Converting Odds Ratio to Relative Risk in Cohort Studies with Partial Data Information

In medical and epidemiological studies, the odds ratio is a commonly applied measure to approximate the relative risk or risk ratio in cohort studies. It is well known tha such an approximation is poor and can generate misleading conclusions, if the incidence rate of a study outcome is not rare. How...

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Main Author: Zhu Wang
Format: Article
Language:English
Published: Foundation for Open Access Statistics 2013-10-01
Series:Journal of Statistical Software
Online Access:http://www.jstatsoft.org/index.php/jss/article/view/2100
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spelling doaj-611a46dc2931441e99ace786fc391de12020-11-24T21:30:31ZengFoundation for Open Access StatisticsJournal of Statistical Software1548-76602013-10-0155111110.18637/jss.v055.i05704Converting Odds Ratio to Relative Risk in Cohort Studies with Partial Data InformationZhu WangIn medical and epidemiological studies, the odds ratio is a commonly applied measure to approximate the relative risk or risk ratio in cohort studies. It is well known tha such an approximation is poor and can generate misleading conclusions, if the incidence rate of a study outcome is not rare. However, there are times when the incidence rate is not directly available in the published work. Motivated by real applications, this paper presents methods to convert the odds ratio to the relative risk when published data offers limited information. Specifically, the proposed new methods can convert the odds ratio to the relative risk, if an odds ratio and/or a confidence interval as well as the sample sizes for the treatment and control group are available. In addition, the developed methods can be utilized to approximate the relative risk based on the adjusted odds ratio from logistic regression or other multiple regression models. In this regard, this paper extends a popular method by Zhang and Yu (1998) for converting odds ratios to risk ratios. The objective is novelly mapped into a constrained nonlinear optimization problem, which is solved with both a grid search and a nonlinear optimization algorithm. The methods are implemented in R package orsk which contains R functions and a Fortran subroutine for efficiency. The proposed methods and software are illustrated with real data applications.http://www.jstatsoft.org/index.php/jss/article/view/2100
collection DOAJ
language English
format Article
sources DOAJ
author Zhu Wang
spellingShingle Zhu Wang
Converting Odds Ratio to Relative Risk in Cohort Studies with Partial Data Information
Journal of Statistical Software
author_facet Zhu Wang
author_sort Zhu Wang
title Converting Odds Ratio to Relative Risk in Cohort Studies with Partial Data Information
title_short Converting Odds Ratio to Relative Risk in Cohort Studies with Partial Data Information
title_full Converting Odds Ratio to Relative Risk in Cohort Studies with Partial Data Information
title_fullStr Converting Odds Ratio to Relative Risk in Cohort Studies with Partial Data Information
title_full_unstemmed Converting Odds Ratio to Relative Risk in Cohort Studies with Partial Data Information
title_sort converting odds ratio to relative risk in cohort studies with partial data information
publisher Foundation for Open Access Statistics
series Journal of Statistical Software
issn 1548-7660
publishDate 2013-10-01
description In medical and epidemiological studies, the odds ratio is a commonly applied measure to approximate the relative risk or risk ratio in cohort studies. It is well known tha such an approximation is poor and can generate misleading conclusions, if the incidence rate of a study outcome is not rare. However, there are times when the incidence rate is not directly available in the published work. Motivated by real applications, this paper presents methods to convert the odds ratio to the relative risk when published data offers limited information. Specifically, the proposed new methods can convert the odds ratio to the relative risk, if an odds ratio and/or a confidence interval as well as the sample sizes for the treatment and control group are available. In addition, the developed methods can be utilized to approximate the relative risk based on the adjusted odds ratio from logistic regression or other multiple regression models. In this regard, this paper extends a popular method by Zhang and Yu (1998) for converting odds ratios to risk ratios. The objective is novelly mapped into a constrained nonlinear optimization problem, which is solved with both a grid search and a nonlinear optimization algorithm. The methods are implemented in R package orsk which contains R functions and a Fortran subroutine for efficiency. The proposed methods and software are illustrated with real data applications.
url http://www.jstatsoft.org/index.php/jss/article/view/2100
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