Abstract
BackgroundRecently, the multiphase method was proposed to estimate cohort effects after removing the effects of age and period in age-period contingency table data. Hepatocellular carcinoma (HCC) is the most common primary malignancy of the liver and is strongly associated with cirrhosis, due to both alcohol and viral etiologies. In epidemiology, age-period-cohort (APC) model can be used to describe (or predict) the secular trend in HCC mortality.ResultsThe confidence interval (CI) of the weighted estimates was found to be relatively narrow (compared to unweighted estimates). Moreover, for males, the mortality trend reverses itself during 2006–2010 was found from an increasing trend into a slightly deceasing trend. For females, the increasing trend reverses (earlier than males) itself during 2001–2005.ConclusionsThe weighted estimation of the regression model is recommended for the multiphase method in estimating the cohort effects in age-period contingency table data.ImpactThe regression model can be modified through the weighted average estimate of the effects with narrower CI of each cohort.MethodsAfter isolating the residuals during the median polish phase, the final phase is to estimate the magnitude of the cohort effects using the regression model of these residuals on the cohort category with the weight equal to the occupied proportion according to the number of death of HCC in each cohort.
Highlights
Evaluating disease and mortality patterns over time has become popular in understanding the utility of disease etiology in public health
The weighted estimation of the regression model is recommended for the multiphase method in estimating the cohort effects in age-period contingency table data
Impact: The regression model can be modified through the weighted average estimate of the effects with narrower confidence interval (CI) of each cohort
Summary
Evaluating disease and mortality patterns over time has become popular in understanding the utility of disease etiology in public health. Disease mortality is influenced by birth cohort effects and affected by age and period. The conceptualization of cohort effects was proposed based on the interaction between age and period [1]. As age + cohort = period, these three variables are linear dependent, and unless additional constraints are imposed, APC model that estimates the linear effects of age, period, and cohort is non-identifiable. We have explained this problem and the potential constraints imposed in our previous publications [2,3,4,5]. Age-period-cohort (APC) model can be used to describe (or predict) the secular trend in HCC mortality
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