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News Release 15-043

Earth Day: Disease spread among species is predictable

Study in California grassland expands understanding of biodiversity and management of emerging diseases

Scientist in a field

Scientists conduct a plant survey in a grassland on the UC Santa Cruz campus.


April 22, 2015

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On Earth Day, a study of disease dynamics in a California grassland has revealed fundamental principles underlying the spread of pathogens, or disease-causing microbes, among species.

The results, announced today in the journal Nature, have implications for the maintenance of biodiversity and for addressing practical problems related to plant disease.

Researchers at the University of California (UC), Santa Cruz, studied the phenomenon of "pathogen spillover" in grassland species on the UC Santa Cruz campus.

They found that the amount of disease present on each species could be predicted by the abundance of its close relatives in the grassland. When there were many individuals of the same or similar species living close together, pathogens spread more quickly.

Perhaps unexpectedly, that in turn promotes biodiversity by creating openings for less-common species that are not attacked by these same pathogens.

Link between community structure and individual disease vulnerability

The findings reveal a tight link between the structure of a plant community and the vulnerability of individual species to disease.

"These scientists demonstrate that the relatedness of species in communities is an important predictor of disease prevalence," said Alan Tessier, acting director of the National Science Foundation's (NSF) Division of Environmental Biology, which funded the research.

The researchers were able to predict which plant species introduced into the grassland would be most strongly affected by naturally-occurring diseases.

Ingrid Parker, an ecologist and evolutionary biologist at UC Santa Cruz and first author of the paper, said the study adds an important new dimension to a longstanding concept in ecology known as the "rare species advantage."

Diseases take greater toll on common species

"The rare species advantage is thought to be a major driver of biodiversity in natural ecosystems," Parker said. "Most pathogens are not host specialists--they can easily move from one species to another. Whether pathogens 'spill over' depends on how closely related other species nearby are.

"Our study shows that it's the structure of the whole community around a species that affects its vulnerability to disease."

Large-scale experiment with 44 plant species

In a large-scale experiment, the researchers introduced 44 plant species from outside California. (The plants were removed before they reproduced.)

The biologists found that species with few close relatives in the grassland escaped disease, while those closely related to many resident species always showed high levels of disease.

The researchers were able to make surprisingly accurate predictions of disease in introduced species based on their phylogenetic, or evolutionary, distance from local species.

"It was kind of shocking how well we were able to predict disease at a local scale," Parker said.

Modeling "PhyloSusceptibility"

To incorporate the phylogenetic distance between species into their predictions of disease dynamics, the researchers used a "PhyloSusceptibility model" developed by scientist Gregory Gilbert at UC Santa Cruz and two other paper co-authors, Roger Magarey and Karl Suiter of North Carolina State University, who work with the U.S. Department of Agriculture's (USDA) Animal and Plant Health Inspection Service.

The model is based on USDA's global database of fungal pathogens and host plants, and can be used to predict the probability of two species sharing a pathogen.

"If a plant pathogen from Brazil suddenly shows up in Southern California, you want to know what plants in California are most likely to be attacked," Gilbert said.

By showing that the PhyloSusceptibility model makes accurate predictions, the results suggest a range of potential applications.

The PhyloSusceptibility model could help avoid disease problems affecting proposed horticultural imports or reforestation projects.

It could also be used in agriculture to design intercropping or rotation systems to decrease crop disease.

Vulnerability of local species to "pathogen spillover"

Imported plants can bring new pathogens and pests into an area. The PhyloSusceptibility model could be used to assess the vulnerability of local species to pathogen spillover from such plant introductions, the scientists say.

While the PhyloSusceptibility model used in this study was based on data for fungal pathogens, Gilbert said the team has also created versions based on data for eight other groups of pests and pathogens, including insects, nematodes, bacteria and viruses.

In addition to Parker, Gilbert, Magarey and Suiter, the co-authors of the study include UC Santa Cruz researchers Megan Saunders, Megan Bontrager, Andrew Weitz and Rebecca Hendricks.

USDA also funded the work.

-NSF-

Media Contacts
Cheryl Dybas, NSF, (703) 292-7734, cdybas@nsf.gov
Tim Stephens, UCSC, (831) 459-4352, stephens@ucsc.edu

The National Science Foundation (NSF) is an independent federal agency that supports fundamental research and education across all fields of science and engineering. In fiscal year (FY) 2017, its budget is $7.5 billion. NSF funds reach all 50 states through grants to nearly 2,000 colleges, universities and other institutions. Each year, NSF receives more than 48,000 competitive proposals for funding and makes about 12,000 new funding awards.

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