Literature DB >> 32673128

A comparison of partitioned survival analysis and state transition multi-state modelling approaches using a case study in oncology.

Holly Cranmer1, Gemma E Shields2, Ash Bullement3,4.   

Abstract

AIMS: To construct and compare a partitioned-survival analysis (PartSA) and a semi-Markov multi-state model (MSM) to investigate differences in estimated cost effectiveness of a novel cancer treatment from a UK perspective.
MATERIALS AND METHODS: Data from a cohort of late-stage cancer patients (N > 700) enrolled within a randomized, controlled trial were used to populate both modelling approaches. The statistical software R was used to fit parametric survival models to overall survival (OS) and progression-free survival (PFS) data to inform the PartSA (package "flexsurv"). The package "mstate" was used to estimate the MSM transitions (permitted transitions: (T1) "progression-free" to "dead", (T2) "post-progression" to "death", and (T3) "pre-progression" to "post-progression"). Key costs included were treatment-related (initial, subsequent, and concomitant), adverse events, hospitalizations and monitoring. Utilities were stratified by progression. Outcomes were discounted at 3.5% per annum over a 15-year time horizon.
RESULTS: The PartSA and MSM approaches estimated incremental cost-effectiveness ratios (ICERs) of £342,474 and £411,574, respectively. Scenario analyses exploring alternative parametric forms provided incremental discounted life-year estimates that ranged from +0.15 to +0.33 for the PartSA approach, compared with -0.13 to +0.23 for the MSM approach. This variation was reflected in the range of ICERs. The PartSA produced ICERs between £234,829 and £522,963, whereas MSM results were more variable and included instances where the intervention was dominated and ICERs above £7 million (caused by very small incremental QALYs). LIMITATIONS AND
CONCLUSIONS: Structural uncertainty in economic modelling is rarely explored due to time and resource limitations. This comparison of structural approaches indicates that the choice of structure may have a profound impact on cost-effectiveness results. This highlights the importance of carefully considered model conceptualization, and the need for further research to ascertain when it may be most appropriate to use each approach.

Entities:  

Keywords:  Cost-effectiveness; D61; H51; I00; decision-analytic model; multi-state model; oncology; partitioned survival

Mesh:

Year:  2020        PMID: 32673128     DOI: 10.1080/13696998.2020.1796360

Source DB:  PubMed          Journal:  J Med Econ        ISSN: 1369-6998            Impact factor:   2.448


  4 in total

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Journal:  Front Oncol       Date:  2022-06-21       Impact factor: 5.738

3.  Treatment outcome and readmission risk among women in women-only versus mixed-gender drug treatment programs in Chile.

Authors:  Carla F Olivari; Andrés Gonzáles-Santa Cruz; Pia M Mauro; Silvia S Martins; Jaime Sapag; Jorge Gaete; Magdalena Cerdá; Alvaro Castillo-Carniglia
Journal:  J Subst Abuse Treat       Date:  2021-09-01

4.  Adjuvant treatment of high-risk melanoma - cost-effectiveness analysis of treatment options for BRAF 600 mutated tumors.

Authors:  Steffen Wahler; Alfred Müller; Sabine Fuchs; Johann-Matthias von der Schulenburg
Journal:  Health Econ Rev       Date:  2022-01-20
  4 in total

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