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Modeling the amplification of epidemic spread by misinformed populations (2402.11351v3)

Published 17 Feb 2024 in cs.SI, cs.CY, and physics.soc-ph

Abstract: Understanding how misinformation affects the spread of disease is crucial for public health, especially given recent research indicating that misinformation can increase vaccine hesitancy and discourage vaccine uptake. However, it is difficult to investigate the interaction between misinformation and epidemic outcomes due to the dearth of data-informed holistic epidemic models. Here, we employ an epidemic model that incorporates a large, mobility-informed physical contact network as well as the distribution of misinformed individuals across counties derived from social media data. The model allows us to simulate and estimate various scenarios to understand the impact of misinformation on epidemic spreading. Using this model, we present a worst-case scenario in which a heavily misinformed population would result in an additional 14% of the U.S. population becoming infected over the course of the COVID-19 epidemic, compared to a best-case scenario.

Amplifying Epidemic Spread through Misinformation: A Comprehensive Model-Based Analysis

Introduction

Recent empirical and theoretical works have underscored the influence of misinformation on public health, notably its exacerbation of vaccine hesitancy and undermining of vaccine uptake efforts. The intricate dynamics between misinformation dispersion through digital landscapes and disease transmission via physical interactions present challenges for predicting epidemic outcomes precisely. This paper presents an advanced epidemic model incorporating misinformation dynamics through social media analytics and mobility data, aiming to quantify misinformation's impact on disease spread, specifically COVID-19, within the United States.

Methodology

The paper integrates a large-scale Twitter dataset, county-level electoral data, and cellphone mobility patterns to develop a dual-layered network model. This network consists of a misinformation diffusion layer, based on interactions among Twitter users, and a physical contact layer reflecting potential disease transmission pathways. The model innovates by embedding a subpopulation of misinformed individuals within the classical Susceptible-Infected-Recovered (SIR) framework, accounting for their reduced compliance with public health measures. The model's parameterization explores various scenarios to estimate the potential amplification of epidemic spread attributable to misinformation.

Results

Simulations predict a significant amplification of COVID-19 spread due to misinformation, with a worst-case scenario suggesting up to 47 million additional infections in the U.S. alone. The model highlights how misinformation impacts not only the misinformed subpopulation but also indirectly increases infection risks for the well-informed segment of the population. Furthermore, the analysis reveals the role of network homophily in isolating the impacts of misinformation, yet it also indicates that such isolation exacerbates disparities in health outcomes.

Implications and Future Directions

This research underscores the necessity of interdisciplinary approaches integrating social science and epidemiology to manage public health crises effectively. The quantification of misinformation's impact on epidemic spread emphasizes the urgency for public health authorities and social media platforms to address misinformation more proactively. Limitations noted include the static categorization of individuals as misinformed versus well-informed and uniform assumptions regarding susceptibility to misinformation, suggesting avenues for future research incorporating dynamic belief systems and varying levels of misinformation resilience.

The findings call for continued development of computational models that can navigate the complexities of misinformation dynamics and their intersection with public health. Potential extensions could include models that incorporate feedback mechanisms where observed disease spread influences social behaviors and misinformation beliefs, providing a more nuanced understanding of these interdependencies.

Conclusion

By bridging data-driven insights from social media and physical mobility patterns with epidemiological modeling, this paper illuminates the substantial role misinformation can play in exacerbating disease outbreaks. It provides a compelling argument for the integration of more sophisticated, data-informed strategies in public health planning and crisis management, highlighting the critical need for effective misinformation mitigation to safeguard public health.

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Authors (6)
  1. Matthew R. DeVerna (10 papers)
  2. Francesco Pierri (44 papers)
  3. Yong-Yeol Ahn (62 papers)
  4. Santo Fortunato (56 papers)
  5. Alessandro Flammini (67 papers)
  6. Filippo Menczer (102 papers)