Faculty Opinions recommendation of Regularized Regression Versus the High-Dimensional Propensity Score for Confounding Adjustment in Secondary Database Analyses.

Author(s):  
Robert Platt
Author(s):  
Xiaochun Li ◽  
Changyu Shen

Propensity score–based methods or multiple regressions of the outcome are often used for confounding adjustment in analysis of observational studies. In either approach, a model is needed: A model describing the relationship between the treatment assignment and covariates in the propensity score–based method or a model for the outcome and covariates in the multiple regressions. The 2 models are usually unknown to the investigators and must be estimated. The correct model specification, therefore, is essential for the validity of the final causal estimate. We describe in this article a doubly robust estimator which combines both models propitiously to offer analysts 2 chances for obtaining a valid causal estimate and demonstrate its use through a data set from the Lindner Center Study.


2020 ◽  
Vol 29 (11) ◽  
pp. 1373-1381
Author(s):  
John Tazare ◽  
Liam Smeeth ◽  
Stephen J. W. Evans ◽  
Elizabeth Williamson ◽  
Ian J. Douglas

2011 ◽  
Vol 20 (10) ◽  
pp. 1112-1112
Author(s):  
Sengwee Toh ◽  
Luis A. García Rodríguez ◽  
Miguel A. Hernán

2011 ◽  
Vol 173 (12) ◽  
pp. 1404-1413 ◽  
Author(s):  
Jeremy A. Rassen ◽  
Robert J. Glynn ◽  
M. Alan Brookhart ◽  
Sebastian Schneeweiss

2019 ◽  
Author(s):  
T.P. Zonneveld ◽  
A. Aigner ◽  
R.H.H. Groenwold ◽  
A. Algra ◽  
P.J. Nederkoorn ◽  
...  

AbstractBackgroundIn acute stroke studies, ordinal logistic regression (OLR) is often used to analyze outcome on the modified Rankin Scale (mRS), whereas the non-parametric Mann-Whitney measure of superiority (MWS) has also been suggested. It is unclear how these perform comparatively when confounding adjustment is warranted. Our aim is to quantify the performance of OLR and MWS in different confounding variable settings.MethodsWe set up a simulation study with three different scenarios; (1) dichotomous confounding variables, (2) continuous confounding variables, and (3) confounding variable settings mimicking a study on functional outcome after stroke. We compared adjusted ordinal logistic regression (aOLR) and stratified Mann-Whitney measure of superiority (sMWS), and also used propensity scores to stratify the MWS (psMWS). For comparability, OLR estimates were transformed to a MWS. We report bias, the percentage of runs that produced a point estimate deviating by more than 0.05 points (point estimate variation), and the coverage probability.ResultsIn scenario 1, there was no bias in both sMWS and aOLR, with similar point estimate variation and coverage probabilities. In scenario 2, sMWS resulted in more bias (0.04 versus 0.00), and higher point estimate variation (41.6% versus 3.3%), whereas coverage probabilities were similar. In scenario 3, there was no bias in both methods, point estimate variation was higher in the sMWS (6.7%) versus aOLR (1.1%), and coverage probabilities were 0.98 (sMWS) versus 0.95 (aOLR). With psMWS, bias remained 0.00, with less point estimate variation (1.5%) and a coverage probability of 0.95.ConclusionsThe bias of both adjustment methods was similar in our stroke simulation scenario, and the higher point estimate variation in the MWS improved with propensity score based stratification. The stratified MWS is a valid alternative for adjusted OLR only when the ratio of number of strata versus number of observations is relatively low, but propensity score based stratification extends the application range of the MWS.


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