Mapping Potential Malaria Vector Larval Habitats for Larval Source Management in Western Kenya: Introduction to Multimodel Ensembling Approaches

Author:

Zhou Guofa1,Lee Ming-Chieh1,Wang Xiaoming1,Zhong Daibin1,Githeko Andrew K.2,Yan Guiyun1

Affiliation:

1. Program in Public Health, University of California, Irvine, California;

2. Centre for Global Health Research, Kenya Medical Research Institute, Kisumu, Kenya

Abstract

ABSTRACT. 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.

Publisher

American Society of Tropical Medicine and Hygiene

Reference81 articles.

1. World Malaria Report 2021,2021

2. Global Report on Insecticide Resistance in Malaria Vectors: 2010–2016,2018

3. Global Technical Strategy for Malaria 2016–2030,2015

4. Evaluation of long-lasting microbial larvicide for malaria vector control in Kenya;Afrane,2016

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