新冠肺炎大流行期间实际汇集测试的统计模型

IF 3.9 1区 数学 Q1 STATISTICS & PROBABILITY Statistical Science Pub Date : 2021-07-12 DOI:10.1214/22-sts857
S. Comess, H. Wang, S. Holmes, Claire Donnat
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引用次数: 8

摘要

汇集检测为新冠肺炎大流行前所未有的检测需求提供了有效的解决方案,尽管在某些情况下可能会降低灵敏度并增加实施成本。这种权衡的评估通常假设汇集的样本是独立的且分布相同。然而,在新冠肺炎的背景下,这些假设往往被违反:在网络(室友、配偶、同事)上进行的测试捕捉到了相关的个人,而感染风险因时间、地点和个人的不同而有很大差异。忽略依赖性和异质性可能会使已建立的最优性网格产生偏差,并导致程序的次优实现。作为从这场疫情中吸取的教训,本文强调了将现场采样信息与统计建模相结合以有效优化混合测试的必要性。使用真实数据,我们表明:(a)通过利用样本之间的自然相关性(非独立性),可以在低物流成本下获得更大的收益——灵敏度和效率分别提高30%和90%;以及(b)尽管池之间存在显著的异质性(不完全相同),但这些收益是稳健的。我们的建模结果补充和扩展了Barak等人(2021)的观察结果,他们报告了远远超出预期的经验敏感性。最后,我们提供了一个交互式工具,用于使用上下文信息选择最佳池大小
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Statistical Modeling for Practical Pooled Testing During the COVID-19 Pandemic
Pooled testing offers an efficient solution to the unprecedented testing demands of the COVID-19 pandemic, although with potentially lower sensitivity and increased costs to implementation in some settings. Assessments of this trade-off typically assume pooled specimens are independent and identically distributed. Yet, in the context of COVID-19, these assumptions are often violated: testing done on networks (housemates, spouses, co-workers) captures correlated individuals, while infection risk varies substantially across time, place and individuals. Neglecting dependencies and heterogeneity may bias established optimality grids and induce a sub-optimal implementation of the procedure. As a lesson learned from this pandemic, this paper highlights the necessity of integrating field sampling information with statistical modeling to efficiently optimize pooled testing. Using real data, we show that (a) greater gains can be achieved at low logistical cost by exploiting natural correlations (non-independence) between samples -- allowing improvements in sensitivity and efficiency of up to 30% and 90% respectively;and (b) these gains are robust despite substantial heterogeneity across pools (non-identical). Our modeling results complement and extend the observations of Barak et al (2021) who report an empirical sensitivity well beyond expectations. Finally, we provide an interactive tool for selecting an optimal pool size using contextual information
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来源期刊
Statistical Science
Statistical Science 数学-统计学与概率论
CiteScore
6.50
自引率
1.80%
发文量
40
审稿时长
>12 weeks
期刊介绍: The central purpose of Statistical Science is to convey the richness, breadth and unity of the field by presenting the full range of contemporary statistical thought at a moderate technical level, accessible to the wide community of practitioners, researchers and students of statistics and probability.
期刊最新文献
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