Data-driven predictions of potential Leishmania vectors in the Americas

Author:

Vadmal Gowri M.ORCID,Glidden Caroline K.,Han Barbara A.,Carvalho Bruno M.,Castellanos Adrian A.,Mordecai Erin A.

Abstract

The incidence of vector-borne diseases is rising as deforestation, climate change, and globalization bring humans in contact with arthropods that can transmit pathogens. In particular, incidence of American Cutaneous Leishmaniasis (ACL), a disease caused by parasites transmitted by sandflies, is increasing as previously intact habitats are cleared for agriculture and urban areas, potentially bringing people into contact with vectors and reservoir hosts. Previous evidence has identified dozens of sandfly species that have been infected with and/or transmitLeishmaniaparasites. However, there is an incomplete understanding of which sandfly species transmit the parasite, complicating efforts to limit disease spread. Here, we apply machine learning models (boosted regression trees) to leverage biological and geographical traits of known sandfly vectors to predict potential vectors. Additionally, we generate trait profiles of confirmed vectors and identify important factors in transmission. Our model performed well with an average out of sample accuracy of 86%. The models predict that synanthropic sandflies living in areas with greater canopy height, less human modification, and within an optimal range of rainfall are more likely to beLeishmaniavectors. We also observed that generalist sandflies that are able to inhabit many different ecoregions are more likely to transmit the parasites. Our results suggest thatPsychodopygus amazonensis and Nyssomia antunesiare unidentified potential vectors, and should be the focus of sampling and research efforts. Overall, we found that our machine learning approach provides valuable information forLeishmaniasurveillance and management in an otherwise complex and data sparse system.

Funder

Stanford King Center for Global Development

National Science Foundation

Fogarty International Center

National Institutes of Health

National Institute of Health

National Institute of HEalth

Stanford Woods Institute for the Environment

Stanford University Center for Innovation in Global Health

Severo Ochoa Center of Excellence Grant

Spanish Ministry of Science and Innovation & Spanish State Research Agency

Stanford Terman Award

Publisher

Public Library of Science (PLoS)

Subject

Infectious Diseases,Public Health, Environmental and Occupational Health

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