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Application of provincial data in mathematical modelling to inform sub-national tuberculosis program decision-making in South Africa

机译:在数学建模中运用省级数据为南非地方结核病规划决策提供依据

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摘要

South Africa has the highest tuberculosis (TB) disease incidence rate in the world, and TB is the leading infectious cause of death. Decisions on, and funding for, TB prevention and care policies are decentralised to the provincial governments and therefore, tools to inform policy need to operate at this level. We describe the use of a mathematical model planning tool at provincial level in a high HIV and TB burden country, to estimate the impact on TB burden of achieving the 90-(90)-90 targets of the Stop TB Partnership Global Plan to End TB. “TIME Impact” is a freely available, user-friendly TB modelling tool. In collaboration with provincial TB programme staff, and the South African National TB Programme, models for three (of nine) provinces were calibrated to TB notifications, incidence, and screening data. Reported levels of TB programme activities were used as baseline inputs into the models, which were used to estimate the impact of scale-up of interventions focusing on screening, linkage to care and treatment success. All baseline models predicted a trend of decreasing TB incidence and mortality, consistent with recent data from South Africa. The projected impacts of the interventions differed by province and were greatly influenced by assumed current coverage levels. The absence of provincial TB burden estimates and uncertainty in current activity coverage levels were key data gaps. A user-friendly modelling tool allows TB burden and intervention impact projection at the sub-national level. Key sub-national data gaps should be addressed to improve the quality of sub-national model predictions.
机译:南非是世界上结核病发病率最高的国家,结核病是主要的传染病死因。结核病预防和护理政策的决策和资金的下放权交给了省级政府,因此,用于告知政策需要的工具可以在此级别上实施。我们描述在艾滋病毒和结核病高负担国家在省级使用数学模型计划工具,以评估实现“控制结核伙伴关系终结结核病全球计划”的90-(90)-90目标对结核病负担的影响。 “ TIME Impact”是可免费获得的,用户友好的结核病建模工具。在与省级结核病规划人员和南非国家结核病规划署合作下,针对三个(九个省)的模型针对结核病通报,发病率和筛查数据进行了校准。报告的结核病规划活动水平被用作模型的基准输入,用于估计以筛查,与护理的联系和治疗成功为重点的扩大干预措施的影响。所有基线模型都预测了结核病发病率和死亡率下降的趋势,这与南非最近的数据一致。干预措施的预计影响因省而异,并且受当前假定的覆盖水平的影响很大。缺乏省级结核病负担估计数和当前活动覆盖水平的不确定性是关键数据缺口。用户友好的建模工具可以在国家以下一级预测结核病负担和干预影响。应该解决关键的次国家级数据缺口,以提高次国家级模型预测的质量。

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