On comparison of net survival curves

Abstract Background Relative survival analysis is a subfield of survival analysis where competing risks data are observed, but the causes of death are unknown. A first step in the analysis of such data is usually the estimation of a net survival curve, possibly followed by regression modelling. Rece...

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Main Authors: Klemen Pavlič, Maja Pohar Perme
Format: Article
Language:English
Published: BMC 2017-05-01
Series:BMC Medical Research Methodology
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12874-017-0351-3
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spelling doaj-d840bb6b531247398b61c9279dc942732020-11-25T00:44:40ZengBMCBMC Medical Research Methodology1471-22882017-05-0117111210.1186/s12874-017-0351-3On comparison of net survival curvesKlemen Pavlič0Maja Pohar Perme1University of Ljubljana, Faculty of Medicine, Institute for Biostatistics and Medical InformaticsUniversity of Ljubljana, Faculty of Medicine, Institute for Biostatistics and Medical InformaticsAbstract Background Relative survival analysis is a subfield of survival analysis where competing risks data are observed, but the causes of death are unknown. A first step in the analysis of such data is usually the estimation of a net survival curve, possibly followed by regression modelling. Recently, a log-rank type test for comparison of net survival curves has been introduced and the goal of this paper is to explore its properties and put this methodological advance into the context of the field. Methods We build on the association between the log-rank test and the univariate or stratified Cox model and show the analogy in the relative survival setting. We study the properties of the methods using both the theoretical arguments as well as simulations. We provide an R function to enable practical usage of the log-rank type test. Results Both the log-rank type test and its model alternatives perform satisfactory under the null, even if the correlation between their p-values is rather low, implying that both approaches cannot be used simultaneously. The stratified version has a higher power in case of non-homogeneous hazards, but also carries a different interpretation. Conclusions The log-rank type test and its stratified version can be interpreted in the same way as the results of an analogous semi-parametric additive regression model despite the fact that no direct theoretical link can be established between the test statistics.http://link.springer.com/article/10.1186/s12874-017-0351-3Relative survivalNet survivalLog-rank testRegression model
collection DOAJ
language English
format Article
sources DOAJ
author Klemen Pavlič
Maja Pohar Perme
spellingShingle Klemen Pavlič
Maja Pohar Perme
On comparison of net survival curves
BMC Medical Research Methodology
Relative survival
Net survival
Log-rank test
Regression model
author_facet Klemen Pavlič
Maja Pohar Perme
author_sort Klemen Pavlič
title On comparison of net survival curves
title_short On comparison of net survival curves
title_full On comparison of net survival curves
title_fullStr On comparison of net survival curves
title_full_unstemmed On comparison of net survival curves
title_sort on comparison of net survival curves
publisher BMC
series BMC Medical Research Methodology
issn 1471-2288
publishDate 2017-05-01
description Abstract Background Relative survival analysis is a subfield of survival analysis where competing risks data are observed, but the causes of death are unknown. A first step in the analysis of such data is usually the estimation of a net survival curve, possibly followed by regression modelling. Recently, a log-rank type test for comparison of net survival curves has been introduced and the goal of this paper is to explore its properties and put this methodological advance into the context of the field. Methods We build on the association between the log-rank test and the univariate or stratified Cox model and show the analogy in the relative survival setting. We study the properties of the methods using both the theoretical arguments as well as simulations. We provide an R function to enable practical usage of the log-rank type test. Results Both the log-rank type test and its model alternatives perform satisfactory under the null, even if the correlation between their p-values is rather low, implying that both approaches cannot be used simultaneously. The stratified version has a higher power in case of non-homogeneous hazards, but also carries a different interpretation. Conclusions The log-rank type test and its stratified version can be interpreted in the same way as the results of an analogous semi-parametric additive regression model despite the fact that no direct theoretical link can be established between the test statistics.
topic Relative survival
Net survival
Log-rank test
Regression model
url http://link.springer.com/article/10.1186/s12874-017-0351-3
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