A mathematical model for equitable in-country COVID-19 vaccine allocation

عنوان A mathematical model for equitable in-country COVID-19 vaccine allocation
نویسنده Koyuncu, Burcu Balçık, Yücesoy, Ecem, Akça, Berna, Karakaya, Sırma, Kaplan, Asena Ayse, Baharmand, H., Sgarbossa, F.
تاریخ انتشار: 2022
محل انتشار - Taylor and Francis
موضوع Case study, COVID-19, Equity, Integer programming, Vaccine allocation
نوع دوره ای
زبان انگلیسی
دیجیتال بله
نسخه خطی خیر
کتابخانه: دانشگاه اوزیغین
شناسه دارایی کتابخانه 0020-7543
شماره ثبت cd532df6-4208-4ee4-a51f-5abed1e278ee
محل کتابخانه Industrial Engineering
تاریخ 2022
یادداشت‌ها Norges Forskningsråd
متن نمونه Given the scarcity of COVID-19 vaccines, equitable (fair) allocation of limited vaccines across the main administrative units of a country (e.g. municipalities) has been an important concern for public health authorities worldwide. In this study, we address the equitable allocation of the COVID-19 vaccines inside countries by developing a novel, evidence-based mathematical model that accounts for multiple priority groups (e.g. elderly, healthcare workers), multiple vaccine types, and regional characteristics (e.g. storage capacities, infection risk levels). Our research contributes to the literature by developing and validating a model that proposes equitable vaccine allocation alternatives in a very short time by (a) minimising deviations from the so-called ‘fair coverage’ levels that are computed based on weighted pro-rata rations, and (b) imposing minimum coverage thresholds to control the allocation of vaccines to higher priority groups and regions. To describe the merits of our model, we provide several equity and effectiveness metrics, and present insights on different allocation policies. We compare our methodology with similar models in the literature and show its better performance in achieving equity. To illustrate the performance of our model in practice, we perform a comprehensive numerical study based on actual data corresponding to the early vaccination period in Turkey.
DOI 10.1080/00207543.2022.2110014
Cilt 60
مشاهده در منبع دانشگاه اوزیغین دانشگاه اوزیغین - موتور جستجوی نسخه های خطی عثمانی
دانشگاه اوزیغین - موتور جستجوی نسخه های خطی عثمانی دانشگاه اوزیغین

A mathematical model for equitable in-country COVID-19 vaccine allocation

نویسنده Koyuncu, Burcu Balçık, Yücesoy, Ecem, Akça, Berna, Karakaya, Sırma, Kaplan, Asena Ayse, Baharmand, H., Sgarbossa, F.
تاریخ انتشار 2022
محل انتشار - Taylor and Francis
موضوع Case study, COVID-19, Equity, Integer programming, Vaccine allocation
نوع دوره ای
زبان انگلیسی
دیجیتال بله
نسخه خطی خیر
کتابخانه دانشگاه اوزیغین
شناسه دارایی کتابخانه 0020-7543
شماره ثبت cd532df6-4208-4ee4-a51f-5abed1e278ee
محل کتابخانه Industrial Engineering
تاریخ 2022
یادداشت‌ها Norges Forskningsråd
متن نمونه Given the scarcity of COVID-19 vaccines, equitable (fair) allocation of limited vaccines across the main administrative units of a country (e.g. municipalities) has been an important concern for public health authorities worldwide. In this study, we address the equitable allocation of the COVID-19 vaccines inside countries by developing a novel, evidence-based mathematical model that accounts for multiple priority groups (e.g. elderly, healthcare workers), multiple vaccine types, and regional characteristics (e.g. storage capacities, infection risk levels). Our research contributes to the literature by developing and validating a model that proposes equitable vaccine allocation alternatives in a very short time by (a) minimising deviations from the so-called ‘fair coverage’ levels that are computed based on weighted pro-rata rations, and (b) imposing minimum coverage thresholds to control the allocation of vaccines to higher priority groups and regions. To describe the merits of our model, we provide several equity and effectiveness metrics, and present insights on different allocation policies. We compare our methodology with similar models in the literature and show its better performance in achieving equity. To illustrate the performance of our model in practice, we perform a comprehensive numerical study based on actual data corresponding to the early vaccination period in Turkey.
DOI 10.1080/00207543.2022.2110014
Cilt 60
دانشگاه اوزیغین - موتور جستجوی نسخه های خطی عثمانی
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