TY - JOUR
T1 - Generalized P-values and confidence intervals
T2 - A novel approach for analyzing lognormally distributed exposure data
AU - Krishnamoorthy, K.
AU - Mathew, Thomas
AU - Ramachandran, Gurumurthy
N1 - Funding Information:
T his research was supported by a grant from the National Institute of Occupational Safety and Health (NIOSH).
PY - 2006/11/1
Y1 - 2006/11/1
N2 - The problem of assessing occupational exposure using the mean of a lognormal distribution is addressed. The novel concepts of generalized p-values and generalized confidence intervals are applied for testing hypotheses and computing confidence intervals for a lognormal mean. The proposed methods perform well, they are applicable to small sample sizes, and they are easy to implement. Power studies and sample size calculation are also discussed. Computational details and a source for the computer program are given. The procedures are also extended to compare two lognormal means and to make inference about a lognormal variance. In fact, our approach based on generalized p-values and generalized confidence intervals is easily adapted to deal with any parametric function involving one or two lognormal distributions. Several examples involving industrial exposure data are used to illustrate the methods. An added advantage of the generalized variables approach is the ease of computation and implementation. In fact, the procedures can be easily coded in a programming language for implementation. Furthermore, extensive numerical computations by the authors show that the results based on the generalized p-value approach are essentially equivalent to those based on the Land's method. We want to draw the attention of the industrial hygiene community to this accurate and unified methodology to deal with any parameter associated with the lognormal distribution. copyright
AB - The problem of assessing occupational exposure using the mean of a lognormal distribution is addressed. The novel concepts of generalized p-values and generalized confidence intervals are applied for testing hypotheses and computing confidence intervals for a lognormal mean. The proposed methods perform well, they are applicable to small sample sizes, and they are easy to implement. Power studies and sample size calculation are also discussed. Computational details and a source for the computer program are given. The procedures are also extended to compare two lognormal means and to make inference about a lognormal variance. In fact, our approach based on generalized p-values and generalized confidence intervals is easily adapted to deal with any parametric function involving one or two lognormal distributions. Several examples involving industrial exposure data are used to illustrate the methods. An added advantage of the generalized variables approach is the ease of computation and implementation. In fact, the procedures can be easily coded in a programming language for implementation. Furthermore, extensive numerical computations by the authors show that the results based on the generalized p-value approach are essentially equivalent to those based on the Land's method. We want to draw the attention of the industrial hygiene community to this accurate and unified methodology to deal with any parameter associated with the lognormal distribution. copyright
KW - Confidence interval
KW - Hypothesis test
KW - Type 1 error
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U2 - 10.1080/15459620600961196
DO - 10.1080/15459620600961196
M3 - Article
C2 - 17086669
AN - SCOPUS:34548266322
SN - 1545-9624
VL - 3
SP - 642
EP - 650
JO - Journal of occupational and environmental hygiene
JF - Journal of occupational and environmental hygiene
IS - 11
ER -