A practical illustration of the importance of realistic individualized treatment rules in causal inference
Oliver Bembom, Mark J. van der Laan

TL;DR
This paper demonstrates that using realistic individualized treatment rules in causal inference provides more accurate estimates of physical activity's effect on elderly mortality than traditional static approaches, which often overestimate benefits.
Contribution
It introduces a practical approach for estimating causal effects based on realistic treatment options, addressing limitations of conventional static treatment assumptions.
Findings
Static causal effect estimators tend to overestimate benefits.
Realistic treatment rules suggest 15-30% mortality reduction.
Most effects are not statistically significant at 0.05 level.
Abstract
The effect of vigorous physical activity on mortality in the elderly is difficult to estimate using conventional approaches to causal inference that define this effect by comparing the mortality risks corresponding to hypothetical scenarios in which all subjects in the target population engage in a given level of vigorous physical activity. A causal effect defined on the basis of such a static treatment intervention can only be identified from observed data if all subjects in the target population have a positive probability of selecting each of the candidate treatment options, an assumption that is highly unrealistic in this case since subjects with serious health problems will not be able to engage in higher levels of vigorous physical activity. This problem can be addressed by focusing instead on causal effects that are defined on the basis of realistic individualized treatment rules…
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