Who to vaccinate first? Engineers answer a life-or-death question with network theory

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Engineering and medical researchers at Penn have developed a framework that can determine the best and most computationally optimized distribution strategy for COVID-19 vaccinations in any given community.

Published in PLOS One, the study addresses one of the most critical challenges in pandemic response—how to prioritize vaccination efforts in communities with individuals of different risk levels when supplies are scarce and the stakes are high.

The research team, comprised of Saswati Sarkar, Professor of Electrical and Systems Engineering (ESE), Shirin Saeedi Bidokhti, Assistant Professor in ESE, Harvey Rubin, a practicing physician at Penn Medicine and Professor of Infectious Diseases, and ESE doctoral student Raghu Arghal, designed their framework to be able to account for enough population complexity to determine the best and most applicable vaccination strategies, but not so complex that it becomes inaccessible to public health offices without high-powered supercomputers.

What the researchers ended up creating was a highly adaptable framework that provides effective and unique strategies in a matter of seconds and only requires the computational power of a personal laptop.

Capturing just the right amount of complexity

Determining the best theoretical strategy for a vaccine rollout that includes all influencing parameters such as individual health metrics, location limitations and doses required, would typically take months or more, even with the massive computational power available today.

This is because the size of communities over which such rollouts would need to be optimized can easily reach one million. For example, communities in the boroughs of New York City range anywhere from 0.5 to 2.7 million people.

"We needed an approach that would provide strategies on a more relevant timeline and require less computing power," says Sarkar.

"This was especially important to us as we wanted the framework itself to be accessible to low-resourced and remote communities, which are typically the most affected by disease outbreaks. We had to approach this real-world problem more practically while still using network theory tools that captured enough population heterogeneity to arrive at a meaningful and useful strategy."

To achieve this "Goldilocks" level of complexity, the researchers defined three broad, yet representative groups:

  1. High-risk group: Includes the elderly and immunocompromised individuals who are most vulnerable to severe forms of COVID-19 and death.
  2. High-contact group: Essential workers, such as health care providers, teachers and grocery store employees, who are at high risk of spreading the virus.
  3. Baseline group: The rest of the population, who do not fall into the high-risk or high-contact categories.

Defining these distinct groups and leveraging the decades of research on optimal control frameworks, the team was able to use a numerical methodology with just the right amount of complexity that can offer unique and effective strategies for any given community.

Different strategies for different communities

Not surprisingly, the framework showed that to reduce death tolls overall, it is best to vaccinate either the high-risk group or the high-contact group first, and the baseline last.

"The most common strategy, and the one that was deployed with the COVID-19 vaccines, vaccinates the high-risk group first," says Saeedi Bidokhti. "But for 42% of the simulated instances, our framework shows that it is actually more effective to administer the vaccine to the high-contact group before the high-risk group."

Regardless of which group should be prioritized, it became abundantly clear that there is no one-size-fits-all solution.

"This computational framework can help us identify specific solutions for different groups of people and those that are more nuanced which we may not come to intuitively on our own," says Arghal. "Additionally, as infectious diseases and their outbreaks become more complex, spreading at different rates in different communities, the use of this network theory approach will only become more pertinent."

Cross-disciplinary collaboration for public health

The team's success is a direct result of the collaboration across engineering, network theory and medical research.

"Working with medical researchers bridges the gap between theoretical models and real-world applications," says Saeedi Bidokhti. "By collaborating with experts in the field, we ensure that our engineering and model work has a direct, tangible impact on public health."

"Addressing these challenges requires a computational mindset, and it can't be done by one group alone," adds Rubin.

"And, the result of this collaboration is crucial because infectious diseases like norovirus, mpox and dengue are ongoing threats, and new ones will inevitably emerge. It takes interdisciplinary collaboration to develop strategies for tackling multiple diseases simultaneously—including the rollout of vaccines for several viruses at once."

Next steps for research and the next generation of engineers

Expanding the framework's capabilities to address simultaneous outbreaks of multiple diseases, as well as the spread of opinions on behaviors that affect the spread of disease and the correlation between the evolution of such opinions and diseases, are a few projects on the horizon for this research team.

"Any strategy devised to contain disease is only as good as the voluntary cooperation of the general population," says Sarkar.

"This is true in strategies for testing, quarantining and vaccination. Viruses and people's opinions about a public health strategy spread in the same manner—through interaction. However, opinions can spread through both in-person and remote interaction.

"But, we can model the spread of opinions using the same techniques we developed for the spread of viruses and use our network theory approach to integrate that dynamic into a more holistic and realistic strategy for vaccination and general prevention of diseases."

To support the application of engineering approaches to the various systems we navigate as a society, it is paramount to provide the next generation of engineers with the skills that allow them to intersect technology, medicine and public health.

For Arghal, who began his Ph.D. in 2020, the global pandemic and the issue of vaccination was a perfect opportunity to put those skills to the test.

"I always had the intention of bringing engineering tools to applications such as public health, economics and other areas in need of complex decision-making strategies," he says.

"The start of my research career was marked by one of the most pressing global decisions in public health—determining how to roll out the limited quantities of the COVID-19 vaccine.

"So, without planning it, I was able to dive into my original intention on a high-stakes problem from the beginning. And now, our framework not only helps inform that decision, it can also be applied to other similar-spreading respiratory diseases such as RSV, influenza and norovirus, which are currently on the rise and are showing up in concurrent, 'quad-demic' surges with COVID-19."

The study itself could also help incoming students at Penn find new research avenues with real-world impact.

"This project shows our students that engineering isn't just about building machines," says Bidokhti.

"It's about solving real problems that affect people's lives. As I teach courses such as information and network theory, I am bringing these studies to the classroom to show our students what is possible with an engineering degree, helping them to think creatively, work across disciplines and use their skills to make a meaningful impact."

More information: Protect or prevent? A practicable framework for the dilemmas of COVID-19 vaccine prioritization, PLOS One (2025). journals.plos.org/plosone/arti … journal.pone.0316294

Journal information: PLoS ONE

Citation: Who to vaccinate first? Engineers answer a life-or-death question with network theory (2025, January 22) retrieved 23 January 2025 from https://medicalxpress.com/news/2025-01-vaccinate-life-death-network-theory.html

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總結
宾夕法尼亚大学的工程和医学研究人员开发了一种框架,能够为特定社区确定最佳的COVID-19疫苗分配策略。该研究发表在《PLOS One》上,旨在解决疫苗供应稀缺时如何优先接种不同风险水平人群的问题。研究团队通过定义高风险、高接触和基线三类人群,利用网络理论工具,创建了一个适应性强的框架,能够在几秒钟内提供有效的接种策略,且只需个人电脑的计算能力。研究表明,优先接种高风险或高接触人群比基线人群更能有效降低死亡率。此外,团队强调跨学科合作的重要性,以确保理论模型能在公共卫生中产生实际影响。未来,研究将扩展到多种疾病的同时爆发应对策略,并将工程方法应用于公共健康领域,培养下一代具备跨学科能力的工程师。