Counterfactual Uncertainty Quantification of Factual Estimand of
Efficacy from Before-and-After Treatment Repeated Measures Randomized
Controlled Trials
- CML
The ideal estimand for comparing a new treatment with a control is the efficacy , the expected differential outcome between and if each patient were given . While counterfactual from Randomized Controlled Trials (RCTs) has been available, this article shows uncertainty quantification (CUQ), quantifying uncertainty for factual point estimates but in a counterfactual setting, is surprisingly achievable. We achieve CUQ whose variability is typically smaller than factual UQ, by creating a new statistical modeling principle called ETZ which is applicable to RCTs with treatment Repeated Measures, common in many therapeutic areas. We urge caution when estimate of the unobservable true condition of a patient before treatment has measurement error, because that violation of standard regression assumption can cause attenuation in estimating treatment effects. Fortunately, we prove that, for traditional medicine in general, and for targeted therapy with efficacy defined as averaged over the population, counterfactual point estimation is unbiased. However, for targeted therapy, both Real Human and Digital Twins approaches should respect this limitation, lest predicted treatment effect in will have bias.
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