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MASTERMIND: Assessing the cost effectiveness of a stratified approach to type 2 diabetes therapy
Proposal
1581
Title of Proposed Research
MASTERMIND: Assessing the cost effectiveness of a stratified approach to type 2 diabetes therapy
Lead Researcher
Professor Chris Jennison
Affiliation
University of Bath
Funding Source
This study work will be incorporated and funded by the MRC as part of the MRC APBI Stratification and Extreme Response Mechanism IN Diabetes ?MASTERMIND? consortium which has been awarded to the University of Exeter to establish a platform for a stratified medicines approach in type 2 diabetes. The pilot award of £2.9 million ran from February 2013 to September 2015, grant reference MR/K005707/1, with the current study running from August 2015 - January 2020, grant reference MR/N00633X/1.
Potential Conflicts of Interest
None
Data Sharing Agreement Date
01 November 2016
Lay Summary
Glycated hemoglobin (HbA1c) is a mainstream target for intervention in patients with type 2 diabetes and is widely monitored as a measure of the risk of complications. These patients respond differently to the available therapies; the same treatment may reduce glucose significantly in one person but have little effect in another. Focusing treatment strategies on patients with specific risk profiles, for example identifying patients who are more or less likely to respond to a treatment or experience side effects, and examining the effects is valuable for both patients and health care organisations.
Predictive models are one of many methods that can be used to evaluate the benefits of these new reduction strategies and are useful tools which help healthcare systems plan for the future. The United Kingdom Prospective Diabetes Study (UKPDS) Outcomes Model is one such tool and has been widely used in a range of research, clinical and commercial applications worldwide, as well as by NICE. It is a computer simulation model used to estimate the likely occurrence of the major diabetes-related complications over a lifetime for patients with Type 2 diabetes, in order to calculate health outcomes such as life expectancy, quality-adjusted life expectancy and the costs of complications. It is able to evaluate the interactions of HbA1c with other risk factors making it particularly valuable in facilitating evaluations of patient specific targeted treatment approaches in terms of patient HbA1c response and side effects to treatment.
Using the United Kingdom Prospective Diabetes Study (UKPDS) Outcomes Model, this project aims to assess the benefits of the predictors of response to 3 types of glucose lowering therapy, thiazolidinediones, sulphonylureas and metformin, identified with in the “MASTERMIND: Stratification of Thiazolidinedione glycaemic response the ADOPT and RECORD studies” study. Reductions in HbA1c will be translated to outcomes such as expected quality adjusted life years (E[QALYs]) and expected cost of complications (E[Costs]) of both individual patient and entire populations, improving the overall population HbA1c and enhancing patient outcomes. We will combine data for those treated with TZDs, SUs and metformin in the ADOPT and RECORD studies. Response to treatment will be based on the change from the first HbA1c ?measure of 3 monthly average blood sugar? prior to starting treatment to the closest HbA1c to 12 months after treatment. We will assess how clinical characteristics, such as gender and weight, at study baseline effect both initial treatment response and longer term (6 year) response in terms of E[QALYs] and costs of diabetes related complications. We will also assess if factors associated with treatment response are associated with progression of diabetes and with other factors such as the number of tablets or changes in weight.
This research is part of an MRC study ?MASTERMIND) examining response to diabetes medications.
Study Data Provided
[{ "PostingID": 475, "Title": "GSK-49653/048", "Description": "A Randomized, Double-Blind Study to Compare the Durability of Glucose Lowering and Preservation of Pancreatic Beta-Cell Function of Rosiglitazone Monotherapy Compared to Metformin or Glyburide/Glibenclamide in Patients with Drug-Naive, Recently Diagnosed Type 2 Diabetes Mellitus" },{ "PostingID": 478, "Title": "GSK-49653/231", "Description": "A long term, open label, randomised study in patients with type 2 diabetes, comparing the combination of rosiglitazone and either metformin or sulfonylurea with metformin plus sulfonylurea on cardiovascular endpoints and glycaemia" }]
Statistical Analysis Plan
To assess the strata identified within the “MASTERMIND: Stratification of Thiazolidinedione glycaemic response the ADOPT and RECORD studies” study, we shall need a model that calculates the cost effectiveness. This needs to take into account likely gains from improved glycaemic control achieved by stratification, with allowance for the cost of any additional testing needed to identify patient strata, and estimates of the costs and health consequences of type 1 and type 2 errors. To capture the impact of improved glycemic control on complications, quality of life and costs we propose to use the UKPDS Outcomes model. The patient level data will be entered into the UKPDS Outcomes model V2 and the likely future trajectory for each patient, as well as the whole population, will be simulated over 6-year time periods to produce the estimated probability and timing of the main macrovascular and microvascular outcomes all cause death, life expectancy, and quality adjusted life expectancy. The lifetime complication costs will be derived and an estimate of health care management costs calculated.This exercise will be repeated assuming that individuals in the different strata can be assigned different treatments and outcomes will then be compared allowing benefits to be quantified. For example, patients who have been identified as responding better to thiazolidinedione than sulphonylurea will be run through the UKPDS on both treatments and the outcomes for HbA1c and other variables, e.g. BMI, will be captured for both scenarios. Comparisons of the results will allow for assessment of the response to treatment and side effects.
Publication Citation
Dennis JM, Henley WE, Weedon MN, Lonergan M, Rodgers LR, Jones AG, Hamilton WT, Sattar N, Janmohamed S, Holman RR, Pearson ER, Shields BM, Hattersley AT; MASTERMIND Consortium. Sex and BMI Alter the Benefits and Risks of Sulfonylureas and Thiazolidinediones in Type 2 Diabetes: A Framework for Evaluating Stratification Using Routine Clinical and Individual Trial Data. Diabetes Care. 2018 Sep;41(9):1844-1853.
DOI: 10.2337/dc18-0344
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