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Machine learning helps predict worldwide plant-conservation priorities

New analytics approach identifies 15,000 at-risk species

Date:
December 3, 2018
Source:
Ohio State University
Summary:
A new approach uses data analytics and machine learning to predict the conservation status of more than 150,000 plants worldwide. Results suggest that more than 15,000 species likely qualify as near-threatened, vulnerable, endangered or critically endangered.
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There are many organizations monitoring endangered species such as elephants and tigers, but what about the millions of other species on the planet -- ones that most people have never heard of or don't think about? How do scientists assess the threat level of, say, the plicate rocksnail, Caribbean spiny lobster or Torrey pine tree?

A new approach co-developed at The Ohio State University uses data analytics and machine learning to predict the conservation status of more than 150,000 plants worldwide. Results suggest that more than 15,000 species likely qualify as near-threatened, vulnerable, endangered or critically endangered.

The approach will allow conservationists and researchers to identify the species most at risk, and also to pinpoint the geographic areas where those species are highly concentrated.

The study appears online today (Dec. 3, 2018) in the journal Proceedings of the National Academy of Sciences.

"Plants form the basic habitat that all species rely on, so it made sense to start with plants," said Bryan Carstens, a professor of evolution, ecology and organismal biology at Ohio State.

"A lot of times in conservation, people focus on big, charismatic animals, but it's actually habitat that matters. We can protect all the lions, tigers and elephants we want, but they have to have a place to live in."

Currently, the International Union for the Conservation of Nature -- which produces the world's most comprehensive inventory of threatened species (the "Red List") -- more or less works on a species-by-species basis, requiring more resources and specialized work than is available to accurately assign a conservation-risk category to every species.

Of the nearly 100,000 species currently on the Red List, plants are among the least represented, with only 5 percent of all currently known species accounted for.

The new approach co-developed by Carstens and lead author Tara Pelletier, a former Ohio State graduate student who is now an assistant professor of biology at Radford University, aims to expand the number of plant species included.

The research team built their predictive model using open-access data from the Global Biodiversity Information Facility and TRY Plant Trait Database. Their algorithm compared data from those sources with the Red List to find risk patterns in habitat features, weather patterns, physical characteristics and other criteria likely to put species in danger of extinction.

A map of the data shows that at-risk plant species tend to cluster in regions with high native biodiversity, such as southwestern Australia, Central American rainforests and southeastern coast of the U.S., where more species compete for resources.

"What this allowed us to do is basically make a prediction about what sorts of conservation risks are faced by species that people haven't done these detailed assessments on," Carsten said.

"This isn't a substitute for more-detailed assessments, but it's a first pass that might help identify species that should be prioritized and where people should focus their attention."

Carsten said the biggest challenge was collecting data on such a large scale, noting it took several months of quality-control checking to ensure the team was working with reliable figures.

The new technique was created to be repeatable by other scientists, whether on a global scale like this study or for a single genus or ecosystem.


Story Source:

Materials provided by Ohio State University. Original written by Denise Blough. Note: Content may be edited for style and length.


Journal Reference:

  1. Tara A. Pelletier, Bryan C. Carstens, David C. Tank, Jack Sullivan, Anahí Espíndola. Predicting plant conservation priorities on a global scale. Proceedings of the National Academy of Sciences, 2018; 201804098 DOI: 10.1073/pnas.1804098115

Cite This Page:

Ohio State University. "Machine learning helps predict worldwide plant-conservation priorities." ScienceDaily. ScienceDaily, 3 December 2018. <www.sciencedaily.com/releases/2018/12/181203185345.htm>.
Ohio State University. (2018, December 3). Machine learning helps predict worldwide plant-conservation priorities. ScienceDaily. Retrieved December 5, 2024 from www.sciencedaily.com/releases/2018/12/181203185345.htm
Ohio State University. "Machine learning helps predict worldwide plant-conservation priorities." ScienceDaily. www.sciencedaily.com/releases/2018/12/181203185345.htm (accessed December 5, 2024).

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