Simple Methods of Determining Confidence Intervals for Functions of Estimates in Published Results
Author(s) -
Garrett M. Fitzmaurice,
Stuart R. Lipsitz,
S. Natarajan,
Atul A. Gawande,
Debajyoti Sinha,
Caprice Greenberg,
Edward L. Giovannucci
Publication year - 2014
Publication title -
plos one
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.99
H-Index - 332
ISSN - 1932-6203
DOI - 10.1371/journal.pone.0098498
Subject(s) - bonferroni correction , confidence interval , statistics , point estimation , mathematics , standard error , confidence distribution , robust confidence intervals , cdf based nonparametric confidence interval , credible interval , confidence region , correlation , interval estimation , coverage probability , tolerance interval , geometry
Often, the reader of a published paper is interested in a comparison of parameters that has not been presented. It is not possible to make inferences beyond point estimation since the standard error for the contrast of the estimated parameters depends upon the (unreported) correlation. This study explores approaches to obtain valid confidence intervals when the correlationis unknown. We illustrate three proposed approaches using data from the National Health Interview Survey. The three approaches include the Bonferroni method and the standard confidence interval assuming(most conservative) or(when the correlation is known to be non-negative). The Bonferroni approach is found to be the most conservative. For the difference in two estimated parameter, the standard confidence interval assumingyields a 95% confidence interval that is approximately 12.5% narrower than the Bonferroni confidence interval; when the correlation is known to be positive, the standard 95% confidence interval assumingis approximately 38% narrower than the Bonferroni. In summary, this article demonstrates simple methods to determine confidence intervals for unreported comparisons. We suggest use of the standard confidence interval assumingif no information is available orif the correlation is known to be non-negative.
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