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Nov 1, 2012 15:22
12 yrs ago
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English term
exposure
English
Social Sciences
International Org/Dev/Coop
Countries without eligible death registration data
For these countries without death registration data at least 80% complete and with populations greater than 150 000, a regression model was used to estimate total road traffic deaths. As for the first report, we used a negative binomial regression model, appropriate for modeling non-negative integer count data (number of road traffic deaths) (Law 2009, Hilbe 2007). A likelihood ratio test was used to assess that the negative binomial model provided a better fit to the data than a Poisson model (where the variance of the data is constrained to equal the mean).
(equation)
where N is the total road traffic deaths (for a country-year), C is a constant term, Xi are a set of explanatory covariates, Pop is the population for the country-year, and is the negative binomial error term. Population was used as **exposure**, making it possible to interpret the coefficients (βi) for the independent variables as effects on rates rather than a count. In a previous study, this type of model was used to represent "accident proneness" (Greenwood and Yule, 1920). Karlaftis and Tarko (1998) have also found a negative binomial regression model to be the appropriate for count data such as road traffic fatalities.
Thank you for your help!
For these countries without death registration data at least 80% complete and with populations greater than 150 000, a regression model was used to estimate total road traffic deaths. As for the first report, we used a negative binomial regression model, appropriate for modeling non-negative integer count data (number of road traffic deaths) (Law 2009, Hilbe 2007). A likelihood ratio test was used to assess that the negative binomial model provided a better fit to the data than a Poisson model (where the variance of the data is constrained to equal the mean).
(equation)
where N is the total road traffic deaths (for a country-year), C is a constant term, Xi are a set of explanatory covariates, Pop is the population for the country-year, and is the negative binomial error term. Population was used as **exposure**, making it possible to interpret the coefficients (βi) for the independent variables as effects on rates rather than a count. In a previous study, this type of model was used to represent "accident proneness" (Greenwood and Yule, 1920). Karlaftis and Tarko (1998) have also found a negative binomial regression model to be the appropriate for count data such as road traffic fatalities.
Thank you for your help!
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2 | risk exposed |
dandamesh
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12 mins
risk exposed
Exposed
In epidemiology, the exposed group is often used to connote a group whose members have been exposed to a supposed cause of a disease or health state of interest, or possess a characteristic that is a determinant of the health outcome of interest.
http://cf.unc.edu/epid600/resources/gloss.htm
In epidemiology, the exposed group is often used to connote a group whose members have been exposed to a supposed cause of a disease or health state of interest, or possess a characteristic that is a determinant of the health outcome of interest.
http://cf.unc.edu/epid600/resources/gloss.htm
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