基于区位配置模型的常规核酸检测点选址方案——以深圳市为例

Siwaner Wang, Qian Sun, Pengfei Chen, Hui Qiu, Yang Chen
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引用次数: 0

摘要

自2019年底以来,2019冠状病毒病(COVID-19)的爆炸性爆发已成为全球威胁,需要在全球范围内对公共卫生系统进行全面改革。防止病毒传播和保障公众健康的一项关键战略是部署核酸检测(NAT)站点。然而,确定公共NAT站点的最佳位置是一项重大挑战,因为不同地区需要的站点数量不同,而且人口、人口异质性和日常动态对固定位置方案的有效性有重大影响。为了解决这一问题,本研究提出了一个基于经典位置分配模型和双目标优化模型的数据驱动框架。该框架优化了NAT站点的数量和位置,同时平衡了各种成本约束,并适应了一天中不同时段的人口动态。双目标优化过程采用膝点识别(KPI)算法,该算法计算效率高,不需要先验知识。在中国深圳进行的案例研究表明,与城市NAT站点的实际布局相比,所提出的框架提供了更广泛的服务覆盖范围,并更好地满足了居民在不同时期的需求。研究结果可为基层卫生保健设施的快速规划提供参考,促进可持续健康城市的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Location Scheme of Routine Nucleic Acid Testing Sites Based on Location-Allocation Models: A Case Study of Shenzhen City
Since late 2019, the explosive outbreak of Coronavirus Disease 19 (COVID-19) has emerged as a global threat, necessitating a worldwide overhaul of public health systems. One critical strategy to prevent virus transmission and safeguard public health, involves deploying Nucleic Acid Testing (NAT) sites. Nevertheless, determining the optimal locations for public NAT sites presents a significant challenge, due to the varying number of sites required in different regions, and the substantial influences of population, the population heterogeneity, and daily dynamics, on the effectiveness of fixed location schemes. To address this issue, this study proposes a data-driven framework based on classical location-allocation models and bi-objective optimization models. The framework optimizes the number and location of NAT sites, while balancing various cost constraints and adapting to population dynamics during different periods of the day. The bi-objective optimization process utilizes the Knee point identification (KPI) algorithm, which is computationally efficient and does not require prior knowledge. A case study conducted in Shenzhen, China, demonstrates that the proposed framework provides a broader service coverage area and better accommodates residents’ demands during different periods, compared to the actual layout of NAT sites in the city. The study’s findings can facilitate the rapid planning of primary healthcare facilities, and promote the development of sustainable healthy cities.
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