Outreach Strategies for Vaccine Distribution: A Multi-Period Stochastic Modeling Approach
Yuwen Yang, Jayant Rajgopal

TL;DR
This paper presents a multi-period stochastic model for optimizing outreach strategies for vaccine distribution in remote areas, addressing uncertainties in population and road conditions to improve immunization efforts.
Contribution
It introduces a novel mixed integer programming model combining set covering and vehicle routing, incorporating uncertainty and multi-period planning for vaccine outreach.
Findings
Demographic factors significantly influence outreach planning.
Uncertainty modeling improves robustness of vaccine delivery plans.
Data collection focus should prioritize unstable population and road data.
Abstract
Vaccination has been proven to be the most effective method to prevent infectious diseases. However, in many low and middle-income countries with geographically dispersed and nomadic populations, last-mile vaccine delivery can be extremely complex. Because newborns in remote population centers often do not have direct access to clinics and hospitals, they face significant risk from diseases and infections. An approach known as outreach is typically utilized to raise immunization rates in these situations. A set of these remote locations is chosen, and over an appropriate planning period, teams of clinicians and support personnel are sent from a depot to set up mobile clinics at these locations to vaccinate people there and in the immediate surrounding area. In this paper, we model the problem of optimally designing outreach efforts as a mixed integer program that is a combination of a…
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