Confounding adjustment methods for multi-level treatment comparisons under lack of positivity and unknown model specification

J Appl Stat. 2021 Apr 7;49(10):2570-2592. doi: 10.1080/02664763.2021.1911966. eCollection 2022.

Abstract

Imbalances in covariates between treatment groups are frequent in observational studies and can lead to biased comparisons. Various adjustment methods can be employed to correct these biases in the context of multi-level treatments (> 2). Analytical challenges, such as positivity violations and incorrect model specification due to unknown functional relationships between covariates and treatment or outcome, may affect their ability to yield unbiased results. Such challenges were expected in a comparison of fire-suppression interventions for preventing fire growth. We identified the overlap weights, augmented overlap weights, bias-corrected matching and targeted maximum likelihood as methods with the best potential to address those challenges. A simple variance estimator for the overlap weight estimators that can naturally be combined with machine learning is proposed. In a simulation study, we investigated the performance of these methods as well as those of simpler alternatives. Adjustment methods that included an outcome modeling component performed better than those that focused on the treatment mechanism in our simulations. Additionally, machine learning implementation was observed to efficiently compensate for the unknown model specification for the former methods, but not the latter. Based on these results, we compared the effectiveness of fire-suppression interventions using the augmented overlap weight estimator.

Keywords: Multi-level treatment; confounding adjustment; machine learning; plasmode simulation; simulation.

Grants and funding

This work was supported by Fonds de Recherche du Québec – Santé [grant number 265385] and Natural Sciences and Engineering Research Council of Canada [grant number 2016-06295].