Missing data imputation for a multivariate outcome of mixed variable types

06/04/2022
by   Yongming Qu, et al.
0

Data collected in clinical trials are often composed of multiple types of variables. For example, laboratory measurements and vital signs are longitudinal data of continuous or categorical variables, adverse events may be recurrent events, and death is a time-to-event variable. Missing data due to patients' discontinuation from the study or as a result of handling intercurrent events using a hypothetical strategy almost always occur during any clinical trial. Imputing these data with mixed types of variables simultaneously is a challenge that has not been studied. In this article, we propose using an approximate fully conditional specification to impute the missing data. Simulation shows the proposed method provides satisfactory results under the assumption of missing at random. Finally, real data from a major diabetes clinical trial are analyzed to illustrate the potential benefit of the proposed method.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/20/2022

Robust analyses for longitudinal clinical trials with missing and non-normal continuous outcomes

Missing data is unavoidable in longitudinal clinical trials, and outcome...
research
11/19/2021

MURAL: An Unsupervised Random Forest-Based Embedding for Electronic Health Record Data

A major challenge in embedding or visualizing clinical patient data is t...
research
02/16/2019

Sequentially additive nonignorable missing data modeling using auxiliary marginal information

We study a class of missingness mechanisms, called sequentially additive...
research
05/30/2023

FRAMM: Fair Ranking with Missing Modalities for Clinical Trial Site Selection

Despite many efforts to address the disparities, the underrepresentation...
research
04/08/2022

Long-term effect estimation when combining clinical trial and observational follow-up datasets

Combining experimental and observational follow-up datasets has received...

Please sign up or login with your details

Forgot password? Click here to reset