Ruiz Daniel, Brun Cyrille, Connor Stephen J, Omumbo Judith A, Lyon Bradfield, Thomson Madeleine C
International Research Institute for Climate and Society, Lamont Doherty Earth Observatory, Columbia University in the City of New York, 61 Route 9 W, Palisades, PO Box 1000, New York 10964-8000, USA.
Malar J. 2014 May 30;13:206. doi: 10.1186/1475-2875-13-206.
Multi-model ensembles could overcome challenges resulting from uncertainties in models' initial conditions, parameterization and structural imperfections. They could also quantify in a probabilistic way uncertainties in future climatic conditions and their impacts.
A four-malaria-model ensemble was implemented to assess the impact of long-term changes in climatic conditions on Plasmodium falciparum malaria morbidity observed in Kericho, in the highlands of Western Kenya, over the period 1979-2009. Input data included quality controlled temperature and rainfall records gathered at a nearby weather station over the historical periods 1979-2009 and 1980-2009, respectively. Simulations included models' sensitivities to changes in sets of parameters and analysis of non-linear changes in the mean duration of host's infectivity to vectors due to increased resistance to anti-malarial drugs.
The ensemble explained from 32 to 38% of the variance of the observed P. falciparum malaria incidence. Obtained R²-values were above the results achieved with individual model simulation outputs. Up to 18.6% of the variance of malaria incidence could be attributed to the +0.19 to +0.25°C per decade significant long-term linear trend in near-surface air temperatures. On top of this 18.6%, at least 6% of the variance of malaria incidence could be related to the increased resistance to anti-malarial drugs. Ensemble simulations also suggest that climatic conditions have likely been less favourable to malaria transmission in Kericho in recent years.
Long-term changes in climatic conditions and non-linear changes in the mean duration of host's infectivity are synergistically driving the increasing incidence of P. falciparum malaria in the Kenyan highlands. User-friendly, online-downloadable, open source mathematical tools, such as the one presented here, could improve decision-making processes of local and regional health authorities.
多模型集合可以克服模型初始条件、参数化和结构缺陷中的不确定性所带来的挑战。它们还可以以概率方式量化未来气候条件及其影响中的不确定性。
实施了一个包含四个疟疾模型的集合,以评估1979 - 2009年期间肯尼亚西部高地克里乔观察到的气候条件长期变化对恶性疟原虫疟疾发病率的影响。输入数据包括分别在1979 - 2009年和1980 - 2009年历史时期在附近气象站收集的经过质量控制的温度和降雨记录。模拟包括模型对参数集变化的敏感性以及由于对抗疟药物耐药性增加导致宿主对媒介感染性平均持续时间的非线性变化分析。
该集合解释了观察到的恶性疟原虫疟疾发病率方差的32%至38%。获得的R²值高于单个模型模拟输出的结果。疟疾发病率方差的高达18.6%可归因于近地表气温每十年显著的长期线性趋势,即升高0.19至0.25°C。在这18.6%之上,至少6%的疟疾发病率方差可能与对抗疟药物耐药性增加有关。集合模拟还表明,近年来克里乔的气候条件可能对疟疾传播不太有利。
气候条件的长期变化和宿主感染性平均持续时间的非线性变化正在协同推动肯尼亚高地恶性疟原虫疟疾发病率的上升。用户友好的、可在线下载的开源数学工具,如此处展示的工具,可改善地方和区域卫生当局的决策过程。