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Published in: BMC Medical Research Methodology 1/2020

Open Access 01-12-2020 | Technical advance

Correcting inaccurate background mortality in excess hazard models through breakpoints

Authors: Robert Darlin Mba, Juste Aristide Goungounga, Nathalie Grafféo, Roch Giorgi, CENSUR working survival group

Published in: BMC Medical Research Methodology | Issue 1/2020

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Abstract

Background

Methods for estimating relative survival are widely used in population-based cancer survival studies. These methods are based on splitting the observed (the overall) mortality into excess mortality (due to cancer) and background mortality (due to other causes, as expected in the general population). The latter is derived from life tables usually stratified by age, sex, and calendar year but not by other covariates (such as the deprivation level or the socioeconomic status) which may lack though they would influence background mortality. The absence of these covariates leads to inaccurate background mortality, thus to biases in estimating the excess mortality. These biases may be avoided by adjusting the background mortality for these covariates whenever available.

Methods

In this work, we propose a regression model of excess mortality that corrects for potentially inaccurate background mortality by introducing age-dependent multiplicative parameters through breakpoints, which gives some flexibility. The performance of this model was first assessed with a single and two breakpoints in an intensive simulation study, then the method was applied to French population-based data on colorectal cancer.

Results

The proposed model proved to be interesting in the simulations and the applications to real data; it limited the bias in parameter estimates of the excess mortality in several scenarios and improved the results and the generalizability of Touraine’s proportional hazards model.

Conclusion

Finally, the proposed model is a good approach to correct reliably inaccurate background mortality by introducing multiplicative parameters that depend on age and on an additional variable through breakpoints.
Appendix
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Metadata
Title
Correcting inaccurate background mortality in excess hazard models through breakpoints
Authors
Robert Darlin Mba
Juste Aristide Goungounga
Nathalie Grafféo
Roch Giorgi
CENSUR working survival group
Publication date
01-12-2020
Publisher
BioMed Central
Published in
BMC Medical Research Methodology / Issue 1/2020
Electronic ISSN: 1471-2288
DOI
https://doi.org/10.1186/s12874-020-01139-z

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