4.5 Article

Interval estimation for rank correlation coefficients based on the probit transformation with extension to measurement error correction of correlated ranked data

Journal

STATISTICS IN MEDICINE
Volume 26, Issue 3, Pages 633-646

Publisher

JOHN WILEY & SONS LTD
DOI: 10.1002/sim.2547

Keywords

nutritional epidemiology; probit scores; regression dilution bias; Spearman correlation; Kendall's tau; arcsin transformation

Funding

  1. NCI NIH HHS [CA50597] Funding Source: Medline
  2. NHLBI NIH HHS [HL40619] Funding Source: Medline

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The Speannan (rho(s)) and Kendall (tau) rank correlation coefficient are routinely used as measures of association between non-normally distributed random variables. However, confidence limits for rho(s) are only available under the assumption of bivariate normality and for tau under the assumption of asymptotic normality of (tau) over cap. In this paper, we introduce another approach for obtaining confidence limits for rho(s) or tau based on the arcsin transformation of sample probit score correlations. This approach is shown to be applicable for an arbitrary bivariate distribution. The arcsin-based estimators for rho(s) and tau (denoted by (rho) over cap (s,a),(tau) over cap (a)) are shown to have asymptotic relative efficiency (ARE) of 9/pi(2) compared with the usual estimators (rho) over cap (s) and (tau) over cap when (rho) over cap (s) and tau are, respectively, 0. In some nutritional applications, the Spearman rank correlation between nutrient intake as assessed by a reference instrument versus nutrient intake as assessed by a surrogate instrument is used as a measure of validity of the surrogate instrument. However, if only a single replicate (or a few replicates) are available for the reference instrument, then the estimated Spearman rank correlation will be downwardly biased due to measurement error. In this paper, we use the probit transformation as a tool for specifying an ANOVA-type model for replicate ranked data resulting in a point and interval estimate of a measurement error corrected rank correlation. This extends previous work by Rosner and Willett for obtaining point and interval estimates of measurement error corrected Pearson correlations. Copyright (c) 2006 John Wiley & Sons, Ltd.

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