Litcius/Paper detail

Interpreting Randomized Controlled Trials

Pavlos Msaouel, Juhee Lee, Peter F. Thall

2023Cancers31 citationsDOIOpen Access PDF

Abstract

This article describes rationales and limitations for making inferences based on data from randomized controlled trials (RCTs). We argue that obtaining a representative random sample from a patient population is impossible for a clinical trial because patients are accrued sequentially over time and thus comprise a convenience sample, subject only to protocol entry criteria. Consequently, the trial's sample is unlikely to represent a definable patient population. We use causal diagrams to illustrate the difference between random allocation of interventions within a clinical trial sample and true simple or stratified random sampling, as executed in surveys. We argue that group-specific statistics, such as a median survival time estimate for a treatment arm in an RCT, have limited meaning as estimates of larger patient population parameters. In contrast, random allocation between interventions facilitates comparative causal inferences about between-treatment effects, such as hazard ratios or differences between probabilities of response. Comparative inferences also require the assumption of transportability from a clinical trial's convenience sample to a targeted patient population. We focus on the consequences and limitations of randomization procedures in order to clarify the distinctions between pairs of complementary concepts of fundamental importance to data science and RCT interpretation. These include internal and external validity, generalizability and transportability, uncertainty and variability, representativeness and inclusiveness, blocking and stratification, relevance and robustness, forward and reverse causal inference, intention to treat and per protocol analyses, and potential outcomes and counterfactuals.

Topics & Concepts

Randomized controlled trialGeneralizability theoryCausal inferencePopulationSample size determinationExternal validityRepresentativeness heuristicInternal validityProtocol (science)Average treatment effectStatisticsInferenceComputer scienceMedicineArtificial intelligenceMathematicsPropensity score matchingSurgeryEnvironmental healthPathologyAlternative medicineAdvanced Causal Inference TechniquesHealth Systems, Economic Evaluations, Quality of LifeStatistical Methods in Clinical Trials
Interpreting Randomized Controlled Trials | Litcius