Clinical Trials Directory

Trials / Completed

CompletedNCT00037362

Measuring Sensitivity to Nonignorability

Status
Completed
Phase
Study type
Observational
Enrollment
Sponsor
National Heart, Lung, and Blood Institute (NHLBI) · NIH
Sex
Male
Age
100 Years
Healthy volunteers
Not accepted

Summary

To develop a new statistical index that measures sensitivity to non-ignorability (index of sensitivity to nonignorability, or ISNI) for model-based inferences.

Detailed description

BACKGROUND: Despite a considerable number of recent developments, missing data and associated methodology continues to be an important topic of research in biostatistics, medicine and public health. As investigators begin to understand the limitations of model-based inferences under the assumption of non-ignorable missingness, recent attention has turned to the formulation and implementation of sensitivity analyses. Having a general-purpose index to assess sensitivity to departures from ignorability would be extremely useful to researchers in a variety of fields in the health sciences. This is especially true if the index is relatively easy to compute and interpret. DESIGN NARRATIVE: It would be useful to have a general, easily computed diagnostic that characterizes data sets with respect to their potential for sensitivity to nonignorability. The investigators have developed a diagnostic that measures the effect of small perturbations from ignorability on coefficient estimates in the univariate linear model with missing observations.They will extend their analysis in a number of directions: i) They will develop a general class of diagnostics for Bayes and direct- likelihood inferences, and demonstrate its application to a number of important special cases. ii) They will develop an analogous theory for sensitivity to nonignorability in frequentist estimation and testing. iii) They will develop a general form of the diagnostic for the coarse-date model, a generalization of missing data that includes censoring and rounding as special cases. iv) They will analyze a number of real- world data sets that represent important cases where nonignorability is of interest, including dropout in longitudinal data, censored survival data, and cross-over in clinical trials.

Conditions

Timeline

Start date
2001-09-01
Primary completion
2005-08-01
Completion
2005-08-01
First posted
2002-05-17
Last updated
2016-07-29

Source: ClinicalTrials.gov record NCT00037362. Inclusion in this directory is not an endorsement.