Khái niệm cốt lõi
The authors introduce the sequential adjustment criteria (SAC) to recover causal effects in the presence of confounding and attrition bias. They also propose a targeted sequential regression (TSR) estimator that is multiply robust under certain conditions.
Tóm tắt
The content discusses the challenges of confounding bias and selection bias, particularly in the context of informative missingness or attrition, in applied causal inference. The authors introduce the sequential adjustment criteria (SAC) as a set of graphical conditions that enable the recovery of causal effects, including the average treatment effect (ATE), even in scenarios where existing methods fall short.
Key highlights:
- The SAC extends available graphical conditions for recovering causal effects using sequential regressions, allowing for the inclusion of post-exposure and forbidden variables in the admissible adjustment sets.
- The authors propose the targeted sequential regression (TSR) estimator for the ATE, which is multiply robust under certain conditions. This means the estimator remains consistent if at least one of the following holds: (i) the sequential regression models are correctly specified, (ii) the exposure and selection propensity score models are correctly specified, or (iii) the exposure propensity score model and the mean-imputation model are correctly specified.
- The TSR estimator capitalizes on the collective robustness conditions of regression-based, IPW-based, and imputation-based solutions, broadening the scope of scenarios where a TMLE procedure can yield a consistent estimate of a causal effect in the presence of missing data.
- The authors apply the developed procedures to estimate the causal effects of pharmacological treatment for attention-deficit/hyperactivity disorder (ADHD) on the scores obtained by diagnosed Norwegian schoolchildren in national tests.
Thống kê
The authors use observational data on n = 9,352 Norwegian schoolchildren diagnosed with ADHD to estimate the causal effect of pharmacological treatment on their academic achievement scores.
Trích dẫn
"Confounding bias and selection bias are two significant challenges to the validity of conclusions drawn from applied causal inference."
"We introduce the sequential adjustment criteria (SAC), which extend available graphical conditions for recovering causal effects using sequential regressions, allowing for the inclusion of post-exposure and forbidden variables in the admissible adjustment sets."
"The TSR estimator capitalizes on the collective robustness conditions of regression-based, IPW-based, and imputation-based solutions, broadening the scope of scenarios where a TMLE procedure can yield a consistent estimate of a causal effect in the presence of missing data."