News Release

AI system targets tree pollen behind allergies

UTA researchers help develop a tool to aid allergy sufferers, farmers and city planners

Peer-Reviewed Publication

University of Texas at Arlington

It can be challenging to distinguish between tiny powdery pollen grains

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Pollen analysis is a powerful method for reconstructing historical ecosystems. Preserved pollen grains in lakebeds and peat bogs offer detailed records of past plant communities. Since plant distribution is tightly linked to environmental factors such as temperature, rainfall and humidity, identifying the types of pollen present in different layers of sediment can reveal how ecosystems have responded to natural climate fluctuations over time and how they might react in the future.

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Credit: UTA

Imagine trying to tell identical twins apart just by looking at their fingerprints. That’s how challenging it can be for scientists to distinguish the tiny powdery pollen grains produced by fir, spruce and pine trees.

But a new artificial intelligence system developed by researchers at The University of Texas at Arlington, the University of Nevada and Virginia Tech is making that task a lot easier—and potentially bringing big relief to allergy sufferers.

“With more detailed data on which tree species are most allergenic and when they release pollen, urban planners can make smarter decisions about what to plant and where,” said Behnaz Balmaki, assistant professor of research in biology at UT Arlington and coauthor of a new study published in the journal Frontiers in Big Data with Masoud Rostami from the Division of Data Science at UTA. “This is especially important in high-traffic areas like schools, hospitals, parks and neighborhoods. Health services could also use this information to better time allergy alerts, public health messaging and treatment recommendations during peak pollen seasons.”

Pollen analysis is a powerful method for reconstructing historical ecosystems. Preserved pollen grains in lakebeds and peat bogs offer detailed records of past plant communities. Since plant distribution is tightly linked to environmental factors such as temperature, rainfall and humidity, identifying the types of pollen present in different layers of sediment can reveal how ecosystems have responded to natural climate fluctuations over time and how they might react in the future.

“Even with high-resolution microscopes, the differences between pollens are very subtle,” Dr. Balmaki said. “Our study shows deep-learning tools can significantly enhance the speed and accuracy of pollen classification. That opens the door to large-scale environmental monitoring and more detailed reconstructions of ecological change. It also holds promise for improving allergen tracking by identifying exactly which species are releasing pollen and when.”

Related: The impact of climate change on food production

Balmaki adds that the research could also benefit agriculture.

“Pollen is a strong indicator of ecosystem health,” she said. “Shifts in pollen composition can signal changes in vegetation, moisture levels and even past fire activity. Farmers could use this information to track long-term environmental trends that affect crop viability, soil conditions or regional climate patterns. It’s also useful for wildlife and pollinator conservation. Many animals, including insects like bees and butterflies, rely on specific plants for food and habitat. By identifying which plant species are present or declining in an area, we can better understand how these changes impact the entire food web and take steps to protect critical relationships between plants and pollinators.”

Related: Harmful microplastics infiltrating drinking water

For this study, the team examined historical samples of fir, spruce and pine trees preserved by the University of Nevada’s Museum of National History. They tested those samples using nine different AI models, demonstrating the technology’s strong potential to identify pollen with impressive speed and accuracy.

“This shows that deep learning can successfully support and even exceed traditional identification methods in both speed and accuracy,” Balmaki said. “But it also confirms how essential human expertise still is. You need well-prepared samples and a strong understanding of ecological context. This isn’t just about machines—it’s a collaboration between technology and science.”

For future projects, Balmaki and her collaborators plan to expand their research to include a wider range of plant species. Their goal is to develop a comprehensive pollen identification system that can be applied across different regions of the United States to better understand how plant communities may shift in response to extreme weather events.

About The University of Texas at Arlington (UTA)

Celebrating its 130th anniversary in 2025, The University of Texas at Arlington is a growing public research university in the heart of the thriving Dallas-Fort Worth metroplex. With a student body of more than 41,000, UTA is the second-largest institution in the University of Texas System, offering more than 180 undergraduate and graduate degree programs. Recognized as a Carnegie R-1 university, UTA stands among the nation’s top 5% of institutions for research activity. UTA and its 280,000 alumni generate an annual economic impact of $28.8 billion for the state. The University has received the Innovation and Economic Prosperity designation from the Association of Public and Land Grant Universities and has earned recognition for its focus on student access and success, considered key drivers to economic growth and social progress for North Texas and beyond.


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