Data-driven Fair Resource Allocation For Novel Emerging Epidemics: A COVID-19 Convalescent Plasma Case Study
Maryam Akbari-Moghaddam, Na Li, Douglas G. Down, Donald M. Arnold,, Jeannie Callum, Philippe B\'egin, Nancy M. Heddle

TL;DR
This paper presents a data-driven mixed-integer programming model for fair and effective resource allocation of COVID-19 convalescent plasma during emerging epidemics, addressing supply-demand forecasting challenges in real-time.
Contribution
It introduces a novel MIP-based approach for equitable resource allocation in epidemic scenarios, specifically applied to COVID-19 convalescent plasma in a multi-site international case study.
Findings
The model balances supply and demand effectively.
It minimizes unmet demand ratios across entities.
Allocations are shown to be equitable and sensitive to different settings.
Abstract
Epidemics are a serious public health threat, and the resources for mitigating their effects are typically limited. Decision-makers face challenges in forecasting the supply and demand for these resources as prior information about the disease is often not available, the behaviour of the disease can periodically change (either naturally or as a result of public health policies) and can differ by geographical region. Randomized controlled trials (RCTs) using scarce resources such as blood products as a randomized intervention are affected by epidemics. In this work, we discuss a model that is suitable for short-term real-time supply and demand forecasting during emerging outbreaks. We consider a case study of demand forecasting and allocating scarce quantities of COVID-19 Convalescent Plasma (CCP) in an international multi-site RCT involving multiple hospital hubs across Canada…
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Taxonomy
TopicsCOVID-19 epidemiological studies · Health Systems, Economic Evaluations, Quality of Life · Advanced Causal Inference Techniques
