药物流行病学研究的靶向最大似然估计

Targeted Maximum Likelihood Estimation for Pharmacoepidemiologic Research.

作者信息

Pang Menglan, Schuster Tibor, Filion Kristian B, Eberg Maria, Platt Robert W

机构信息

From the aCentre For Clinical Epidemiology, Lady Davis Research Institute, Jewish General Hospital, Montreal, Quebec, Canada; bDepartment of Epidemiology, Biostatistics and Occupational Health, cDepartment of Pediatrics, dDivision of Clinical Epidemiology, Department of Medicine, McGill University, Montreal, Quebec, Canada; and eThe Research Institute of the McGill University Health Centre, Montreal, Quebec, Canada.

出版信息

Epidemiology. 2016 Jul;27(4):570-7. doi: 10.1097/EDE.0000000000000487.

Abstract

BACKGROUND

Targeted maximum likelihood estimation has been proposed for estimating marginal causal effects, and is robust to misspecification of either the treatment or outcome model. However, due perhaps to its novelty, targeted maximum likelihood estimation has not been widely used in pharmacoepidemiology. The objective of this study was to demonstrate targeted maximum likelihood estimation in a pharmacoepidemiological study with a high-dimensional covariate space, to incorporate the use of high-dimensional propensity scores into this method, and to compare the results to those of inverse probability weighting.

METHODS

We implemented the targeted maximum likelihood estimation procedure in a single-point exposure study of the use of statins and the 1-year risk of all-cause mortality postmyocardial infarction using data from the UK Clinical Practice Research Datalink. A range of known potential confounders were considered, and empirical covariates were selected using the high-dimensional propensity scores algorithm. We estimated odds ratios using targeted maximum likelihood estimation and inverse probability weighting with a variety of covariate selection strategies.

RESULTS

Through a real example, we demonstrated the double robustness of targeted maximum likelihood estimation. We showed that results with this method and inverse probability weighting differed when a large number of covariates were included in the treatment model.

CONCLUSIONS

Targeted maximum likelihood can be used in high-dimensional covariate settings. In high-dimensional covariate settings, differences in results between targeted maximum likelihood and inverse probability weighted estimation are likely due to sensitivity to (near) positivity violations. Further investigations are needed to gain better understanding of the advantages and limitations of this method in pharmacoepidemiological studies.

摘要

背景

已提出靶向最大似然估计法来估计边际因果效应,且该方法对治疗模型或结局模型的错误设定具有稳健性。然而,或许由于其新颖性,靶向最大似然估计法在药物流行病学中尚未得到广泛应用。本研究的目的是在具有高维协变量空间的药物流行病学研究中展示靶向最大似然估计法,将高维倾向得分的使用纳入该方法,并将结果与逆概率加权法的结果进行比较。

方法

我们使用来自英国临床实践研究数据链的数据,在一项关于他汀类药物使用与心肌梗死后全因死亡1年风险的单点暴露研究中实施了靶向最大似然估计程序。考虑了一系列已知的潜在混杂因素,并使用高维倾向得分算法选择了经验协变量。我们使用靶向最大似然估计法和逆概率加权法以及各种协变量选择策略来估计比值比。

结果

通过一个实际例子,我们展示了靶向最大似然估计法的双重稳健性。我们表明,当治疗模型中纳入大量协变量时,该方法与逆概率加权法的结果有所不同。

结论

靶向最大似然估计法可用于高维协变量设置。在高维协变量设置中,靶向最大似然估计法与逆概率加权估计法结果的差异可能是由于对(接近)正性违背的敏感性。需要进一步研究以更好地理解该方法在药物流行病学研究中的优点和局限性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e1a3/4890840/babcea1e5343/ede-27-570-g008.jpg

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