Where to locate COVID-19 mass vaccination facilities?

COVID‐19 epidemiological modeling nonconvex optimization vaccine distribution

Journal

Naval research logistics
ISSN: 1520-6750
Titre abrégé: Nav Res Logist
Pays: United States
ID NLM: 100913823

Informations de publication

Date de publication:
Mar 2022
Historique:
received: 21 02 2021
revised: 26 04 2021
accepted: 27 04 2021
medline: 1 3 2022
pubmed: 1 3 2022
entrez: 12 4 2024
Statut: ppublish

Résumé

The outbreak of COVID-19 led to a record-breaking race to develop a vaccine. However, the limited vaccine capacity creates another massive challenge: how to distribute vaccines to mitigate the near-end impact of the pandemic? In the United States in particular, the new Biden administration is launching mass vaccination sites across the country, raising the obvious question of where to locate these clinics to maximize the effectiveness of the vaccination campaign. This paper tackles this question with a novel data-driven approach to optimize COVID-19 vaccine distribution. We first augment a state-of-the-art epidemiological model, called DELPHI, to capture the effects of vaccinations and the variability in mortality rates across age groups. We then integrate this predictive model into a prescriptive model to optimize the location of vaccination sites and subsequent vaccine allocation. The model is formulated as a bilinear, nonconvex optimization model. To solve it, we propose a coordinate descent algorithm that iterates between optimizing vaccine distribution and simulating the dynamics of the pandemic. As compared to benchmarks based on demographic and epidemiological information, the proposed optimization approach increases the effectiveness of the vaccination campaign by an estimated 20%, saving an extra 4000 extra lives in the United States over a 3-month period. The proposed solution achieves critical fairness objectives-by reducing the death toll of the pandemic in several states without hurting others-and is highly robust to uncertainties and forecast errors-by achieving similar benefits under a vast range of perturbations.

Identifiants

pubmed: 38607841
doi: 10.1002/nav.22007
pii: NAV22007
pmc: PMC8441649
doi:

Types de publication

Journal Article

Langues

eng

Pagination

179-200

Informations de copyright

© 2021 Wiley Periodicals LLC.

Auteurs

Dimitris Bertsimas (D)

Sloan School of Management and Operations Research Center Massachusetts Institute of Technology Cambridge Massachusetts USA.

Vassilis Digalakis (V)

Sloan School of Management and Operations Research Center Massachusetts Institute of Technology Cambridge Massachusetts USA.

Alexander Jacquillat (A)

Sloan School of Management and Operations Research Center Massachusetts Institute of Technology Cambridge Massachusetts USA.

Michael Lingzhi Li (ML)

Sloan School of Management and Operations Research Center Massachusetts Institute of Technology Cambridge Massachusetts USA.

Alessandro Previero (A)

Sloan School of Management and Operations Research Center Massachusetts Institute of Technology Cambridge Massachusetts USA.

Classifications MeSH