Survey
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Modeling the health impacts of tobacco taxation in Ukraine Laura Webber PhD, UK Health Forum Tatiana Andreeva PhD, Ukraine alcohol and drug information centre Renzo Sotomayor MD, World Bank OUTLINE • • • • • • Background Aims Methods Results Conclusions Acknowledgements BACKGROUND • Ukraine has had one of the fastest declines in smoking prevalence in the world (WHO, 2011) • Multi-faceted tobacco control legislation from 2005 onwards, corresponding to the FCTC • Examples include: media campaigns, smoke-free places, textual tobacco warning labels, ban on outdoor tobacco advertising, taxes • But Ukraine still has one of the highest smoking prevalence rates in Europe (45% in men, 11% in women) (KIIS, Omnibus surveys). AIM • Model the long term health impacts of increasing tobacco tax in Ukraine Specifically, the following two scenarios were run: • 1. Baseline scenario (2016): Ad valorem (12%) minimum specific (8.515 UAH/$0.35) and simple specific (6.365 UAH/$0.27) • 2. Tax increase scenario: Increase Ad valorem tax (15%), and 30% Increase in the minimum specific excise (11.08 UAH/$0.46), and simple specific (8.28 UAH/$0.34) METHOD Microsimulation Risk data Disease data Population data Health economic data Intervention scenarios Distribution programme UKHF Microsimulation© programme Input datasets Software programmes Output datasets Output data METHOD • Smoking prevalence data from 2015 (national data) • Population data for Ukraine (UN population data) • Disease data as below (literature) Incidence Mortality Survival Direct healthcare costs CHD GBD 2015 GBD 2015 Converted from incidence and mortality I Denisova, P Kuznetsova 2014 Stroke GBD 2015 GBD 2015 Converted from incidence and mortality I Denisova, P Kuznetsova 2014 COPD GBD 2015 GBD 2015 Converted from incidence and mortality I Denisova, P Kuznetsova 2014 Lung cancer GBD 2015 GBD 2015 Converted from incidence and mortality I Denisova, P Kuznetsova 2014 RESULTS • WHO TaXSiM model calculated that the tax increase would result in a reduction in tobacco consumption • This was used in the model to quantify the long-term health impact on disease and related health care costs Summary of scenario % reduction in cigarette consumption Tax scenario Estimated expected Estimated expected reduction in smoking (males) reduction in smoking (females) Uptake (%) Number of Uptake (%) Number of cigarettes cigarettes smoked (%) smoked (%) 5.61 4.59 10.2 0 RESULTS • The increase in tobacco tax is predicted to result in the avoidance of ~127,000 new cases of smoking-related diseases by 2035 78,092 CHD $47.6m/yr 25,881 COPD $6.7m/yr 14,725 Lung Cancer $6m/yr 8032 Stroke $4.6m/yr RESULTS Economic outputs Millions UAH Millions US$ Cum. direct healthcare costs avoided Cumulative premature mortality costs The exchange rate of 1US$/23.8 UAH is used here 2025 542.2 22.8 2035 1545.8 65.0 2025 3568.4 149.9 2035 16536.4 694.8 Limitations • A number of data limitations -No data on non-healthcare costs, e.g. lost productivity due to disease, were available, though we included lost salary. -No data were available to explore differences by social groups. • Only a one-time tax was implemented • No change in second-hand smoke exposure is modeled. • The simulation only includes four smoking-related diseases, so results are likely underestimates of the true effects. • No in-depth uncertainty analysis was conducted. • The model does not take account of future changes in policy or technology. Conclusions • Small changes can have important impacts on morbidity, premature mortality and related costs • Continuous tobacco control measures are required • Highlights the importance of gathering good quality surveillance data to make the most accurate estimates • Future work could consider additional tax scenarios ACKNOWLEDGEMENTS Tatiana I. Andreeva, ADIC-Ukraine Renzo Sotomayor, World Bank Abbygail Jaccard, UKHF Lise Retat, UKHF Michael Xu, UKHF Konstantin Krasovsky, Ministry of Health, Ukraine Joy Townsend, London School of Hygiene and Tropical Medicine World Bank Patricio Marquez Alberto Gónima Feng Zhao Olena Doroshenko