Login / Signup

Sharp nonparametric bounds and randomization inference for treatment effects on an ordinal outcome.

Yasutaka Chiba
Published in: Statistics in medicine (2017)
In clinical research, investigators are interested in inferring the average causal effect of a treatment. However, the causal parameter that can be used to derive the average causal effect is not well defined for ordinal outcomes. Although some definitions have been proposed, they are limited in that they are not identical to the well-defined causal risk for a binary outcome, which is the simplest ordinal outcome. In this paper, we propose the use of a causal parameter for an ordinal outcome, defined as the proportion that a potential outcome under one treatment condition would not be smaller than that under the other condition. For a binary outcome, this proportion is identical to the causal risk. Unfortunately, the proposed causal parameter cannot be identified, even under randomization. Therefore, we present a numerical method to calculate the sharp nonparametric bounds within a sample, reflecting the impact of confounding. When the assumption of independent potential outcomes is included, the causal parameter can be identified when randomization is in play. Then, we present exact tests and the associated confidence intervals for the relative treatment effect using the randomization-based approach, which are an extension of the existing methods for a binary outcome. Our methodologies are illustrated using data from an emetic prevention clinical trial.
Keyphrases
  • clinical trial
  • type diabetes
  • machine learning
  • risk assessment
  • metabolic syndrome
  • skeletal muscle
  • ionic liquid
  • deep learning
  • molecular dynamics
  • electronic health record
  • replacement therapy
  • artificial intelligence