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Main Authors: Soltani, Marzieh, Dara, Rozita, Poljak, Zvonimir, Dubé, Caroline, Bruce, Neil, Sharif, Shayan
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.09725
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author Soltani, Marzieh
Dara, Rozita
Poljak, Zvonimir
Dubé, Caroline
Bruce, Neil
Sharif, Shayan
author_facet Soltani, Marzieh
Dara, Rozita
Poljak, Zvonimir
Dubé, Caroline
Bruce, Neil
Sharif, Shayan
contents Avian Influenza Virus (AIV) poses significant threats to the poultry industry, humans, domestic animals, and wildlife health worldwide. Monitoring this infectious disease is important for rapid and effective response to potential outbreaks. Conventional avian influenza surveillance systems have exhibited limitations in providing timely alerts for potential outbreaks. This study aimed to examine the idea of using online activity on social media, and Google searches to improve the identification of AIV in the early stage of an outbreak in a region. To this end, to evaluate the feasibility of this approach, we collected historical data on online user activities from X (formerly known as Twitter) and Google Trends and assessed the statistical correlation of activities in a region with the AIV outbreak officially reported case numbers. In order to mitigate the effect of the noisy content on the outbreak identification process, large language models were utilized to filter out the relevant online activity on X that could be indicative of an outbreak. Additionally, we conducted trend analysis on the selected internet-based data sources in terms of their timeliness and statistical significance in identifying AIV outbreaks. Moreover, we performed an ablation study using autoregressive forecasting models to identify the contribution of X and Google Trends in predicting AIV outbreaks. The experimental findings illustrate that online activity on social media and search engine trends can detect avian influenza outbreaks, providing alerts earlier compared to official reports. This study suggests that real-time analysis of social media outlets and Google search trends can be used in avian influenza outbreak early warning systems, supporting epidemiologists and animal health professionals in informed decision-making.
format Preprint
id arxiv_https___arxiv_org_abs_2503_09725
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Leveraging Social Media and Google Trends to Identify Waves of Avian Influenza Outbreaks in USA and Canada
Soltani, Marzieh
Dara, Rozita
Poljak, Zvonimir
Dubé, Caroline
Bruce, Neil
Sharif, Shayan
Social and Information Networks
Avian Influenza Virus (AIV) poses significant threats to the poultry industry, humans, domestic animals, and wildlife health worldwide. Monitoring this infectious disease is important for rapid and effective response to potential outbreaks. Conventional avian influenza surveillance systems have exhibited limitations in providing timely alerts for potential outbreaks. This study aimed to examine the idea of using online activity on social media, and Google searches to improve the identification of AIV in the early stage of an outbreak in a region. To this end, to evaluate the feasibility of this approach, we collected historical data on online user activities from X (formerly known as Twitter) and Google Trends and assessed the statistical correlation of activities in a region with the AIV outbreak officially reported case numbers. In order to mitigate the effect of the noisy content on the outbreak identification process, large language models were utilized to filter out the relevant online activity on X that could be indicative of an outbreak. Additionally, we conducted trend analysis on the selected internet-based data sources in terms of their timeliness and statistical significance in identifying AIV outbreaks. Moreover, we performed an ablation study using autoregressive forecasting models to identify the contribution of X and Google Trends in predicting AIV outbreaks. The experimental findings illustrate that online activity on social media and search engine trends can detect avian influenza outbreaks, providing alerts earlier compared to official reports. This study suggests that real-time analysis of social media outlets and Google search trends can be used in avian influenza outbreak early warning systems, supporting epidemiologists and animal health professionals in informed decision-making.
title Leveraging Social Media and Google Trends to Identify Waves of Avian Influenza Outbreaks in USA and Canada
topic Social and Information Networks
url https://arxiv.org/abs/2503.09725