A Model of a Randomized Experiment with an Application to the PROWESS Clinical Trial

08/16/2019
by   Amanda Kowalski, et al.
0

I develop a model of a randomized experiment with a binary intervention and a binary outcome. Potential outcomes in the intervention and control groups give rise to four types of participants. Fixing ideas such that the outcome is mortality, some participants would live regardless, others would be saved, others would be killed, and others would die regardless. These potential outcome types are not observable. However, I use the model to develop estimators of the number of participants of each type. The model relies on the randomization within the experiment and on deductive reasoning. I apply the model to an important clinical trial, the PROWESS trial, and I perform a Monte Carlo simulation calibrated to estimates from the trial. The reduced form from the trial shows a reduction in mortality, which provided a rationale for FDA approval. However, I find that the intervention killed two participants for every three it saved.

READ FULL TEXT

page 6

page 14

research
12/02/2021

A note on sampling biases in the Bangladesh mask trial

A recent cluster trial in Bangladesh randomized 600 villages into 300 tr...
research
12/13/2019

General Finite Sample Inference for Experiments with Examples from Health Care

I exploit knowledge of the randomization process within an experiment to...
research
07/13/2023

Learn-As-you-GO (LAGO) Trials: Optimizing Treatments and Preventing Trial Failure Through Ongoing Learning

It is well known that changing the intervention package while a trial is...
research
07/11/2023

Testing for Reviewer Anchoring in Peer Review: A Randomized Controlled Trial

Peer review frequently follows a process where reviewers first provide i...
research
08/15/2022

Computational Empathy Counteracts the Negative Effects of Anger on Creative Problem Solving

How does empathy influence creative problem solving? We introduce a comp...

Please sign up or login with your details

Forgot password? Click here to reset