Comparing diagnostic tests with missing data
When missing data occur in studies designed to compare the accuracy of diagnostic tests, a common, though naive, practice is to base the comparison of sensitivity, specificity, as well as of positive and negative predictive values on some subset of the data that fits into methods implemented in standard statistical packages. Such methods are usually valid only under the strong missing completely at random (MCAR) assumption and may generate biased and less precise estimates. We review some models that use the dependence structure of the completely observed cases to incorporate the information of the partially categorized observations into the analysis and show how they may be fitted via a two-stage hybrid process involving maximum likelihood in the first stage and weighted least squares in the second. We indicate how computational subroutines written in <monospace>R</monospace> may be used to fit the proposed models and illustrate the different analysis strategies with observational data collected to compare the accuracy of three distinct non-invasive diagnostic methods for endometriosis. The results indicate that even when the MCAR assumption is plausible, the naive partial analyses should be avoided.
Year of publication: |
2011
|
---|---|
Authors: | Poleto, Frederico Z. ; Singer, Julio M. ; Paulino, Carlos Daniel |
Published in: |
Journal of Applied Statistics. - Taylor & Francis Journals, ISSN 0266-4763. - Vol. 38.2011, 6, p. 1207-1222
|
Publisher: |
Taylor & Francis Journals |
Saved in:
Saved in favorites
Similar items by person
-
Inferential Implications of OverāParametrization: A Case Study in Incomplete Categorical Data
Poleto, Frederico Z., (2011)
-
Binomial Regression with Misclassification
Paulino, Carlos Daniel, (2003)
-
A Bayesian semiparametric approach for the differential analysis of sequence counts data
Guindani, Michele, (2014)
- More ...