Towards a Semi-Automatic Early Warning System for Vector-Borne Diseases

Int J Environ Res Public Health. 2021 Feb 13;18(4):1823. doi: 10.3390/ijerph18041823.

Abstract

The emergence and spread of vector-borne diseases (VBDs) is a function of biotic, abiotic and socio-economic drivers of disease while their economic and societal burden depends upon a number of time-varying factors. This work is concerned with the development of an early warning system that can act as a predictive tool for public health preparedness and response. We employ a host-vector model that combines entomological (mosquito data), social (immigration rate, demographic data), environmental (temperature) and geographical data (risk areas). The output consists of appropriate maps depicting suitable risk measures such as the basic reproduction number, R0, and the probability of getting infected by the disease. These tools consist of the backbone of a semi-automatic early warning system tool which can potentially aid the monitoring and control of VBDs in different settings. In addition, it can be used for optimizing the cost-effectiveness of distinct control measures and the integration of open geospatial and climatological data. The R code used to generate the risk indicators and the corresponding spatial maps along with the data is made available.

Keywords: basic reproduction number; malaria; mosquitoes.

MeSH terms

  • Animals
  • Basic Reproduction Number
  • Disease Vectors
  • Mosquito Vectors*
  • Risk Factors
  • Vector Borne Diseases*