Kenya Medical Research Institute - Centre for Global Health Research, Kisumu, Kenya.
Swiss Tropical and Public Health Institute, Basel, Switzerland.
J Glob Health. 2024 Oct 11;14:04208. doi: 10.7189/jogh.14.04208.
Malaria remains one of the deadliest diseases worldwide, especially among young children in sub-Saharan Africa. Predictive models are necessary for effective planning and resource allocation; however, statistical models suffer from association pitfalls. In this study, we used empirical dynamic modelling (EDM) to investigate causal links between climatic factors and intervention coverage with malaria for short-term forecasting.
Based on data spanning the period from 2008 to 2022, we used convergent cross-mapping (CCM) to identify suitable lags for climatic drivers and investigate their effects, interaction strength, and suitability ranges on malaria incidence. Monthly malaria cases were collected at St. Elizabeth Lwak Mission Hospital. Intervention coverage and population movement data were obtained from household surveys in Asembo, western Kenya. Daytime land surface temperature (LSTD), rainfall, relative humidity (RH), wind speed, solar radiation, crop cover, and surface water coverage were extracted from remote sensing sources. Short-term forecasting of malaria incidence was performed using state-space reconstruction.
We observed causal links between climatic drivers, bed net use, and malaria incidence. LSTD lagged over the previous month; rainfall and RH lagged over the previous two months; and wind speed in the current month had the highest predictive skills. Increases in LSTD, wind speed, and bed net use negatively affected incidence, while increases in rainfall and humidity had positive effects. Interaction strengths were more pronounced at temperature, rainfall, RH, wind speed, and bed net coverage ranges of 30-35°C, 30-120 mm, 67-80%, 0.5-0.7 m/s, and above 90%, respectively. Temperature and rainfall exceeding 35°C and 180 mm, respectively, had a greater negative effect. We also observed good short-term predictive performance using the multivariable forecasting model (Pearson correlation coefficient = 0.85, root mean square error = 0.15).
Our findings demonstrate the utility of CCM in establishing causal linkages between malaria incidence and both climatic and non-climatic drivers. By identifying these causal links and suitability ranges, we provide valuable information for modelling the impact of future climate scenarios.
疟疾仍然是全球最致命的疾病之一,尤其是在撒哈拉以南非洲的幼儿中。预测模型对于有效的规划和资源分配是必要的;然而,统计模型存在关联陷阱。在这项研究中,我们使用经验动态建模(EDM)来研究气候因素与疟疾干预措施覆盖率之间的因果关系,以便进行短期预测。
基于 2008 年至 2022 年的数据,我们使用收敛交叉映射(CCM)来识别气候驱动因素的合适滞后,并研究其对疟疾发病率的影响、相互作用强度以及适合范围。每月的疟疾病例在圣伊丽莎白·拉武克使命医院收集。干预措施覆盖率和人口流动数据从肯尼亚西部阿塞姆博的家庭调查中获得。白天陆地表面温度(LSTD)、降雨量、相对湿度(RH)、风速、太阳辐射、作物覆盖和地表水覆盖从遥感源中提取。使用状态空间重构进行疟疾发病率的短期预测。
我们观察到气候驱动因素、蚊帐使用和疟疾发病率之间存在因果关系。LSTD 滞后于前一个月;降雨量和 RH 滞后于前两个月;当前月的风速具有最高的预测技能。LSTD、风速和蚊帐使用的增加对发病率有负面影响,而降雨量和湿度的增加则有积极影响。在温度、降雨量、RH、风速和蚊帐覆盖率分别为 30-35°C、30-120mm、67-80%、0.5-0.7m/s 和高于 90%的范围内,相互作用强度更为明显。分别超过 35°C 和 180mm 的温度和降雨量具有更大的负面影响。我们还观察到使用多变量预测模型的良好短期预测性能(皮尔逊相关系数=0.85,均方根误差=0.15)。
我们的研究结果表明,CCM 在建立疟疾发病率与气候和非气候驱动因素之间的因果关系方面具有实用性。通过确定这些因果关系和适宜范围,我们为模拟未来气候情景的影响提供了有价值的信息。