Program in Public Health, University of California, Irvine, California.
Centre for Global Health Research, Kenya Medical Research Institute, Kisumu, Kenya.
Am J Trop Med Hyg. 2024 Feb 13;110(3):421-430. doi: 10.4269/ajtmh.23-0108. Print 2024 Mar 6.
Identification and mapping of larval sources are a prerequisite for effective planning and implementing mosquito larval source management (LSM). Ensemble modeling is increasingly used for prediction modeling, but it lacks standard procedures. We proposed a detailed framework to predict potential malaria vector larval habitats by using multimodel ensemble modeling, which includes selection of models, ensembling method, and predictors, evaluation of variable importance, prediction of potential larval habitats, and assessment of prediction uncertainty. The models were built and validated based on multisite, multiyear field observations and climatic/environmental variables. Model performance was tested using independent field observations. Overall, we found that the ensembled model predicted larval habitats with about 20% more accuracy than the average of the individual models ensembled. Key larval habitat predictors in western Kenya were elevation, geomorphon class, and precipitation for the 2 months prior. Additional predictors may be required to increase the predictive accuracy of the larva-positive habitats. This is the first study to provide a detailed framework for the process of multimodel ensemble modeling for malaria vector habitats. Mapping of potential habitats will be helpful in LSM planning.
幼虫源的识别和定位是制定有效的蚊子幼虫源管理(LSM)计划和实施的前提。集成建模越来越多地用于预测建模,但它缺乏标准程序。我们提出了一个详细的框架,通过多模型集成建模来预测潜在的疟疾媒介幼虫栖息地,包括模型选择、集成方法和预测因子、变量重要性评估、潜在幼虫栖息地预测以及预测不确定性评估。该模型是基于多地点、多年的野外观测和气候/环境变量构建和验证的。使用独立的野外观测来测试模型性能。总的来说,我们发现集成模型预测幼虫栖息地的准确率比集成的单个模型的平均准确率高出约 20%。在肯尼亚西部,关键的幼虫栖息地预测因子是海拔、地貌分类和前 2 个月的降水量。可能需要额外的预测因子来提高阳性幼虫栖息地的预测准确性。这是第一项针对疟疾媒介栖息地的多模型集成建模过程提供详细框架的研究。潜在栖息地的绘制将有助于 LSM 规划。