Please use this identifier to cite or link to this item: https://doi.org/10.1186/s12963-018-0173-5
Title: Quantifying temporal trends of age-standardized rates with odds
Authors: Tan C.S. 
Støer N.
Ning Y. 
Chen Y. 
Reilly M.
Keywords: age structure
cancer
disease incidence
epidemiology
mortality
numerical method
public health
quantitative analysis
temporal variation
trend analysis
age standardized rate
Article
cancer incidence
cancer mortality
cancer screening
epidemiological data
human
mortality rate
population risk
priority journal
risk factor
trend study
epidemiology
global health
incidence
neoplasm
odds ratio
standard
statistical analysis
statistical model
Data Interpretation, Statistical
Epidemiologic Methods
Global Health
Humans
Incidence
Linear Models
Logistic Models
Models, Statistical
Neoplasms
Odds Ratio
Reference Standards
Issue Date: 2018
Citation: Tan C.S., Støer N., Ning Y., Chen Y., Reilly M. (2018). Quantifying temporal trends of age-standardized rates with odds. Population Health Metrics 16 (1) : 18. ScholarBank@NUS Repository. https://doi.org/10.1186/s12963-018-0173-5
Abstract: Background: To quantify temporal trends in age-standardized rates of disease, the convention is to fit a linear regression model to log-transformed rates because the slope term provides the estimated annual percentage change. However, such log-transformation is not always appropriate. Methods: We propose an alternative method using the rank-ordered logit (ROL) model that is indifferent to log-transformation. This method quantifies the temporal trend using odds, a quantity commonly used in epidemiology, and the log-odds corresponds to the scaled slope parameter estimate from linear regression. The ROL method can be implemented by using the commands for proportional hazards regression in any standard statistical package. We apply the ROL method to estimate temporal trends in age-standardized cancer rates worldwide using the cancer incidence data from the Cancer Incidence in Five Continents plus (CI5plus) database for the period 1953 to 2007 and compare the estimates to their scaled counterparts obtained from linear regression with and without log-transformation. Results: We found a strong concordance in the direction and significance of the temporal trends in cancer incidence estimated by all three approaches, and illustrated how the estimate from the ROL model provides a measure that is comparable to a scaled slope parameter estimated from linear regression. Conclusions: Our method offers an alternative approach for quantifying temporal trends in incidence or mortality rates in a population that is invariant to transformation, and whose estimate of trend agrees with the scaled slope from a linear regression model. © 2018 The Author(s).
Source Title: Population Health Metrics
URI: https://scholarbank.nus.edu.sg/handle/10635/175349
ISSN: 1478-7954
DOI: 10.1186/s12963-018-0173-5
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