Huang LL, Wei YY, Chen F. [Confounder adjustment in
observational comparative effectiveness researches: (1) statistical adjustment approaches for measured confounder].
Zhonghua Liu Xing Bing Xue Za Zhi 2019;
40:1304-1309. [PMID:
31658535 DOI:
10.3760/cma.j.issn.0254-6450.2019.10.024]
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Abstract
Observational comparative effectiveness studies have been widely conducted to provide evidence on additional effectiveness and to support randomized controlled findings in research. Although this type of study becomes more important over time, challenges related to the common biases which stemmed from confounders, are difficult to control. This manuscript summarizes some statistical methods used on adjusting measured confounders that often noticed in research, regarding the observational comparative effectiveness. Useful traditional methods would include stratified analysis, paired analysis, covariate model and multivariable model, etc.. Unconventional adjustment approaches such as propensity score and disease risk score methods may also be used in studies, for matching, stratification and adjustment. A good study design should be able to control confounders. The limitations of all the post hoc statistical adjustment methods should also be fully understood before being appropriately applied in practical events.
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