Introduction to computational causal inference using reproducible Stata, R, and Python code: A tutorial.

Matthew J Smith ORCID logo; Mohammad AMansournia; Camille Maringe ORCID logo; Paul N Zivich ORCID logo; Stephen RCole; Clémence Leyrat ORCID logo; Aurélien Belot ORCID logo; Bernard Rachet ORCID logo; Miguel A Luque-Fernandez ORCID logo; (2021) Introduction to computational causal inference using reproducible Stata, R, and Python code: A tutorial. Statistics in medicine, 41 (2). pp. 407-432. ISSN 0277-6715 DOI: 10.1002/sim.9234
Copy

The main purpose of many medical studies is to estimate the effects of a treatment or exposure on an outcome. However, it is not always possible to randomize the study participants to a particular treatment, therefore observational study designs may be used. There are major challenges with observational studies; one of which is confounding. Controlling for confounding is commonly performed by direct adjustment of measured confounders; although, sometimes this approach is suboptimal due to modeling assumptions and misspecification. Recent advances in the field of causal inference have dealt with confounding by building on classical standardization methods. However, these recent advances have progressed quickly with a relative paucity of computational-oriented applied tutorials contributing to some confusion in the use of these methods among applied researchers. In this tutorial, we show the computational implementation of different causal inference estimators from a historical perspective where new estimators were developed to overcome the limitations of the previous estimators (ie, nonparametric and parametric g-formula, inverse probability weighting, double-robust, and data-adaptive estimators). We illustrate the implementation of different methods using an empirical example from the Connors study based on intensive care medicine, and most importantly, we provide reproducible and commented code in Stata, R, and Python for researchers to adapt in their own observational study. The code can be accessed at https://github.com/migariane/Tutorial_Computational_Causal_Inference_Estimators.



picture_as_pdf
sim.9234.pdf
subject
Published Version
Available under Creative Commons: 4.0

View Download

Explore Further

Read more research from the creator(s):

Find work associated with the faculties and division(s):

Find work associated with the research centre(s):

Find work from this publication: