a known structure among two related outcomes and three independent variables was generated to investigate the use of Yule's transformation of odds ratio (OR) into Q-metric by (OR-1)/(OR+1) to approximate Pearson's correlation coefficients between binary variables whose covariance structure can be further analysed by SEM. Percent of correctly classified events and non-events was compared with the classification obtained by logistic regression. The performance of SEM based on Q-metric was also checked on a small (N = 100) random sample of the data generated and on a real data set.

RESULTS

SEM successfully recovered the generated model structure. SEM of real data suggested a significant influence of a latent confounding variable which would have not been detectable by standard logistic regression. SEM classification performance was broadly similar to that of the logistic regression.

CONCLUSION

The analysis of binary data can be greatly enhanced by Yule's transformation of odds ratios into estimated correlation matrix that can be further analysed by SEM. The interpretation of results is aided by expressing them as odds ratios which are the most frequently used measure of effect in medical statistics.

摘要

背景

结构方程模型(SEM)在医学统计学中越来越多地用于求解相关回归方程组。然而,其更广泛应用的一个重大障碍是在广义线性模型框架内处理分类变量存在困难。

方法

生成一个在两个相关结果和三个自变量之间具有已知结构的大数据集,以研究通过(OR - 1)/(OR + 1)将优势比(OR)进行尤尔变换为Q指标,以近似二元变量之间的皮尔逊相关系数,其协方差结构可通过SEM进一步分析。将正确分类的事件和非事件的百分比与逻辑回归得到的分类进行比较。还在生成的数据的一个小(N = 100)随机样本和一个真实数据集上检查了基于Q指标的SEM的性能。

结果

SEM成功恢复了生成的模型结构。真实数据的SEM表明存在一个潜在混杂变量的显著影响,而这是标准逻辑回归无法检测到的。SEM的分类性能与逻辑回归大致相似。

结论

通过将优势比进行尤尔变换为估计相关矩阵,可极大地增强二元数据的分析,该相关矩阵可通过SEM进一步分析。将结果表示为优势比有助于解释,优势比是医学统计学中最常用的效应度量。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4e96/1431551/6b36bc263641/1471-2288-6-13-1.jpg

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