不良研究所

Novel Coronaviruses Are Riskiest for Spillover

Tool Helps Quantify Zoonotic Risk, Focus Priorities for Viral and Wildlife Surveillance

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Close up of bat being sampled for viruses in purple gloved hand with swab
A wildlife surveillance team member samples a bumblee bat for viruses in Myanmar. (Smithsonian Conservation Biology Institute)

In the past decade, scientists have described hundreds of novel viruses with the potential to pass between wildlife and humans. But how can they know which are riskiest for spillover and therefore which to prioritize for further surveillance in people?

Scientists from the 不良研究所 created network-based models to prioritize novel and known viruses for their risk of zoonotic transmission, which is when infectious diseases pass between animals and humans.

Their study, published in the journal , provides further evidence that coronaviruses are riskiest for spillover and should continue to be prioritized for enhanced surveillance and research.

The machine learning models were designed by the at the 不良研究所 One Health Institute in the School of Veterinary Medicine.

Prioritizing novel viruses

The models found that novel viruses from the coronavirus family are expected to have a larger number of species as hosts. This is consistent with known viruses, indicating this family of viruses should be most highly prioritized for surveillance.

The scientists created a prioritization score for each virus to serve as a metric for the risk of zoonotic transmission.

鈥淎s surveillance expands, we hope to be inundated with data associated with viruses,鈥 said lead author and veterinary epidemiologist Pranav Pandit, a researcher with the 不良研究所 One Health Institute. 鈥淭hese tools will help us understand the risk from novel viruses, which can help prepare for future pandemics.鈥

Environmental change and viral connections

The model uses a data-driven, virus-host network to quantify the likelihood of humans as hosts for more than 500 viruses newly discovered between 2009 and 2019. This stemmed from wildlife surveillance research conducted in Africa, Asia and Latin America by a consortium of investigators.

Illustration of viruss-host network showing small and large dots linked by lines in various colors
This illustration represents a host-pathogen network model created by 不良研究所 researchers. It shows potential linkages between 531 novel and known viruses, with different colors representing different virus families. (不良研究所)

Host-pathogen networks provide insight into the ecology of viruses and their hosts, which is critical to understanding the risk such viruses pose to human health. This is especially important amid a changing climate and environment. As the landscape changes and species shift and move in response, the risk of viral transmission across species can increase.

鈥淭his study shows how different wildlife species are connected by the viruses they share,鈥 said corresponding author Christine Johnson, a 不良研究所 professor of epidemiology and ecosystem health and director of the EpiCenter for Disease Dynamics. 鈥Environmental change is a massive driver for moving species around. How viruses interact with different hosts in a changing environment is critical to understanding the risk they pose to human health.鈥

High priorities

In additional to coronaviruses, the model also ranked several paramyxoviruses as high priorities for future work. Diseases associated with this family of viruses include measles, mumps and respiratory tract infections.

Characterizing hundreds of viruses takes a lot of time and requires prioritization,鈥 Pandit said. 鈥Our network-based approach helps identify the early signals in the ecological and evolutionary trajectories of these viruses. It can also help illuminate missing links between viruses and their hosts.鈥

The study was supported with funding from the Unites States Agency for International Development and the National Institutes of Health.

 

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Advancing Health Worldwide Human & Animal Health Science and Climate

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