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Instances of the article: "Data-driven risk-based maximal covering location problem with mobile units for healthcare emergency response"

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Figshare2026-02-10 更新2026-04-28 收录
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https://figshare.com/articles/dataset/Instances_of_the_article_Data-driven_risk-based_maximal_covering_location_problem_with_mobile_units_for_healthcare_emergency_response_/31242118
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Equitable access to healthcare during emergencies is critical yet challenging due to geographic and infrastructure constraints, particularly in developing nations. This study develops a novel two-phase hierarchical optimization model integrating data-driven risk assessment with facility location decisions to strategically deploy fixed hospitals and mobile healthcare units during health crises. The model combines multi-criteria and lexicographic optimization: Phase 1 identifies globally efficient resource configurations through weighted multi-criteria optimization considering coverage, accessibility, and redundancy; Phase 2 refines allocations by reallocating mobile units to maximize risk-weighted access prioritizing vulnerable populations. Municipal-level risk indicators are derived from vulnerability factors including comorbidities, demographics, and population density using machine learning techniques applied to individual COVID-19 patient records. Applied to Mexico (32 states, 2,478 municipalities, 126 million population, 638 hospitals), the model achieves high risk coverage in short computational time. Comparative analysis demonstrates that national-level coordination outperforms state-level independent planning in risk coverage. The approach demonstrates adaptability to diverse health emergencies beyond COVID-19, including seasonal outbreaks, epidemics, and future pandemics.
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2026-02-10
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