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Engineers unveil AI model for predicting, controlling pandemic spread linked to air traffic
A team of engineers at the University of Houston has published a study in the journal Scientific Reports on how international air travel has influenced the spread of COVID-19 around the world. By using a newly developed AI tool, the team identified hotspots of infection linked to air traffic, pinpointing key areas that significantly contribute to disease transmission. The analyses identified Western Europe, the Middle East and North America as leading regions in fueling the pandemic due to the high volume of outgoing international flights either originating or transiting through these areas. "Our work provides a robust deep learning-based tool to study global pandemics and is of key relevance to policymakers for making informed decisions regarding air traffic restrictions during future outbreaks," said Hien Van Nguyen, lead researcher and associate professor of electrical and computer engineering at UH. The tools Nguyen and team developed a computer program, called Dynamic Weighted GraphSAGE, that helps analyze big networks of constantly changing data, like flight schedules, to see patterns and trends. "It looks at spatiotemporal graphs, or how things are linked across both space (different locations) and time to better understand how this affects things like the spread of diseases or transportation patterns," said Nguyen. To understand how air travel affects the spread of infections, Van Nguyen and graduate students Akash Awasthi and Syed Rizvi tested small changes in their model (perturbation analysis) to see how sensitive it is to different factors and examined flight connections between different regions and countries. This helped them analyze which parts of air traffic have the biggest impact on the spread of the virus and which flight reductions in highly sensitive areas would efficiently reduce predicted global cases. The strategies "We propose air traffic reduction strategies that can significantly impact controlling the pandemic with minimal disruption to human mobility," said Nguyen. "Policies including stringent reduction in the number of Western European flights are predicted to cause larger reductions in global COVID-19 cases. This work represents a novel usage of perturbation analysis on spatiotemporal graph neural networks to gain insight on pandemic forecasting," he said. Although the findings stem from the COVID-19 context, the insights gained are generalizable to any pandemic, said Nguyen. Additional researchers on the project are from the Houston Methodist Research Institute.
[2]
Engineers unveil AI model for predicting, controlling pandemic spread
A team of engineers at the University of Houston has published a study in the journal Nature on how international air travel has influenced the spread of COVID-19 around the world. By using a newly developed AI tool, the team identified hotspots of infection linked to air traffic, pinpointing key areas that significantly contribute to disease transmission. The analyses identified Western Europe, the Middle East and North America as leading regions in fueling the pandemic due to the high volume of outgoing international flights either originating or transiting through these areas. "Our work provides a robust deep learning-based tool to study global pandemics and is of key relevance to policymakers for making informed decisions regarding air traffic restrictions during future outbreaks," said Hien Van Nguyen, lead researcher and associate professor of electrical and computer engineering at UH. The tools Nguyen and team developed a computer program, called Dynamic Weighted GraphSAGE, that helps analyze big networks of constantly changing data, like flight schedules, to see patterns and trends. "It looks at spatiotemporal graphs, or how things are linked across both space (different locations) and time to better understand how this affects things like the spread of diseases or transportation patterns," said Nguyen. To understand how air travel affects the spread of infections, Van Nguyen and graduate students Akash Awasthi and Syed Rizvi tested small changes in their model (perturbation analysis) to see how sensitive it is to different factors and examined flight connections between different regions and countries. This helped them analyze which parts of air traffic have the biggest impact on the spread of the virus and which flight reductions in highly sensitivity areas would efficiently reduce predicted global cases. The strategies "We propose air traffic reduction strategies that can significantly impact controlling the pandemic with minimal disruption to human mobility," said Nguyen. "Policies including stringent reduction in the number of Western European flights are predicted to cause larger reductions in global COVID-19 cases. This work represents a novel usage of perturbation analysis on spatiotemporal graph neural networks to gain insight on pandemic forecasting," he said. Although the findings stem from the COVID-19 context, the insights gained are generalizable to any pandemic, said Nguyen. Additional researchers on the project are from the Houston Methodist Research Institute.
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University of Houston engineers develop an AI tool to analyze the impact of international air travel on COVID-19 spread, offering insights for future pandemic control strategies.
Researchers at the University of Houston have developed an innovative AI model that sheds light on the intricate relationship between international air travel and the global spread of pandemics like COVID-19. The study, published in Scientific Reports, introduces a sophisticated deep learning tool designed to predict and potentially control the transmission of infectious diseases through air traffic patterns 1.
At the heart of this research is a computer program called Dynamic Weighted GraphSAGE. This AI tool is capable of analyzing complex networks of constantly changing data, such as flight schedules, to identify patterns and trends in disease transmission. The model examines spatiotemporal graphs, which represent how different locations are connected across both space and time 2.
The analysis revealed that Western Europe, the Middle East, and North America played crucial roles in fueling the COVID-19 pandemic. These regions were identified as significant contributors to disease transmission due to their high volume of outgoing international flights, both originating from and transiting through these areas 1.
To gain deeper insights, the research team, led by Hien Van Nguyen and including graduate students Akash Awasthi and Syed Rizvi, employed perturbation analysis. This technique involved making small changes to the model to assess its sensitivity to various factors. By examining flight connections between different regions and countries, they were able to determine which aspects of air traffic had the most significant impact on virus spread 2.
Based on their findings, the researchers proposed targeted air traffic reduction strategies that could significantly impact pandemic control while minimizing disruptions to human mobility. Notably, they found that policies implementing stringent reductions in the number of Western European flights could lead to substantial decreases in global COVID-19 cases 1.
While the study focused on COVID-19, the researchers emphasize that the insights gained are applicable to any future pandemic. The AI tool developed by the team represents a novel application of perturbation analysis on spatiotemporal graph neural networks for pandemic forecasting. This approach offers valuable information to policymakers, enabling them to make more informed decisions regarding air traffic restrictions during future disease outbreaks 2.
As the world continues to grapple with the challenges of global health crises, this AI-driven approach to understanding and predicting pandemic spread through air travel networks marks a significant advancement in our ability to respond to and mitigate future outbreaks.
Reference
[1]
Medical Xpress - Medical and Health News
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