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      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

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          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.

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          The mstate package for estimation and prediction in non- and semi-parametric multi-state and competing risks models.

          In recent years, multi-state models have been studied widely in survival analysis. Despite their clear advantages, their use in biomedical and other applications has been rather limited so far. An important reason for this is the lack of flexible and user-friendly software for multi-state models. This paper introduces a package in R, called 'mstate', for each of the steps of the analysis of multi-state models. It can be applied to non- and semi-parametric models. The package contains functions to facilitate data preparation and flexible estimation of different types of covariate effects in the context of Cox regression models, functions to estimate patient-specific transition intensities, dynamic prediction probabilities and their associated standard errors (both Greenwood and Aalen-type). Competing risks models can also be analyzed by means of mstate, as they are a special type of multi-state models. The package is available from the R homepage http://cran.r-project.org. We give a self-contained account of the underlying mathematical theory, including a new asymptotic result for the cumulative hazard function and new recursive formulas for the calculation of the estimated standard errors of the estimated transition probabilities, and we illustrate the use of the key functions of the mstate package by the analysis of a reversible multi-state model describing survival of liver cirrhosis patients. Copyright 2010 Elsevier Ireland Ltd. All rights reserved.
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            Markov models in medical decision making: a practical guide.

            Markov models are useful when a decision problem involves risk that is continuous over time, when the timing of events is important, and when important events may happen more than once. Representing such clinical settings with conventional decision trees is difficult and may require unrealistic simplifying assumptions. Markov models assume that a patient is always in one of a finite number of discrete health states, called Markov states. All events are represented as transitions from one state to another. A Markov model may be evaluated by matrix algebra, as a cohort simulation, or as a Monte Carlo simulation. A newer representation of Markov models, the Markov-cycle tree, uses a tree representation of clinical events and may be evaluated either as a cohort simulation or as a Monte Carlo simulation. The ability of the Markov model to represent repetitive events and the time dependence of both probabilities and utilities allows for more accurate representation of clinical settings that involve these issues.
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              Multi-state models for panel data: The msm package for R

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                Author and article information

                Journal
                Med Decis Making
                Med Decis Making
                MDM
                spmdm
                Medical Decision Making
                SAGE Publications (Sage CA: Los Angeles, CA )
                0272-989X
                1552-681X
                04 October 2016
                May 2017
                : 37
                : 4
                : 427-439
                Affiliations
                [1-0272989X16670617]Health Economics and Health Technology Assessment, Institute of Health and Wellbeing, University of Glasgow, Glasgow (CW, JDL, AHB)
                [2-0272989X16670617]Public Health, Institute of Health and Wellbeing, University of Glasgow, Glasgow (DFM)
                Author notes
                [*]Claire Williams, MSc, Health Economics and Health Technology Assessment, Institute of Health and Wellbeing, University of Glasgow, 1 Lilybank Gardens, Glasgow, G12 8RZ, UK; e-mail: c.williams.3@ 123456research.gla.ac.uk .
                Article
                10.1177_0272989X16670617
                10.1177/0272989X16670617
                5424853
                27698003
                bca06c87-f401-47c4-8cba-4ebc967e2fcf
                © The Author(s) 2016

                This article is distributed under the terms of the Creative Commons Attribution 3.0 License ( http://www.creativecommons.org/licenses/by/3.0/) 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 page ( https://us.sagepub.com/en-us/nam/open-access-at-sage).

                History
                : 31 August 2015
                : 29 July 2016
                Funding
                Funded by: Medical Research Council, FundRef http://dx.doi.org/10.13039/501100000265;
                Award ID: MR/J50032X/1
                Categories
                Original Articles
                Methods for Extrapolating Survival in Cost-Effectiveness Analyses

                Medicine
                oncology,survival analysis,markov models,cost-effectiveness analysis
                Medicine
                oncology, survival analysis, markov models, cost-effectiveness analysis

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