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modeling cause-specific death rates
kforeman/codmod2
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CoDMod 2 - Modeling Cause-Specific Death Rates Y_c,t,a ~ NegativeBinomial(mu_c,t,a, alpha) where s: super-region r: region c: country t: year a: age Y_c,t,a ~ observed deaths due to a cause in a country/year/age/sex mu_c,t,a ~ exp(beta*X_c,t,a + ln(E) + pi_s + pi_r + pi_c + e_c,t,a) beta ~ fixed effects (coefficients on covariates) Laplace with Mean = 0 X_c,t,a ~ covariates (by country/year/age) E ~ exposure (total number of all-cause deaths observed) Binomial(n = total deaths in country, p = proportion recorded in study) pi_s ~ 'random effect' by super-region year*age grid of offsets sampled from MVN with matern covariance then interpolated via cubic spline pi_r ~ 'random effect' by region year*age grid of offsets sampled from MVN with matern covariance then interpolated via cubic spline pi_c ~ 'random effect' by country year*age grid of offsets sampled from MVN with matern covariance then interpolated via cubic spline e_c,t,a ~ error alpha ~ overdispersion parameter
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