Doubly robust adaptive LASSO for effect modifier discovery.
Asma BahamyirouMireille E SchnitzerEdward H KennedyLucie BlaisYi YangPublished in: The international journal of biostatistics (2022)
Effect modification occurs when the effect of a treatment on an outcome differsaccording to the level of some pre-treatment variable (the effect modifier). Assessing an effect modifier is not a straight-forward task even for a subject matter expert. In this paper, we propose a two-stageprocedure to automatically selecteffect modifying variables in a Marginal Structural Model (MSM) with a single time point exposure based on the two nuisance quantities (the conditionaloutcome expectation and propensity score). We highlight the performance of our proposal in a simulation study. Finally, to illustrate tractability of our proposed methods, we apply them to analyze a set of pregnancy data. We estimate the conditional expected difference in the counterfactual birth weight if all women were exposed to inhaled corticosteroids during pregnancy versus the counterfactual birthweight if all women were not, using data from asthma medications during pregnancy.
Keyphrases
- birth weight
- chronic obstructive pulmonary disease
- electronic health record
- gestational age
- physical activity
- machine learning
- type diabetes
- body mass index
- big data
- weight gain
- men who have sex with men
- combination therapy
- preterm birth
- small molecule
- lung function
- insulin resistance
- skeletal muscle
- antiretroviral therapy
- replacement therapy
- smoking cessation
- hiv testing