School of Public Health, Université de Montréal, Montreal, Quebec, Canada.
Center for Public Health Research, Université de Montréal, Montreal, Quebec, Canada.
Sci Rep. 2024 Jan 29;14(1):2430. doi: 10.1038/s41598-024-52724-x.
Many studies have projected malaria risks with climate change scenarios by modelling one or two environmental variables and without the consideration of malaria control interventions. We aimed to predict the risk of malaria with climate change considering the influence of rainfall, humidity, temperatures, vegetation, and vector control interventions (indoor residual spraying (IRS) and long-lasting insecticidal nets (LLIN)). We used negative binomial models based on weekly malaria data from six facility-based surveillance sites in Uganda from 2010-2018, to estimate associations between malaria, environmental variables and interventions, accounting for the non-linearity of environmental variables. Associations were applied to future climate scenarios to predict malaria distribution using an ensemble of Regional Climate Models under two Representative Concentration Pathways (RCP4.5 and RCP8.5). Predictions including interaction effects between environmental variables and interventions were also explored. The results showed upward trends in the annual malaria cases by 25% to 30% by 2050s in the absence of intervention but there was great variability in the predictions (historical vs RCP 4.5 medians [Min-Max]: 16,785 [9,902-74,382] vs 21,289 [11,796-70,606]). The combination of IRS and LLIN, IRS alone, and LLIN alone would contribute to reducing the malaria burden by 76%, 63% and 35% respectively. Similar conclusions were drawn from the predictions of the models with and without interactions between environmental factors and interventions, suggesting that the interactions have no added value for the predictions. The results highlight the need for maintaining vector control interventions for malaria prevention and control in the context of climate change given the potential public health and economic implications of increasing malaria in Uganda.
许多研究通过建模一个或两个环境变量来预测疟疾风险与气候变化情景的关系,而没有考虑到疟疾控制干预措施。我们旨在预测气候变化对疟疾风险的影响,同时考虑降雨量、湿度、温度、植被和病媒控制干预措施(室内滞留喷洒(IRS)和长效杀虫剂蚊帐(LLIN))的影响。我们使用基于 2010-2018 年来自乌干达六个基于设施的监测点的每周疟疾数据的负二项式模型,来估计疟疾、环境变量和干预措施之间的关联,同时考虑到环境变量的非线性。我们将这些关联应用于未来的气候情景,使用两种代表性浓度路径(RCP4.5 和 RCP8.5)下的区域气候模型集合来预测疟疾的分布。我们还探索了包括环境变量和干预措施之间相互作用的预测。结果表明,如果没有干预,到 2050 年代,每年的疟疾病例将增加 25%至 30%,但预测结果存在很大的可变性(历史数据与 RCP4.5 中位数的差异 [最小-最大]:16785 [9902-74382] 与 21289 [11796-70606])。IRS 和 LLIN 的结合、IRS 单独使用和 LLIN 单独使用将分别有助于减少 76%、63%和 35%的疟疾负担。从考虑和不考虑环境因素和干预措施之间相互作用的模型的预测中得出了类似的结论,这表明相互作用对预测没有附加价值。鉴于疟疾在乌干达的增加可能对公共卫生和经济产生影响,这些结果强调了在气候变化背景下需要维持病媒控制干预措施以预防和控制疟疾。