REDACS: Regional emergency-driven adaptive cluster sampling for effective COVID-19 management.

IF 0.8 4区 数学 Q3 MATHEMATICS, APPLIED Stochastic Analysis and Applications Pub Date : 2023-01-01 Epub Date: 2022-02-25 DOI:10.1080/07362994.2022.2033126
M Stehlík, J Kisel'ák, A Dinamarca, E Alvarado, F Plaza, F A Medina, S Stehlíková, J Marek, B Venegas, A Gajdoš, Y Li, S Katuščák, A Bražinová, E Zeintl, Y Lu
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引用次数: 2

Abstract

As COVID-19 is spreading, national agencies need to monitor and track several metrics. Since we do not have perfect testing programs on the hand, one needs to develop an advanced sampling strategies for prevalence study, control and management. Here we introduce REDACS: Regional emergency-driven adaptive cluster sampling for effective COVID-19 management and control and justify its usage for COVID-19. We show its advantages over classical massive individual testing sampling plans. We also point out how regional and spatial heterogeneity underlines proper sampling. Fundamental importance of adaptive control parameters from emergency health stations and medical frontline is outlined. Since the Northern hemisphere entered Autumn and Winter season (this paper was originally submitted in November 2020), practical illustration from spatial heterogeneity of Chile (Southern hemisphere, which already experienced COVID-19 winter outbreak peak) is underlying the importance of proper regional heterogeneity of sampling plan. We explain the regional heterogeneity by microbiological backgrounds and link it to behavior of Lyapunov exponents. We also discuss screening by antigen tests from the perspective of "on the fly" biomarker validation, i.e., during the screening.

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REDACS:针对COVID-19有效管理的区域应急驱动自适应整群抽样
摘要随着新冠肺炎的传播,国家机构需要监测和跟踪几个指标。由于我们手头没有完善的检测计划,因此需要制定先进的抽样策略来进行流行率研究、控制和管理。在此,我们介绍REDACS:区域应急驱动的自适应集群采样,用于有效的新冠肺炎管理和控制,并证明其在新冠肺炎中的应用。我们展示了它相对于经典的大规模个体测试抽样计划的优势。我们还指出了区域和空间异质性如何强调适当的采样。概述了来自急救站和医疗一线的自适应控制参数的基本重要性。自北半球进入秋冬季节(本文最初提交于2020年11月)以来,智利(南半球,已经经历了新冠肺炎冬季爆发高峰)的空间异质性的实践说明了采样计划的适当区域异质性的重要性。我们通过微生物背景来解释区域异质性,并将其与李雅普诺夫指数的行为联系起来。我们还从“动态”生物标志物验证的角度讨论了抗原测试的筛选,即在筛选过程中。
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来源期刊
Stochastic Analysis and Applications
Stochastic Analysis and Applications 数学-统计学与概率论
CiteScore
2.70
自引率
7.70%
发文量
32
审稿时长
6-12 weeks
期刊介绍: Stochastic Analysis and Applications presents the latest innovations in the field of stochastic theory and its practical applications, as well as the full range of related approaches to analyzing systems under random excitation. In addition, it is the only publication that offers the broad, detailed coverage necessary for the interfield and intrafield fertilization of new concepts and ideas, providing the scientific community with a unique and highly useful service.
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