G-computation and machine learning for estimating the causal effects of binary exposure statuses on binary outcomes

Archive ouverte

Le Borgne, F | Chatton, Arthur | Léger, Maxime | Lenain, Rémi | Foucher, Yohann

Edité par CCSD ; Nature Publishing Group -

International audience. Abstract In clinical research, there is a growing interest in the use of propensity score-based methods to estimate causal effects. G-computation is an alternative because of its high statistical power. Machine learning is also increasingly used because of its possible robustness to model misspecification. In this paper, we aimed to propose an approach that combines machine learning and G-computation when both the outcome and the exposure status are binary and is able to deal with small samples. We evaluated the performances of several methods, including penalized logistic regressions, a neural network, a support vector machine, boosted classification and regression trees, and a super learner through simulations. We proposed six different scenarios characterised by various sample sizes, numbers of covariates and relationships between covariates, exposure statuses, and outcomes. We have also illustrated the application of these methods, in which they were used to estimate the efficacy of barbiturates prescribed during the first 24 h of an episode of intracranial hypertension. In the context of GC, for estimating the individual outcome probabilities in two counterfactual worlds, we reported that the super learner tended to outperform the other approaches in terms of both bias and variance, especially for small sample sizes. The support vector machine performed well, but its mean bias was slightly higher than that of the super learner. In the investigated scenarios, G-computation associated with the super learner was a performant method for drawing causal inferences, even from small sample sizes.

Suggestions

Du même auteur

Identification of in-sample positivity violations using regression trees: The PoRT algorithm

Archive ouverte | Danelian, Gabriel | CCSD

International audience. BackgroundThe positivity assumption is crucial when drawing causal inferences from observational studies, but it is often overlooked in practice. A violation of positivity occurs when the sam...

Plug-stat®: a cloud-based application to facilitate the emulation of clinical trials for real-world evidence based on real-world data

Archive ouverte | Foucher, Yohann | CCSD

International audience. Exploitation of the ever-increasing volume of observational data has become a major challenge for real-world evidence (RWE). Causal inference can be viewed as emulations of clinical trials (E...

Causal inference in case of near‐violation of positivity: comparison of methods

Archive ouverte | Léger, Maxime | CCSD

International audience. In causal studies, the near‐violation of the positivity may occur by chance, because of sample‐to‐sample fluctuation despite the theoretical veracity of the positivity assumption in the popul...

Chargement des enrichissements...