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Wiley InterScience

Influenza and Other Respiratory Viruses

Influenza and Other Respiratory Viruses

Volume 1 Issue 3, Pages 87 - 93

Published Online: 26 Jul 2007

© 2010 Blackwell Publishing Ltd


The Official Journal of the International Society for Influenza and other Respiratory Virus Diseases
International Society for Influenza and other Respiratory Virus Diseases
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Review
Maximizing power in seroepidemiological studies through the use of the proportional odds model
Ana W. Capuano a , Jeffrey D. Dawson b , Gregory C. Gray a
  a Center for Emerging Infectious Diseases, Department of Epidemiology, University of Iowa College of Public Health, Coralville, IA, USA.
  b Department of Biostatistics, University of Iowa College of Public Health, Iowa City, IA, USA.
Correspondence to Ana W. Capuano, MPS, Center for Emerging Infectious Diseases, University of Iowa, 2501 Crosspark Rd. MTF – B170, Coralville, IA 52241, USA. E-mail: ana-capuano@uiowa.edu
Copyright 2007 The Authors Journal Compilation Blackwell Publishing Ltd
KEYWORDS
Epidemiologic methods • logistic models • models • seroepidemiological studies • statistical • statistics

ABSTRACT

Epidemiological studies of zoonotic influenza and other infectious diseases often rely upon analysis of levels of antibody titer. In most of these studies, the antibody titer data are dichotomized based on a chosen cut-point and analyzed with a traditional binary logistic regression. However, cut-points are often arbitrary, particularly those selected for rare diseases or for infections for which serologic assays are imperfect. Alternatively, the data can be left in the original form, as ordinal levels of antibody titer, and analyzed using the proportional odds model. We show why this approach yields superior power to detect risk factors. Additionally, we illustrate the advantages of using the proportional odds model with the analyses of zoonotic influenza antibody titer data.


Accepted 6 June 2007. Published online 26 July 2007.

DIGITAL OBJECT IDENTIFIER (DOI)
10.1111/j.1750-2659.2007.00014.x About DOI

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