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Survival Extrapolation Incorporating General Population Mortality Using Excess Hazard and Cure Models: A Tutorial

BACKGROUND: Different parametric survival models can lead to widely discordant extrapolations and decision uncertainty in cost-effectiveness analyses. The use of excess hazard (EH) methods, which incorporate general population mortality data, has the potential to reduce model uncertainty. This revie...

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Autores principales: Sweeting, Michael J., Rutherford, Mark J., Jackson, Dan, Lee, Sangyu, Latimer, Nicholas R., Hettle, Robert, Lambert, Paul C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: SAGE Publications 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10422853/
https://www.ncbi.nlm.nih.gov/pubmed/37448102
http://dx.doi.org/10.1177/0272989X231184247
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author Sweeting, Michael J.
Rutherford, Mark J.
Jackson, Dan
Lee, Sangyu
Latimer, Nicholas R.
Hettle, Robert
Lambert, Paul C.
author_facet Sweeting, Michael J.
Rutherford, Mark J.
Jackson, Dan
Lee, Sangyu
Latimer, Nicholas R.
Hettle, Robert
Lambert, Paul C.
author_sort Sweeting, Michael J.
collection PubMed
description BACKGROUND: Different parametric survival models can lead to widely discordant extrapolations and decision uncertainty in cost-effectiveness analyses. The use of excess hazard (EH) methods, which incorporate general population mortality data, has the potential to reduce model uncertainty. This review highlights key practical considerations of EH methods for estimating long-term survival. METHODS: Demonstration of methods used a case study of 686 patients from the German Breast Cancer Study Group, followed for a maximum of 7.3 y and divided into low (1/2) and high (3) grade cancers. Seven standard parametric survival models were fit to each group separately. The same 7 distributions were then used in an EH framework, which incorporated general population mortality rates, and fitted both with and without a cure parameter. Survival extrapolations, restricted mean survival time (RMST), and difference in RMST between high and low grades were compared up to 30 years along with Akaike information criterion goodness-of-fit and cure fraction estimates. The sensitivity of the EH models to lifetable misspecification was investigated. RESULTS: In our case study, variability in survival extrapolations was extensive across the standard models, with 30-y RMST ranging from 7.5 to 14.3 y. Incorporation of general population mortality rates using EH cure methods substantially reduced model uncertainty, whereas EH models without cure had less of an effect. Long-term treatment effects approached the null for most models but at varying rates. Lifetable misspecification had minimal effect on RMST differences. CONCLUSIONS: EH methods may be useful for survival extrapolation, and in cancer, EHs may decrease over time and be easier to extrapolate than all-cause hazards. EH cure models may be helpful when cure is plausible and likely to result in less extrapolation variability. HIGHLIGHTS: In health economic modeling, to help anchor long-term survival extrapolation, it has been recommended that survival models incorporate background mortality rates using excess hazard (EH) methods. We present a thorough description of EH methods with and without the assumption of cure and demonstrate user-friendly software to aid researchers wishing to use these methods. EH models are applied to a case study, and we demonstrate that EHs are easier to extrapolate and that the use of the EH cure model, when cure is plausible, can reduce extrapolation variability. EH methods are relatively robust to lifetable misspecification.
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spelling pubmed-104228532023-08-13 Survival Extrapolation Incorporating General Population Mortality Using Excess Hazard and Cure Models: A Tutorial Sweeting, Michael J. Rutherford, Mark J. Jackson, Dan Lee, Sangyu Latimer, Nicholas R. Hettle, Robert Lambert, Paul C. Med Decis Making Tutorial BACKGROUND: Different parametric survival models can lead to widely discordant extrapolations and decision uncertainty in cost-effectiveness analyses. The use of excess hazard (EH) methods, which incorporate general population mortality data, has the potential to reduce model uncertainty. This review highlights key practical considerations of EH methods for estimating long-term survival. METHODS: Demonstration of methods used a case study of 686 patients from the German Breast Cancer Study Group, followed for a maximum of 7.3 y and divided into low (1/2) and high (3) grade cancers. Seven standard parametric survival models were fit to each group separately. The same 7 distributions were then used in an EH framework, which incorporated general population mortality rates, and fitted both with and without a cure parameter. Survival extrapolations, restricted mean survival time (RMST), and difference in RMST between high and low grades were compared up to 30 years along with Akaike information criterion goodness-of-fit and cure fraction estimates. The sensitivity of the EH models to lifetable misspecification was investigated. RESULTS: In our case study, variability in survival extrapolations was extensive across the standard models, with 30-y RMST ranging from 7.5 to 14.3 y. Incorporation of general population mortality rates using EH cure methods substantially reduced model uncertainty, whereas EH models without cure had less of an effect. Long-term treatment effects approached the null for most models but at varying rates. Lifetable misspecification had minimal effect on RMST differences. CONCLUSIONS: EH methods may be useful for survival extrapolation, and in cancer, EHs may decrease over time and be easier to extrapolate than all-cause hazards. EH cure models may be helpful when cure is plausible and likely to result in less extrapolation variability. HIGHLIGHTS: In health economic modeling, to help anchor long-term survival extrapolation, it has been recommended that survival models incorporate background mortality rates using excess hazard (EH) methods. We present a thorough description of EH methods with and without the assumption of cure and demonstrate user-friendly software to aid researchers wishing to use these methods. EH models are applied to a case study, and we demonstrate that EHs are easier to extrapolate and that the use of the EH cure model, when cure is plausible, can reduce extrapolation variability. EH methods are relatively robust to lifetable misspecification. SAGE Publications 2023-07-13 2023-08 /pmc/articles/PMC10422853/ /pubmed/37448102 http://dx.doi.org/10.1177/0272989X231184247 Text en © The Author(s) 2023 https://creativecommons.org/licenses/by/4.0/This article is distributed under the terms of the Creative Commons Attribution 4.0 License (https://creativecommons.org/licenses/by/4.0/) which permits any use, reproduction and distribution of the work without further permission provided the original work is attributed as specified on the SAGE and Open Access pages (https://us.sagepub.com/en-us/nam/open-access-at-sage).
spellingShingle Tutorial
Sweeting, Michael J.
Rutherford, Mark J.
Jackson, Dan
Lee, Sangyu
Latimer, Nicholas R.
Hettle, Robert
Lambert, Paul C.
Survival Extrapolation Incorporating General Population Mortality Using Excess Hazard and Cure Models: A Tutorial
title Survival Extrapolation Incorporating General Population Mortality Using Excess Hazard and Cure Models: A Tutorial
title_full Survival Extrapolation Incorporating General Population Mortality Using Excess Hazard and Cure Models: A Tutorial
title_fullStr Survival Extrapolation Incorporating General Population Mortality Using Excess Hazard and Cure Models: A Tutorial
title_full_unstemmed Survival Extrapolation Incorporating General Population Mortality Using Excess Hazard and Cure Models: A Tutorial
title_short Survival Extrapolation Incorporating General Population Mortality Using Excess Hazard and Cure Models: A Tutorial
title_sort survival extrapolation incorporating general population mortality using excess hazard and cure models: a tutorial
topic Tutorial
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10422853/
https://www.ncbi.nlm.nih.gov/pubmed/37448102
http://dx.doi.org/10.1177/0272989X231184247
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