Estimation of Survival Probabilities for Use in Cost-effectiveness Analyses: A Comparison of a Multi-state Modeling Survival Analysis Approach with Partitioned Survival and Markov Decision-Analytic Modeling.

Claire Williams, James D Lewsey, Daniel F Mackay, Andrew H Briggs
Author Information
  1. Claire Williams: Health Economics and Health Technology Assessment, Institute of Health and Wellbeing, University of Glasgow, Glasgow (CW, JDL, AHB).
  2. James D Lewsey: Health Economics and Health Technology Assessment, Institute of Health and Wellbeing, University of Glasgow, Glasgow (CW, JDL, AHB).
  3. Daniel F Mackay: Public Health, Institute of Health and Wellbeing, University of Glasgow, Glasgow (DFM).
  4. Andrew H Briggs: Health Economics and Health Technology Assessment, Institute of Health and Wellbeing, University of Glasgow, Glasgow (CW, JDL, AHB).

Abstract

Modeling of clinical-effectiveness in a cost-effectiveness analysis typically involves some form of partitioned survival or Markov decision-analytic modeling. The health states progression-free, progression and death and the transitions between them are frequently of interest. With partitioned survival, progression is not modeled directly as a state; instead, time in that state is derived from the difference in area between the overall survival and the progression-free survival curves. With Markov decision-analytic modeling, a priori assumptions are often made with regard to the transitions rather than using the individual patient data directly to model them. This article compares a multi-state modeling survival regression approach to these two common methods. As a case study, we use a trial comparing rituximab in combination with fludarabine and cyclophosphamide v. fludarabine and cyclophosphamide alone for the first-line treatment of chronic lymphocytic leukemia. We calculated mean Life Years and QALYs that involved extrapolation of survival outcomes in the trial. We adapted an existing multi-state modeling approach to incorporate parametric distributions for transition hazards, to allow extrapolation. The comparison showed that, due to the different assumptions used in the different approaches, a discrepancy in results was evident. The partitioned survival and Markov decision-analytic modeling deemed the treatment cost-effective with ICERs of just over £16,000 and £13,000, respectively. However, the results with the multi-state modeling were less conclusive, with an ICER of just over £29,000. This work has illustrated that it is imperative to check whether assumptions are realistic, as different model choices can influence clinical and cost-effectiveness results.

Keywords

References

  1. Med Decis Making. 2017 May;37(4):340-352 [PMID: 27281337]
  2. Med Decis Making. 2013 Aug;33(6):740-2 [PMID: 23864435]
  3. Eur J Health Econ. 2008 Nov;9(4):313-23 [PMID: 17943332]
  4. Stat Med. 2013 Aug 15;32(18):3077-88 [PMID: 23436643]
  5. Eur J Cancer. 2006 Nov;42(17):2867-75 [PMID: 17023160]
  6. Med Decis Making. 2014 Apr;34(3):343-51 [PMID: 23901052]
  7. Int J Epidemiol. 2007 Feb;36(1):195-202 [PMID: 17329317]
  8. Stat Med. 1990 Nov;9(11):1303-25 [PMID: 2277880]
  9. Stat Med. 1990 Nov;9(11):1259-76 [PMID: 2277877]
  10. Med Decis Making. 1993 Oct-Dec;13(4):322-38 [PMID: 8246705]
  11. Ann Intern Med. 1991 Apr 15;114(8):621-8 [PMID: 2003707]
  12. Lancet. 2010 Oct 2;376(9747):1164-74 [PMID: 20888994]
  13. Med Decis Making. 2016 Jan;36(1):86-100 [PMID: 25732723]
  14. Med Decis Making. 2013 Aug;33(6):743-54 [PMID: 23341049]
  15. Stat Med. 2007 May 20;26(11):2389-430 [PMID: 17031868]
  16. Med Decis Making. 1983;3(4):419-458 [PMID: 6668990]
  17. Med Decis Making. 2005 Sep-Oct;25(5):511-9 [PMID: 16160207]
  18. Comput Methods Programs Biomed. 2010 Sep;99(3):261-74 [PMID: 20227129]
  19. Pharmacoeconomics. 2011 Oct;29(10 ):827-37 [PMID: 21770482]
  20. Pharmacoeconomics. 1998 Apr;13(4):397-409 [PMID: 10178664]

Grants

  1. MR/J50032X/1/Medical Research Council

MeSH Term

Antineoplastic Combined Chemotherapy Protocols
Cost-Benefit Analysis
Data Interpretation, Statistical
Decision Support Techniques
Disease-Free Survival
Humans
Leukemia, Lymphocytic, Chronic, B-Cell
Markov Chains
Probability
Quality-Adjusted Life Years
Survival Analysis

Word Cloud

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