Assessing assay agreement estimation for multiple left-censored data: a multiple imputation approach

Stat Med. 2014 Dec 30;33(30):5298-309. doi: 10.1002/sim.6319. Epub 2014 Oct 8.

Abstract

Agreement between two assays is usually based on the concordance correlation coefficient (CCC), estimated from the means, standard deviations, and correlation coefficient of these assays. However, such data will often suffer from left-censoring because of lower limits of detection of these assays. To handle such data, we propose to extend a multiple imputation approach by chained equations (MICE) developed in a close setting of one left-censored assay. The performance of this two-step approach is compared with that of a previously published maximum likelihood estimation through a simulation study. Results show close estimates of the CCC by both methods, although the coverage is improved by our MICE proposal. An application to cytomegalovirus quantification data is provided.

Keywords: agreement; censoring; missing data; multiple imputation: chained equations.

MeSH terms

  • Biological Assay / standards*
  • Computer Simulation
  • Cytomegalovirus
  • Humans
  • Likelihood Functions*
  • Reproducibility of Results*
  • Sensitivity and Specificity