Cumulative Logit Ordinal Regression with Proportional Odds under Nonignorable Missing Response -- Application to Phase III Trial
By: Arnab Kumar Maity , Huaming Tan , Vivek Pradhan and more
Potential Business Impact:
Fixes broken medical study results with missing info.
Missing data are inevitable in clinical trials, and trials that produce categorical ordinal responses are not exempted from this. Typically, missing values in the data occur due to different missing mechanisms, such as missing completely at random, missing at random, and missing not at random. Under a specific missing data regime, when the conditional distribution of the missing data is dependent on the ordinal response variable itself along with other predictor variables, then the missing data mechanism is called nonignorable. In this article we propose an expectation maximization based algorithm for fitting a proportional odds regression model when the missing responses are nonignorable. We report results from an extensive simulation study to illustrate the methodology and its finite sample properties. We also apply the proposed method to a recently completed Phase III psoriasis study using an investigational compound. The corresponding SAS program is provided.
Similar Papers
Maximum Likelihood for Logistic Regression Model with Incomplete and Hybrid-Type Covariates
Methodology
Fixes computer math when some numbers are missing.
Approximate Bayesian inference for cumulative probit regression models
Methodology
Helps computers learn from ranked data faster.
Nonparametric modal regression with missing response observations
Methodology
Finds patterns even with missing information.