Cuéllar Ana C, Coello-Peralta Roberto D, Calle-Atariguana Davis, Palacios-Macias Martha, Duque Paul L, Galindo Liliana M, Zaidenberg Mario O, Dantur-Juri María J
National Veterinary Institute, Technical University of Denmark, Bülowsvej, 2750 Frederiksberg, Denmark.
Department of Microbiology, Faculty of Veterinary Medicine and Zootechnics, Universidad de Guayaquil, Guayaquil 090511, Ecuador.
Pathogens. 2025 May 1;14(5):448. doi: 10.3390/pathogens14050448.
Early warning systems rely on statistical prediction models, with environmental risks and remote sensing data serving as essential sources of information for their development. The present work is focused on the use of remote sensing for the estimation of transmission risk and the prediction of malaria cases in northwest Argentina. This study was conducted in the city of San Ramón de la Nueva Orán, where cases of the disease have been reported from 1986 to 2005. The relationship between reported malaria cases and climatic/environmental variables-including the normalized difference vegetation index (NDVI), normalized difference water index (NDWI), and land surface temperature (LST)-obtained from Landsat 5 and 7 satellite images was analyzed using multilevel Poisson regression analyses. An increased abundance of reported malaria cases was observed in summer. An ARIMA (autoregressive integrated moving average) temporal series model incorporating environmental variables was developed to forecast malaria cases in the year 2000. The analysis of the relationship between malaria cases and environmental and climatic factors showed that malaria cases were associated with increases in LST and mean temperature and a decrease in the NDVI. Early warning systems that provide information about spatial and temporal predictions of epidemics could help to control and prevent malaria outbreaks. Based on these findings, this study is expected to support the development of future prevention and control measures by health officials.
早期预警系统依赖于统计预测模型,环境风险和遥感数据是其发展的重要信息来源。目前的工作重点是利用遥感技术来估计传播风险并预测阿根廷西北部的疟疾病例。本研究在新奥兰市圣拉蒙进行,该市在1986年至2005年期间有疟疾病例报告。使用多级泊松回归分析,分析了从Landsat 5和7卫星图像获得的报告疟疾病例与气候/环境变量之间的关系,这些变量包括归一化植被指数(NDVI)、归一化水体指数(NDWI)和地表温度(LST)。夏季报告的疟疾病例数量增加。开发了一个纳入环境变量的自回归积分滑动平均(ARIMA)时间序列模型,以预测2000年的疟疾病例。疟疾病例与环境和气候因素之间的关系分析表明,疟疾病例与地表温度和平均温度的升高以及归一化植被指数的降低有关。提供有关流行病时空预测信息的早期预警系统有助于控制和预防疟疾暴发。基于这些发现,预计本研究将为卫生官员制定未来的预防和控制措施提供支持。