Population health value of being in target: Results from the Canadian Multi-Morbidity Model for Type 2 Diabetes

Main Article Content

Ian Sobotka
Lauren Cipriano
Doug Coyle
Deva Thiruchelvam
Baiju Shah

Abstract

Objective
To develop a microsimulation model for type 2 diabetes using population-level real-world data. Such a model allows for the synthesis of multiple data sources for comparative effectiveness analysis related to a variety of correlated outcomes.


Approach
The model was built using health state features including sex, age, diabetes duration, laboratory test results, and a history of major acute events. Features update using a cycle length of one month. Events modelled include myocardial infarction, stroke, heart failure, amputation and death. Model outputs include counts of events, lifetime healthcare costs and quality-adjusted life-years (QALYs). We then used the model to calculate the number of events that could be averted if a population with type 2 diabetes achieved treatment targets for HbA1c, blood pressure and LDL-cholesterol for 10 years.


Results
Bringing all 60-year-olds with type 2 diabetes into target for 10 years would result in annual event reductions of 87.0 per 100,000 person-years for myocardial infarction, 49.4 for stroke, and 166.8 for heart failure. QALYs would improve by 1,155 per 100,000 patients. For 75-year-olds, annual event reductions would be 178.2, 56.8 and 261.6 per 100,000 person-years, respectively, and QALYs would improve by 2,121 per 100,000 patients.


Conclusions
Population-level real-world data can be used to develop microsimulation models for type 2 diabetes that estimate long-term event risks, mortality and healthcare costs. This model is capable of comparative effectiveness and cost-effectiveness analysis of novel therapies in diabetes.

Article Details

How to Cite
Sobotka, I., Cipriano, L., Coyle, D., Thiruchelvam, D. and Shah, B. (2024) “Population health value of being in target: Results from the Canadian Multi-Morbidity Model for Type 2 Diabetes”, International Journal of Population Data Science, 9(5). doi: 10.23889/ijpds.v9i5.2506.