Clinical Group, Liverpool School of Tropical Medicine, Liverpool, UK.
Health Care Manag Sci. 2012 Sep;15(3):239-53. doi: 10.1007/s10729-012-9201-3. Epub 2012 Jun 7.
The introduction and scale-up of new tools for the diagnosis of Tuberculosis (TB) in developing countries has the potential to make a huge difference to the lives of millions of people living in poverty. To achieve this, policy makers need the information to make the right decisions about which new tools to implement and where in the diagnostic algorithm to apply them most effectively. These decisions are difficult as the new tools are often expensive to implement and use, and the health system and patient impacts uncertain, particularly in developing countries where there is a high burden of TB. The authors demonstrate that a discrete event simulation model could play a significant part in improving and informing these decisions. The feasibility of linking the discrete event simulation to a dynamic epidemiology model is also explored in order to take account of longer term impacts on the incidence of TB. Results from two diagnostic districts in Tanzania are used to illustrate how the approach could be used to improve decisions.
在发展中国家引入和推广新的结核病(TB)诊断工具,有可能使生活在贫困中的数百万人的生活发生巨大变化。为了实现这一目标,决策者需要信息来做出正确的决策,即选择实施哪些新工具,以及在诊断算法中何处最有效地应用这些工具。这些决策是困难的,因为新工具的实施和使用通常很昂贵,并且健康系统和患者的影响不确定,特别是在结核病负担高的发展中国家。作者表明,离散事件模拟模型可以在改进和为这些决策提供信息方面发挥重要作用。还探索了将离散事件模拟与动态流行病学模型联系起来的可行性,以便考虑对结核病发病率的长期影响。坦桑尼亚两个诊断区的结果用于说明如何使用该方法来改进决策。