Binary Regression Models with Log-Link in the Cohort Studies

Jyrki Möttönen, Katri Jalava, Sirpa Räsänen, Kaija Ala-Kojola, Saara Nironen, Jukka Ollgren

Forskningsoutput: TidskriftsbidragArtikelVetenskapligPeer review

Sammanfattning

Regression models have been used to control confounding in food borne cohort studies, logistic regression has been commonly used due to easy converge. However, logistic regression provide estimates for OR only when RR estimate is lower than 10%, an unlikely situation in food borne outbreaks. Recent developments have resolved the binary model convergence problems applying log link. Food items significant in the univariable analysis were included for the multivariable analysis of two recent Finnish norovirus outbreaks. We used both log and logistic regression models in R and Bayesian model in Winbugs by SPSS and R. The log-link model could be used to identify the vehicle in the two norovirus outbreak datasets. Convergence problems were solved using Bayesian modelling. Binary model applying log link provided accurate and useful estimates of RR estimating the true risk, a suitable method of choice for multivariable analysis of outbreak cohort studies.
Originalspråkengelska
TidskriftThe open epidemiology Journal
Volym2013 / 6
Sidor (från-till)18-20
Antal sidor3
ISSN1874-2971
StatusPublicerad - 2013
MoE-publikationstypA1 Tidskriftsartikel-refererad

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